AI-Based Detection of Temporal Changes in MR-Linac Images Acquired During Routine Prostate Radiotherapy
Seungbin Park, Peilin Wang, Ryan Pennell, Emily S. Weg, Himanshu Nagar, Timothy McClure, Mert R. Sabuncu, Daniel Margolis, Heejong Kim

TL;DR
This study demonstrates that AI models can effectively detect subtle, temporally relevant changes in MR-Linac images during prostate radiotherapy, surpassing radiologist performance and highlighting potential clinical applications.
Contribution
Introduces a deep learning approach for detecting subtle inter-fraction changes in MR-Linac images, showing high accuracy and potential for broader clinical use.
Findings
AI model achieved AUC=0.99 in temporal ordering
Model outperformed radiologist in detecting changes
Regions like prostate and bladder contributed to predictions
Abstract
Purpose: To investigate whether an AI-based method can detect subtle inter-fraction changes in MR-Linac images acquired during radiotherapy and explore the broader potential of MRLinac imaging. Methods: This retrospective study included longitudinal 0.35T MR-Linac images from 761 patients. To identify temporal changes, we employed a deep learning model using temporal ordering via pairwise comparison, previously shown effective for longitudinal imaging studies. The model was trained using first-to-last fraction pairs (F1-FL) and all pairs (All-pairs). Performance was assessed using quantitative metrics (accuracy and AUC) and compared against a radiologist's performance. Qualitative evaluation was performed using saliency maps, which identify anatomical regions associated with temporal imaging changes. Results: The F1-FL model demonstrated high performance (AUC=0.99, accuracy=0.95) and…
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