Effective Subject Representation based on Multi-omics Disease Networks using Graph Embedding.

Sundous Hussein, Thao Vu, Leslie Lange, Russell P Bowler, Katerina J Kechris, Farnoush Banaei-Kashani
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Abstract

The study of complex behavior of biological systems has become increasingly dependent on evolutionary network modeling. In particular, multi-omics networks capture interactions between biomolecules such as proteins and metabolites, providing a basis for predicting relationships between such biomolecules and various phenotypic traits of complex diseases. In this paper, we introduce an integrative framework that given a multi-omics network representing a cohort of subjects, learns expressive representations for network nodes, and combines the learned nodes representations with the biological profiles of individual subjects for enriched representation of the subjects. With extensive empirical evaluation using real-world multi-omics networks, we show that our proposed framework significantly outperforms existing and baseline methods in terms of subject representation accuracy, particularly when the multi-omics network representing the cohort is sparse and structured and therefore, more informative.

基于图嵌入的多组学疾病网络的有效主题表示。
生物系统复杂行为的研究越来越依赖于进化网络模型。特别是,多组学网络捕获生物分子(如蛋白质和代谢物)之间的相互作用,为预测这些生物分子与复杂疾病的各种表型性状之间的关系提供了基础。在本文中,我们引入了一个集成框架,该框架给定一个代表一组受试者的多组学网络,学习网络节点的表达表示,并将学习到的节点表示与个体受试者的生物学概况相结合,以丰富受试者的表示。通过使用真实世界的多组学网络进行广泛的实证评估,我们表明,我们提出的框架在受试者表示准确性方面显着优于现有和基线方法,特别是当代表队列的多组学网络稀疏且结构化时,因此信息更丰富。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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