2021
DOI: 10.48550/arxiv.2105.09474
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Quantifying sources of uncertainty in drug discovery predictions with probabilistic models

Stanley E. Lazic,
Dominic P. Williams

Abstract: Knowing the uncertainty in a prediction is critical when making expensive investment decisions and when patient safety is paramount, but machine learning (ML) models in drug discovery typically provide only a single best estimate and ignore all sources of uncertainty. Predictions from these models may therefore be over-confident, which can put patients at risk and waste resources when compounds that are destined to fail are further developed. Probabilistic predictive models (PPMs) can incorporate uncertainty i… Show more

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