中国血液净化2024,Vol.23Issue(3) :209-213.DOI:10.3969/j.issn.1671-4091.2024.03.012

维持性血液透析患者自体动静脉内瘘血栓形成风险预测模型的构建

Construction of risk prediction model for thrombosis in autogenous arteriovenous fistula in mainte-nance hemodialysis patients

金晓瑜 李京淑 吴风如 刘露凝 范宇莹
中国血液净化2024,Vol.23Issue(3) :209-213.DOI:10.3969/j.issn.1671-4091.2024.03.012

维持性血液透析患者自体动静脉内瘘血栓形成风险预测模型的构建

Construction of risk prediction model for thrombosis in autogenous arteriovenous fistula in mainte-nance hemodialysis patients

金晓瑜 1李京淑 1吴风如 1刘露凝 1范宇莹2
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作者信息

  • 1. 150001 哈尔滨,哈尔滨医科大学附属第二医院血液透析中心
  • 2. 150081 哈尔滨,哈尔滨医科大学护理学院
  • 折叠

摘要

目的 基于机器学习方法构建自体动静脉内瘘血栓形成风险预测模型并进行模型验证.方法 以2020年3月—2021年12月在哈尔滨医科大学附属第二医院血液净化中心行维持性血液透析的患者为研究对象,应用逻辑回归(logistic regression,Logistic)和随机森林(random forest,RF)构建模型.绘制各模型受试者工作特征曲线(receiver operating characteristic curve,ROC)和受试者工作特征曲线下面积(area under the curve,AUC),并用准确率、特异度、灵敏度和F1度量评价模型性能.结果 270例MHD患者中,AVF血栓形成组105例(38.89%),非AVF血栓形成组165例(61.11%),最终纳入吸烟史(OR=2.992,95%CI:1.306~6.854,P=0.010)、高血压史(OR=12.376,95%CI:3.432~44.624,P<0.001)、糖尿病史(OR=7.477,95%CI:2.887~19.360,P<0.001)、高血脂史(OR=6.947,95%CI:2.733~17.659,P<0.001)、冠心病史(OR=12.894,95%CI:4.827~34.439,P<0.001)、穿刺点压迫时间(OR=1.132,95%CI:1.053~1.217,P=0.010)、三酰甘油(OR=.322,95%CI:1.005~1.741,P=0.046)等 7 个因素构建风险预测模型.RF预测模型的AUC为0.944,Logistic模型的AUC为0.895(Z=1.688,P=0.092).结论 吸烟史、高血压史、糖尿病史、高血脂史、冠心病史、穿刺点压迫时间和三酰甘油是MHD患者发生AVF血栓形成的高危因素,基于上述危险因素构建的2种预测模型性能良好,可互相补充.

Abstract

Objective To construct a risk prediction model for thrombosis in autogenous arteriovenous fistula(AVF)based on machine learning,and to verify the model.Methods A total of 270 patients undergo-ing maintenance hemodialysis(MHD)in Hemodialysis Center,The Second Affiliated Hospital of Harbin Med-ical University from March 2020 to December 2021 were recruited as the study subjects.Logistic regression and random forest were used to construct the models.Receiver operating characteristic curve and area under the curve(AUC)were plotted for each model.AUC,accuracy,specificity,sensitivity and Fl-score were used to evaluate the models.Results Among 270 MHD patients,105 cases(38.89%)were in AVF thrombosis group and 165 cases(61.11%)in non-AVF thrombosis group.The seven risk factors of smoking history(OR=2.992,95%CI:1.306~6.854,P=0.010),hypertension history(OR=12.376,95%CI:3.432~44.624,P<0.001),diabetes history(OR=7.477,95%CI:2.887~19.360,P<0.001),hyperlipidemia history(OR=6.947,95%CI:2.733~17.659,P<0.001),coronary heart disease history(OR=12.894,95%CI:4.827~34.439,P<0.001),puncture point compression time(OR=1.132,95%CI:1.053~1.217,P=0.010),and triglyceride(OR=1.322,95%CI:1.005~1.741,P=0.046)were used to construct risk prediction models.The area under the curve of random forest prediction model was 0.944,and that of logistic regression model was 0.895(Z=1.688,P=0.092).Conclusion Smoking history,hypertension history,diabetes history,hyperlipidemia history,coro-nary heart disease history,puncture point compression time and triacylglycerol are high risk factors for throm-bosis in AVF in MHD patients.The two models based on the seven risk factors have good predictive perfor-mance and can be complementary each other.

关键词

维持性血液透析/动静脉内瘘/预测模型/机器学习/血栓形成

Key words

Maintenance hemodialysis/Autogenous arteriovenous fistula/Prediction model/Machine learning/Thrombosis

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基金项目

国家自然科学基金(72174048)

黑龙江省省属高校基本科研业务费专项(31041220049)

中央支持地方高校改革发展资金人才培养项目(31021220009)

出版年

2024
中国血液净化
中国医院协会

中国血液净化

CSTPCD
影响因子:1.54
ISSN:1671-4091
参考文献量20
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