RT Journal Article SR Electronic T1 Development of a Novel Artificial Intelligence System for Laparoscopic Hepatectomy JF Anticancer Research JO Anticancer Res FD International Institute of Anticancer Research SP 5235 OP 5243 DO 10.21873/anticanres.16725 VO 43 IS 11 A1 TOMIOKA, KODAI A1 AOKI, TAKESHI A1 KOBAYASHI, NAO A1 TASHIRO, YOSHIHIKO A1 KUMAZU, YUTA A1 SHIBATA, HIDEKI A1 HIRAI, TAKAHITO A1 YAMAZAKI, TATSUYA A1 SAITO, KAZUHIKO A1 YAMAZAKI, KIMIYASU A1 WATANABE, MAKOTO A1 MATSUDA, KAZUHIRO A1 KUSANO, TOMOKAZU A1 FUJIMORI, AKIRA A1 ENAMI, YUTA YR 2023 UL http://ar.iiarjournals.org/content/43/11/5235.abstract AB Background/Aim: Laparoscopic hepatectomy (LH) requires accurate visualization and appropriate handling of hepatic veins and the Glissonean pedicle that suddenly appear during liver dissection. Failure to recognize these structures can cause injury, resulting in severe bleeding and bile leakage. This study aimed to develop a novel artificial intelligence (AI) system that assists in the visual recognition and color presentation of tubular structures to correct the recognition gap among surgeons. Patients and Methods: Annotations were performed on over 350 video frames capturing LH, after which a deep learning model was developed. The performance of the AI was evaluated quantitatively using intersection over union (IoU) and Dice coefficients, as well as qualitatively using a two-item questionnaire on sensitivity and misrecognition completed by 10 hepatobiliary surgeons. The usefulness of AI in medical education was qualitatively evaluated by 10 medical students and residents. Results: The AI model was able to individually recognize and colorize hepatic veins and the Glissonean pedicle in real time. The IoU and Dice coefficients were 0.42 and 0.53, respectively. Surgeons provided a mean sensitivity score of 4.24±0.89 (from 1 to 5; Excellent) and a mean misrecognition score of 0.12±0.33 (from 0 to 4; Fail). Medical students and residents assessed the AI to be very useful (mean usefulness score, 1.86±0.35; from 0 to 2; Excellent). Conclusion: The novel AI presented was able to assist surgeons in the intraoperative recognition of microstructures and address the recognition gap among surgeons to ensure a safer and more accurate LH.