xCG: Explainable Cell Graphs for Survival Prediction in Non-Small Cell Lung Cancer
Understanding how deep learning models predict oncology patient risk can provide critical insights into disease progression, support clinical decision-making, and pave the way for trustworthy and data-driven precision medicine. Building on recent advances in the spatial modeling of the tumor microen...
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Zusammenfassung: | Understanding how deep learning models predict oncology patient risk can
provide critical insights into disease progression, support clinical
decision-making, and pave the way for trustworthy and data-driven precision
medicine. Building on recent advances in the spatial modeling of the tumor
microenvironment using graph neural networks, we present an explainable cell
graph (xCG) approach for survival prediction. We validate our model on a public
cohort of imaging mass cytometry (IMC) data for 416 cases of lung
adenocarcinoma. We explain survival predictions in terms of known phenotypes on
the cell level by computing risk attributions over cell graphs, for which we
propose an efficient grid-based layer-wise relevance propagation (LRP) method.
Our ablation studies highlight the importance of incorporating the cancer stage
and model ensembling to improve the quality of risk estimates. Our xCG method,
together with the IMC data, is made publicly available to support further
research. |
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DOI: | 10.48550/arxiv.2411.07643 |