A multi-omics integration framework using multi-label guided learning and multi-scale fusion.

IF 7.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS
Yuze Li, Yinghe Wang, Tao Liang, Ying Li, Wei Du
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引用次数: 0

Abstract

The rapid development of high-throughput sequencing technologies has generated vast amounts of omics data, making multi-omics integration a crucial approach for understanding complex diseases. Despite the introduction of various multi-omics integration methods in recent years, existing approaches still have limitations, primarily in their reliance on manual feature selection, restricted applicability, and inability to comprehensively capture both inter-sample and cross-omics interactions. To address these challenges, we propose mmMOI, an end-to-end multi-omics integration framework that incorporates multi-label guided learning and multi-scale attention fusion. mmMOI directly processes raw high-dimensional omics data without requiring manual feature selection, thereby enhancing model interpretability and eliminating biases introduced by feature preselection. First, we introduce a multi-label guided multi-view graph neural network, which enables the model to adaptively learn omics data representations across different datasets, thereby improving generalizability and stability. Second, we design a multi-scale attention fusion network, which integrates global attention and local attention. This dual-attention mechanism allows mmMOI to more accurately integrate multi-omics data, enhance cross-omics feature representations, and improve classification performance. Experimental results demonstrate that mmMOI significantly outperforms state-of-the-art methods in classification tasks, exhibiting high stability and adaptability across diverse biological contexts and sequencing technologies. Additionally, mmMOI successfully identifies key disease-associated biomarkers, further enhancing its biological interpretability and practical relevance. The source code, datasets, and detailed hyperparameter configurations for mmMOI are available at https://github.com/mlcb-jlu/mmMOI.

基于多标签引导学习和多尺度融合的多组学集成框架。
高通量测序技术的快速发展产生了大量的组学数据,使得多组学整合成为理解复杂疾病的重要途径。尽管近年来引入了各种多组学集成方法,但现有方法仍然存在局限性,主要是依赖于人工特征选择,适用性有限,无法全面捕获样本间和组学间的相互作用。为了解决这些挑战,我们提出了mmMOI,这是一个端到端的多组学集成框架,结合了多标签引导学习和多尺度注意力融合。mmMOI直接处理原始高维组学数据,无需人工特征选择,从而增强了模型的可解释性,消除了特征预选带来的偏差。首先,我们引入了一个多标签引导的多视图图神经网络,使模型能够自适应地学习不同数据集的组学数据表示,从而提高了泛化性和稳定性。其次,我们设计了一个多尺度注意力融合网络,将全局注意力和局部注意力融合在一起。这种双注意机制允许mmMOI更准确地集成多组学数据,增强跨组学特征表示,提高分类性能。实验结果表明,mmMOI在分类任务中明显优于最先进的方法,在不同的生物环境和测序技术中表现出高度的稳定性和适应性。此外,mmMOI成功识别了关键的疾病相关生物标志物,进一步增强了其生物学可解释性和实际相关性。可以从https://github.com/mlcb-jlu/mmMOI获得mmMOI的源代码、数据集和详细的超参数配置。
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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来源期刊
Briefings in bioinformatics
Briefings in bioinformatics 生物-生化研究方法
CiteScore
13.20
自引率
13.70%
发文量
549
审稿时长
6 months
期刊介绍: Briefings in Bioinformatics is an international journal serving as a platform for researchers and educators in the life sciences. It also appeals to mathematicians, statisticians, and computer scientists applying their expertise to biological challenges. The journal focuses on reviews tailored for users of databases and analytical tools in contemporary genetics, molecular and systems biology. It stands out by offering practical assistance and guidance to non-specialists in computerized methodologies. Covering a wide range from introductory concepts to specific protocols and analyses, the papers address bacterial, plant, fungal, animal, and human data. The journal's detailed subject areas include genetic studies of phenotypes and genotypes, mapping, DNA sequencing, expression profiling, gene expression studies, microarrays, alignment methods, protein profiles and HMMs, lipids, metabolic and signaling pathways, structure determination and function prediction, phylogenetic studies, and education and training.
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