Huang Kun, Jia Shunhu, Yuan Xinzhu, Zhao Pingwu, Bai Dou
Department of General Surgery, Mianyang Hospital of Traditional Chinese Medicine, Mianyang, China.
Department of Nephrology, The Second Clinical Medical Institution of North Sichuan Medical College (Nanchong Central Hospital) and Nanchong Key Laboratory of Basic Science & Clinical Research on Chronic Kidney Disease, Nanchong, China.
Transl Gastroenterol Hepatol. 2025 Jun 9;10:49. doi: 10.21037/tgh-24-124. eCollection 2025.
Preoperative prediction of laparoscopic surgical difficulty in gallstone patients is crucial for improving surgical outcomes. This study aimed to develop and validate a nomogram based on advanced machine learning algorithms, incorporating key clinical and systemic inflammatory response indicators, such as the C-reactive protein to albumin ratio (CAR).
A retrospective analysis was conducted on 362 eligible patients who underwent laparoscopic cholecystectomy (LC) for gallstones between 2013 and 2019. A total of 420 patients were initially identified, with 58 excluded based on predefined criteria such as age and incomplete records. The remaining patients were divided into a training set (n=253) and a validation set (n=109). The development of the nomogram involved multiple analytical techniques, including machine learning methods such as least absolute shrinkage and selection operator (LASSO) regression, decision tree analysis, and support vector machine (SVM) models, along with traditional statistical methods like univariate and multivariate logistic regression. Significant predictors, including CAR, white blood cell count (WBC), and gallbladder wall thickness, were integrated into the final predictive model. Model performance was evaluated using receiver operating characteristic (ROC) curve analysis and calibration plots.
The machine learning-based model demonstrated strong predictive capability, with an area under the curve (AUC) of 0.774 in the training set and 0.863 in the validation set. Calibration plots showed good agreement between predicted and actual outcomes, with mean absolute errors of 0.035 and 0.05 for the training and validation sets, respectively.
This study demonstrates the utility of applying machine learning algorithms to develop a robust nomogram for preoperative prediction of laparoscopic surgical difficulty. By integrating key clinical variables and systemic inflammatory markers, the model provides an effective tool for improving surgical planning and enhancing patient outcomes.
术前预测胆结石患者的腹腔镜手术难度对于改善手术效果至关重要。本研究旨在基于先进的机器学习算法开发并验证一种列线图,纳入关键的临床和全身炎症反应指标,如C反应蛋白与白蛋白比值(CAR)。
对2013年至2019年间因胆结石接受腹腔镜胆囊切除术(LC)的362例符合条件的患者进行回顾性分析。最初共识别出420例患者,根据年龄和记录不完整等预定义标准排除58例。其余患者分为训练集(n = 253)和验证集(n = 109)。列线图的开发涉及多种分析技术,包括机器学习方法,如最小绝对收缩和选择算子(LASSO)回归、决策树分析和支持向量机(SVM)模型,以及传统统计方法如单变量和多变量逻辑回归。将包括CAR、白细胞计数(WBC)和胆囊壁厚度在内的显著预测因子纳入最终预测模型。使用受试者操作特征(ROC)曲线分析和校准图评估模型性能。
基于机器学习的模型显示出强大的预测能力,训练集曲线下面积(AUC)为0.774,验证集为0.863。校准图显示预测结果与实际结果之间具有良好的一致性,训练集和验证集的平均绝对误差分别为0.035和0.05。
本研究证明了应用机器学习算法开发用于术前预测腹腔镜手术难度的稳健列线图的实用性。通过整合关键临床变量和全身炎症标志物,该模型为改善手术规划和提高患者手术效果提供了一种有效工具。