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How Machine Learning Will Disrupt The Established Cloud Providers – Forbes

Posted by timmreardon on 11/08/2017
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Cloud1Post written by
Bernard Fraenkel

Practice Lead for the Enterprise business at Silicon Valley Software Group.

In the past few years, new categories of products have emerged thanks to the extraordinary advances in machine learning (ML) and deep learning (DL). These new techniques power product recommendations, computer-aided diagnosis in medical imaging and self-driving cars, just to name a few.

Most ML and DL algorithms require compute profiles (hardware, software, storage, networking) that are significantly different from those optimized for traditional applications. Consequently, as more and more companies develop their own ML/DL solutions and deploy them to production, the demand for the ML-optimized compute resources will grow dramatically and create opportunities for new entrants to offer solutions that compete with today’s dominant cloud providers: Amazon AWS, Microsoft Azure and Google Cloud.

The ML/DL Cloud Is Different

In an article on Mesosphere’s blog page, Edward Hsu presented the case that web applications are now primarily data-driven. Consequently, a new set of frameworks (a.k.a. stacks), namely SMACK (Spark, Mesos, Akka, Cassandra, Kafka), must replace the traditional LAMP (Linux, Apache, MySQL, PHP) stack used to build web-based applications. In my view, rather than replacing LAMP, SMACK will coexist side by side with, and feed data to, traditional web-based based frameworks, which are still needed to present nice-looking webpages and interface with mobile phones.

Yet the main point is well-taken. We need to update Marc Andreesen’s famous line about how “Software is eating the world” to “Data is eating the world.” Let’s unpack this statement and derive the consequences.

Hardware

The disruption created by machine learning and deep learning extends well beyond the software stack into chips, servers and cloud providers. This disruption is rooted in the simple fact that GPUs are much more efficient processors for ML and DL than traditional CPUs.

Up until recently, the solution was to augment traditional servers with GPU add-on cards. We are now at a point where demand for ML/DL computing is such that special-purpose servers, optimized for ML/DL compute loads, are being built.

Data centers are also being re-architected to support the extremely large amount of data consumed by ML and DL. Imagine you are designing the brains for self-driving cars. You need to process thousands and thousands of hours of video (and other such signals as GPS, gyroscopes, LIDAR) to train your algorithms. The amount of data that a Tesla on the road records in one second is a million times larger than a tweet or a post on Facebook.

ML/DL data centers thus require both huge amounts of storage and extremely high bandwidth.

Software

The software side is even more complex. A new infrastructure stack, typically using machine learning-specific frameworks such as Tensorflow (originally developed by Google) or PyTorch (originally developed at Facebook), is required to shepherd data around and manage the execution of the compute jobs. Furthermore, open-source code libraries (pandas, scikit-learn, matplotlib) are used to implement the models (e.g., neural networks, data displays). These model libraries are critical because they are optimized to be both easy to use for algorithm research and offer high performance for use in production.

Finally, each vendor offers complete building blocks for specific use cases. For example, Amazon Lex, Google Cloud Speech and Microsoft Bing Speech provide speech recognition and can even recognize intent. Each has its own API and unique behavior, making the migration from one vendor to the other time-consuming.

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New Entrants

In addition to the Big Three cloud providers (Amazon AWS, Microsoft Azure and Google Cloud) that have offered GPU-accelerated instances for a few years, new ML-optimized offerings have emerged:

• NVIDIA, which is already the dominant provider of GPUs that power the graphics cards that drive computer displays, recently introduced a portfolio of “purpose-built AI supercomputers” servers known as its DGX systems.

• Servers.com offers its Prisma Cloud with dedicated GPU-optimized servers.

• Rescale, one of the niche cloud providers that focuses on high-performance computing (HPC), just announced the availability of the latest generation of GPU-powered servers, along with high-bandwidth interconnect, to create high-performance multi-node clusters.

What’s At Stake

The Big Three cloud providers are the ones most immediately at risk to be disrupted by new entrants such as NVIDIA, Servers.com and Rescale. ML/DL innovation is still running at a torrid pace thanks to innovation in algorithms as well as compute efficiency. This is creating a small arms race where end users are constantly looking for the provider that can give that extra edge.

On one hand, end users are benefiting hugely from this arms race to provide the best software and hardware compute environment. On the other, this requires constant vigilance to keep abreast of the latest offerings. Even more importantly, when deploying ML/DL products to production, CEOs and CTOs need to pick the winner — or at least a future survivor — that will keep their edge for the next two to five years. This is not an easy task.

We will delve deeper into these two topics in future posts — stay tuned.

Article link: read:https://www.forbes.com/sites/forbestechcouncil/2017/10/24/how-machine-learning-will-disrupt-the-established-cloud-providers/amp/

Senators Introduce Legislation to Provide EHR Program Relief – Healthcare Informatics

Posted by timmreardon on 11/06/2017
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Six U.S. Senators introduced a bill that aims to provide regulatory flexibility to providers
and hospitals operating under the meaningful use program by easing reporting requirements and instituting a 90-day reporting period.

The sponsors of the bill, S. 2059, the Electronic Health Record (EHR) Regulatory Relief Act, are the same six legislators who are members of the Senate REBOOT group and proposed a similar meaningful use overhaul bill last year. These same six senators—U.S. Sens. John Thune (R-S.D.), Lamar Alexander (R-Tenn.), Mike Enzi (R-Wyo.), Pat Roberts (R-Kans.), Richard Burr (R-N.C.), and Bill Cassidy (R-La.)—also authored a 2013 report, “REBOOT: Re-examining the Strategies Needed to Successfully Adopt Health IT,” outlining their concerns with the meaningful use the program.

In a summary document, the sponsors of the bill wrote, “Feedback from the hospital and physician community resoundingly indicates that the burdens of compliance associated with electronic health records (EHRs) are negatively affecting hospitals and medical providers. Regulatory flexibility is necessary to help hospitals and medical providers focus on transitioning into patient-focused payment policies, instead of the ‘check-the-box’ meaningful use program.”

The EHR Regulatory Relief Act seeks to eliminate all-or-nothing scoring, create a 90-day reporting period and expand hardship exemptions.

Rather than the “all-or-nothing approach,” the bill would create a new threshold that requires eligible hospitals to meet no more than 70 percent of the required metrics to satisfy meaningful use requirements. Recognizing the early stages of implementation of the Merit-Based Incentive Payment System, the bill also would direct the U.S. Department of Health and Human Services (HHS) to consider forthcoming recommendations from the GAO with respect to improving EHR requirements for physicians.

According to the bill summary, current law requires HHS to make EHR standards more stringent over time, which drives more providers to seek hardship exceptions as they struggle to remain in compliance. The bill would eliminate this requirement so HHS can make deliberative decisions on standards moving forward and avoid a high volume of hardship requests in the future.

The proposed legislation also would extend hardship relief to providers for 2019, with reasons for hardship to include insufficient internet connectivity, natural disasters, unexpected practice closures, vendor and certification issues and lack of face-to-face patient interaction.

Article link: https://www.healthcare-informatics.com/news-item/ehr/senators-introduce-legislation-provide-ehr-program-relief-0

AMA demands EHR overhaul, calls them ‘poorly designed and implemented’ – HealthcareIT News

Posted by timmreardon on 11/06/2017
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Latest study confirms typing and clicking consume more than half the workday for doctors.

By Bernie Monegain   September 12, 2017

Doctor With Nurse Working At Nurses Station

Primary care physicians spend more than half of their workday typing data on a computer screen and completing other EHR tasks, according to new research from the University of Wisconsin and the American Medical Association.

Researchers gleaned their findings from EHR event logs. Confirmed by direct observation data, they found that during a typical 11.4-hour workday, primary care physicians spent nearly six hours on data entry and other tasks with EHR systems. The study was published in the Annals of Family Medicine.

[Also: Doctors loathe their EHRs, right? Not these physicians]

“This study reveals what many primary care physicians already know – data entry tasks associated with EHR systems are significantly cutting into available time for physicians to engage with patients,” AMA President David O. Barbe, MD, a family physician from Mountain Grove, Missouri, said in a statement.

Barbe blames poorly designed and poorly implemented EHRs for the growing sense among physicians that they are neglecting their patients as they try to keep up with an overload of type-and-click tasks.

Doctor burnout rates are at more than 50 percent, according to Barbe.

An overhaul of EHR systems is needed to address the lack of actionable data for patient care; convoluted workflows that take time away from patients; and long hours added to difficult clinical days just to complete quality reporting and documentation requirements.

The AMA is calling for the implementation of eight priorities for improving EHR usability, calling for a reframing the design and configuration of EHR technology to emphasize the following priorities:

  • Enhance physicians’ ability to provide high-quality patient care
  • Support team-based care
  • Promote care coordination
  • Offer product modularity and reconfigurability
  • Reduce cognitive workload
  • Promote data liquidity
  • Facilitate digital and mobile patient engagement
  • Expedite user input into product design and post-implementation feedback

The AMA said it recognizes that many of the recommendations can only be implemented in the long-term due to vendor product development life-cycles, limitations of current legacy systems and existing contracts, regulations and institutional policies.

“However, there is a great sense of urgency to improve EHRs because every patient encounter and the physician’s ability to provide high-quality care is affected by the current state of usability,” AMA writes in its call for action.

Article link: http://www.healthcareitnews.com/news/ama-demands-ehr-overhaul-calls-them-poorly-designed-and-implemented

Twitter: @Bernie_HITN
Email the writer: bernie.monegain@himssmedia.com

Topics:

Electronic Health Records (EHR, EMR), Network Infrastructure, Workforce

Candy Out of Sight, Out of Mind – RAND

Posted by timmreardon on 11/06/2017
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Rand1

by Deborah Cohen

After CVS added “Health” to its name three years ago, it dropped tobacco products from its shelves, a bold and admirable move that cast CVS as a public health leader. Now the pharmacy chain is cutting back on candy at the register, making junk food less visible and “healthier” snacks easier to find. Any move that nudges consumers toward healthier choices should be applauded, but fractured decision-making in the checkout line could get in the way of this well-intentioned goal.

The company began shifting toward health care more than a dozen years ago and has become one of the largest retail pharmacy chains in the U.S. and a major operator of retail health clinics. Once it made tobacco sales taboo, CVS said consumers began pushing the company to sell “healthier food.”

Eliminating tobacco sales cost it $2 billion year in sales, according to the company, a loss it likely doesn’t want to repeat regardless of the public health benefits. This could explain why the retailer is not completely turning away from candy, which accounts for about 5 percent of its revenue, according to Nielsen, a market analyst.

Instead, the chain is switching out a quarter of the candy at the register at many of its stores with snacks it bills as “better for you,” such as protein bars. CVS is also hiding snack food displays in plain sight by placing them in a middle aisle instead of showcasing them at the front of the store.

Out of sight, out of mind could turn out to be a surprisingly effective strategy for helping CVS shoppers avoid the junk-food trap. But placing candy at the cash register alongside food items perceived as healthy actually may end up confusing consumers intent on making a “healthy” choice. The cash register has long been known as an impulse-purchase zone. By the time shoppers are ready to pay, they often suffer from decision fatigue, which impairs their ability to concentrate.

When shoppers see a protein bar next to a candy bar, they may think in the simplest of terms: One is good for them and the other isn’t. Due to a phenomenon known as the “halo effect” shoppers may assume the “healthier” choice contains fewer calories. Yet protein bars and other “healthy” snacks often have the same, or more, calories than candy bars.

People can also be enticed to reach for an unhealthy option even if they can’t explain why. New and novel food can pique curiosity and whet the appetite. The mere presence of foods high in sugar and fat in a setting that cannot be avoided can make many people feel hungry, even if they are already full. So even if shoppers quell the urge to buy a sugared snack, just being exposed to a food they find tempting can cause them to eat a larger portion later, when they finally sit down for a meal.

Roughly two out of three adult Americans are now overweight or obese. It’s likely that the widespread adoption of impulse marketing of junk food has substantially contributed to its overconsumption and to the nation’s weight problem.

Long before the modern obesity epidemic took hold in the early 1980s, most pharmacies did not carry food items and shoppers were mainly exposed to junk food in limited settings, like candy stores and bakeries. Snack foods did not even take up a full aisle in a grocery store. It was harder to make a poor food choice.

CVS Health has shown it is serious about putting the emphasis on its relatively new last name. Going forward, it could consider taking the lead as a retailer once again and do away with junk food displays by the cash register altogether.


Deborah A. Cohen is a senior natural scientist at the nonprofit, nonpartisan RAND Corporation, and the author of “A Big Fat Crisis: The Hidden Influences Behind the Obesity Epidemic – and How We Can End It”.

Article link: https://www.rand.org/blog/2017/10/candy-out-of-sight-out-of-mind.html

Paying for Prescription Drugs Around the World: Why Is the U.S. an Outlier? – Commonwealth Fund

Posted by timmreardon on 11/06/2017
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Commonwealth2Toplines

  • Prescription drug spending in the U.S. far exceeds that in other high-income countries
  • Higher prices, and greater use of higher-priced drugs, make the U.S. an outlier on prescription drug spending

Abstract

  • Issue: Compared with other high-income countries, the United States spends the most per capita on prescription drugs.
  • Goal: To compare drug spending levels and trends in the U.S. and nine other high-income countries — Australia, Canada, France, Germany, the Netherlands, Norway, Sweden, Switzerland, and the United Kingdom; consider potential explanations for higher U.S. spending; and explore patients’ exposure to pharmaceutical costs.
  • Method: Analysis of health data from the Organisation for Economic Co-operation and Development, the 2016 Commonwealth Fund International Health Policy Survey, and other sources.
  • Findings and Conclusions: Various factors contribute to high per capita drug spending in the U.S. While drug utilization appears to be similar in the U.S. and the nine other countries considered, the prices at which drugs are sold in the U.S. are substantially higher. These price differences appear to at least partly explain current and historical disparities in spending on pharmaceutical drugs. U.S. consumers face particularly high out-of-pocket costs, both because the U.S. has a large uninsured population and because cost-sharing requirements for those with coverage are more burdensome than in other countries. Most Americans support reducing pharmaceutical costs. International experience demonstrates that policies like universal health coverage, insurance benefit design that restricts out-of-pocket spending, and certain price control strategies, like centralized price negotiations,
    can be effective.

Background

U.S. health care spending, per capita and as a percent of GDP, dwarfs that of any other high-income country, and longitudinal trends reveal that the gap in spending between the United States and the rest of the world continues to grow. Understanding the components and drivers of health care spending is important for policymakers, providers, and patients.

One important component of overall health care expenditures is the amount spent on prescription drugs. This brief compares prescription drug spending in the United States and nine other high-income countries: Australia, Canada, France, Germany, the Netherlands, Norway, Sweden, Switzerland, and the United Kingdom. We explore how three factors that determine drug spending — drug utilization, the type and mix of drugs consumed, and the price of drugs — differ across countries. We then examine how these costs are borne by patients in these countries — in particular, the role insurance coverage and design plays in protecting patients, and specifically vulnerable populations, from the burdens of paying the ever-rising costs of pharmaceuticals.

Findings

Pharmaceutical Spending in the U.S. and Abroad

Prescription drug spending per capita is far higher in the United States than in the nine other high-income countries considered (Exhibit 1). This was not always the case. In the 1980s, several countries spent about the same amount per capita as the U.S. But in the 1990s and early 2000s, spending on prescription medications grew much more rapidly in the U.S. than in other nations. The mid-1990s saw a decade of rapid pharmaceutical growth in all countries, as annual numbers of FDA-approved drugs hit all-time highs, and sales of hypertensive and cancer drugs boomed.1 In the U.S., this was accompanied by expansions of coverage (including for prescription drugs) by the federal government, through such programs as the Children’s Health Insurance Program, Medicaid, and Medicare.

Read more: http://www.commonwealthfund.org/publications/issue-briefs/2017/oct/prescription-drug-costs-us-outlier

The IT Transformation Health Care Needs – HBR

Posted by timmreardon on 11/03/2017
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by Nikhil R. Sahni  Robert S. Huckman Anuraag Chigurupati and David M. Cutler

From the November–December 2017 Issue

Executive Summary

In recent years, health care organizations have made sizable investments in information technology. They’ve used their IT systems to replace paper records with electronic ones and to improve billing processes, thereby boosting revenue. But so far, IT has been of little value in making medical care delivery more effective or less expensive.

How can health care organizations change this? One key is to prioritize quality improvement over cost cutting. By harnessing IT to help design better clinical practices, it’s possible to achieve better patient outcomes and better financial performance. It is also vital to gather good information—by using simpler, more-organic collection methods—and to make it actionable by applying analytics. Finally, many organizations will need to forge new business and operating models, expanding their IT staffs, revamping how their clinical staffs work, and creating new payment structures.

The authors provide numerous examples of health care organizations that are taking these steps—and seeing impressive results.

In Brief

The Problem

In recent years, health care organizations and the U.S. government have invested tens of billions of dollars in information technology. So far they have little to show for it: The impact on the cost and quality of clinical care has been modest, and productivity growth in the sector continues to lag that of other industries.

The Root Cause

The priorities of most providers have been replacing paper records with electronic ones, improving billing to maximize reimbursements, and monitoring existing clinical processes.

The Solution

Use IT to transform clinical care. This entails emphasizing the improvement of care over cost cutting, making data collection easier and better, turning the data into actionable information for clinicians, and forging new operating and business models.

In the mid-1990s, everyone knew that health care organizations across the United States were plagued by wasteful spending. The question for Intermountain Healthcare, which serves residents of Utah and Idaho, was where to start looking for savings internally. Data analyses quickly identified the most promising targets: 104 of the 1,440 clinical conditions that Intermountain treated accounted for 95% of the care it provided, and two services—newborn delivery and treatment of ischemic heart disease—accounted for 21% of its work.

Quality-improvement teams focused first on those two services. Armed with a sophisticated electronic health record (EHR) system and a separate information technology system that detailed the costs of activities, the teams used evidence-based guidelines and the experience of Intermountain’s physicians to redesign clinical workflows. The top executives, the board of trustees, physicians, and nurses all worked together to support the drive to improve care. Today more than 60 services have been revamped, and Intermountain is recognized as a national leader in quality improvement and cost management. None of it would have been possible without its IT systems.

This example is impressive. Unfortunately, it is still a rarity. The more common story in health care is one of large IT investments but little to show for them. Spurred by examples like Intermountain, the U.S. government’s Centers for Medicare and Medicaid Services spent $37 billion just in incentive payments for health care IT from 2011 to May 2017. By 2016, more than 50% of office-based physicians and over 80% of hospitals had installed a “basic” EHR system—one that meets minimum standards set forth by the Office of the National Coordinator for Health Information Technology. Yet such systems have had little impact on quality improvement and cost reduction to date. Indeed, clinicians routinely criticize them, lamenting that they waste their time, are rigid and not user-friendly, and interfere with their patient interactions. Many health care organizations are suffering more pain than gain as they struggle to integrate new IT systems into their operations. For example, in January 2017, MD Anderson Cancer Center announced that it would lay off 900 employees, or about 5% of its workforce, largely because of financial losses attributable to a new EHR system. More broadly, efforts to persuade health care organizations to share information continue to lag, as do efforts to enable different IT systems to communicate with one another, causing data to remain “stuck” within siloed databases.

A central reason the negatives seem to outweigh the positives is the way IT systems are being used. To date, the priorities of most health care organizations have been replacing paper records with electronic ones and improving billing to maximize reimbursements. Although revenues have risen as a result, the impact of IT on reducing the costs and improving the quality of clinical care has been modest, limited to facilitating activities such as order entry to help patients get tests and medications quickly and accurately. Relatively few organizations have taken the important next step of analyzing the wealth of data in their IT systems to understand the effectiveness of the care they deliver. Put differently, many health care organizations use IT as a tool to monitor current processes and protocols; what only a small number have done is leverage those same IT systems to see if those processes and protocols can be improved—and if so, to act accordingly. This is a significant reason that productivity growth in health care has been anemic and weaker than that in many other industries.

HBRxyz

Health Care’s Productivity Woes

Some industries use technology better than others, and labor productivity statistics reflect that. In the case of U.S. health care, the industry has been growing faster than the overall economy, but because the number of health care workers has been rapidly increasing and the use of information technology has lagged, productivity growth has been minimal.

So how can health care organizations realize the promise of their large and growing investments in IT to help lower costs and improve patient outcomes? While substantial attention has been paid to the potential medical benefits of new technologies such as inexpensive genetic screening, artificial intelligence, and wearable sensors that continuously monitor vital signs, our main focus is on how the organizations that deliver care can get much more out of their recent or planned investments in enterprisewide IT systems.

Our research on the ways health care could apply the experiences of other industries suggests that instead of viewing IT as a transactional tool for billing, monitoring, and error checking, organizations should embrace it as an instrument to help transform the way they deliver medical care. This will entail prioritizing quality improvement over cost cutting, making data collection easier and better, turning the data into actionable information for clinicians, and forging new operating and business models. We have found that while numerous health care organizations are moving in this direction, the majority are not making the holistic changes needed for transformation.

Improving Quality

Historically, the adoption and management of health care IT has been left to an organization’s chief information officer and other technical personnel. This is a mistake. A number of organizations—including Boston Medical Center, Geisinger Health System in Pennsylvania, Intermountain, Mayo Clinic, and New York University (NYU) Langone Health—have shown that health care IT is effective only when all members of an organization work to unlock its potential. (Full disclosure: One of us, Robert Huckman, has taught in executive education programs for two organizations related to this article—Intermountain Healthcare and Brigham and Women’s Hospital, which is owned by the same parent company as Massachusetts General Hospital.)

Two key constituencies outside of technical personnel—senior leaders and clinicians—must play significant roles. Leaders are crucial because they will have to enlist clinicians in the cause by persuading them that the effective use of IT is central to delivering higher quality. The urgent need to reduce health care costs has led many leaders to become preoccupied with that objective. The happy reality is that improving clinical work processes can achieve both lower costs and higher quality, and we’ll discuss later what it takes to use IT systems to do this.

The pledge to improve quality should be more than words; it must be translated into visible practices. Geisinger, for one, has done just that. It has made its IT system part of a broad strategy to establish a surgical “warranty”: If complications arise within 90 days of a surgical procedure, the patient bears no additional cost to have the problem addressed. Starting with coronary artery bypass grafting (CABG), a team of clinicians developed a five-stage protocol that begins at the time of diagnosis and extends through the warranty period. The team initially identified 40 evidence-based guidelines that, according to a case study conducted by the Commonwealth Fund, were then embedded in the EHR system “through templates, order sets, and reminders,” driving up adherence from 59% to 100%. Furthermore, the integrated IT system improved communication among various clinical personnel (including physicians and advanced-practice nurses) to coordinate care for the patient. The results were significant: Postoperative mortality fell by two-thirds, post-acute-care spending decreased by nearly 50%, and the overall profitability of cardiac surgical services actually improved. Thanks to the success of the CABG program, the model was expanded to 14 other clinical conditions as well as to primary care, with a focus on the chronically ill.

NYU Langone Health has also backed up its words about improvement with action. When Dr. Robert Grossman became the center’s CEO and the dean of NYU School of Medicine in 2007, his first major initiative was to merge the school’s disparate information systems into a single data warehouse for both the hospital and the medical school. He stressed that the reason was to evaluate the system’s quality performance against external benchmarks and to support changes in administrative and clinical workflows. The resulting information increased the willingness of department chairs and administrators to challenge norms and to design and implement improvements. For example, the need to establish data fields in the IT system forced discussions about the definition of “excellence” and the best ways to assess the impact of frontline staff.

In 2016, NYU Langone received multiple national quality awards and was ranked by U.S. News & World Report among the top 10 hospitals in the United States, alongside the likes of Mayo Clinic, Cleveland Clinic, and Massachusetts General Hospital. The organization’s financial performance was similarly impressive: From 2007 to 2015, patient revenues more than doubled. NYU Langone now generates more than $220 million in operating profit, with an operating margin above 9%.

Notably, both Geisinger and NYU Langone found that achieving their quality goals did not come at the expense of financial performance. In fact, that also improved.

Making Data Collection Easier and Better

Having high-quality data at the right time is critical to tracking and measuring outcome improvement. Yet the data collection methods that most health care organizations use are inefficient, administratively burdensome, and likely to produce errors.

It is nearly impossible to speak to a group of clinicians without the conversation quickly turning to the time-consuming task of gathering medical information and entering it into a new IT system. A time and motion study published in the Annals of Internal Medicine in 2016 found that physicians spend one to two hours each night after their workday mostly on EHR tasks. This addition to their already heavy workload is contributing to the epidemic of physician burnout in the United States. And studies show that these problems cause physicians to take shortcuts such as copying and pasting notes and rapidly clicking through alerts, undermining the quality of the data that’s collected.

One trend is to shift the job of data collection from clinicians to patients.

In response, many organizations now employ medical scribes to enter information into EHR systems on behalf of clinicians. Yet the awkwardness of having a third party in an examination room—not to mention the added cost—makes the use of medical scribes controversial. Moreover, patient information that is gathered and entered into the system in this manner is prone to error.

The remedy: Shift data collection from an “event” that takes time and may be performed inaccurately to one that occurs “in the background” as clinicians and patients engage in their natural activities. The retail industry shows what’s possible. During the past few decades, retail has experienced two significant shifts with respect to who collects data and how. One example is checkout. Cashiers used to have to key the price of each item into a cash register. The introduction of bar code scanners sharply reduced the amount of time cashiers spent on that task, decreased data-entry mistakes, and greatly improved inventory management. Next, it became possible for many customers to scan their own items. Amazon is now taking things one step further by piloting its Amazon Go brick-and-mortar store, which eliminates checkout lines altogether. Instead, a passive data-collection system relies on computer vision, deep-learning algorithms, and sensors to automatically read what exiting customers have in their shopping baskets. Other retailers, including Kroger and Apple, are experimenting with analogous models.

In health care, a similar transition has begun but is moving slowly. One trend is to shift the job of collecting information from clinicians to patients. For example, after a primary care physician and a patient agree to address a clinical goal such as reducing blood pressure or blood sugar levels, they can enter that goal and the associated treatment plan into one of the health-monitoring apps offered by a number of companies. Patients then measure and report their activity and clinical information on a regular basis through the app. In some cases, data collected by the patient at home is automatically shared with his or her clinician. One example is the Hypertension Digital Medicine (HDM) program developed by Ochsner Health System. Through smartphone technology, blood pressure readings taken remotely by patients are fed directly into Ochsner’s EHR system, allowing physicians to review data between visits and course-correct a patient’s care plan. In a controlled trial reported in the American Journal of Medicine, 71% of participants brought their blood pressure down to the normal range within 90 days, compared to only 31% in the control group. The patients using HDM also reported 10% higher satisfaction with their health care.

Ultimately, the goal should be to move to truly passive data collection. Some pioneers are using passive collection to track operational issues related to workflow and resource utilization. Mayo Clinic developed a real-time location system (RTLS) that uses radio-frequency identification tags and sensors to track staff, patients, and equipment in its emergency department. This data allowed the department to better understand how care was delivered, identify operational barriers, and fix workflow issues. Then the information was used to develop systems for automatically collecting process-quality metrics (such as the time between a patient’s registering at the emergency department’s front desk and being put in a bed and seen by a clinician) and automatically reporting that information to government agencies and regulatory bodies. (See “How RFID Technology Improves Hospital Care.”)

Similarly, Rush University Medical Center in Chicago built a new outpatient practice with RTLS sensors for each room, clinician, patient, and piece of equipment. The system alerts staff when a patient leaves his or her exam room, eliminating the need for a practice manager to inform cleaning staff that a room needs to be serviced and preventing awkward interruptions of patients who are still dressing after an appointment. The time saved per patient is relatively small—perhaps just one minute. But over the course of a day, the total savings allow clinicians to see more patients, thereby improving productivity.

Over time, as passive-data-collection technologies become less costly and as clinicians and patients become more comfortable with them, the benefits will increase. This will help organizations justify the upfront cost and make it easier to overcome hurdles such as employee concerns about being monitored.

Turning Data into Actionable Information

Persuading clinicians to engage with a new IT system—and making it less burdensome for them to do so—is only half the battle. Turning the data collected into actionable information is also vital and requires senior leadership’s support. One of the most critical tasks for a leader is to set expectations for how the system will be structured. We’re talking not about the technical specifications but about organizational or cultural guidelines for using the data to support daily care-related activities.

A key step is establishing a core data warehouse for the organization and getting clinicians to understand its importance. In making the case to the staff of NYU Langone, Grossman emphasized the value of having a single source of truth across inpatient facilities, outpatient centers, and the medical school. In the process of developing the data warehouse, various parties at NYU Langone that were previously protective of their turf and information were forced to work together. Disputes over which of several data sources were accurate ended, and Grossman persuaded department chairs to start using tools such as data dashboards to assess what was (and was not) working across departments. Over time, as the benefits of the resulting transparency became apparent, clinical leaders’ initial skepticism about the IT system subsided. Departments would receive data on quality metrics for peer departments within NYU Langone (the rates of hospital-acquired infection in different parts of the hospital, patients’ length of stay, and so on), and they could then determine whether and how to change their own workflows.

Beyond encouraging the development of the necessary data infrastructure, senior leaders must also help establish a vision for how the collected data will be used to improve productivity. In many cases, pursuing the vision may involve supporting the creation of entirely new measures of performance. Sabermetrics, the mathematical analysis of baseball data, offers an example of how new measures—and technologies to collect and analyze the information related to them—can revolutionize an industry. Developed by statisticians (the most prominent of whom is Bill James), sabermetrics involves measuring aspects of the performance of individual players and calculating their contributions to team outcomes. Initially, gathering the data was tedious. As sabermetrics pioneers found homes in big-league clubs, however, data warehouses were developed to ease collection and analysis. Since 2015, high-resolution cameras and Doppler radar have been installed in all stadiums to glean previously hard-to-track information, such as speed and acceleration, to quantify a player’s defensive prowess. This in turn has led to the creation of entirely new metrics such as “wins above replacement,” which has become the standard, all-inclusive measure of an individual’s value to a team.

Compared to other industries, health care is in a relatively early stage of applying analytics. But the promise is great. For example, a small but growing number of health care organizations have built sophisticated systems that facilitate a deep understanding of costs and quick illustration of how innovations in providing care can improve both outcomes and costs. Intermountain was a pioneer in this realm, but others are following suit. Recently, University of Utah Health created a system with a 200 million–row database that yields information on key operational metrics such as cost per minute in the emergency room. According to a New York Times article, the organization has used this information to change operational workflows, reducing costs by 0.5% a year over the past few years, whereas other academic medical centers in its market area averaged annual increases of 2.9%.

Another important use of analytics is identifying unnecessary variation in treatment. A good example is New York–based Crystal Run Healthcare, a physician-owned multispecialty medical group that wanted to standardize treatment for 15 diagnoses that were common among its patients. As reported in a Health Affairs blog post, the organization first calculated the total annual cost per patient—segmented by professional, laboratory, radiology, and procedure charges—and then examined the cost of care across physicians so that each could see how he or she compared to colleagues on each dimension. With this information, Crystal Run analyzed the variation, determined its root cause, and instituted some new practices. Within a year, variation in treating 14 of the 15 diagnoses declined, saving over $4 million. By our estimates, that represented more than 10% of Crystal Run’s medical costs.

IT systems also offer health care organizations an opportunity to use predictive analytics to guide future clinical and operational decision making. Predictive models in precision medicine are being developed to correlate particular genetic mutations with specific forms of treatment. Although the use of precision medicine has been most prevalent and publicized in cancer care, it is now being applied in a wider range of specialties. For example, the GeneSight test can improve the management of depression by using a patient’s genetic information to predict a response to each of 26 available psychotropic medications.

Health care organizations can also use predictive analytics to make better operational decisions about allocating resources and setting priorities for clinical innovations. For instance, Massachusetts General Hospital identified cohorts of high-risk patients and developed a proactive care-management program around this population. The result: Hospitalizations of such patients dropped by 20%, their emergency-department visits declined by 13%, and the annual cost of caring for them fell by 7% over a three-year period. Mortality, physician satisfaction, and patient experience also improved.

Leaders must invest in dedicated information-technology and analytics staff.

Similarly, Boston Medical Center (BMC) used its health care IT system to predict when its inpatient units could expect a surge in demand. The tool estimated the number of discharges needed in 24 hours by incorporating current demand in the emergency department, demand predicted for the following day, surgical cases requiring an inpatient bed the following day, and current bed and physician capacity. In its first year of implementation, the number of “code yellows”—warnings that occur when there is not enough capacity to absorb expected demand—decreased by nearly 50%.

Predictive models have the potential to become increasingly useful, and that might happen soon. As natural-language processing and machine learning expand, more insights will surface from the wealth of data available in health care IT systems. (See “How Machine Learning Is Helping Us Predict Heart Disease and Diabetes.”)

Forging New Operating and Business Models

In its 2012 report Best Care at Lower Cost: The Path to Continuously Learning Health Care in America, the Institute of Medicine (IOM) highlighted ways to leverage IT to improve the U.S. health care system. Five years later, the first recommendation—the creation of digital infrastructure to capture clinical, care process, and financial data—is approaching completion.

The IOM’s second recommendation was to make data available to clinicians when they are deciding how to treat patients. This is being done sporadically. For example, Intermountain recently partnered with Cerner to create a flexible clinical-support system containing protocols that can be easily updated with the latest knowledge. To facilitate the right inputs, Intermountain’s clinical-development teams continuously monitor the various specialties’ evidence-based practice guidelines and are translating them into IT tools that assist medical personnel as they work.

Besides acquiring the necessary hardware and software, leaders must make complementary changes in their operating and business models to generate and capture value. Of primary importance is investment in dedicated information-technology and analytics staff—individuals tasked with managing the IT system or analyzing the data it contains. After installing its new EHR system, BMC expanded its permanent IT staff by more than 40% to manage and further develop its IT infrastructure. It also expanded its strategy team to seven FTEs who extract information from the vast troves of data. This group investigates and coordinates responses to key operational challenges, including managing inpatient bed capacity and reducing readmission rates. The savings for BMC amount to millions of dollars, far exceeding the cost of the FTEs.

Specialized teams of clinical personnel are also needed to translate the insights from the analyses into better ways of providing care. For example, BMC’s efforts to reduce code yellows involved the redesign of a bed-control team—a group of frontline staff and managers who track current inpatient demand and assess potential demand for the next day. The team members originally entered data into a simple spreadsheet; now they trigger a set of actions—such as adding ancillary support staff, alerting medical units, and opening additional beds—according to data and analysis from BMC’s IT systems.

The data that robust IT systems can provide also plays a crucial role in securing clinicians’ support for workflow changes. For example, when Grossman first shared a dashboard with NYU Langone’s clinical leaders, he heard complaints about the quality and consistency of data. Instead of letting that derail the project, he put the onus on the leaders, telling them to either work with IT to fix the data or accept the results. At the end of this process, the data was considered the single source of truth throughout the medical center and the basis for future analytical efforts. This made it easier for the organization to track metrics consistently. The dashboard now helps clinical leaders work with frontline staff to implement interventions to improve care delivery, track what is and isn’t working, persuade resistant clinicians to adopt new protocols, and reduce variation in treatment practices.

Beyond these workforce and operational changes, health care organizations will have to rethink their business models in order to capture the full value of their IT investments. One insight emerging from BMC’s analytics work was that certain inpatients needed rehabilitation care, which was expensive to provide within a hospital and could be better delivered by dedicated rehab centers. Moving these patients to outside facilities, however, was not easy: BMC’s position as a safety-net hospital in Boston meant that many of the people it served lacked insurance to cover rehabilitation care. Nonetheless, it was clear that keeping a rehab candidate in a hospital bed was not only suboptimal in terms of the patient’s health; it also limited BMC’s ability to admit other individuals needing inpatient beds. Accordingly, the hospital decided to pay the costs of treating uncovered patients in an outside rehabilitation facility. That benefited everyone: Rehab patients got more-appropriate care, and the hospital’s incurred costs were exceeded by the revenue from additional acute-care patients.

The change in BMC’s business model for rehabilitation patients is part of a broader shift in the United States away from the predominant fee-for-service model (under which clinicians get paid only when they see a patient for an office visit, a hospital admission, a test, or a procedure) and toward a value-based payment system that awards health care organizations a fixed fee per patient for a specified period or care episode. Both public and private payers are involved in this transformation. A well-functioning IT system that equips clinicians to improve the quality of their care and to understand and control their costs enables them to be proactive in accepting—even proposing—such arrangements with payers.

For example, Intermountain’s sophisticated IT system has played a major role in its development of a population-based business model that relies on value-based reimbursement. (See “The Case for Capitation,” HBR, July–August 2016.) One element of its model is its SelectHealth Share insurance plan, which offers large employers a three-year contract that limits premium increases to the consumer price index plus one percentage point a year—significantly below historic increases. As a greater proportion of its patient base shifts into models like this, Intermountain will be motivated to draw further on its substantial investments in IT, data analytics, protocol development, and workflow changes to improve the quality and lower the cost of its care delivery.

CONCLUSION

Policymakers and economists talk constantly about “bending the cost curve” in health care—turning a bloated, wasteful system that is growing more rapidly than the economy into one that spends much less and grows at a slower pace. We have seen IT bend the cost curve in many other industries. Our research suggests that the same can be true in health care, and there are pockets of success to point to. But the necessary work is only just beginning.

Big problems in IT infrastructure must be overcome. Many of today’s systems are too rigid: It’s not easy to customize them, enter and extract information, or continuously update them to incorporate new clinical protocols. Furthermore, different systems can’t readily share information, making it difficult to create a health record that contains a patient’s full medical history and is accessible to any clinician in any health care organization. The lack of information sharing is also an obstacle to pooling the huge amounts of anonymized patient data required to find new ways to treat diseases.

In addition to tackling these technological challenges, leaders of many health care organizations will have to do what their progressive peers have done: revamp so that they can use IT to produce better patient outcomes at a lower cost. The hurdles keeping organizations from harnessing their IT systems to transform health care are surmountable. What’s needed most is the will and support of an organization’s leaders and clinicians.

Article link: https://hbr.org/2017/11/the-it-transformation-health-care-needs

A version of this article appeared in the November–December 2017 issue (p.128–138) of Harvard Business Review.


Nikhil R. Sahni is a fellow at the Harvard economics department and a consultant at McKinsey & Company. Previously, he worked at the Health Policy Commission, an independent state agency in Massachusetts, and was senior director of strategy, planning, and operations at Kyruus, a health IT start-up.


Robert S. Huckman is the Albert J. Weatherhead III Professor of Business Administration at Harvard Business School, where he is the faculty chair of the HBS Health Care Initiative and chair of the MBA required curriculum.


Anuraag Chigurupati works in operations at Devoted Health, a start-up health plan. Previously he served as a policy director at the Massachusetts Health Policy Commission and was an engagement manager at McKinsey & Company.


David M. Cutler is the Otto Eckstein Professor of Applied Economics at the Harvard Kennedy School of Government and author of Your Money or Your Life: Strong Medicine for America’s Health Care System, published by Oxford University Press. He served on the Council of Economic Advisers and the National Economic Council during the Clinton Administration and was the senior health care advisor to the 2008 Obama Presidential campaign.

 

Your Company Doesn’t Need a Digital Strategy – MIT Sloan

Posted by timmreardon on 11/01/2017
Posted in: Uncategorized. Leave a comment

George Westerman   October 25, 2017

It seems that the whole business world is talking about digital transformation these days. Just look at the search trends for the term:

MITy

But while more people are talking more about digital transformation, it’s pretty clear that most are missing the point.

As sexy as it is to speculate about new technologies such as AI, robots, and the internet of things (IoT), the focus on technology can steer the conversation in a dangerous direction. Because when it comes to digital transformation, digital is not the answer. Transformation is.

Technology doesn’t provide value to a business. It never has (except for technology in products). Instead, technology’s value comes from doing business differently because technology makes it possible. E-commerce is not about the internet — it’s about selling differently. Analytics is not about databases and machine language algorithms — it’s about understanding customers better, or optimizing maintenance processes, or helping doctors diagnose cancer more accurately. IoT is not about RFID tags — it’s about radically synchronizing operations or changing business models.

In the digital world, a strategic focus on digital sends the wrong message. Creating a “digital strategy” can focus the organization in ways that don’t capture the true value of digital transformation. You don’t need a digital strategy. You need a better strategy, enabled by digital.

Better Strategy, Enabled by Digital: Real World Examples

This idea of focusing on transformation instead of technology extends to industries ranging from food to mining. Here are some industry-specific examples of what I mean:

  • In the paint industry, Asian Paints Ltd. transformed itself from a maker of coatings in 13 regions of India to a provider of coatings, painting services, design services, and home renovations in 17 countries. The technology the company’s leaders used wasn’t rocket science. The organization’s transformation was powered by Enterprise Resource Planning (ERP) software, call centers, mobile phones and tablets, analytics, and some machine learning and autonomous manufacturing. More important was strong leadership that reimagined how the company worked and continuously drove for new business opportunities.
  • In the banking industry, many companies are using chatbots — voice-activated software that is capable of engaging in conversation — to make customer service more efficient. Executives at DBS Bank Ltd. did something different. After improving the company’s processes, profitability, and customer satisfaction in high-cost Singapore, these leaders turned their focus to low-cost markets. Building on the knowledge and systems in Singapore, plus chatbots and other technologies, DBS has now entered India with a mobile phone-based banking model that requires no human intervention. This model can make money from small accounts that other banks would never find profitable enough to accept. While thinking about chatbots led many bankers to focus on reducing costs in existing channels, DBS’s focus on developing a model for low-cost new markets made chatbots, along with other technologies and significant organizational rethinking, into a much greater opportunity.
  • In the shipbuilding industry, while many companies use virtual reality (VR) technology to help designers envision complex product designs, leaders at Newport News Shipbuilding, a division of Huntington Ingalls Industries Inc., used the technology in other strategic ways. In an effort to speed the development of large U.S. Navy aircraft carriers, the Virginia-based manufacturer had invested in digital design tools and new product designs. But coordinating and motivating thousands of workers remained a challenge. It was tough for employees to understand how their work fit into the broader story of building a giant aircraft carrier or recognize how their work interacted with that of others. VR became a useful tool in the company’s broader effort to transform the work process: Now workers can don VR glasses to see what is behind a wall they are drilling or how a new bracket should look when mounted. They get warnings when a part is too heavy to lift without special equipment, and instructions on the correct sequence for installing components. And they can always see where their part of the work fits into the bigger project that they are collectively building.

VR by itself is an interesting digital tool. VR as part of a broader work transformation strategy is much more powerful.

Article link: http://sloanreview.mit.edu/article/your-company-doesnt-need-a-digital-strategy/

FDA Addresses Medical Device Security as Hospital Cyberattacks Increase – MeriTalk

Posted by timmreardon on 11/01/2017
Posted in: Uncategorized. Leave a comment

By: Morgan Lynch

Oct 31, 2017

As hospital chief information security officers report that their networks are under constant attempts at intrusion, the Food and Drug Administration (FDA) is taking a look at how medical devices can be used as access points into the larger networks.

“Let me state very very clearly that cybersecurity is not optional for medical devices,” said Suzanne Schwartz, associate director for Science and Strategic Partnerships at the FDA, at the Medical Device Safety and Security Fall Congress on Oct. 31. “Bake security in rather than bolting it on.”

Schwartz said that hospitals provide a large attack surface and at the same time, the medical sector has seen an increase in adversarial activity, including cyberattacks at MedStar Health in Washington, D.C.; Methodist Hospital in Henderson, Ky.; and Hollywood Presbyterian Medical Center, Calif.

The FDA uses a risk based framework determined by the severity of potential patient harm and the exploitability of the device to assess the feasibility of medical devices.

When medical device manufacturers experience an uncontrolled vulnerability the FDA requires them to first, find out if the vulnerability has caused an injury or death of a patient; second, put out an initial fix for the vulnerability within 30 days and follow up with a complete fix within 60 days; and third, participate in information sharing and analyze how the vulnerability occurred. If the company follows these steps, then they would receive incentives from the FDA; however, the FDA recognizes that sometimes this timeline cannot be followed due to obstacles.

“We do applaud all the tremendous efforts and the culture shifts that have happened to date,” Schwartz said.

Schwartz said that in two to three years, she hopes that the reporting of vulnerabilities will be commonplace and won’t result in as much backlash as reporting does now.

Schwartz said that the recent WannaCry and Petya attacks have brought some of the FDA’s concerns to the surface, such as what could happen if patient care is disrupted because hospitals lose access to life-saving devices like MRI machines, and CT scanners. Although the United States didn’t experience major disruption due to the Petya attack, hospitals in Europe witnessed cybersecurity intrusions that disrupted patient care.

“This allows us to consider some of the struggles with legacy systems and patchability,” Schwartz said.

Schwartz said that in order to mitigate large scale, multi-patient attacks, the FDA is telling manufacturers to take cybersecurity measures in every aspect of their products.

“One has to think about cybersecurity, address it, and build it into the management plan throughout the entire lifecycle,” Schwartz said.

Schwartz said that the most important part of the job is to instigate information sharing about medical device cybersecurity between manufacturers, doctors, patients, lab technologists, and business people. It’s difficult to find a common language about cybersecurity that resonates with all of the groups. From 2013 to present, the FDA has been focused on the information sharing aspect of the problem.

Schwartz said that doctors have to inform patients on their decisions to use a connected medical device based on the patients’ personal needs. For example, an 80-year-old might have different considerations about cybersecurity than a 30-year-old with a high profile job that could be a target for cyberattack. Schwartz said that the 30-year-old might chose to use a device without a remote connection, even if that connection has life-saving effects. Ultimately the patients have to have the information to decide what trade-offs they need to make, which provides a need for a comprehensive language about cybersecurity.

“We’ve got to be able to work together,” Schwartz said. “We have to be thinking about potential scenarios differently than we have in the past.”

About Morgan Lynch: Morgan Lynch is a Staff Reporter for MeriTalk covering Federal IT and K-12 Education.
Article link: https://www.meritalk.com/articles/fda-addresses-medical-device-security-as-hospital-cyberattacks-increase

All Management Is Change Management – HBR

Posted by timmreardon on 10/31/2017
Posted in: Uncategorized. Leave a comment

by Robert H. Schaffer

October 26, 2017
HBRx3

Maria Galybina/iStock

Change management is having its moment. There’s no shortage of articles, books, and talks on the subject. But many of these indicate that change management is some occult subspecialty of management, something that’s distinct from “managing” itself. This is curious given that, when you think about it, all management is the management of change.

If sales need to be increased, that’s change management. If a merger needs to be implemented, that’s change management. If a new personnel policy needs to be carried out, that’s change management. If the erosion of a market requires a new business model, that’s change management. Costs reduced? Productivity improved? New products developed? Change management.

The job of management always involves defining what changes need to be made and seeing that those changes take place. Even when the overall aim is stability, often there are still change goals: to reduce variability, cut costs, reduce the time required, or reduce turnover, for example. Once every job in a company is defined in terms of the changes to be made (both large and small), constant improvement can become the routine. Each innovation brings lessons that inform ongoing operations. The organization becomes a perpetual motion machine. Change never occurs as some sort of happening; it is part of everyday life.

Today’s change management movement has arisen in response to the difficulty companies have had in making constant, rapid improvement a routine aspect of work. Efforts to overcome this have led to the bifurcation of organizational life into ordinary times and change management times. As an increasing number of people take on the role and mindset of the change management professional, instead of striving to make innovation and improvement routine, they naturally encourage the treatment of change as something special. Managers start to view change as an extraordinary event that must be dealt with using change management techniques and special skills. And then it’s easy for people to become resistant to change.

What needs to change is that thinking. Leaders should view change not as an occasional disruptor but as the very essence of the management job. Setting tough goals, establishing processes to reach them, carrying out those processes and carefully learning from them — these steps should characterize the unending daily life of the organization at every level. More companies need to describe their work in terms of where they are trying to go in the next month or next quarter or next year.

How do you transition into such a company? The simple answer is to skip the months spent creating a comprehensive plan to make the company more change-oriented. Instead, focus on some important goals that are not being accomplished. Have teams carve out some sub-goals they will aim to achieve in a few months. They should be asked to test innovative steps they think will make a difference and to learn from the process. Maintaining a short time frame for these experiments permits the rapid testing of many modest innovations. Of course, these are steps to advance major strategic goals, but the emphasis should be on executing specific changes — with each success followed by a new round of more-ambitious goals to tackle.

For example, Gary Kaplan, president of XL Catlin’s North American Construction insurance, got his division started by formulating some major strategic goals. Then he launched a series of short-term “results-seeking projects,” each focused on achieving some aspect of those strategic goals. The projects aimed to have people experiment with innovation. As they tested ideas and learned from them, they incorporated new ways of working into the fabric of the organization.

Each year they carry out about 50 such results-seeking projects. Of those recently completed, one won $8 million of new business in a particular region of the country and another focused on reducing costs by redesigning a process to shift major tasks to lower-level, less-costly staff. Kaplan’s project-centric strategy allowed the company to bring in $1 billion of premium revenue five years after the launch of the division, and then another billion dollars in the next 18 months.

A critical part of this evolution is holding managers accountable for continuing improvements. As Kaplan told me, by making the operating managers responsible, they develop their capacity to lead continual change while their people develop the capacity to implement it. Specialist experts can be used for support, but actual management of the changes must remain in the hands of the managers. Because, as Kaplan so neatly demonstrates, change management is management, and management is change management.

Article link: https://hbr.org/2017/10/all-management-is-change-management


Robert H. Schaffer (rschaffer@schafferresults.com) is the founder of Schaffer Consulting in Stamford, Connecticut. He is also a coauthor of Rapid Results! How 100-Day Projects Build the Capacity for Large-Scale Change (Jossey-Bass, 2005).

The Innovation Health Care Really Needs: Help People Manage Their Own Health – HBR

Posted by timmreardon on 10/31/2017
Posted in: Uncategorized. Leave a comment

By Clayton M. Christensen Andrew Waldeck and Rebecca Fogg

 

October 30, 2017
HBRx1

Finally, health care, which has been largely immune to the forces of disruptive innovation, is beginning to change. Seeing the potential to improve health with simple primary-care strategies, some of the biggest incumbent players are inviting new entrants focused on empowering consumers into their highly regulated ecosystems, bringing down costs.

This shift is long overdue. Whereas new technologies, competitors, and business models have made products and services more affordable and accessible in media, finance, retail, and other sectors, U.S. health care keeps getting costlier. It is now by far the world’s most expensive system per capita, about twice that of the UK, Canada, and Australia, with chronic conditions such as diabetes and heart disease now accounting for more than 80% of total spending.

These astronomical costs are largely due to the way competition works in American health care. Employers and insurance companies — not end consumers — call the shots on what kind of care they will pay for. Large hospitals and physician practices, in turn, compete as if they’re in an arms race to attract payers, adding advanced diagnostic gear or new surgical wings to differentiate, driving up costs.

In most industries, disruption comes from startups. Yet almost all health care innovation funded since 2000 has been for sustaining the industry’s business model rather than disrupting it. Our analysis of Pitchbook Data shows that more than $200 billion has been poured into health care venture capital, mostly in biotech, pharma, and devices where advances typically make health care more sophisticated — and expensive. Less than 1% of those investments have focused on helping consumers to play a more active role in managing their own health, an area ripe for disruptive approaches.

The Whole-Person Approach

One big incumbent that has become more receptive to disruptive innovation is the insurance giant Humana. It has partnered with Boston-based startup Iora Health. Created by physician-entrepreneur Rushika Fernandopulle, Iora has advanced a disruptive primary-care model that uses relatively inexpensive, nonphysician health coaches to identify patients’ unhealthy habits and life styles and guide them toward better choices, before health problems arise or become serious. Since its founding in 2010, Iora has attracted more than $123 million in funding and now operates 37 practices serving 40,000 patients in 11 states. Iora trains health coaches to become the consumer’s advocate, acting as the quarterback of an extended care team that includes a physician. When visiting an Iora clinic, the patient meets with the coach to establish a health agenda before seeing the doctor. After the patient sees the physician, the health coach and patient debrief to ensure the patient can confidently pursue the agreed-upon health goals — for example, by adopting new health habits. The coach then serves as the patient’s connection with the Iora team, and creates accountability.

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Another feature of the Iora model is the morning huddle, when the entire care team invests an hour discussing the health status of the clinic’s population. Because Iora assumes full financial risk for its patients — it is payed a set fee per patient for a given period — the huddle prioritizes those who require the most attention and directs care around their needs.

To that end, Iora has developed a “worry score” methodology, which rates each patient on a 1-to-4 scale according to their health status and needs. Patients scoring a 4 require a specific action, such as immediate outreach from a health coach. If the patient’s outlook turns for the better, their worry score is lowered, a development celebrated by the team.

The Iora model has produced dramatic results in the management of chronic conditions. For example, an unpublished Iora study found that inpatient hospital admissions among a cohort of 1,176 Iora Medicare enrollees over an 18-month period decreased by 50%, emergency department visits decreased by 20%, and the total medical spend declined by 12% — this despite the cohort being sicker than average Medicare patients.

Other new entrants (Oak Street, Omada, Docent, ChenMed, WellMed, Mosaic, and Aledade, among them) are also successfully implementing Iora’s care-team and fee-for-value reimbursement model. What make the model disruptive — and able to get a foothold among mammoth incumbent provider organizations — is the combination of delivery and payment schemes (capitation is the predominant model); either alone would be unlikely to succeed.

Encouraging Disruption

Payers are getting onboard. A range of recent pilot programs modeled on Iora’s — by Aetna, CareMore, Dignity Health, Humana, Kaiser Permanente, and the Medicare Advantage program — are using coaches and home visits to substantially improve health and lower costs. One study found that providers participating in Medicare’s Independence at Home Demonstration saved $1,010 per beneficiary on average in the second year of the program, primarily by reducing hospital use.

Another care-team-based pilot, the Diabetes Prevention Program, reduced patients’ risk of developing the disease and saved Medicare an estimated $2,650 per beneficiary over a 15-month period by helping patients lose an average 5% of their body weight through changes in diet and exercise. The program is delivered through primary care groups, hospitals, YMCAs, and telehealth networks, and patients are supported by weekly, hourlong “maintenance sessions” with coaches.

While this care model has proved powerful at a small scale, to have significant impact on costs and outcomes nationally it must serve millions more consumers. To achieve that scale, we recommend the following strategies:

For care providers: Embrace the business model of extended care teams that include health coaches. We recommend starting with pilot programs under which hospitals and clinics take on financial risk for patients’ health. This way, care teams are incentivized to help patients stay healthy.

For payers and insurers: Private-public partnerships like Medicare Advantage (under which for-profit insurers administer plans paid for by the government) have become successful marketplaces that allow disruptive models. We recommend extending programs modeled on pilots like Independence at Home and the Diabetes Prevention Program across privately-funded insurance markets.

For legislators: Work to enable new models of care that lower costs by incenting individuals, payers, and providers to improve wellness, rather than treat disease after it manifests. This requires fostering a robust individual insurance market in which payers reward providers for helping patients stay healthy.

Article link: https://hbr.org/2017/10/the-innovation-health-care-really-needs-help-people-manage-their-own-health#comment-section


Clayton M. Christensen is the Kim B. Clark Professor of Business Administration at Harvard Business School.


Andrew Waldeck is a senior partner at the growth strategy consulting firm Innosight, where he leads the firm’s healthcare practice.


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