Huang Yuanbin, Ma Xinmiao, Wang Wei, Shen Chen, Liu Fei, Chen Zhiqi, Yang Aoyu, Li Xiancheng
Department of Urology, Second Affiliated Hospital of Dalian Medical University, Dalian, Liaoning, China.
Langenbecks Arch Surg. 2025 Jan 4;410(1):22. doi: 10.1007/s00423-024-03586-4.
There are multiple surgical approaches for treating symptomatic simple renal cysts (SSRCs). The natural orifice transluminal endoscopic surgery (NOTES) approach has gradually been applied as an emerging minimally invasive approach for the treatment of SSRCs. However, there are no clear indicators for selecting the NOTES approach for patients with SSRCs. We aimed to investigate the preoperative clinical determinants that influence the selection of the NOTES approach in patients with SSRCs and to construct a prediction model to assist the surgeons in selecting the NOTES approach.
Clinical data from 264 patients with SSRCs from a single-center medical institution were included. Predictors were analyzed via the least absolute shrinkage and selection operator and multivariable logistic regression. Various machine learning classification algorithms were evaluated to determine the optimal model. An interpretive framework for personalized risk assessment was developed via SHapley Additive exPlanations (SHAP).
Preoperative factors predicting the selection of the NOTES approach included cyst growth, the presence of renal calculus, body mass index, history of diabetes, history of cerebrovascular disease, hemoglobin level, and the platelet (PLT) count. The logistic classification model was identified as the optimal model, with area under the curve of 0.962, an accuracy of 0.868, a sensitivity of 0.889, and a specificity of 1.000 in the test set.
A logistic regression model was constructed and tested via the SHAP method, providing a scientific basis for selecting the NOTES approach for patients with SSRCs. This method offers effective decision support for doctors in choosing the NOTES approach.
治疗症状性单纯肾囊肿(SSRC)有多种手术方法。自然腔道内镜手术(NOTES)作为一种新兴的微创方法已逐渐应用于SSRC的治疗。然而,对于SSRC患者选择NOTES方法尚无明确指标。我们旨在研究影响SSRC患者选择NOTES方法的术前临床决定因素,并构建一个预测模型,以协助外科医生选择NOTES方法。
纳入来自单中心医疗机构的264例SSRC患者的临床数据。通过最小绝对收缩和选择算子以及多变量逻辑回归分析预测因素。评估各种机器学习分类算法以确定最佳模型。通过SHapley加性解释(SHAP)开发了个性化风险评估的解释框架。
预测选择NOTES方法的术前因素包括囊肿生长、肾结石的存在、体重指数、糖尿病史、脑血管病史、血红蛋白水平和血小板(PLT)计数。逻辑分类模型被确定为最佳模型,在测试集中曲线下面积为0.962,准确率为0.868,灵敏度为0.889,特异性为1.000。
通过SHAP方法构建并测试了逻辑回归模型,为SSRC患者选择NOTES方法提供了科学依据。该方法为医生选择NOTES方法提供了有效的决策支持。