The point of care services and medication have become simpler with efficient consumer electronics devices in a smart healthcare system. Cardiovascular disease is a critical illness which causes heart failure, and early and prompt identification can lessen damage and prevent premature mortality. Machine learning has been used to predict cardiovascular disease (CVD) in the literature. The article explains choosing the best classifier model for the selected feature sets and the distinct feature sets selected using four feature selection models. The paper compares seven classifiers using each of the sixteen feature sets. Originally, the data had 56 attributes and 303 occurrences, of which 87 were in good health, and the remainder had cardiovascular disease (CVD). Demographic data with several features make up the four groups of overall features. Lasso, Tree-based algorithms, Chi-Square and RFE have all been used to choose the four distinct feature sets, each containing five, ten, fifteen, and twenty features, respectively. Seven distinct classifiers have been trained and evaluated for each of the sixteen feature sets. To determine the most effective blend of feature set and model, a total of 112 models have been trained, tested, and their performance has been compared. SVM classifier with fifteen chosen features is shown to be the best in terms of overall accuracy. The healthcare data has been maintained in the cloud and would be accessible to patients, caretakers, and healthcare providers through integration with the Internet of Medical Things (IoMT) enabled smart healthcare. Subsequently, the feature selection model chooses the most appropriate feature for CVD prediction to calibrate the system, and the proposed framework can be utilised to anticipate CVD.
翻译:护理服务和药物的点已经变得更加简单,在智能保健系统中,高效的消费电子设备设备使护理服务和药物的点变得更加简单; 心血管疾病是一种关键疾病,导致心脏衰竭,早期和迅速识别可以减少损害,防止过早死亡; 文献中使用机器学习来预测心血管疾病(CVD); 文章解释了如何选择选定选定功能集的最佳分类模型,以及使用四个特征选择模型选择的特有特征组别。 本文比较了使用16个特征集的7个不同的分类器; 最初,数据有56个属性,303个发生,其中87个为健康状况良好,其余有心血管疾病(CVD); 具有若干特征的人口数据构成四组总体特征。 Lasso, 树基算法, Chi-Squarre 和RFE, 全部用于选择四种不同的特征组别,每组各包含5个、10个、15个和20个特征选择模式。 7个不同的分类器对16个特征集和模型进行了训练和评价; 确定最有效的特性集和模型组合,共培训、测试了112个模型,测试了112个模型,测试,其余的模型构成为四组别构成四组别。 将显示为CHHFHR的精度。 将保持了SM的精精度数据为CM的精度。 和精确度。