Wang Xiaojie, Zheng Zhifang, Xie Zhongdong, Yu Qian, Lu Xingrong, Zhao Zeyi, Huang Shenghui, Huang Ying, Chi Pan
Department of Colorectal Surgery, Union Hospital, Fujian Medical University, People's Republic of China.
Department of Pathology, Union Hospital, Fujian Medical University, People's Republic of China.
Eur J Surg Oncol. 2022 Dec;48(12):2475-2486. doi: 10.1016/j.ejso.2022.06.009. Epub 2022 Jun 8.
Dissection of lymph nodes at the roots of the inferior mesenteric artery (IMAN) should be offered only to selected patients at a major risk of developing IMAN involvement. The aim of this study is to present the first artificial intelligence (AI) models to predict IMAN metastasis risk in the left colon and rectal cancer patients.
A total of 2891 patients with descending colon including splenic flexure, sigmoid colon and rectal cancer undergoing major primary surgery and IMAN dissection were included as a study cohort, which was then split into a training set (67%) and a testing set (33%). Feature selection was conducted using the least absolute shrinkage and selection operator (LASSO) regression model. 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), as well as traditional multivariate LR model were employed to construct predictive models. The optimal hyperparameters were determined with 5 fold cross-validation. The predictive performance of models and the expert surgeon was assessed and compared in the testing set independently.
The IMAN involvement incidence was 4.6%. The optimal set of features selected by LASSO included 10 characteristics: neoadjuvant treatment, age, synchronous liver metastasis, synchronous lung metastasis, signet ring adenocarcinoma, neural invasion, lymphovascular invasion, CA199, endoscopic obstruction, T stage evaluated by MRI. The most accurate model derived from MLP showed excellent prediction power with area under the receiver operating characteristic curve (AUROC) of 0.873 and produced 81.0% recognition sensitivity and 82.5% specificity in the testing set independently. In contrast, the judgment of IMAN metastasis by expert surgeon yield rather imprecise and unreliable results with a significantly lower AUROC of 0.509. Additionally, the proposed MLP had the highest net benefits and the largest reduction of unnecessary IMAN dissection without the cost of additional involved IMAN missed.
MLP model was able to maintain its prediction accuracy in the testing set better than other models and expert surgeons. Our MLP model could be used to help identify IMA nodal metastasis and to select candidates for individual IMAN dissection.
仅应对有发生肠系膜下动脉根部(IMAN)受累重大风险的特定患者进行IMAN根部淋巴结清扫。本研究的目的是提出首个预测左结肠癌和直肠癌患者IMAN转移风险的人工智能(AI)模型。
总共2891例降结肠(包括脾曲、乙状结肠)和直肠癌患者接受了主要的初次手术及IMAN清扫,被纳入研究队列,然后分为训练集(67%)和测试集(33%)。使用最小绝对收缩和选择算子(LASSO)回归模型进行特征选择。采用七种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),以及传统多元LR模型来构建预测模型。通过五折交叉验证确定最佳超参数。在测试集中独立评估和比较模型及专家外科医生的预测性能。
IMAN受累发生率为4.6%。LASSO选择的最佳特征集包括10个特征:新辅助治疗、年龄、同步肝转移、同步肺转移、印戒腺癌、神经侵犯、淋巴管侵犯、CA199、内镜下梗阻、MRI评估的T分期。源自MLP的最准确模型显示出出色的预测能力,受试者工作特征曲线下面积(AUROC)为0.873,在测试集中独立产生81.0%的识别敏感性和82.5%的特异性。相比之下,专家外科医生对IMAN转移的判断结果相当不精确且不可靠,AUROC显著较低,为0.509。此外,所提出的MLP具有最高的净效益和最大程度减少不必要的IMAN清扫,且不会增加遗漏额外受累IMAN的代价。
MLP模型在测试集中比其他模型和专家外科医生能更好地保持其预测准确性。我们的MLP模型可用于帮助识别IMA淋巴结转移,并选择适合进行个体IMAN清扫的患者。