02: A Graph Database Approach for Biomarker Discovery

Jason Huse Co-Author
MD Anderson Cancer Center
 
Kasthuri Kannan Co-Author
MD Anderson Cancer Center
 
Yang Liu First Author
SPH in The University of Texas Health Science Center at Houston | MD Anderson Cancer Center
 
Yang Liu Presenting Author
SPH in The University of Texas Health Science Center at Houston | MD Anderson Cancer Center
 
Monday, Aug 4: 2:00 PM - 3:50 PM
2111 
Contributed Posters 
Music City Center 
Traditional statistical and machine learning methods often struggle to capture complex, interconnected relationships within biological data that enable biomarker discovery. We present a novel graph-based framework that leverages graph neural networks and network-based feature engineering to identify predictive biomarkers. Our approach constructs several biological networks by integrating gene expression data and clinical attributes using a graph database, providing multiple representations of patient-specific relationships. We employ graph learning techniques to ensemble graphs to identify candidates using hierarchical, feature-based and filter-based methods. Using three independent datasets, we demonstrate that our method improves predictive performance compared to conventional machine learning models. This scalable and interpretable strategy has broad applications in biomarker discovery across diverse disease domains.

Keywords

graph database

graph neural network

biomarker

feature engineering

feature selection 

Abstracts


Main Sponsor

Biopharmaceutical Section