Wu Jiaying, Lin Shuangxiang, Guan Jichao, Wu Xiujuan, Ding Miaojia, Shen Shuijuan
Department of Nephrology, Shaoxing University School of Medicine, Shaoxing, Zhejiang, China.
Department of Radiology, The Second Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou, Zhejiang, China.
Semin Dial. 2023 Sep-Oct;36(5):390-398. doi: 10.1111/sdi.13131. Epub 2023 Mar 8.
Sarcopenia is associated with significant cardiovascular risk, and death in patients undergoing peritoneal dialysis (PD). Three tools are used for diagnosing sarcopenia. The evaluation of muscle mass requires dual energy X-ray absorptiometry (DXA) or computed tomography (CT), which is labor-intensive and relatively expensive. This study aimed to use simple clinical information to develop a machine learning (ML)-based prediction model of PD sarcopenia.
According to the newly revised Asian Working Group for Sarcopenia (AWGS2019), patients were subjected to complete sarcopenia screening, including appendicular skeletal muscle mass, grip strength, and five-time chair stand time test. Simple clinical information such as general information, dialysis-related indices, irisin and other laboratory indices, and bioelectrical impedance analysis (BIA) data were collected. All data were randomly split into training (70%) and testing (30%) sets. Difference, correlation, univariate, and multivariate analyses were used to identify core features significantly associated with PD sarcopenia.
12 core features (C), namely, grip strength, body mass index (BMI), total body water value, irisin, extracellular water/total body water, fat-free mass index, phase angle, albumin/globulin, blood phosphorus, total cholesterol, triglyceride, and prealbumin were excavated for model construction. Two ML models, the neural network (NN), and support vector machine (SVM) were selected with tenfold cross-validation to determine the optimal parameter. The C-SVM model showed a higher area under the curve (AUC) of 0.82 (95% confidence interval [CI]: 0.67-1.00), with a highest specificity of 0.96, sensitivity of 0.91, positive predictive value (PPV) of 0.96, and negative predictive value (NPV) of 0.91.
The ML model effectively predicted PD sarcopenia and has clinical potential to be used as a convenient sarcopenia screening tool.
肌肉减少症与显著的心血管风险以及腹膜透析(PD)患者的死亡相关。有三种工具用于诊断肌肉减少症。肌肉质量评估需要双能X线吸收法(DXA)或计算机断层扫描(CT),这两种方法劳动强度大且相对昂贵。本研究旨在利用简单的临床信息开发一种基于机器学习(ML)的PD肌肉减少症预测模型。
根据新修订的亚洲肌肉减少症工作组(AWGS2019),对患者进行全面的肌肉减少症筛查,包括四肢骨骼肌质量、握力和五次起坐时间测试。收集一般信息、透析相关指标、鸢尾素和其他实验室指标以及生物电阻抗分析(BIA)数据等简单临床信息。所有数据随机分为训练集(70%)和测试集(30%)。采用差异分析、相关性分析、单变量分析和多变量分析来识别与PD肌肉减少症显著相关的核心特征。
挖掘出12个核心特征(C)用于模型构建,即握力、体重指数(BMI)、全身水值、鸢尾素、细胞外水/全身水、去脂体重指数、相位角、白蛋白/球蛋白、血磷、总胆固醇、甘油三酯和前白蛋白。选择神经网络(NN)和支持向量机(SVM)这两种ML模型进行十折交叉验证以确定最佳参数。C-SVM模型的曲线下面积(AUC)较高,为0.82(95%置信区间[CI]:0.67 - 1.00),最高特异性为0.96,敏感性为0.91,阳性预测值(PPV)为0.96,阴性预测值(NPV)为0.91。
该ML模型有效预测了PD肌肉减少症,具有作为便捷的肌肉减少症筛查工具的临床潜力。