Literature DB >> 27247223

Assessing the Clinical Impact of Risk Prediction Models With Decision Curves: Guidance for Correct Interpretation and Appropriate Use.

Kathleen F Kerr1, Marshall D Brown2, Kehao Zhu2, Holly Janes2.   

Abstract

The decision curve is a graphical summary recently proposed for assessing the potential clinical impact of risk prediction biomarkers or risk models for recommending treatment or intervention. It was applied recently in an article in Journal of Clinical Oncology to measure the impact of using a genomic risk model for deciding on adjuvant radiation therapy for prostate cancer treated with radical prostatectomy. We illustrate the use of decision curves for evaluating clinical- and biomarker-based models for predicting a man's risk of prostate cancer, which could be used to guide the decision to biopsy. Decision curves are grounded in a decision-theoretical framework that accounts for both the benefits of intervention and the costs of intervention to a patient who cannot benefit. Decision curves are thus an improvement over purely mathematical measures of performance such as the area under the receiver operating characteristic curve. However, there are challenges in using and interpreting decision curves appropriately. We caution that decision curves cannot be used to identify the optimal risk threshold for recommending intervention. We discuss the use of decision curves for miscalibrated risk models. Finally, we emphasize that a decision curve shows the performance of a risk model in a population in which every patient has the same expected benefit and cost of intervention. If every patient has a personal benefit and cost, then the curves are not useful. If subpopulations have different benefits and costs, subpopulation-specific decision curves should be used. As a companion to this article, we released an R software package called DecisionCurve for making decision curves and related graphics.
© 2016 by American Society of Clinical Oncology.

Entities:  

Mesh:

Year:  2016        PMID: 27247223      PMCID: PMC4962736          DOI: 10.1200/JCO.2015.65.5654

Source DB:  PubMed          Journal:  J Clin Oncol        ISSN: 0732-183X            Impact factor:   44.544


  22 in total

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Journal:  J Am Soc Nephrol       Date:  2014-03-07       Impact factor: 10.121

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  126 in total

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5.  The Importance of Uncertainty and Opt-In v. Opt-Out: Best Practices for Decision Curve Analysis.

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Journal:  Med Decis Making       Date:  2019-05-20       Impact factor: 2.583

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7.  In-depth mining of clinical data: the construction of clinical prediction model with R.

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