SURGICAL
Interpretable machine learning model for predicting operative difficulty in robotic total mesorectal excision for mid-low rectal cancer.
Mao H, Ma S, Li Y, Sun X, Fu Y, Zhang H, Zhou Q, Guo S, Duan X, Li T, Sun H, Zhang H, Zhang Z, Wang G, Hu J, Li Z, Sun Z, Jing C, Wang Q, Yuan W
- Year
- 2026
- Journal
- Journal of robotic surgery
Keywords
robotic surgerytotal mesorectal excisionmachine learningoperative difficultyrectal cancer
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