Beyond digital twins: the role of foundation models in enhancing the interpretability of multiomics modalities in precision medicine.

IF 2.8 4区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY
Sakhaa Alsaedi, Xin Gao, Takashi Gojobori
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引用次数: 0

Abstract

Medical digital twins (MDTs) are virtual representations of patients that simulate the biological, physiological, and clinical processes of individuals to enable personalized medicine. With the increasing complexity of omics data, particularly multiomics, there is a growing need for advanced computational frameworks to interpret these data effectively. Foundation models (FMs), large-scale machine learning models pretrained on diverse data types, have recently emerged as powerful tools for improving data interpretability and decision-making in precision medicine. This review discusses the integration of FMs into MDT systems, particularly their role in enhancing the interpretability of multiomics data. We examine current challenges, recent advancements, and future opportunities in leveraging FMs for multiomics analysis in MDTs, with a focus on their application in precision medicine.

超越数字双胞胎:基础模型在提高精确医学中多组学模式的可解释性中的作用。
医学数字双胞胎(mdt)是患者的虚拟表示,模拟个体的生物、生理和临床过程,以实现个性化医疗。随着组学数据,特别是多组学数据的日益复杂,越来越需要先进的计算框架来有效地解释这些数据。基础模型(FMs)是在不同数据类型上进行预训练的大规模机器学习模型,最近已成为改善精准医疗中数据可解释性和决策的强大工具。这篇综述讨论了FMs与MDT系统的整合,特别是它们在提高多组学数据可解释性方面的作用。我们研究了利用FMs在MDTs中进行多组学分析的当前挑战、最新进展和未来机遇,重点是它们在精准医学中的应用。
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来源期刊
FEBS Open Bio
FEBS Open Bio BIOCHEMISTRY & MOLECULAR BIOLOGY-
CiteScore
5.10
自引率
0.00%
发文量
173
审稿时长
10 weeks
期刊介绍: FEBS Open Bio is an online-only open access journal for the rapid publication of research articles in molecular and cellular life sciences in both health and disease. The journal''s peer review process focuses on the technical soundness of papers, leaving the assessment of their impact and importance to the scientific community. FEBS Open Bio is owned by the Federation of European Biochemical Societies (FEBS), a not-for-profit organization, and is published on behalf of FEBS by FEBS Press and Wiley. Any income from the journal will be used to support scientists through fellowships, courses, travel grants, prizes and other FEBS initiatives.
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