Department of General Surgery, Colorectal Cancer Center, West China Hospital, Sichuan University, Chengdu, China.
Department of Transportation Central, West China Hospital, West China Medical School, West China School of Nursing, Sichuan University, Chengdu, China.
J Surg Oncol. 2024 Feb;129(2):264-272. doi: 10.1002/jso.27470. Epub 2023 Oct 5.
Anastomotic leakage (AL) remains the most dreaded and unpredictable major complication after low anterior resection for mid-low rectal cancer. The aim of this study is to identify patients with high risk for AL based on the machine learning method.
Patients with mid-low rectal cancer undergoing low anterior resection were enrolled from West China Hospital between January 2008 and October 2019 and were split by time into training cohort and validation cohort. The least absolute shrinkage and selection operator (LASSO) method and stepwise method were applied for variable selection and predictive model building in the training cohort. The area under the receiver operating characteristic curve (AUC) and calibration curves were used to evaluate the performance of the models.
The rate of AL was 5.8% (38/652) and 7.2% (15/208) in the training cohort and validation cohort, respectively. The LASSO-logistic model selected almost the same variables (hypertension, operating time, cT4, tumor location, intraoperative blood loss) compared to the stepwise logistic model except for tumor size (the LASSO-logistic model) and American Society of Anesthesiologists score (the stepwise logistic model). The predictive performance of the LASSO-logistics model was better than the stepwise-logistics model (AUC: 0.790 vs. 0.759). Calibration curves showed mean absolute error of 0.006 and 0.013 for the LASSO-logistics model and stepwise-logistics model, respectively.
Our study developed a feasible predictive model with a machine-learning algorithm to classify patients with a high risk of AL, which would assist surgical decision-making and reduce unnecessary stoma diversion. The involved machine learning algorithms provide clinicians with an innovative alternative to enhance clinical management.
吻合口漏(AL)仍然是中低位直肠肿瘤低位前切除术后最可怕和最不可预测的主要并发症。本研究旨在基于机器学习方法确定具有 AL 高危风险的患者。
从 2008 年 1 月至 2019 年 10 月,从华西医院招募接受低位前切除术的中低位直肠癌患者,并按时间分为训练队列和验证队列。在训练队列中,应用最小绝对收缩和选择算子(LASSO)方法和逐步方法进行变量选择和预测模型构建。使用受试者工作特征曲线(ROC)下的面积(AUC)和校准曲线来评估模型的性能。
训练队列和验证队列的 AL 发生率分别为 5.8%(38/652)和 7.2%(15/208)。LASSO-logistic 模型与逐步逻辑模型选择的变量几乎相同(高血压、手术时间、cT4、肿瘤位置、术中出血量),除肿瘤大小(LASSO-logistic 模型)和美国麻醉医师协会评分(逐步逻辑模型)外。LASSO-logistics 模型的预测性能优于逐步-logistics 模型(AUC:0.790 对 0.759)。校准曲线显示 LASSO-logistics 模型和逐步-logistics 模型的平均绝对误差分别为 0.006 和 0.013。
我们的研究使用机器学习算法开发了一种可行的预测模型,以对具有 AL 高风险的患者进行分类,这将有助于手术决策并减少不必要的造口转流。所涉及的机器学习算法为临床医生提供了增强临床管理的创新替代方案。