心血管疾病患者再入院风险评估系统的设计与开发

Chun-yan Zhu, Shengqiang Chi, Runze Li, Danyang Tong, Yu Tian, Jing-song Li
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引用次数: 5

摘要

近年来,心血管疾病已成为危害人类健康的第一大死因。由于其病因复杂,病程长,在治疗过程中患者再入院率极高,耗费大量医疗资源,住院费用昂贵。为了解决这一问题,本文总结了与患者再入院相关的风险预测的现状及存在的问题。结合数据挖掘技术,设计患者风险评估模型,设计开发心血管疾病患者再入院风险评估系统。风险评估模型包括风险预测、风险因素聚类分析和回归分析三个部分,可自动预测出院患者30天内的风险水平和风险因素。该模型的准确率为90.62%。将模型评估结果与风险控制知识库相结合,可以智能地提出护理人员的个性化健康管理和健康指导,不仅可以帮助医务人员合理配置,还可以更好地引导患者进行自我管理,从而降低再入院率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Development of a Readmission Risk Assessment System for Patients with Cardiovascular Disease
Recently, cardiovascular disease has become the first cause of death for human health. Because of the complex etiology and long duration, the readmission rate for patients is extremely high during therapy, consuming a large amount of medical resources as well as producing expensive hospitalization costs. In order to solve this problem, this paper summarizes the current situation and problems of risk prediction relevant to the readmission for patients. Combined with data mining technology, a risk assessment model for patients was designed, followed by the design and development of readmission risk assessment system for patients with cardiovascular disease. The risk assessment model includes three parts: risk prediction, clustering analysis and regression analysis of risk factors, which can automatically predicate the risk level and risk factors for the discharged patients in thirty days. The model was accurate 90.62% of the time. Combined the model assessment results with risk control knowledge base, a personalized health management and health guidance given by care workers can be put forward intelligently, which can not only help medical personnel in the rational allocation but also guide patients to carry out self-management better, resulting in the decrease of readmission rate.
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