Suppr超能文献

预测多种二元结局风险的临床预测模型:方法比较

Clinical prediction models to predict the risk of multiple binary outcomes: a comparison of approaches.

作者信息

Martin Glen P, Sperrin Matthew, Snell Kym I E, Buchan Iain, Riley Richard D

机构信息

Division of Informatics, Imaging and Data Science, Faculty of Biology, Medicine and Health, Manchester Academic Health Science Centre, University of Manchester, Manchester, UK.

Centre for Prognosis Research, School of Primary, Community and Social Care, Keele University, Staffordshire, UK.

出版信息

Stat Med. 2021 Jan 30;40(2):498-517. doi: 10.1002/sim.8787. Epub 2020 Oct 26.

Abstract

Clinical prediction models (CPMs) can predict clinically relevant outcomes or events. Typically, prognostic CPMs are derived to predict the risk of a single future outcome. However, there are many medical applications where two or more outcomes are of interest, meaning this should be more widely reflected in CPMs so they can accurately estimate the joint risk of multiple outcomes simultaneously. A potentially naïve approach to multi-outcome risk prediction is to derive a CPM for each outcome separately, then multiply the predicted risks. This approach is only valid if the outcomes are conditionally independent given the covariates, and it fails to exploit the potential relationships between the outcomes. This paper outlines several approaches that could be used to develop CPMs for multiple binary outcomes. We consider four methods, ranging in complexity and conditional independence assumptions: namely, probabilistic classifier chain, multinomial logistic regression, multivariate logistic regression, and a Bayesian probit model. These are compared with methods that rely on conditional independence: separate univariate CPMs and stacked regression. Employing a simulation study and real-world example, we illustrate that CPMs for joint risk prediction of multiple outcomes should only be derived using methods that model the residual correlation between outcomes. In such a situation, our results suggest that probabilistic classification chains, multinomial logistic regression or the Bayesian probit model are all appropriate choices. We call into question the development of CPMs for each outcome in isolation when multiple correlated or structurally related outcomes are of interest and recommend more multivariate approaches to risk prediction.

摘要

临床预测模型(CPMs)可以预测临床相关的结果或事件。通常,预后CPMs用于预测单一未来结果的风险。然而,在许多医学应用中,两个或更多的结果是人们所关注的,这意味着这一点应在CPMs中得到更广泛的体现,以便它们能够同时准确估计多个结果的联合风险。一种可能较为简单的多结果风险预测方法是分别为每个结果推导一个CPM,然后将预测风险相乘。只有当给定协变量时结果是条件独立的,这种方法才有效,而且它没有利用结果之间的潜在关系。本文概述了几种可用于为多个二元结果开发CPMs的方法。我们考虑了四种方法,其复杂性和条件独立性假设各不相同:即概率分类链、多项逻辑回归、多元逻辑回归和贝叶斯概率模型。将这些方法与依赖条件独立性的方法进行比较:单独的单变量CPMs和堆叠回归。通过模拟研究和实际例子,我们表明,用于多个结果联合风险预测的CPMs应该只使用对结果之间的残差相关性进行建模的方法来推导。在这种情况下,我们的结果表明概率分类链、多项逻辑回归或贝叶斯概率模型都是合适的选择。当多个相关或结构相关的结果受到关注时,我们对孤立地为每个结果开发CPMs提出质疑,并建议采用更多的多变量风险预测方法。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验