Tissue specific tumor-gene link prediction through sampling based GNN using a heterogeneous network.

Journal: Medical & biological engineering & computing
PMID:

Abstract

A tissue sample is a valuable resource for understanding a patient's symptoms and health status in relation to tumor growth. Recent research seeks to establish a connection between tissue-specific tumor samples and genetic markers (genes). This breakthrough has paved the way for personalized cancer therapies. With this motivation, the proposed model constructs a heterogeneous network based on tumor sample-gene relation data and gene-gene interaction data. This network also incorporates tissue-specific gene expression and primary site-based gene counts as features, enabling tissue-specific predictions. Graph neural networks (GNNs) have proven effective in modeling complex interactions and predicting links within this network. The proposed model has successfully predicted tumor-gene associations by leveraging sampling-based GNNs and link layer embedding. The model's performance metrics, such as AUC-ROC scores, reached approximately 94%, demonstrating the potential of this heterogeneous network in predicting tissue-specific tumor sample-gene links. This paper's findings highlight the importance of tissue-specific associations in cancer research.

Authors

  • Surabhi Mishra
    Department of Information Technology, ABV- Indian Institute of Information Technology and Management, Morena Road, Gwalior, 474015, Madhya Pradesh, India. surabhi@iiitm.ac.in.
  • Gurjot Singh
    Department of Information Technology, ABV- Indian Institute of Information Technology and Management, Morena Road, Gwalior, 474015, Madhya Pradesh, India.
  • Mahua Bhattacharya
    Department of Information Technology, ABV- Indian Institute of Information Technology and Management, Morena Road, Gwalior, 474015, Madhya Pradesh, India.