Diagnosis of chronic disease in a predictive model using machine learning algorithm

I. Preethi, K. Dharmarajan
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引用次数: 4

Abstract

Today, digitization in healthcare industry takes the advantage on advancements in clinical healthcare services. The extensive growth in data for monitoring and analyzing the patients outcomes in predicting and diagnosis of chronic diseases lacks in traditional methods and are replaced by technologies to gather the most relevant insights from the medical data by using predictive analytics with very useful tool of machine learning. The importance of using machine learning algorithms in the model for diagnosis, shows its ability in high classification accuracy rate in reduced computational time. In this paper, a study of various machine learning techniques are used in classification of chronic diseases like heart, kidney, diabetes and cancer from multiple dataset by reducing the dimensionality using feature selection. Feature selection plays a significant role in machine learning by selecting the critical features for diagnosing chronic diseases. The performance of the classifiers are evaluated based on several metrics like classification accuracy, sensitivity, specificity, precision, F1- measure, AUC (the area under the receiver operating characteristic (ROC) curve) criterion, and processing time.
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基于机器学习算法的慢性病诊断预测模型
今天,医疗保健行业的数字化利用了临床医疗保健服务的进步。在慢性病的预测和诊断中,用于监测和分析患者结果的数据的广泛增长是传统方法所缺乏的,取而代之的是通过使用预测分析和非常有用的机器学习工具从医疗数据中收集最相关见解的技术。在模型诊断中使用机器学习算法的重要性,显示了其在减少计算时间内具有较高分类准确率的能力。本文研究了多种机器学习技术,通过特征选择降维,从多个数据集中对心脏、肾脏、糖尿病和癌症等慢性疾病进行分类。特征选择通过选择诊断慢性疾病的关键特征在机器学习中起着重要作用。分类器的性能评估基于几个指标,如分类精度,灵敏度,特异性,精度,F1-测度,AUC(接收者工作特征(ROC)曲线下的面积)标准和处理时间。
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