Litcius/Paper detail

Intratumor graph neural network recovers hidden prognostic value of multi-biomarker spatial heterogeneity

Lida Qiu, Deyong Kang, Chuan Wang, Wenhui Guo, Fangmeng Fu, Qingxiang Wu, Gangqin Xi, Jiajia He, Liqin Zheng, Qingyuan Zhang, Xiaoxia Liao, Lianhuang Li, Jianxin Chen, Haohua Tu

2022Nature Communications38 citationsDOIOpen Access PDF

Abstract

Biomarkers are indispensable for precision medicine. However, focused single-biomarker development using human tissue has been complicated by sample spatial heterogeneity. To address this challenge, we tested a representation of primary tumor that synergistically integrated multiple in situ biomarkers of extracellular matrix from multiple sampling regions into an intratumor graph neural network. Surprisingly, the differential prognostic value of this computational model over its conventional non-graph counterpart approximated that of combined routine prognostic biomarkers (tumor size, nodal status, histologic grade, molecular subtype, etc.) for 995 breast cancer patients under a retrospective study. This large prognostic value, originated from implicit but interpretable regional interactions among the graphically integrated in situ biomarkers, would otherwise be lost if they were separately developed into single conventional (spatially homogenized) biomarkers. Our study demonstrates an alternative route to cancer prognosis by taping the regional interactions among existing biomarkers rather than developing novel biomarkers.

Topics & Concepts

BiomarkerBiomarker discoveryComputational biologyGraphComputer scienceBreast cancerMedicineCancerBiologyInternal medicineProteomicsTheoretical computer scienceGeneGeneticsRadiomics and Machine Learning in Medical ImagingAI in cancer detectionMedical Imaging Techniques and Applications