Multimodal Learning for Multi-Omics: A Survey

Sina Tabakhi, M. N. I. Suvon, Pegah Ahadian, Haiping Lu
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引用次数: 1

Abstract

With advanced imaging, sequencing, and profiling technologies, multiple omics data become increasingly available and hold promises for many healthcare applications such as cancer diagnosis and treatment. Multimodal learning for integrative multi-omics analysis can help researchers and practitioners gain deep insights into human diseases and improve clinical decisions. However, several challenges are hindering the development in this area, including the availability of easily accessible open-source tools. This survey aims to provide an up-to-date overview of the data challenges, fusion approaches, datasets, and software tools from several new perspectives. We identify and investigate various omics data challenges that can help us understand the field better. We categorize fusion approaches comprehensively to cover existing methods in this area. We collect existing open-source tools to facilitate their broader utilization and development. We explore a broad range of omics data modalities and a list of accessible datasets. Finally, we summarize future directions that can potentially address existing gaps and answer the pressing need to advance multimodal learning for multi-omics data analysis.
面向多组学的多模态学习研究综述
随着先进的成像、测序和分析技术的发展,多组学数据变得越来越可用,并为许多医疗保健应用(如癌症诊断和治疗)带来了希望。用于综合多组学分析的多模式学习可以帮助研究人员和从业人员深入了解人类疾病并改善临床决策。然而,一些挑战阻碍了这一领域的发展,包括易于访问的开源工具的可用性。本调查旨在从几个新的角度提供数据挑战、融合方法、数据集和软件工具的最新概述。我们识别和调查各种组学数据挑战,可以帮助我们更好地了解该领域。我们对融合方法进行了全面的分类,以涵盖该领域的现有方法。我们收集现有的开源工具,以促进它们更广泛的利用和开发。我们探索了广泛的组学数据模式和一系列可访问的数据集。最后,我们总结了可能解决现有差距的未来方向,并回答了推进多组学数据分析的多模态学习的迫切需求。
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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