Posts Tagged ‘improving health care’

Quality Guru Chosen to Head CMS

Tuesday, May 11th, 2010


Donald Berwick


Donald Berwick, a Harvard University professor and leading advocate for improving health-care quality and efficiency, has been named by President Obama as his choice to head the Centers for Medicare and Medicaid Services (CMS.) Berwick is well-known in Quality circles for aggressively advocating quality improvement in healthcare. Berwick, who specializes in health-care policy and pediatrics, has never led such a large organization. As head of the Boston-based Institute for Healthcare Improvement, however, he is known for persuading doctors and hospitals to adopt innovative methods for reducing medical errors. Dr. Berwick is author of numerous articles and books, including the classic work demonstrating the application of quality technology to health care issues, Curing Health Care. He is one of the nation’s leading authorities on health care quality and improvement. He is also Clinical Professor of Pediatrics and Health Care Policy at the Harvard Medical School, and Professor in the Department of Health Policy and Management at the Harvard School of Public Health.

If confirmed by the Senate, Berwick will face a number of daunting challenges. One is the sheer size of the CMS, which is about to become even larger. The agency, which is part of the Department of Health and Human Services, must oversee a massive expansion of Medicaid, the federal-state insurance program for the poor, with an estimated 16 million people expected to join its rolls by 2020. At the same time, Medicare, the insurance program for the elderly, will need to reduce payments to health-care providers by about $400 billion over 10 years without impacting the quality of coverage. Lean Six Sigma and Quality technologies provide an approach for doing this while minimizing the impact on value-added health care processes, operations and activities. Berwick’s familiarity with these areas provides reason for optimism or, at least, hope. This blog has frequently posted examples of poor quality in health care. Let’s hope that Dr. Berwick will have a positive impact at CMS.

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Preventing Hospital Falls

Friday, June 5th, 2009

Hospital processes produce many things. Most of them are desirable outcomes, such as healthy newborn babies, new hip joints, cancer-free patients and blood flowing freely through once-blocked coronary arteries. In other words, happy, healthy and satisfied patients. These results are why health care professionals chose their field. They generate revenue that patients are happy to pay because the value they receive exceeds the cost.

But not all of the things hospitals produce are desirable. Hospitals also produce botched surgeries, surgical sponges sutured into patients, X-rays that must be taken repeatedly, falls, infections and many other unwelcome errors. These things also result from hospital processes, but because they are not part of the planned outcome, we tend to overlook the fact that they, too, are caused. Instead, many health care professionals look upon these poor results as unfortunate occurrences that appear without cause. Of course, they tend to accept these events as inevitable, which in turn assures continual recurrence.

The quality profession’s major contribution to the world is the ability to scientifically investigate process variation. This helps people see which outcomes, pleasant and unpleasant, are created by the system itself, and which are created by factors outside the system. Armed with this knowledge, workers can determine which action will most likely improve the process. Improvement can be an increase in the desired outcome, a decrease in undesired outcomes, improved efficiency or any combination of these. The approach is generic. It can–and has been–applied to improving health care processes. Let’s look at an example.

Falls. As I waited outside my father’s hospital room for him to finish dressing to come home, I heard a noise. The sound was distinctive: a body hitting the hard floor. I rushed in, a nurse close at my heels. My father’s elderly roommate lay on the floor, embarrassed as he tried to stand. The nurse and I helped him to his feet.

“I’m OK,” he assured us. “I leaned on the table, but it rolled and I fell.” He pointed to the small cabinet between the two beds. The nurse nodded as she guided him to the chair.

“That happens all the time,” the nurse responded. “They should replace those darned tables. They’re on rollers to make it easier to move them for patient access and cleaning of the room, but they cause a lot of accidents.”

Luckily, only the gentleman’s pride was hurt. But as I continued to wait for my father, I took note of the fact that the nurse continued with her rounds. If she ever reported the event, it was long after it occurred. Chances are it was never reported.

Later that day, I phoned the hospital and asked if they kept data on falls. “Of course,” I was told. “Hospitals re-cord everything.”

Not quite everything, I thought to myself as I recalled the event earlier that day. Probably anything that caused an injury. Only part of the story, but worth looking at in any event. The hospital faxed me the data on falls (see Table 1).

All organizations keep such data. However, it’s in a form that’s seldom used. The data contains information, but not in a format that people can easily interpret. To help us glean some knowledge from this data, let’s consider three statistical process control tools: the histogram, run chart and control chart.

A histogram shows the empirical distribution of the falls data. It would show that the number of falls reported each month varies from zero to six, with four falls per month being the most common. The number of falls appears to be fairly consistent; no months contain a great number of falls.

Where the histogram is a snapshot, the run chart is a movie. In Figure 1 we see the falls data stretched out over time. Applying statistical tests produces no significant data patterns. The run chart helps put the data in a context, which helps prevent misconceptions caused by looking only at a portion of the data.

While run charts allow us to examine patterns, they are less helpful in analyzing outliers or freak values. Control charts provide control limits that help do this. Creating a control chart of the falls data requires first determining the number of patient care days (PCDs) for the hospital each month. After all, one way to reduce falls to zero is to admit no patients! The U chart in Figure 2 shows reported falls per 100 PCDs. It also includes a centerline showing the process average and an upper control limit on the number of falls per 1,000 PCDs. Note that the UCL rises and falls as the number of PCDs changes.

The control chart shows that the rate of falls is “in control.” This means that if nothing is done each month, the hospital can expect to average about two serious falls per 100 PCDs. Some months no people will fall and hurt themselves, other months a half-dozen or more injuries might occur. That is, unless someone takes the time to look into the reasons why people fall. When management decides to do that, a whole host of techniques can be brought to bear on the problem, such as cause-and-effect diagrams and Pareto analysis.

And maybe, just maybe, those darned tables will be replaced!

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