神经网络与机器学习方法在心脏病预测中的比较

Omkar Subhash Ghongade, S. K. S. Reddy, Srilatha Tokala, K. Hajarathaiah, M. Enduri, Satish Anamalamudi
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引用次数: 2

摘要

心脏病是世界范围内导致死亡和残疾的主要原因。心脏病的死亡率和发病率可以通过早期发现和治疗大大降低。因此,开发高效、准确的心脏病早期诊断方法已成为医疗领域的当务之急。在这项研究中,我们对现有的用于预测心脏病诊断的监督机器学习方法进行了比较研究,并通过改变K值来提高KNN的准确性。我们使用的数据集包含各种特征,如年龄、性别和心脏病诊断的其他重要指标。然后,我们探索和评估了传统的机器学习算法,如逻辑回归、决策树、随机森林和支持向量机,用于预测分析。许多标准,包括准确性、精度、召回率和F1分数,被用来评估模型的性能。本研究为机器学习算法可以用于预测心脏病的诊断提供了证据。医疗保健提供者和医疗从业者可以利用这项研究的结果来早期发现和管理心脏病。进一步的研究将旨在分析和评估其他机器学习算法,以提高精度和性能。
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A Comparison of Neural Networks and Machine Learning Methods for Prediction of Heart Disease
Heart disease is a major cause of death and disability across the world. Heart disease mortality and morbidity rates can be greatly decreased with early detection and treatment. Hence, the development of efficient and accurate methods for early diagnosis of heart disease has become a priority in the medical field. In this study, we did a comparative study of exiting supervised machine learning approaches for predicting heart disease diagnosis and also improved the accuracy of KNN by changing K values. We used a dataset that consists of a variety of features such as age, gender and other important indicators for heart disease diagnosis. We then explored and evaluated traditional ML algorithms such as logistic regression, decision tree, random forest and SVM for the predictive analysis. A number of criteria, including accuracy, precision, recall, and F1 Score, were used to assess the models' performance. This study provides evidence that ML algorithms can be used to forecast the diagnosis of heart disease. Healthcare providers and medical practitioners can utilize the outcomes of this study for early detection and management of cardiac disease. Further research will aim to analyse and evaluate additional machine learning algorithms to enhance precision and performance.
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