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Pathology-and-genomics Multimodal Transformer for Survival Outcome Prediction

About

Survival outcome assessment is challenging and inherently associated with multiple clinical factors (e.g., imaging and genomics biomarkers) in cancer. Enabling multimodal analytics promises to reveal novel predictive patterns of patient outcomes. In this study, we propose a multimodal transformer (PathOmics) integrating pathology and genomics insights into colon-related cancer survival prediction. We emphasize the unsupervised pretraining to capture the intrinsic interaction between tissue microenvironments in gigapixel whole slide images (WSIs) and a wide range of genomics data (e.g., mRNA-sequence, copy number variant, and methylation). After the multimodal knowledge aggregation in pretraining, our task-specific model finetuning could expand the scope of data utility applicable to both multi- and single-modal data (e.g., image- or genomics-only). We evaluate our approach on both TCGA colon and rectum cancer cohorts, showing that the proposed approach is competitive and outperforms state-of-the-art studies. Finally, our approach is desirable to utilize the limited number of finetuned samples towards data-efficient analytics for survival outcome prediction. The code is available at https://github.com/Cassie07/PathOmics.

Kexin Ding, Mu Zhou, Dimitris N. Metaxas, Shaoting Zhang• 2023

Related benchmarks

TaskDatasetResultRank
Survival PredictionTCGA-COAD
C-index0.6732
24
Survival PredictionTCGA-READ
C-index0.7485
24
Survival AnalysisTCGA 20% (val)
BLCA Score0.6049
12
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