新 Preprint 發表於 biorxiv


Date
Jul 21, 2024

Title

DriverOmicsNet-An Integrated Graph Convolutional Network for Multi-Omics Exploration of Cancer Driver Genes

Abstract

Background: Cancer is a complex and heterogeneous group of diseases driven by genetic mutations and molecular changes. Identifying and characterizing cancer driver genes (CDgs) is crucial for understanding cancer biology and guiding precision oncology. Integrating multi-omics data can reveal the intricate molecular interactions underlying cancer progression and treatment responses.

Methods: We developed a graph convolutional network (GCN) framework, DriverOmicsNet, that integrates multi-omics data using STRING protein-protein interaction (PPI) networks and correlation-based weighted correlation network analysis (WGCNA). We applied this framework to 15 cancer types, analyzing 5555 tumor samples to predict cancer-related features such as homologous recombination deficiency (HRD), cancer stemness, immune clusters, tumor stage, and survival outcomes.

Findings: DriverOmicsNet demonstrated superior predictive accuracy and model performance metrics across all target labels when compared with GCN models based on STRING network alone. Gene expression emerged as the most significant feature, reflecting the dynamic and functional state of cancer cells. The combined use of STRING PPI and WGCNA networks enhanced the identification of key driver genes and their interactions.

Interpretation: Our study highlights the effectiveness of using GCNs to integrate multi-omics data for precision oncology. The integration of STRING PPI and WGCNA networks provides a comprehensive framework that improves predictive power and facilitates the understanding of cancer biology, paving the way for more tailored treatments.

Yang-Hong Dai 戴揚紘
Yang-Hong Dai 戴揚紘
主治醫師

我的研究興趣為結合數據分析來探討各種癌症生物學。

Po-Chien Shen 沈伯鍵
Po-Chien Shen 沈伯鍵
主治醫師

我的研究興趣為結合影像分析及影像組學改善放射治療,提升治療的精準性與效果。