GPS-Net:基于网络正则化核学习发现预后路径模块

IF 8.1 1区 生物学 Q1 GENETICS & HEREDITY American journal of human genetics Pub Date : 2024-10-30 DOI:10.1016/j.ajhg.2024.10.004
Sijie Yao, Kaiqiao Li, Tingyi Li, Xiaoqing Yu, Pei Fen Kuan, Xuefeng Wang
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引用次数: 0

摘要

通过分析组织样本中的基因表达和其他分子特征,寻找能够预测患者预后的预后生物标志物,在很大程度上仍然集中在基于单基因或全局基因的研究方法上。以基因为中心的方法虽然具有基础性,但却无法捕捉到反映共调过程、通路改变和调控网络活动的高阶依赖性,而所有这些都是决定癌症等复杂疾病患者预后的关键。在此,我们介绍一种计算框架 GPS-Net,该框架通过整合整体通路结构和基因相互作用网络,填补了有效识别预后模块的空白。通过创新性地结合先进的多核学习技术和基于网络的正则化,所提出的方法不仅提高了生物标记物和通路识别的准确性,还显著降低了计算复杂性,这一点已在大量的模拟研究中得到证实。应用 GPS-Net,我们在一项癌症免疫疗法研究中确定了可预测患者预后的关键通路。总之,我们的方法提供了一个新颖的框架,使全基因组通路级预后分析变得既可行又可扩展,为精准基因组学的机制驱动和数据驱动方法提供了协同效应。
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GPS-Net: Discovering prognostic pathway modules based on network regularized kernel learning.

The search for prognostic biomarkers capable of predicting patient outcomes, by analyzing gene expression in tissue samples and other molecular profiles, remains largely focused on single-gene-based or global-gene-search approaches. Gene-centric approaches, while foundational, fail to capture the higher-order dependencies that reflect the activities of co-regulated processes, pathway alterations, and regulatory networks, all of which are crucial in determining the patient outcomes in complex diseases like cancer. Here, we introduce GPS-Net, a computational framework that fills the gap in efficiently identifying prognostic modules by incorporating the holistic pathway structures and the network of gene interactions. By innovatively incorporating advanced multiple kernel learning techniques and network-based regularization, the proposed method not only enhances the accuracy of biomarker and pathway identification but also significantly reduces computational complexity, as demonstrated by extensive simulation studies. Applying GPS-Net, we identified key pathways that are predictive of patient outcomes in a cancer immunotherapy study. Overall, our approach provides a novel framework that renders genome-wide pathway-level prognostic analysis both feasible and scalable, synergizing both mechanism-driven and data-driven methodologies for precision genomics.

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来源期刊
CiteScore
14.70
自引率
4.10%
发文量
185
审稿时长
1 months
期刊介绍: The American Journal of Human Genetics (AJHG) is a monthly journal published by Cell Press, chosen by The American Society of Human Genetics (ASHG) as its premier publication starting from January 2008. AJHG represents Cell Press's first society-owned journal, and both ASHG and Cell Press anticipate significant synergies between AJHG content and that of other Cell Press titles.
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