Prediction of Rectal Cancer Regrowth from Longitudinal Endoscopy
Jorge Tapias Gomez, Despoina Kanata, Aneesh Rangnekar, Christina Lee, Hannah Williams, Hannah Thompson, J. Joshua Smith, Francisco Sanchez-Vega, Mert R. Sabuncu, Julio Garcia-Aguilar, and Harini Veeraraghavan

TL;DR
This study introduces TREX, a deep learning model that analyzes longitudinal endoscopy images to accurately detect rectal cancer regrowth earlier than current methods, potentially improving patient surveillance.
Contribution
The paper presents TREX, a novel deep learning approach using cross-attention and pretrained transformers for early detection of rectal cancer regrowth from longitudinal endoscopy images.
Findings
TREX achieved 97% sensitivity in detecting regrowth.
Outperformed baselines in early detection at 3-6 and 6-12 months prior.
Matched clinician accuracy in clinical validation.
Abstract
Clinical trial studies indicate benefit of watch-and-wait (WW) surveillance for patients with rectal cancer showing a complete or near clinical response (CR) directly after treatment (restaging). However, there are no objectively accurate methods to early detect local tumor regrowth (LR) in patients undergoing WW from follow-up exams. Hence, we developed Temporal Rectal Endoscopy Cross-attention (TREX), a longitudinal deep learning approach that combines pairs of images acquired at restaging and follow-up to distinguish CR from LR. TREX uses pretrained Swin Transformers in a siamese setting to extract features from longitudinal images and dual cross-attention to combine the features without spatial co-registration between image pairs. TREX and Swin-based baselines were trained under two settings: (a) detecting LR or CR at the last available follow-up and (b) early detection of LR at…
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