Research challenges in measuring data for population health to enable predictive modeling for improving healthcare

Author:

Schatz Bruce1,Marsh Clay2,Gustafson David3,Patrick Kevin4,Krishnan Jerry5,Kumar Santosh6,Contractor Noshir7

Affiliation:

1. University of Illinois at Urbana-Champaign, Urbana IL

2. Ohio State University Medical Center, Columbus, Ohio

3. University of Wisconsin at Madison

4. University of California at San Diego

5. University of Illinois Hospital and Health System, Chicago

6. University of Memphis, Memphis, Tennessee

7. Northwestern University, Evanston, Illinois

Abstract

At the core of the healthcare crisis is a fundamental lack of actionable data, needed to stratify individuals within populations, to predict which persons have which outcomes. A new health system with better health management will require better health measurement, to improve cost and quality. It is now possible to use new technologies to provide the rich datasets necessary for adequate health measurement, which enables new information systems for new health systems. This report is a summary of a workshop on Measuring Data for Population Health , sponsored by the NSF SmartHealth program with assistance from the NIH mHealth initiative, held on January 12--13, 2012 in Washington DC. There were 42 attendees, including invited researchers from academia, government and industry, plus program officers from NSF and NIH. The workshop had background talks by leaders in health systems and information systems, followed by breakout discussions on future challenges and opportunities in measuring and managing population health. This report describes the observations on what problems of health systems should be addressed and what solutions of information systems should be developed. The recommendations cover how new information technologies can enable new health systems, with support from future initiatives of federal programs. The workshop and its report identify research challenges that utilize new computing and information technologies to enable better measurement and management for practical healthcare. The measurement technologies focus on deeper monitoring of broader populations. The management technologies focus on utilizing new personal health records to provide personalized treatment guidelines, specialized for each population cohort. This would enable predictive modeling for health systems to support viable healthcare at acceptable cost and quality. A workshop website contains background and discussion notes: https://wiki.engr.illinois.edu/display/hiworkshop/NSF+Workshop+Population+Health

Funder

National Science Foundation

Publisher

Association for Computing Machinery (ACM)

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