AI RESEARCH

Graph Transformer-Based Pathway Embedding for Cancer Prognosis

arXiv CS.LG

ArXi:2604.16685v1 Announce Type: new Accurate prediction of cancer progression remains a challenge due to the high heterogeneity of molecular omics data across patients. While biologically informed models have improved the interpretability of these predictions, a persistent limitation lies in how they encode individual genes to construct pathway representations. Existing hierarchical models typically derive gene features by directly mapping raw molecular inputs, whereas integration frameworks often rely on simple statistical aggregations of patient-level signals.