Modified Imperialist Competitive Algorithm (MICA) For Smart Heart Disease Prediction in IoT System

Thangarasan, D. J, P. M, P. Patro, S. J, Maniraj P
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Abstract

For the detection and prognosis of heart disease, Internet of Medical Things (IoMT) technology has recently been implemented in healthcare systems. The intended study's main objective is to foresee heart illness using medical data and imaging to classify data. Preprocessing is done on the input dataset to deal with missing values and incorrect data. IoT devices analyse the data they receive from patients, physicians, or nurses using the Modified Imperialist Competitive Algorithm (MICA). The IoT device's analysis of the data allows for effective and informed judgements to be made by humans, robots, and even other IoT devices. A modified imperialist competitive algorithm is suggested in this research in order to pinpoint the essential characteristics of heart disease. The Modified Imperialist Competitive Algorithm is used to select features for the diagnosis of heart disease (MICA). The improved self-adaptive Bayesian algorithm (ISABA) technique is then used to classify the chosen features into normal and abnormal states. For detecting normal sensor data and abnormal sensor data, respectively, the ISABA approach achieved accuracy of 96.85% and 98.31%. With a 96.32% specificity and a 99.15% maximum accuracy in categorizing images, the proposed model outperformed the competition
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改进的帝国竞争算法(MICA)在物联网系统中的智能心脏病预测
为了心脏病的检测和预后,医疗物联网(IoMT)技术最近已在医疗保健系统中实施。预期研究的主要目的是利用医疗数据和成像对数据进行分类来预测心脏病。对输入数据集进行预处理,以处理缺失值和错误数据。物联网设备使用改良帝国主义竞争算法(MICA)分析从患者、医生或护士那里收到的数据。物联网设备对数据的分析允许人类、机器人甚至其他物联网设备做出有效和明智的判断。本文提出了一种改进的帝国主义竞争算法,以确定心脏病的基本特征。改进的帝国主义竞争算法用于选择心脏病(MICA)诊断的特征。然后利用改进的自适应贝叶斯算法(ISABA)将所选特征分为正常状态和异常状态。对于正常传感器数据和异常传感器数据,ISABA方法的检测准确率分别为96.85%和98.31%。该模型以96.32%的特异性和99.15%的最大准确率在图像分类中脱颖而出
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