Document detail
ID

oai:arXiv.org:2412.17240

Topic
Computer Science - Computational E... Computer Science - Artificial Inte... Statistics - Machine Learning
Author
Zang, Yilong Ren, Lingfei Li, Yue Wang, Zhikang Selby, David Antony Wang, Zheng Vollmer, Sebastian Josef Yin, Hongzhi Song, Jiangning Wu, Junhang
Category

Computer Science

Year

2024

listing date

12/25/2024

Keywords
networks perspective science cancer genes spectral graph
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Abstract

Graph neural networks (GNNs) have shown promise in integrating protein-protein interaction (PPI) networks for identifying cancer genes in recent studies.

However, due to the insufficient modeling of the biological information in PPI networks, more faithfully depiction of complex protein interaction patterns for cancer genes within the graph structure remains largely unexplored.

This study takes a pioneering step toward bridging biological anomalies in protein interactions caused by cancer genes to statistical graph anomaly.

We find a unique graph anomaly exhibited by cancer genes, namely weight heterogeneity, which manifests as significantly higher variance in edge weights of cancer gene nodes within the graph.

Additionally, from the spectral perspective, we demonstrate that the weight heterogeneity could lead to the "flattening out" of spectral energy, with a concentration towards the extremes of the spectrum.

Building on these insights, we propose the HIerarchical-Perspective Graph Neural Network (HIPGNN) that not only determines spectral energy distribution variations on the spectral perspective, but also perceives detailed protein interaction context on the spatial perspective.

Extensive experiments are conducted on two reprocessed datasets STRINGdb and CPDB, and the experimental results demonstrate the superiority of HIPGNN.

;Comment: It has been accepted by the AAAI 2025 conference

Zang, Yilong,Ren, Lingfei,Li, Yue,Wang, Zhikang,Selby, David Antony,Wang, Zheng,Vollmer, Sebastian Josef,Yin, Hongzhi,Song, Jiangning,Wu, Junhang, 2024, Rethinking Cancer Gene Identification through Graph Anomaly Analysis

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