Activity Number:
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168
- Risk analysis and related topics
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Type:
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Contributed
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Date/Time:
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Tuesday, August 10, 2021 : 10:00 AM to 11:50 AM
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Sponsor:
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Section on Risk Analysis
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Abstract #319172
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Title:
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The Evaluation of Joint Predicted Risks from an Analysis of Semi-Competing Risks Data in the Presence of Censoring
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Author(s):
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Catherine Lee* and Sebastien Haneuse
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Companies:
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Kaiser Permanente, Division of Research and Harvard TH Chan School of Public Health
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Keywords:
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Semi-competing risks;
multi-category outcomes;
multi-category risk prediction;
hypervolume under the manifold;
extension of AUC
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Abstract:
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We outline a unified approach to risk prediction and evaluation of predictive accuracy using semi-competing risks data (nonterminal event subject to dependent censoring by a terminal event). We propose to calculate and evaluate patient-specific absolute risk profiles for both events simultaneously. At any given point in time, a patient will have experienced: both events; the non-terminal event but not the terminal event; the terminal event without the non-terminal event; or neither event. We consider the task of prediction as being one where we seek to classify patients into one of four categories based on a vector of probabilities that add to 1. While the evaluation of predictions is well-established when the outcome is binary, less has been published on methods for multi-category outcomes and none specifically in the semi-competing risk setting. We propose a framework for evaluation of predictive performance for risk profiles based on the hypervolume under the manifold (HUM), an extension of the area-under-the-curve statistic for univariate binary outcomes. We propose a method for estimating the HUM statistic accounting for censoring when the true outcome category is unknown.
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Authors who are presenting talks have a * after their name.