Uncertainty and Value of Information in Risk Prediction Modeling
Mohsen Sadatsafavi, Tae Yoon Lee, Paul Gustafson

TL;DR
This paper applies Value of Information methodology within a Bayesian framework to quantify the impact of prediction uncertainty on decision-making in risk prediction models, using a case study on myocardial infarction mortality.
Contribution
It extends EVPI to net benefit calculations in risk prediction and introduces bootstrap methods for EVPI estimation, providing a novel decision-theoretic approach.
Findings
EVPI decreases with larger sample sizes.
At a 2% risk threshold, EVPI was 0.0005, indicating modest potential benefit.
EVPI is negligible at very high risk thresholds (>85%).
Abstract
Background: Due to the finite size of the development sample, predicted probabilities from a risk prediction model are inevitably uncertain. We apply Value of Information methodology to evaluate the decision-theoretic implications of prediction uncertainty. Methods: Adopting a Bayesian perspective, we extend the definition of the Expected Value of Perfect Information (EVPI) from decision analysis to net benefit calculations in risk prediction. In the context of model development, EVPI is the expected gain in net benefit by using the correct predictions as opposed to predictions from a proposed model. We suggest bootstrap methods for sampling from the posterior distribution of predictions for EVPI calculation using Monte Carlo simulations. In a case study, we used subsets of data of various sizes from a clinical trial for predicting mortality after myocardial infarction to show how…
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