Zhou Tong, Ren Zhouting, Ma Yimei, He Linqian, Liu Jiali, Tang Jincheng, Zhang Heping
Department of Nephrology, Affiliated Hospital of North Sichuan Medical College, Nanchong, China.
Department of Clinical Medicine, North Sichuan Medical College, Nanchong, China.
Heliyon. 2023 Jul 13;9(7):e18263. doi: 10.1016/j.heliyon.2023.e18263. eCollection 2023 Jul.
Bloodstream infection (BSI) is a prevalent cause of admission in hemodialysis (HD) patients and is associated with increased morbidity and mortality. This study aimed to establish a diagnostic, predictive model for the early identification of BSI in HD patients.
HD patients who underwent blood culture testing between August 2018 and March 2022 were enrolled in this study. Machine learning algorithms, including stepwise logistic regression (SLR), Lasso logistic regression (LLR), support vector machine (SVM), decision tree, random forest (RF), and gradient boosting machine (XGboost), were used to predict the risk of developing BSI from the patient's clinical data. The accuracy (ACC) and area under the subject working curve (AUC) were used to evaluate the performance of such models. The Shapley Additive Explanation (SHAP) values were used to explain each feature's predictive value on the models' output. Finally, a simplified nomogram for predicting BSI was devised.
A total of 391 HD patients were enrolled in this study, of whom 74 (18.9%) were diagnosed with BSI. The XGboost model achieved the highest AUC (0.914, 95% confidence interval [CI]: 0.861-0.964) and ACC (86.3%) for BSI prediction. The four most significant co-variables in both the significance matrix plot of the XGboost model variables and the SHAP summary plot were body temperature, dialysis access via a non-arteriovenous fistula (non-AVF), the procalcitonin levels (PCT), and neutrophil-lymphocyte ratio (NLR).
This study created an effective machine-learning model for predicting BSI in HD patients. The model could be used to detect BSI at an early stage and hence guide antibiotic treatment in HD patients.
血流感染(BSI)是血液透析(HD)患者住院的常见原因,与发病率和死亡率增加相关。本研究旨在建立一个诊断预测模型,用于早期识别HD患者的BSI。
本研究纳入了2018年8月至2022年3月期间接受血培养检测的HD患者。使用机器学习算法,包括逐步逻辑回归(SLR)、套索逻辑回归(LLR)、支持向量机(SVM)、决策树、随机森林(RF)和梯度提升机(XGboost),根据患者的临床数据预测发生BSI的风险。使用准确率(ACC)和受试者工作曲线下面积(AUC)评估这些模型的性能。使用夏普利值(SHAP)来解释每个特征对模型输出的预测价值。最后,设计了一个用于预测BSI的简化列线图。
本研究共纳入391例HD患者,其中74例(18.9%)被诊断为BSI。XGboost模型在预测BSI方面达到了最高的AUC(0.914,95%置信区间[CI]:0.861-0.964)和ACC(86.3%)。XGboost模型变量的显著性矩阵图和SHAP汇总图中四个最显著的协变量是体温、非动静脉内瘘(非AVF)的透析通路、降钙素原水平(PCT)和中性粒细胞与淋巴细胞比值(NLR)。
本研究创建了一个有效的机器学习模型,用于预测HD患者的BSI。该模型可用于早期检测BSI,从而指导HD患者的抗生素治疗。