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Heart function monitoring, prediction and prevention of Heart Attacks: Using Artificial Neural Networks

机译:心脏功能监测,预测和预防心脏病发作:使用人工神经网络

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Heart Attacks are the major cause of death in the world today, particularly in India. The need to predict this is a major necessity for improving the country's healthcare sector. Accurate and precise prediction of the heart disease mainly depends on Electrocardiogram (ECG) data and clinical data. These data's must be fed to a non linear disease prediction model. This non linear heart function monitoring module must be able to detect arrhythmias such as tachycardia, bradycardia, myocardial infarction, atrial, ventricular fibrillation, atrial ventricular flutters and PVC's. In this paper we have developed an efficient method to acquire the clinical and ECG data, so as to train the Artificial Neural Network to accurately diagnose the heart and predict abnormalities if any. The overall process can be categorized into three steps. Firstly, we acquire the ECG of the patient by standard 3 lead pre jelled electrodes. The acquired ECG is then processed, amplified and filtered to remove any noise captured during the acquisition stage. This analog data is now converted into digital format by A/D converter, mainly because of its uncertainty. Secondly we acquire 4-5 relevant clinical data's like mean arterial pressure (MAP), fasting blood sugar (FBS), heart rate (HR), cholesterol (CH), and age/gender. Finally we use these two data's i.e. ECG and clinical data to train the neural network for classifying the heart disease and to predict abnormalities in the heart or it's functioning.
机译:心脏病发作是当今世界死亡的主要原因,特别是在印度。需要预测这是改善该国医疗部门的主要必要性。精确且精确地预测心脏病主要取决于心电图(ECG)数据和临床数据。必须将这些数据送入非线性疾病预测模型。这种非线性心脏功能监测模块必须能够检测心律失常,如快速心动过缓,心动过缓,心肌梗死,心房,心室颤动,心房心室脉搏和PVC。在本文中,我们开发了一种获得临床和心电图数据的有效方法,以便训练人工神经网络,以准确诊断心脏并预测异常情况。整个过程可以分为三个步骤。首先,我们通过标准的3个引线预褐喉电极获取患者的心电图。然后处理所获取的ECG,放大和滤波以除去在采集阶段期间捕获的任何噪声。此模拟数据现在由A / D转换器转换为数字格式,主要是因为其不确定性。其次,我们获得4-5个相关的临床数据,如平均动脉压(地图),禁食血糖(FBS),心率(HR),胆固醇(CH)和年龄/性别。最后,我们使用这两个数据的i.e.ECG和临床数据来训练神经网络来分类心脏病,并预测心脏的异常或它的运作。

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