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Tumor-anchored deep feature random forests for out-of-distribution detection in lung cancer segmentation.

June 29, 2026pubmed logopapers

Authors

Rangnekar A,Veeraraghavan H

Affiliations (1)

  • Department of Medical Physics, Memorial Sloan Kettering Cancer Center.

Abstract

Accurate segmentation of lung tumors from 3D computed tomography (CT) scans is essential for automated treatment planning and response assessment. Despite self-supervised pre-training on numerous datasets, state-of-the-art transformer backbones remain susceptible to out-of-distribution (OOD) inputs, often producing confidently incorrect segmentations with potential risk in clinical deployment. Hence, we introduce RF-Deep, a lightweight post-hoc random forests-based framework that uses deep features trained with limited outlier exposure, requiring as few as 40 labeled scans (20 in-distribution and 20 OOD), to improve scan-level OOD detection. RF-Deep repurposes the hierarchical features from the pretrained-then-finetuned segmentation backbones, aggregating features from multiple regions-of-interest anchored to predicted tumor regions to capture OOD likelihood. We evaluated RF-Deep on 2,232 CT volumes spanning near-OOD (pulmonary embolism, COVID-19 negative) and far-OOD (kidney cancer, healthy pancreas) datasets. RF-Deep achieved AUROC > 93 on the challenging near-OOD datasets, where it outperformed the next best method by 4-7 percentage points, and produced near-perfect detection (AUROC > 99) on far-OOD datasets. The approach also showed transferability to two blinded validation datasets under the ensemble configuration (COVID-19 positive and breast cancer; AUROC > 94). RF-Deep maintained consistent performance across backbones of different depths and pretraining strategies, demonstrating applicability of post-hoc detectors as a safety filter for clinical deployment of tumor segmentation pipelines.

Topics

Journal Article

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