基因组医学中使用保形预测的可靠机器学习模型。

IF 2.8 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Frontiers in bioinformatics Pub Date : 2025-02-24 eCollection Date: 2025-01-01 DOI:10.3389/fbinf.2025.1507448
Christina Papangelou, Konstantinos Kyriakidis, Pantelis Natsiavas, Ioanna Chouvarda, Andigoni Malousi
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引用次数: 0

摘要

机器学习和基因组医学是为疾病诊断、风险分层、量身定制治疗和不良反应预测提供个性化医疗服务的研究支柱。然而,在医疗保健服务中潜在的预测错误可能会造成危及生命的影响,这引起了人们对这些应用是否在临床环境中具有实际益处的合理怀疑。适形预测通过量化预测模型的不确定性,为解决这些问题提供了一个通用的框架。在这篇前瞻性综述中,我们探讨了基因组医学中一致性模型的潜在应用,并讨论了将基因组医学应用与临床实践相结合的挑战。我们还展示了二元转导模型和基于回归的归纳模型在预测药物反应方面的影响,以及多类归纳预测器在解决分子亚型分布变化方面的性能。主要结论是,随着机器学习和基因组医学越来越多地渗透到医疗保健服务中,适形预测有可能克服当前方法的安全限制,并可以有效地集成到临床环境中的不确定性应用中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliable machine learning models in genomic medicine using conformal prediction.

Machine learning and genomic medicine are the mainstays of research in delivering personalized healthcare services for disease diagnosis, risk stratification, tailored treatment, and prediction of adverse effects. However, potential prediction errors in healthcare services can have life-threatening impact, raising reasonable skepticism about whether these applications have practical benefit in clinical settings. Conformal prediction offers a versatile framework for addressing these concerns by quantifying the uncertainty of predictive models. In this perspective review, we investigate potential applications of conformalized models in genomic medicine and discuss the challenges towards bridging genomic medicine applications with clinical practice. We also demonstrate the impact of a binary transductive model and a regression-based inductive model in predicting drug response as well as the performance of a multi-class inductive predictor in addressing distribution shifts in molecular subtyping. The main conclusion is that as machine learning and genomic medicine are increasingly infiltrating healthcare services, conformal prediction has the potential to overcome the safety limitations of current methods and could be effectively integrated into uncertainty-informed applications within clinical environments.

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