Department of Colorectal Surgery, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences & Peking Union Medical College, Beijing, China.
Department of Colorectal Surgery, The Second Affiliated Hospital of Harbin Medical University, Harbin, China.
Eur J Surg Oncol. 2023 Jul;49(7):1258-1268. doi: 10.1016/j.ejso.2023.01.007. Epub 2023 Jan 10.
Total laparoscopic anterior resection (tLAR) and natural orifice specimen extraction surgery (NOSES) has been widely adopted in the treatment of rectal cancer (RC). However, no study has been performed to predict the short-term outcomes of tLAR using machine learning algorithms to analyze a national cohort.
Data from consecutive RC patients who underwent tLAR were collected from the China NOSES Database (CNDB). The random forest (RF), extreme gradient boosting (XGBoost), support vector machine (SVM), deep neural network (DNN), logistic regression (LR) and K-nearest neighbor (KNN) algorithms were used to develop risk models to predict short-term complications of tLAR. The area under the receiver operating characteristic curve (AUROC), Gini coefficient, specificity and sensitivity were calculated to assess the performance of each risk model. The selected factors from the models were evaluated by relative importance.
A total of 4313 RC patients were identified, and 667 patients (15.5%) developed postoperative complications. The machine learning model of XGBoost showed more promising results in the prediction of complication than other models (AUROC 0.90, P < 0.001). The performance was similar when internal and external validation was used. In the XGBoost model, the top four influential factors were the distance from the lower edge of the tumor to the anus, age at diagnosis, surgical time and comorbidities. In risk stratification analysis, the rate of postoperative complications in the high-risk group was significantly higher than in the medium- and low-risk groups (P < 0.001).
The machine learning model shows potential benefits in predicting the risk of complications in RC patients after tLAR. This novel approach can provide reliable individual information for surgical treatment recommendations.
全腹腔镜直肠前切除术(tLAR)和经自然腔道标本取出术(NOSES)已广泛应用于直肠癌(RC)的治疗。然而,目前尚无研究使用机器学习算法分析全国队列来预测 tLAR 的短期结果。
从中国 NOSES 数据库(CNDB)中收集连续接受 tLAR 治疗的 RC 患者的数据。随机森林(RF)、极端梯度提升(XGBoost)、支持向量机(SVM)、深度神经网络(DNN)、逻辑回归(LR)和 K 最近邻(KNN)算法用于开发风险模型以预测 tLAR 的短期并发症。计算接收者操作特征曲线下的面积(AUROC)、基尼系数、特异性和敏感性,以评估每个风险模型的性能。通过相对重要性评估模型中选择的因素。
共纳入 4313 例 RC 患者,667 例(15.5%)发生术后并发症。XGBoost 机器学习模型在预测并发症方面的表现优于其他模型(AUROC 0.90,P<0.001)。内部和外部验证时表现相似。在 XGBoost 模型中,前四个有影响力的因素是肿瘤下缘距肛门的距离、诊断时的年龄、手术时间和合并症。在风险分层分析中,高危组术后并发症发生率明显高于中危组和低危组(P<0.001)。
机器学习模型在预测 RC 患者 tLAR 后并发症风险方面显示出潜在的益处。这种新方法可以为手术治疗建议提供可靠的个体信息。