Department of Gastroenterological and Pediatric Surgery, Faculty of Medicine, Oita University, 1-1 Idaigaoka, Hasama-Machi, Oita, 879-5593, Japan.
Department of Information Systems and Engineering, Faculty of Information Engineering, Fukuoka Institute of Technology, Fukuoka, Japan.
Surg Endosc. 2023 Aug;37(8):6118-6128. doi: 10.1007/s00464-023-10097-8. Epub 2023 May 4.
Attention to anatomical landmarks in the appropriate surgical phase is important to prevent bile duct injury (BDI) during laparoscopic cholecystectomy (LC). Therefore, we created a cross-AI system that works with two different AI algorithms simultaneously, landmark detection and phase recognition. We assessed whether landmark detection was activated in the appropriate phase by phase recognition during LC and the potential contribution of the cross-AI system in preventing BDI through a clinical feasibility study (J-SUMMIT-C-02).
A prototype was designed to display landmarks during the preparation phase and Calot's triangle dissection. A prospective clinical feasibility study using the cross-AI system was performed in 20 LC cases. The primary endpoint of this study was the appropriateness of the detection timing of landmarks, which was assessed by an external evaluation committee (EEC). The secondary endpoint was the correctness of landmark detection and the contribution of cross-AI in preventing BDI, which were assessed based on the annotation and 4-point rubric questionnaire.
Cross-AI-detected landmarks in 92% of the phases where the EEC considered landmarks necessary. In the questionnaire, each landmark detected by AI had high accuracy, especially the landmarks of the common bile duct and cystic duct, which were assessed at 3.78 and 3.67, respectively. In addition, the contribution to preventing BDI was relatively high at 3.65.
The cross-AI system provided landmark detection at appropriate situations. The surgeons who previewed the model suggested that the landmark information provided by the cross-AI system may be effective in preventing BDI. Therefore, it is suggested that our system could help prevent BDI in practice. Trial registration University Hospital Medical Information Network Research Center Clinical Trial Registration System (UMIN000045731).
在腹腔镜胆囊切除术(LC)中,关注适当手术阶段的解剖标志对于防止胆管损伤(BDI)至关重要。因此,我们创建了一个交叉人工智能系统,该系统同时使用两种不同的人工智能算法,即标志检测和阶段识别。我们通过临床可行性研究(J-SUMMIT-C-02)评估了在 LC 过程中通过阶段识别是否在适当的阶段激活了标志检测,以及交叉人工智能系统在预防 BDI 方面的潜在贡献。
设计了一个原型,用于在准备阶段和 Calot 三角解剖期间显示标志。使用交叉人工智能系统对 20 例 LC 病例进行了前瞻性临床可行性研究。该研究的主要终点是标志检测时间的适当性,由外部评估委员会(EEC)评估。次要终点是标志检测的准确性和交叉人工智能在预防 BDI 方面的贡献,这是基于注释和 4 分制问卷评估的。
交叉人工智能在 EEC 认为必要的 92%的阶段检测到了标志。在问卷中,人工智能检测到的每个标志都具有很高的准确性,特别是胆总管和胆囊管的标志,分别评估为 3.78 和 3.67。此外,对预防 BDI 的贡献相对较高,为 3.65。
交叉人工智能系统在适当的情况下提供了标志检测。预览模型的外科医生建议,交叉人工智能系统提供的标志信息可能有助于预防 BDI。因此,建议我们的系统在实践中有助于预防 BDI。
大学医院医疗信息网研究中心临床试验注册系统(UMIN000045731)。