| Literature DB >> 33075380 |
Jonathan Alvarsson1, Staffan Arvidsson McShane1, Ulf Norinder2, Ola Spjuth3.
Abstract
One of the challenges with predictive modeling is how to quantify the reliability of the models' predictions on new objects. In this work we give an introduction to conformal prediction, a framework that sits on top of traditional machine learning algorithms and which outputs valid confidence estimates to predictions from QSAR models in the form of prediction intervals that are specific to each predicted object. For regression, a prediction interval consists of an upper and a lower bound. For classification, a prediction interval is a set that contains none, one, or many of the potential classes. The size of the prediction interval is affected by a user-specified confidence/significance level, and by the nonconformity of the predicted object; i.e., the strangeness as defined by a nonconformity function. Conformal prediction provides a rigorous and mathematically proven framework for in silico modeling with guarantees on error rates as well as a consistent handling of the models' applicability domain intrinsically linked to the underlying machine learning model. Apart from introducing the concepts and types of conformal prediction, we also provide an example application for modeling ABC transporters using conformal prediction, as well as a discussion on general implications for drug discovery.Entities:
Keywords: Applicability domain; Confidence; Conformal prediction; Predictive modeling; QSAR
Mesh:
Year: 2020 PMID: 33075380 DOI: 10.1016/j.xphs.2020.09.055
Source DB: PubMed Journal: J Pharm Sci ISSN: 0022-3549 Impact factor: 3.534