Why a population health definition is key to success
As EHRs and other forms of technology come into play, establishing end goals are crucial in achieving desired healthcare aims.
Maybe the initial challenge of population health is deciding exactly what that phrase means.
Well before it became a catchphrase in health IT, population health was the province of academics who devised predictably academic definitions like “… the aggregate health outcome of health-adjusted life expectancy (quantity and quality) of a group of individuals, in an economic framework that balances the relative marginal returns from the multiple determinants of health.”
Originally created by and revisited in a Health Affairs blog post by Population Health Sciences Professor David Kindig, this definition makes specific application outside of academics difficult. Today, there are many more minds working on population health.
Are we trying to track the health of people in a geographic area? Is the primary concern the health of a particular ethnic group? Is economics the challenge in growing a client base enough to scale the costs of population health? Are we trying to track spreading disease?
Because the end goal determines where boundaries are drawn around subjects, the answer is ‘Yes’ to these and almost all population health objective questions.
The Affordable Care Act (ACA) and Accountable Care Organizations (ACOs) have made it more expensive to readmit patients soon after treatment, so the bottom line comes into play regardless of which question is being asked. But the spread of technology like electronic health records (EHRs) and other applications also makes it possible to use data in a variety of ways, perhaps many of which we have yet to discover and define.
“A critical component of population health policy has to be how the most health return can be produced from the next dollar invested, such as expanding insurance coverage or reducing smoking rates or increasing early childhood education,” Kindig writes.
More bang for the buck—everyone wants it.
Much of the insurers’ population health strategy is driven by two facts: The ACA squeezes per-patient profit margins, and maintenance of many diseases is expensive.
If you are a physician or hospital administrator, you will be concerned with chronic disease in a defined population from a causes-and-treatments, as well as a financial, perspective. To that end, hospitals are frequently using remote patient monitoring and analytics as embedded components in the care process. While much data is being gathered, there is a gap between the data we can compile and knowing what to do with it.
"Analytics provides a huge opportunity, but we lack the data science and medical algorithms," says Gregg Malkary, managing director of Spyglass Consulting Group. "We don't really know how to translate certain data because medical science is immature."
A high-profile example of what Malkary describes is the failure of Google Flu Trends (GFT), the company’s effort at tracking search data and alerting public health officials of flu outbreaks before the Centers for Disease Control could know about them.
“When Google quietly euthanized the program … it turned the poster child of big data into the poster child of the foibles of big data,” write political science professors David Lazer and Ryan Kennedy in Wired. “But GFT’s failure doesn’t erase the value of big data … The value of the data held by entities like Google is almost limitless, if used correctly.”
Google’s adventure becomes a lesson for those that come after, adding to acquired knowledge and contributing to later success. In many ways, that same ethic is at the heart of the optimism surrounding all these piles of data we are starting to acquire. Right now, the rhetoric is ahead of the reality, but the gap between the two is closing rapidly enough that there is reason to believe the use of big data in population health will become common.
But do we still need an accepted definition to work from?
Actually, according to Kindig, we need two.
While population health is often viewed as a mostly clinical measure, Kindig feels the terms population health management or population medicine better describe this physiological aspect of group wellness.
“The traditional population health definition can then be reserved for geographic populations, which are the concern of public health officials, community organizations, and business leaders,” he says, and which factor in contributors like education, employment and other non-clinical issues.
Geography on one side and whatever the determinant is—ethnicity, education, diet—on the other. It may not get us down the path to universal understanding, but it does provide the kind of flexibility that will probably come in handy as we look for new ways to analyze mounds of data in search of healthier populations.
Well before it became a catchphrase in health IT, population health was the province of academics who devised predictably academic definitions like “… the aggregate health outcome of health-adjusted life expectancy (quantity and quality) of a group of individuals, in an economic framework that balances the relative marginal returns from the multiple determinants of health.”
Originally created by and revisited in a Health Affairs blog post by Population Health Sciences Professor David Kindig, this definition makes specific application outside of academics difficult. Today, there are many more minds working on population health.
Are we trying to track the health of people in a geographic area? Is the primary concern the health of a particular ethnic group? Is economics the challenge in growing a client base enough to scale the costs of population health? Are we trying to track spreading disease?
Because the end goal determines where boundaries are drawn around subjects, the answer is ‘Yes’ to these and almost all population health objective questions.
The Affordable Care Act (ACA) and Accountable Care Organizations (ACOs) have made it more expensive to readmit patients soon after treatment, so the bottom line comes into play regardless of which question is being asked. But the spread of technology like electronic health records (EHRs) and other applications also makes it possible to use data in a variety of ways, perhaps many of which we have yet to discover and define.
“A critical component of population health policy has to be how the most health return can be produced from the next dollar invested, such as expanding insurance coverage or reducing smoking rates or increasing early childhood education,” Kindig writes.
More bang for the buck—everyone wants it.
Much of the insurers’ population health strategy is driven by two facts: The ACA squeezes per-patient profit margins, and maintenance of many diseases is expensive.
If you are a physician or hospital administrator, you will be concerned with chronic disease in a defined population from a causes-and-treatments, as well as a financial, perspective. To that end, hospitals are frequently using remote patient monitoring and analytics as embedded components in the care process. While much data is being gathered, there is a gap between the data we can compile and knowing what to do with it.
"Analytics provides a huge opportunity, but we lack the data science and medical algorithms," says Gregg Malkary, managing director of Spyglass Consulting Group. "We don't really know how to translate certain data because medical science is immature."
A high-profile example of what Malkary describes is the failure of Google Flu Trends (GFT), the company’s effort at tracking search data and alerting public health officials of flu outbreaks before the Centers for Disease Control could know about them.
“When Google quietly euthanized the program … it turned the poster child of big data into the poster child of the foibles of big data,” write political science professors David Lazer and Ryan Kennedy in Wired. “But GFT’s failure doesn’t erase the value of big data … The value of the data held by entities like Google is almost limitless, if used correctly.”
Google’s adventure becomes a lesson for those that come after, adding to acquired knowledge and contributing to later success. In many ways, that same ethic is at the heart of the optimism surrounding all these piles of data we are starting to acquire. Right now, the rhetoric is ahead of the reality, but the gap between the two is closing rapidly enough that there is reason to believe the use of big data in population health will become common.
But do we still need an accepted definition to work from?
Actually, according to Kindig, we need two.
While population health is often viewed as a mostly clinical measure, Kindig feels the terms population health management or population medicine better describe this physiological aspect of group wellness.
“The traditional population health definition can then be reserved for geographic populations, which are the concern of public health officials, community organizations, and business leaders,” he says, and which factor in contributors like education, employment and other non-clinical issues.
Geography on one side and whatever the determinant is—ethnicity, education, diet—on the other. It may not get us down the path to universal understanding, but it does provide the kind of flexibility that will probably come in handy as we look for new ways to analyze mounds of data in search of healthier populations.
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