An Automated Radiomics Framework for Postoperative Survival Prediction in Colorectal Liver Metastases using Preoperative MRI
arXiv cs.CV / 3/12/2026
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Key Points
- The paper presents an automated AI-based framework for postoperative survival prediction in colorectal liver metastases using pre- and post-contrast MRI, aiming to improve patient selection for surgery and personalize therapy.
- It combines an anatomy-aware segmentation pipeline with a promptable foundation-model approach (SAMONAI) to segment liver, CRLMs, and spleen from partially annotated data.
- The framework feeds predicted segmentations into a radiomics pipeline that extracts per-tumor features and uses SurvAMINN, an autoencoder-based model for time-to-event survival prediction on right-censored data.
- In a retrospective study of 227 patients, the method achieved a CRLM segmentation Dice score of 0.78 and a survival C-index of 0.69, demonstrating potential for automated CRLM outcome prediction.
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