Algorithm Accuracy Verification in Heart Disease Analysis using Machine Learning

Kummari Karthik, Alla Lokesh Reddy, Rithesh Kulkarni, Mohd. Javeed Mehdi
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Abstract

Recent studies say that heart diseases are the major threat to humans. The diagnosis of the disease is obtained by making predictions from the patient's medical details. A minor error in predicting or diagnosis the results of heart related diseases can cause several problems. To address the issue, several researchers used the hospital data or patients' information for data mining and statistical tools for helping the health care system in the diagnosis of heart diseases. For making people aware of heart disease, a prediction model is required for early detection. The prediction model uses the training data and predicts the results by using several machine learning techniques. Using this training data, the testing of the other data is done precisely. In this research, for the prediction of the results from the given data, machine learning algorithms are used for model development. The prediction includes accuracy of each algorithm. By using machine learning techniques, the correlation between various features present in the dataset is also identified in the research while performing the experiment. The framework makes use of 13 features, including ones related to age, gender, obesity, blood pressure, cholesterol, and cp as various attributes to generate the classifiers. Using these features the output of these classifiers reveals that the accuracy of each algorithm and assists in predicting risk factors related to heart diseases and gives which is best suitable technique for producing the best predictions.
基于机器学习的心脏病分析算法准确性验证
最近的研究表明,心脏病是对人类的主要威胁。这种疾病的诊断是通过对病人的医疗细节进行预测而得到的。在预测或诊断心脏相关疾病的结果时,一个小小的错误可能会导致一些问题。为了解决这个问题,一些研究人员使用医院数据或患者信息进行数据挖掘和统计工具,以帮助医疗保健系统诊断心脏病。为了让人们意识到心脏病,需要一个早期发现的预测模型。预测模型使用训练数据,并使用多种机器学习技术预测结果。利用该训练数据,可以精确地完成其他数据的测试。在本研究中,为了从给定数据中预测结果,机器学习算法被用于模型开发。预测包括各算法的准确率。通过使用机器学习技术,在进行实验的同时,还可以在研究中确定数据集中存在的各种特征之间的相关性。该框架使用13个特征,包括与年龄、性别、肥胖、血压、胆固醇和cp相关的特征作为各种属性来生成分类器。使用这些特征,这些分类器的输出揭示了每个算法的准确性,并有助于预测与心脏病相关的风险因素,并给出了最适合产生最佳预测的技术。
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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