基于性能的深度学习算法在心脏病有效预测中的研究

Rakibul Islam, Abhijith Reddy Beeravolu, Md. Al Habib Islam, Asif Karim, S. Azam, Sanzida Akter Mukti
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引用次数: 4

摘要

心脏病是全世界死亡的主要原因,几乎占死亡人数的三分之一。心脏病是指影响心脏的一系列疾病。这些症状大多取决于心脏病的类型及其危险因素,如高血压、高胆固醇和吸烟。重要的是在病情恶化之前控制住病情,这可以挽救无数人的生命。特别是在偏远地区和不发达国家,在那里没有必要的医疗系统和医疗专家。因此,开发一种能够从临床数据中提供心脏病评估分类的“医疗系统”是很重要的,这样在遥远地方的临床医生就可以快速做出决定,使他们能够管理大量的病人。为此,收集与心脏病有关的临床数据至关重要。从UCI机器学习存储库中收集了包含1190个样本和多变量特征的开源数据集。本研究共选取了14个特征。在这些特征上执行数据归一化,以照顾不相关的值,以便训练的模型可以获得更好的结果。本研究使用径向基函数网络(RBFN)、卷积神经网络(CNN)和人工神经网络(ANN)三种深度学习算法,对所选择、归一化和分离的数据特征进行训练、验证和测试。生成了各种评估度量来理解分类的性能。本研究对RBFN和ANN的分类得分分别达到了98.24%和98.49%。总体而言,CNN模型的准确率达到了98.75%,高于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Performance Based Study on Deep Learning Algorithms in the Efficient Prediction of Heart Disease
Heart disease is the leading cause of death worldwide, nearly accounting for one-third of deaths. Heart disease describes a range of conditions that affect your heart. Most of these symptoms are dependent on the type of heart disease and their risk factors, such as high blood pressure, high cholesterol, and smoking. It is important to control the conditions before they become severe, it can save countless lives. Especially in remote areas and underdeveloped countries where there's no access to necessary medical systems and medical experts at the right time. Therefore, it is important to develop a 'medical system’ that can provide heart disease assessments classifications from the clinical data, so that a clinician at a faraway location can reach a decision quickly, allowing them to manage a large number of patients. To do so, collecting clinical data related to heart disease is crucial. An open source dataset that consists of 1,190 samples and multi-variate features is collected from UCI machine learning repository. A total of 14 features are selected for this research. Data normalization is performed on these features to take care of irrelevant values, so that better results can be achieved by the trained models. This research uses three deep learning algorithms, namely Radial Basis Function Network (RBFN), Convolutional Neural network (CNN) and Artificial Neural Network (ANN) to train, validate, and test them with the selected, normalized, and separated data features. Various evaluation metrics were generated to understand the performance of the classification. This research has achieved classification scores of 98.24 % and 98.49% for RBFN and ANN, respectively. Overall, the CNN model has achieved higher accuracy than the other models, with 98.75 %.
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