2024
DOI: 10.1038/s41467-024-50426-6
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CGMega: explainable graph neural network framework with attention mechanisms for cancer gene module dissection

Hao Li,
Zebei Han,
Yu Sun
et al.

Abstract: Cancer is rarely the straightforward consequence of an abnormality in a single gene, but rather reflects a complex interplay of many genes, represented as gene modules. Here, we leverage the recent advances of model-agnostic interpretation approach and develop CGMega, an explainable and graph attention-based deep learning framework to perform cancer gene module dissection. CGMega outperforms current approaches in cancer gene prediction, and it provides a promising approach to integrate multi-omics information.… Show more

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