Deep Learning-based Radiomic Features for Improving Neoadjuvant Chemoradiation Response Prediction in Locally Advanced Rectal Cancer
Jie Fu, Xinran Zhong, Ning Li, Ritchell Van Dams, John Lewis,, Kyunghyun Sung, Ann C. Raldow, Jing Jin, X. Sharon Qi

TL;DR
This study compares handcrafted and deep learning radiomic features from pre-treatment MRI to predict chemoradiation response in rectal cancer, finding DL features significantly outperform handcrafted ones.
Contribution
It demonstrates that deep learning-based radiomic features provide superior prediction of treatment response over traditional handcrafted features in rectal cancer.
Findings
DL features achieved higher AUC (0.73) than handcrafted features (0.64).
DL-based models significantly outperformed handcrafted models (P < 0.05).
Deep learning enhances radiomic feature effectiveness for treatment response prediction.
Abstract
Radiomic features achieve promising results in cancer diagnosis, treatment response prediction, and survival prediction. Our goal is to compare the handcrafted (explicitly designed) and deep learning (DL)-based radiomic features extracted from pre-treatment diffusion-weighted magnetic resonance images (DWIs) for predicting neoadjuvant chemoradiation treatment (nCRT) response in patients with locally advanced rectal cancer (LARC). 43 patients receiving nCRT were included. All patients underwent DWIs before nCRT and total mesorectal excision surgery 6-12 weeks after completion of nCRT. Gross tumor volume (GTV) contours were drawn by an experienced radiation oncologist on DWIs. The patient-cohort was split into the responder group (n=22) and the non-responder group (n=21) based on the post-nCRT response assessed by postoperative pathology, MRI or colonoscopy. Handcrafted and DL-based…
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Taxonomy
MethodsConvolution
