基于机器学习的血液透析开始前透析内低血压早期预警系统的构建。

IF 3.2 4区 医学 Q1 UROLOGY & NEPHROLOGY
Kidney Diseases Pub Date : 2023-06-23 eCollection Date: 2023-10-01 DOI:10.1159/000531619
Daqing Hong, Huan Chang, Xin He, Ya Zhan, Rongsheng Tong, Xingwei Wu, Guisen Li
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引用次数: 0

摘要

引言:透析内低血压(IDH)很普遍,并与高住院率和死亡率相关。本研究旨在探讨IDH的危险因素,并利用人工智能在血液透析前建立早期预警系统,以识别IDH高危患者。材料和方法:从肾脏疾病治疗信息系统中获得四川省人民医院314534次血液透析的数据。IDH被定义为透析期间收缩压下降≥20 mm Hg,平均动脉压下降≥10 mm Hg,或发生需要护理干预的临床低血压事件。预处理后,将数据随机分为训练集(80%)和测试集(20%)。使用四种插值方法、三种特征选择方法和18种机器学习算法来构建预测模型。受试者工作特征曲线下面积(AUC)是评估模型性能的主要指标,而Shapley加性ExPlanation用于解释每个变量对最佳预测模型的贡献。结果:共纳入3906例患者和314534次透析,其中142237例出现IDH(发病率45.2%)。通过人工智能特征筛查确定了19个参数。他们包括年龄、透析前体重、干重、透析前血压、心率、规定的超滤、血细胞计数(中性粒细胞、淋巴细胞、单核细胞、嗜酸性粒细胞、淋巴球和血小板计数)、红细胞压积、血清钙、肌酸酐、尿素、葡萄糖和尿酸。随机森林、梯度增强和逻辑回归是三个最好的模型,AUC分别为0.812(95%可信区间[CI],0.811-0.813)、0.748(95%置信区间,0.747-0.749)和0.743(95%置信度,0.742-0.744)。结论:我们基于透析软件的人工智能警报系统可以用于预测IDH的发生,从而启动相关干预措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Construction of an Early Alert System for Intradialytic Hypotension before Initiating Hemodialysis Based on Machine Learning.

Construction of an Early Alert System for Intradialytic Hypotension before Initiating Hemodialysis Based on Machine Learning.

Construction of an Early Alert System for Intradialytic Hypotension before Initiating Hemodialysis Based on Machine Learning.

Introduction: Intradialytic hypotension (IDH) is prevalent and associated with high hospitalization and mortality rates. The purpose of this study was to explore the risk factors for IDH and use artificial intelligence to establish an early alert system before hemodialysis sessions to identify patients at high risk of IDH.

Materials and methods: We obtained data on 314,534 hemodialysis sessions conducted at Sichuan Provincial People's Hospital from the renal disease treatment information system. IDH was defined as a systolic blood pressure drop ≥20 mm Hg, a mean arterial pressure drop ≥10 mm Hg during dialysis, or the occurrence of clinical hypotensive events requiring nursing intervention. After pre-processing, the data were randomly divided into training (80%) and testing (20%) sets. Four interpolation methods, three feature selection methods, and 18 machine learning algorithms were used to construct predictive models. The area under the receiver operating characteristic curve (AUC) was the main indicator for evaluating the performance of the models, while Shapley Additive ExPlanation was used to explain the contribution of each variable to the best predictive model.

Results: A total of 3,906 patients and 314,534 dialysis sessions were included, of which 142,237 cases showed IDH (incidence rate, 45.2%). Nineteen parameters were identified through artificial intelligence feature screening. They included age, pre-dialysis weight, dry weight, pre-dialysis blood pressure, heart rate, prescribed ultrafiltration, blood cell counts (neutrophil, lymphocyte, monocyte, eosinophil, lymphocyte, and platelet counts), hematocrit, serum calcium, creatinine, urea, glucose, and uric acid. Random forest, gradient boosting, and logistic regression were the three best models, and the AUCs were 0.812 (95% confidence interval [CI], 0.811-0.813), 0.748 (95% CI, 0.747-0.749), and 0.743 (95% CI, 0.742-0.744), respectively.

Conclusion: Our dialysis software-based artificial intelligence alert system can be used to predict IDH occurrence, enabling the initiation of relevant interventions.

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来源期刊
Kidney Diseases
Kidney Diseases UROLOGY & NEPHROLOGY-
CiteScore
6.00
自引率
2.70%
发文量
33
审稿时长
27 weeks
期刊介绍: ''Kidney Diseases'' aims to provide a platform for Asian and Western research to further and support communication and exchange of knowledge. Review articles cover the most recent clinical and basic science relevant to the entire field of nephrological disorders, including glomerular diseases, acute and chronic kidney injury, tubulo-interstitial disease, hypertension and metabolism-related disorders, end-stage renal disease, and genetic kidney disease. Special articles are prepared by two authors, one from East and one from West, which compare genetics, epidemiology, diagnosis methods, and treatment options of a disease.
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