Postgraduate Program in Health Sciences, State University of Maringa, Maringa, Brazil.
Department of Medicine, State University of Maringa, Maringa, Brazil.
PLoS One. 2020 Dec 10;15(12):e0243558. doi: 10.1371/journal.pone.0243558. eCollection 2020.
Cardiovascular diseases are the leading cause of deaths globally. Machine learning studies predicting mortality rates for ischemic heart disease (IHD) at the municipal level are very limited. The goal of this paper was to create and validate a Heart Health Care Index (HHCI) to predict risk of IHD based on location and risk factors. Secondary data, geographical information system (GIS) and machine learning were used to validate the HHCI and stratify the IHD municipality risk in the state of Paraná. A positive spatial autocorrelation was found (Moran's I = 0.6472, p-value = 0.001), showing clusters of high IHD mortality. The Support Vector Machine, which had an RMSE of 0.789 and error proportion close to one (0.867), was the best for prediction among eight machine learning algorithms after validation. In the north and northwest regions of the state, HHCI was low and mortality clusters patterns were high. By creating an HHCI through ML, we can predict IHD mortality rate at municipal level, identifying predictive characteristics that impact health conditions of these localities' guided health management decisions for improvements for IHD within the emergency care network in the state of Paraná.
心血管疾病是全球死亡的主要原因。在市级水平上预测缺血性心脏病(IHD)死亡率的机器学习研究非常有限。本文的目的是创建和验证心脏保健指数(HHCI),以根据位置和危险因素预测 IHD 的风险。使用二次数据、地理信息系统(GIS)和机器学习来验证 HHCI,并对巴伊亚州的市级 IHD 风险进行分层。发现了正空间自相关(Moran's I = 0.6472,p 值 = 0.001),表明 IHD 死亡率存在高聚集性。在经过验证后,在 8 种机器学习算法中,支持向量机(RMSE 为 0.789,误差比例接近 1(0.867))是预测效果最好的。在该州的北部和西北部地区,HHCI 较低,死亡率聚类模式较高。通过使用机器学习创建 HHCI,我们可以预测市级的 IHD 死亡率,确定影响这些地区健康状况的预测特征,为改善巴伊亚州紧急护理网络内的 IHD 状况提供指导,做出健康管理决策。