Heterogeneous graph attention network improves cancer multiomics integration

Sina Tabakhi, Charlotte Vandermeulen, Ian Sudbery, Haiping Lu
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Abstract

The increase in high-dimensional multiomics data demands advanced integration models to capture the complexity of human diseases. Graph-based deep learning integration models, despite their promise, struggle with small patient cohorts and high-dimensional features, often applying independent feature selection without modeling relationships among omics. Furthermore, conventional graph-based omics models focus on homogeneous graphs, lacking multiple types of nodes and edges to capture diverse structures. We introduce a Heterogeneous Graph ATtention network for omics integration (HeteroGATomics) to improve cancer diagnosis. HeteroGATomics performs joint feature selection through a multi-agent system, creating dedicated networks of feature and patient similarity for each omic modality. These networks are then combined into one heterogeneous graph for learning holistic omic-specific representations and integrating predictions across modalities. Experiments on three cancer multiomics datasets demonstrate HeteroGATomics' superior performance in cancer diagnosis. Moreover, HeteroGATomics enhances interpretability by identifying important biomarkers contributing to the diagnosis outcomes.
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异构图注意网络改进了癌症多组学整合
高维多组学数据的增加需要先进的整合模型来捕捉人类疾病的复杂性。基于图的深度学习整合模型尽管前景广阔,但在处理小规模患者队列和高维特征时却显得力不从心,通常只应用独立的特征选择,而不对 omics 之间的关系进行建模。此外,传统的基于图的 omics 模型侧重于同质图,缺乏多种类型的节点和边来捕捉多样化的结构。我们介绍了一种用于整合 omics 的异构图 ATtention 网络(HeteroGATomics),以改进癌症诊断。HeteroGATomics 通过多代理系统执行联合特征选择,为每种 omic 模式创建专门的特征和患者相似性网络。然后将这些网络组合成一个异构图,用于学习整体的肿瘤特异性表征和跨模态整合预测。在三个癌症多组学数据集上的实验证明了 HeteroGATomics 在癌症诊断方面的卓越性能。此外,HeteroGATomics 还能识别有助于诊断结果的重要生物标记物,从而提高可解释性。
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