Prediction of Cardiovascular Disease using DeepLearning Algorithm

S. Sherly, J. Sandhiya, S. Priyanga, M. A. S. Victoriya, K. S. Ajantha
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Abstract

The leading cause of death, which affects millions of individuals globally is the cardiovascular disease. Heart problems are a major issue in health care, particularly in the field of cardiology. Due to a number of risk factors, including diabetes, high blood pressure, high cholesterol, an irregular pulse rate, obesity, and smoking, cardiac illness is difficult to detect. Due to these limitations, researchers are now using Data Mining and Deep Learning Algorithms to predict heart related disorders. The Cardio Vascular Disease (CVD) is as complicated as it sounds if left untreated. So, the early prediction of this could save millions of people from silent attacks, myocardial infarction etc. Many machine learning algorithms like Naïve Bayes, K-Nearest Neighbor Algorithm (KNN), Decision Trees (DT), Genetic algorithm (GA) are used for cardiovascular disease prediction using text datasets and their efficiencies tend to differ. Generally, convolutional neural network (CNN) algorithm is mostly used for prediction using images. But our concept is to switch over this and predict heart disease using the CNN algorithm for Cleveland dataset which consists of numerical. In this dataset we consider 14 attributes and used K Nearest Neighbor and CNN algorithm. In terms of accuracy, CNN beats KNN, proving that deep learning algorithms may support decision-making and prediction-making based on vast volumes of data supplied by the healthcare sector.
基于深度学习算法的心血管疾病预测
心血管疾病是影响全球数百万人死亡的主要原因。心脏问题是医疗保健中的一个主要问题,特别是在心脏病学领域。由于许多危险因素,包括糖尿病、高血压、高胆固醇、脉搏不规则、肥胖和吸烟,心脏病很难被发现。由于这些限制,研究人员现在正在使用数据挖掘和深度学习算法来预测心脏相关疾病。如果不及时治疗,心血管疾病(CVD)就像听起来一样复杂。因此,这方面的早期预测可以拯救数百万人免于无声发作、心肌梗塞等。许多机器学习算法,如Naïve贝叶斯,k -最近邻算法(KNN),决策树(DT),遗传算法(GA),用于使用文本数据集进行心血管疾病预测,它们的效率往往不同。一般来说,卷积神经网络(CNN)算法主要用于图像预测。但是我们的概念是转换这个,用CNN算法来预测心脏病克利夫兰数据集由数字组成。在这个数据集中,我们考虑了14个属性,并使用了K最近邻和CNN算法。在准确性方面,CNN击败了KNN,证明深度学习算法可以支持基于医疗行业提供的大量数据的决策和预测。
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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