Clinical Decision Support Systems for the Practice of Evidence-based Medicine

Ida Sim(Harvard University), Paul Gorman(University of Oregon), Robert A. Greenes(Yale University), R. Brian Haynes(Harvard University), Bonnie Kaplan(Johns Hopkins Medicine), Harold P. Lehmann(Johns Hopkins University), Paul C. Tang(Oregon Health & Science University)
Journal of the American Medical Informatics Association
November 1, 2001
Cited by 749Open Access
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Abstract

BACKGROUND: The use of clinical decision support systems to facilitate the practice of evidence-based medicine promises to substantially improve health care quality. OBJECTIVE: To describe, on the basis of the proceedings of the Evidence and Decision Support track at the 2000 AMIA Spring Symposium, the research and policy challenges for capturing research and practice-based evidence in machine-interpretable repositories, and to present recommendations for accelerating the development and adoption of clinical decision support systems for evidence-based medicine. RESULTS: The recommendations fall into five broad areas--capture literature-based and practice-based evidence in machine--interpretable knowledge bases; develop maintainable technical and methodological foundations for computer-based decision support; evaluate the clinical effects and costs of clinical decision support systems and the ways clinical decision support systems affect and are affected by professional and organizational practices; identify and disseminate best practices for work flow-sensitive implementations of clinical decision support systems; and establish public policies that provide incentives for implementing clinical decision support systems to improve health care quality. CONCLUSIONS: Although the promise of clinical decision support system-facilitated evidence-based medicine is strong, substantial work remains to be done to realize the potential benefits.


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