A Learning Health-Care System for Improving Renal Health Services in Peru Using Data Analytics

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Vielka Mita, Liliana Castillo, José Luis Castillo-Sequera, Lenis Wong
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Abstract

The health sector around the world faces the continuous challenge of improving the services provided to patients. Therefore, digital transformation in health services plays a key role in integrating new technologies such as artificial intelligence. However, the health system in Peru has not yet taken the big step towards digitising its services, currently ranking 71st according to the World Health Organisation (WHO). This article proposes a learning health system for the management and monitoring of private health services in Peru based on the three key components of intelligent health care: (1) a health data platform (HDP); (2) intelligent technologies (IT); and (3) an intelligent health care suite (HIS). The solution consists of four layers: (1) data source, (2) data warehousing, (3) data analytics, and (4) visualization. In layer 1, all data sources are selected to create a database. The proposed learning health system is built, and the data storage is executed through the extract, transform and load (ETL) process in layer 2. In layer 3, the Kaggle dataset and the decision tree (DT) and random forest (RF) algorithms are used to predict the diagnosis of disease, resulting in the RF algorithm having the best performance. Finally, in layer 4, the intelligent health-care suite dashboards and interfaces are designed. The proposed system was applied in a clinic focused on preventing chronic kidney disease. A total of 100 patients and six kidney health experts participated. The results proved that the diagnosis of chronic kidney disease by the learning health system had a low error rate in positive diagnoses (err = 1.12%). Additionally, it was demonstrated that experts were “satisfied” with the dashboards and interfaces of the intelligent health-care suite as well as the quality of the learning health system.
利用数据分析改善秘鲁肾脏健康服务的学习型卫生保健系统
世界各地的卫生部门面临着改善向患者提供的服务的持续挑战。因此,卫生服务的数字化转型在整合人工智能等新技术方面发挥着关键作用。然而,秘鲁的卫生系统尚未向服务数字化迈出一大步,根据世界卫生组织(WHO)的排名,秘鲁目前排名第71位。本文基于智能医疗的三个关键组成部分,提出了一个用于秘鲁私人医疗服务管理和监测的学习型医疗系统:(1)健康数据平台(HDP);(2)智能技术;(3)智能医疗套件(HIS)。该解决方案由四层组成:(1)数据源、(2)数据仓库、(3)数据分析和(4)可视化。在第1层中,选择所有数据源来创建数据库。构建了所提出的学习健康系统,并通过第二层的提取、转换和加载(ETL)过程进行数据存储。在第三层,使用Kaggle数据集和决策树(DT)和随机森林(RF)算法进行疾病诊断预测,其中RF算法的性能最好。最后,在第4层,设计了智能医疗保健套件仪表板和接口。该系统被应用于一个专注于预防慢性肾脏疾病的诊所。共有100名患者和6名肾脏健康专家参与。结果表明,学习卫生系统对慢性肾脏病的阳性诊断错误率较低(err = 1.12%)。此外,专家们对智能医疗套件的仪表板和界面以及学习医疗系统的质量感到“满意”。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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