Department of Colorectal Surgery, Union Hospital, Fujian Medical University, Fuzhou, People's Republic of China.
Int J Surg. 2024 Jul 1;110(7):4031-4042. doi: 10.1097/JS9.0000000000001014.
Accurate prediction of successful sphincter-preserving resection (SSPR) for low rectal cancer enables peer institutions to scrutinize their own performance and potentially avoid unnecessary permanent colostomy. The aim of this study is to evaluate the variation in SSPR and present the first artificial intelligence (AI) models to predict SSPR in low rectal cancer patients.
This was a retrospective post hoc analysis of a multicenter, non-inferiority randomized clinical trial (LASRE, NCT01899547) conducted in 22 tertiary hospitals across China. A total of 604 patients who underwent neoadjuvant chemoradiotherapy (CRT) followed by radical resection of low rectal cancer were included as the study cohort, which was then split into a training set (67%) and a testing set (33%). The primary end point of this post hoc analysis was SSPR, which was defined as meeting all the following criteria: (1) sphincter-preserving resection; (2) complete or nearly complete TME, (3) a clear CRM (distance between margin and tumour of 1 mm or more), and (4) a clear DRM (distance between margin and tumour of 1 mm or more). Seven AI algorithms, namely, support vector machine (SVM), logistic regression (LR), extreme gradient boosting (XGB), light gradient boosting (LGB), decision tree classifier (DTC), random forest (RF) classifier, and multilayer perceptron (MLP), were employed to construct predictive models for SSPR. Evaluation of accuracy in the independent testing set included measures of discrimination, calibration, and clinical applicability.
The SSPR rate for the entire cohort was 71.9% (434/604 patients). Significant variation in the rate of SSPR, ranging from 37.7 to 94.4%, was observed among the hospitals. The optimal set of selected features included tumour distance from the anal verge before and after CRT, the occurrence of clinical T downstaging, post-CRT weight and clinical N stage measured by magnetic resonance imaging. The seven different AI algorithms were developed and applied to the independent testing set. The LR, LGB, MLP and XGB models showed excellent discrimination with area under the receiver operating characteristic (AUROC) values of 0.825, 0.819, 0.819 and 0.805, respectively. The DTC, RF and SVM models had acceptable discrimination with AUROC values of 0.797, 0.766 and 0.744, respectively. LR and LGB showed the best discrimination, and all seven AI models had superior overall net benefits within the range of 0.3-0.8 threshold probabilities. Finally, we developed an online calculator based on the LGB model to facilitate clinical use.
The rate of SSPR exhibits substantial variation, and the application of AI models has demonstrated the ability to predict SSPR for low rectal cancers with commendable accuracy.
准确预测低位直肠癌的保肛切除术(SSPR)成功,使同行机构能够仔细检查自己的表现,并有可能避免不必要的永久性结肠造口术。本研究旨在评估 SSPR 的变异性,并首次提出人工智能(AI)模型来预测低位直肠癌患者的 SSPR。
这是一项在中国 22 家三级医院进行的多中心、非劣效性随机临床试验(LASRE,NCT01899547)的回顾性事后分析。共有 604 例接受新辅助放化疗(CRT)后行低位直肠癌根治性切除术的患者被纳入研究队列,随后分为训练集(67%)和测试集(33%)。该事后分析的主要终点是 SSPR,其定义为符合以下所有标准:(1)保肛切除术;(2)完全或近乎完全的全直肠系膜切除术(TME);(3)清晰的环周切缘(CRM,肿瘤与切缘之间的距离为 1mm 或以上);(4)清晰的远端切缘(DRM,肿瘤与切缘之间的距离为 1mm 或以上)。采用了七种 AI 算法,即支持向量机(SVM)、逻辑回归(LR)、极端梯度提升(XGB)、轻梯度提升(LGB)、决策树分类器(DTC)、随机森林(RF)分类器和多层感知器(MLP),构建 SSPR 的预测模型。在独立测试集中,评估准确性包括判别能力、校准能力和临床适用性。
整个队列的 SSPR 率为 71.9%(434/604 例)。各医院之间 SSPR 率存在显著差异,范围为 37.7%至 94.4%。最佳特征集包括 CRT 前后肿瘤距肛缘的距离、临床 T 分期降期、CRT 后体重和磁共振成像测量的临床 N 分期。开发并应用了七种不同的 AI 算法到独立测试集中。LR、LGB、MLP 和 XGB 模型的鉴别能力均较好,其接受者操作特征曲线(ROC)下面积(AUROC)值分别为 0.825、0.819、0.819 和 0.805。DTC、RF 和 SVM 模型的鉴别能力可接受,其 AUROC 值分别为 0.797、0.766 和 0.744。LR 和 LGB 的鉴别能力最好,在 0.3-0.8 阈值概率范围内,所有七种 AI 模型均具有优越的总体净效益。最后,我们基于 LGB 模型开发了一个在线计算器,以方便临床使用。
SSPR 的发生率存在很大差异,AI 模型的应用已证明能够准确预测低位直肠癌的 SSPR。