Department of Surgery, Surgical Oncology and Science, Sapporo Medical University, S1 W16, Chuo-Ku, Sapporo, 060-8543, Japan.
Department of Gastroenterological Surgery, Graduate School of Medicine, Osaka University, 2-2-E2 Yamadaoka, Suita, Osaka, 565-0871, Japan.
J Gastroenterol. 2024 Oct;59(10):896-904. doi: 10.1007/s00535-024-02133-8. Epub 2024 Jul 31.
An artificial intelligence-based algorithm we developed, mrAI, satisfactorily segmented the rectal tumor, rectum, and mesorectum from MRI data of rectal cancer patients in an initial study. Herein, we aimed to validate mrAI using an independent dataset.
We utilized MRI images collected in another nationwide research project, "Open versus Laparoscopic Surgery for Advanced Low Rectal Cancer Patients". MRIs from 467 cases with upfront surgery were utilized; six radiologists centralized the MRI evaluations. The diagnostic accuracies of mrAI and the radiologists for tumor depth were compared using pathologic diagnosis as a reference.
For all cases, centralized diagnosis demonstrated 84.2% sensitivity, 37.7% specificity, and 73.7% accuracy; mrAI exhibited 70.6% sensitivity, 61.3% specificity, and 68.5% accuracy. After limiting MRIs to those acquired by a Philips scanner, with an inter-slice spacing of ≤ 6 mm-both conditions similar to those used in the development of mrAI-the performance of mrAI improved to 76.8% sensitivity, 76.7% specificity, and 76.7% accuracy, while the centralized diagnosis showed 81.8% sensitivity, 36.7% specificity, and 71.3% accuracy. Regarding relapse-free survival, the prognosis for tumors staged ≥ T3 was significantly worse than for tumors staged ≤ T2 (P = 0.0484) in the pathologic diagnosis. While no significant difference was observed between ≥ T3 and ≤ T2 tumors in the centralized diagnosis (P = 0.1510), the prognosis for ≥ T3 was significantly worse in the mrAI diagnosis (P = 0.0318).
Proper imaging conditions for MRI can enhance the accuracy of mrAI, which has the potential to provide feedback to radiologists without overestimating tumor stage.
我们开发的一种基于人工智能的算法 mrAI,在初步研究中成功地从直肠癌患者的 MRI 数据中分割直肠肿瘤、直肠和直肠系膜。在此,我们旨在使用独立数据集验证 mrAI。
我们利用另一个全国性研究项目“开腹与腹腔镜治疗中低位进展期直肠癌患者”中收集的 MRI 图像。使用了 467 例直接手术的病例的 MRI;六名放射科医生集中进行 MRI 评估。将 mrAI 和放射科医生对肿瘤深度的诊断准确性与病理诊断作为参考进行比较。
对于所有病例,集中诊断的敏感性为 84.2%,特异性为 37.7%,准确性为 73.7%;mrAI 的敏感性为 70.6%,特异性为 61.3%,准确性为 68.5%。在将 MRI 限制为使用与 mrAI 开发时相同的飞利浦扫描仪采集的、层间距≤6mm 的 MRI 后,mrAI 的性能提高到 76.8%的敏感性、76.7%的特异性和 76.7%的准确性,而集中诊断的敏感性为 81.8%,特异性为 36.7%,准确性为 71.3%。在无复发生存方面,病理诊断中 T3 期及以上肿瘤的预后明显差于 T2 期及以下肿瘤(P=0.0484)。虽然在集中诊断中 T3 期及以上与 T2 期及以下肿瘤之间没有观察到显著差异(P=0.1510),但 mrAI 诊断中 T3 期及以上肿瘤的预后明显较差(P=0.0318)。
适当的 MRI 成像条件可以提高 mrAI 的准确性,并且有可能在不过度高估肿瘤分期的情况下为放射科医生提供反馈。