Li Fengda, Chen Anmin, Li Zeyi, Gu Longyuan, Pan Qiyang, Wang Pan, Fan Yuechao, Feng Jinhong
Department of Neurosurgery, Changshu Hospital Affiliated to Soochow University, Changshu, China.
Department of Nephrology, The First People's Hospital of Jintan, Changzhou, China.
Front Neurol. 2023 Apr 3;14:1139096. doi: 10.3389/fneur.2023.1139096. eCollection 2023.
Intracerebral hemorrhage (ICH) is one of the most serious complications in patients with chronic kidney disease undergoing long-term hemodialysis. It has high mortality and disability rates and imposes a serious economic burden on the patient's family and society. An early prediction of ICH is essential for timely intervention and improving prognosis. This study aims to build an interpretable machine learning-based model to predict the risk of ICH in patients undergoing hemodialysis.
The clinical data of 393 patients with end-stage kidney disease undergoing hemodialysis at three different centers between August 2014 and August 2022 were retrospectively analyzed. A total of 70% of the samples were randomly selected as the training set, and the remaining 30% were used as the validation set. Five machine learning (ML) algorithms, namely, support vector machine (SVM), extreme gradient boosting (XGB), complement Naïve Bayes (CNB), K-nearest neighbor (KNN), and logistic regression (LR), were used to develop a model to predict the risk of ICH in patients with uremia undergoing long-term hemodialysis. In addition, the area under the curve (AUC) values were evaluated to compare the performance of each algorithmic model. Global and individual interpretive analyses of the model were performed using importance ranking and Shapley additive explanations (SHAP) in the training set.
A total of 73 patients undergoing hemodialysis developed spontaneous ICH among the 393 patients included in the study. The AUC of SVM, CNB, KNN, LR, and XGB models in the validation dataset were 0.725 (95% CI: 0.610 ~ 0.841), 0.797 (95% CI: 0.690 ~ 0.905), 0.675 (95% CI: 0.560 ~ 0.789), 0.922 (95% CI: 0.862 ~ 0.981), and 0.979 (95% CI: 0.953 ~ 1.000), respectively. Therefore, the XGBoost model had the best performance among the five algorithms. SHAP analysis revealed that the levels of LDL, HDL, CRP, and HGB and pre-hemodialysis blood pressure were the most important factors.
The XGB model developed in this study can efficiently predict the risk of a cerebral hemorrhage in patients with uremia undergoing long-term hemodialysis and can help clinicians to make more individualized and rational clinical decisions. ICH events in patients undergoing maintenance hemodialysis (MHD) are associated with serum LDL, HDL, CRP, HGB, and pre-hemodialysis SBP levels.
脑出血(ICH)是长期接受血液透析的慢性肾脏病患者最严重的并发症之一。其死亡率和致残率高,给患者家庭和社会带来沉重的经济负担。早期预测脑出血对于及时干预和改善预后至关重要。本研究旨在建立一种基于机器学习的可解释模型,以预测接受血液透析患者的脑出血风险。
回顾性分析2014年8月至2022年8月期间在三个不同中心接受血液透析的393例终末期肾病患者的临床资料。总共随机抽取70%的样本作为训练集,其余30%作为验证集。使用五种机器学习(ML)算法,即支持向量机(SVM)、极端梯度提升(XGB)、互补朴素贝叶斯(CNB)、K近邻(KNN)和逻辑回归(LR),来建立一个模型,以预测长期接受血液透析的尿毒症患者的脑出血风险。此外,评估曲线下面积(AUC)值以比较每个算法模型的性能。在训练集中使用重要性排名和Shapley加性解释(SHAP)对模型进行全局和个体解释性分析。
在纳入研究的393例患者中,共有73例接受血液透析的患者发生了自发性脑出血。验证数据集中SVM、CNB、KNN、LR和XGB模型的AUC分别为0.725(95%CI:0.6100.841)、0.797(95%CI:0.6900.905)、0.675(95%CI:0.5600.789)、0.922(95%CI:0.8620.981)和0.979(95%CI:0.953~1.000)。因此,XGBoost模型在这五种算法中表现最佳。SHAP分析显示,低密度脂蛋白、高密度脂蛋白、C反应蛋白、血红蛋白水平以及透析前血压是最重要的因素。
本研究开发的XGB模型可以有效预测长期接受血液透析的尿毒症患者发生脑出血的风险,并有助于临床医生做出更个体化、更合理的临床决策。维持性血液透析(MHD)患者的脑出血事件与血清低密度脂蛋白、高密度脂蛋白、C反应蛋白、血红蛋白水平以及透析前收缩压水平相关。