Whole Slide Images are 2D Point Clouds: Context-Aware Survival Prediction using Patch-based Graph Convolutional Networks
About
Cancer prognostication is a challenging task in computational pathology that requires context-aware representations of histology features to adequately infer patient survival. Despite the advancements made in weakly-supervised deep learning, many approaches are not context-aware and are unable to model important morphological feature interactions between cell identities and tissue types that are prognostic for patient survival. In this work, we present Patch-GCN, a context-aware, spatially-resolved patch-based graph convolutional network that hierarchically aggregates instance-level histology features to model local- and global-level topological structures in the tumor microenvironment. We validate Patch-GCN with 4,370 gigapixel WSIs across five different cancer types from the Cancer Genome Atlas (TCGA), and demonstrate that Patch-GCN outperforms all prior weakly-supervised approaches by 3.58-9.46%. Our code and corresponding models are publicly available at https://github.com/mahmoodlab/Patch-GCN.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Survival Prediction | TCGA-LUAD | -- | 116 | |
| Slide-level classification | TCGA NSCLC (test) | Accuracy88.8 | 60 | |
| Whole Slide Image classification | TCGA-RCC (test) | AUC98.1 | 54 | |
| Cancer Subtyping | TCGA-NLCSC (test) | Accuracy91.9 | 53 | |
| Slide-level classification | Camelyon16 | AUC0.904 | 52 | |
| Cancer Classification | TCGA-BRCA | AUC96.2 | 47 | |
| Survival Prediction | TCGA-BRCA (test) | Concordance Index (CI)0.6372 | 41 | |
| Survival Prediction | TNBC cohort (test) | DRFS C-index0.62 | 29 | |
| Whole Slide Image classification | BRACS | Accuracy66.7 | 24 | |
| Whole Slide Image classification | TCGA-LUNG | Accuracy87.9 | 24 |