Key Laboratory of Symbol Computation and Knowledge Engineering of Ministry of Education, College of Computer Science and Technology, Jilin University, No. 2699, Qianjin Street, Changchun, 130012, China.
School of Computer Science, Northwestern Polytechnical University, Youyi West Road, Xi'an, 710072, China.
Brief Bioinform. 2024 Sep 23;25(6). doi: 10.1093/bib/bbae546.
The discovery of diagnostic and therapeutic biomarkers for complex diseases, especially cancer, has always been a central and long-term challenge in molecular association prediction research, offering promising avenues for advancing the understanding of complex diseases. To this end, researchers have developed various network-based prediction techniques targeting specific molecular associations. However, limitations imposed by reductionism and network representation learning have led existing studies to narrowly focus on high prediction efficiency within single association type, thereby glossing over the discovery of unknown types of associations. Additionally, effectively utilizing network structure to fit the interaction properties of regulatory networks and combining specific case biomarker validations remains an unresolved issue in cancer biomarker prediction methods. To overcome these limitations, we propose a multi-view learning framework, CeRVE, based on directed graph neural networks (DGNN) for predicting unknown type cancer biomarkers. CeRVE effectively extracts and integrates subgraph information through multi-view feature learning. Subsequently, CeRVE utilizes DGNN to simulate the entire regulatory network, propagating node attribute features and extracting various interaction relationships between molecules. Furthermore, CeRVE constructed a comparative analysis matrix of three cancers and adjacent normal tissues through The Cancer Genome Atlas and identified multiple types of potential cancer biomarkers through differential expression analysis of mRNA, microRNA, and long noncoding RNA. Computational testing of multiple types of biomarkers for 72 cancers demonstrates that CeRVE exhibits superior performance in cancer biomarker prediction, providing a powerful tool and insightful approach for AI-assisted disease biomarker discovery.
用于复杂疾病(尤其是癌症)的诊断和治疗生物标志物的发现一直是分子关联预测研究中的核心和长期挑战,为深入了解复杂疾病提供了有前景的途径。为此,研究人员已经开发了各种针对特定分子关联的基于网络的预测技术。然而,由于还原论和网络表示学习的局限性,现有的研究狭隘地关注于单一关联类型的高预测效率,从而忽略了未知类型关联的发现。此外,有效地利用网络结构来拟合调控网络的相互作用特性并结合特定病例生物标志物验证仍然是癌症生物标志物预测方法中的一个未解决的问题。为了克服这些限制,我们提出了一种基于有向图神经网络(DGNN)的多视图学习框架 CeRVE,用于预测未知类型的癌症生物标志物。CeRVE 通过多视图特征学习有效地提取和整合子图信息。随后,CeRVE 利用 DGNN 模拟整个调控网络,传播节点属性特征并提取分子之间的各种相互作用关系。此外,CeRVE 通过癌症基因组图谱构建了三种癌症和相邻正常组织的对比分析矩阵,并通过 mRNA、microRNA 和长非编码 RNA 的差异表达分析鉴定了多种潜在的癌症生物标志物。对 72 种癌症的多种类型生物标志物的计算测试表明,CeRVE 在癌症生物标志物预测中表现出优异的性能,为人工智能辅助疾病生物标志物发现提供了强大的工具和有见地的方法。