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This Viewpoint discusses the potential overstatement of findings in 2 studies that used predictive risk scores to draw conclusions about precision preventive medicine and suggests that improvements to predictive methods are necessary before being more widely applied.
JAMA Internal Medicine – American Medical Association
Published: May 18, 2019
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