Searching the clinical fitness landscape

Widespread unexplained variations in clinical practices and patient outcomes suggest major opportunities for improving the quality and safety of medical care. However, there is little consensus regarding how to best identify and disseminate healthcare improvements and a dearth of theory to guide the...

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Published inPloS one Vol. 7; no. 11; p. e49901
Main Authors Eppstein, Margaret J, Horbar, Jeffrey D, Buzas, Jeffrey S, Kauffman, Stuart A
Format Journal Article
LanguageEnglish
Published United States Public Library of Science 14.11.2012
Public Library of Science (PLoS)
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Summary:Widespread unexplained variations in clinical practices and patient outcomes suggest major opportunities for improving the quality and safety of medical care. However, there is little consensus regarding how to best identify and disseminate healthcare improvements and a dearth of theory to guide the debate. Many consider multicenter randomized controlled trials to be the gold standard of evidence-based medicine, although results are often inconclusive or may not be generally applicable due to differences in the contexts within which care is provided. Increasingly, others advocate the use "quality improvement collaboratives", in which multi-institutional teams share information to identify potentially better practices that are subsequently evaluated in the local contexts of specific institutions, but there is concern that such collaborative learning approaches lack the statistical rigor of randomized trials. Using an agent-based model, we show how and why a collaborative learning approach almost invariably leads to greater improvements in expected patient outcomes than more traditional approaches in searching simulated clinical fitness landscapes. This is due to a combination of greater statistical power and more context-dependent evaluation of treatments, especially in complex terrains where some combinations of practices may interact in affecting outcomes. The results of our simulations are consistent with observed limitations of randomized controlled trials and provide important insights into probable reasons for effectiveness of quality improvement collaboratives in the complex socio-technical environments of healthcare institutions. Our approach illustrates how modeling the evolution of medical practice as search on a clinical fitness landscape can aid in identifying and understanding strategies for improving the quality and safety of medical care.
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Competing Interests: The authors have declared that no competing interests exist.
Conceived and designed the experiments: MJE JDH JSB SAK. Performed the experiments: MJE. Analyzed the data: MJE JDH JSB. Wrote the paper: MJE JDH JSB SAK. Designed the software models used in the study: MJE JSB.
ISSN:1932-6203
1932-6203
DOI:10.1371/journal.pone.0049901