An Intelligent Healthcare system for detecting diabetes using machine learning algorithms

Hassan Kaleem, Saman Liaqat, Malik Tahir Hassan, Aneela Mehmood, Umer Ahmad, A. Ditta
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Abstract

The human disease prediction is specifically a struggling piece of work for an accurate and on time treatment. Around the world, diabetes is a hazardous disease. It affects the various essential organs of the human body, for example, nerves, retinas, and eventually heart. By using models of machine learning algorithms, we can recommend and predict diabetes on various healthcare datasets more accurately with the assistance of an intelligent healthcare recommendation system. Not long ago, for the prediction of diabetes, numerous models and methods of machine learning have been introduced. But despite that, enormous multi-featured healthcare datasets cannot be handled by those systems appropriately. By using Machine Learning, an intelligent healthcare recommendation system is introduced for the prediction of diabetes. Ultimately, the model of machine learning is trained to predict this disease along with K-Fold Cross validation testing.  The evaluation of this intelligent and smart recommendation system is depending on datasets of diabetes and its execution is differentiated from the latest development of previous literatures. Our system accomplished 99.0% of efficiency with the shortest time of 12 Milliseconds, which is highly analyzed by the previous existing models of machine learning. Consequently, this recommendation system is superior for the prediction of diabetes than the previous ones. This system enhances the performance of automatic diagnosis of this disease. Code is available at (https://github.com/RaoHassanKaleem/Diebetes-Detection-using-Machine-Learning-Algorithms).  
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使用机器学习算法检测糖尿病的智能医疗保健系统
人类疾病预测是一项非常困难的工作,需要准确和及时地进行治疗。在世界范围内,糖尿病是一种危险的疾病。它影响人体的各种重要器官,例如神经、视网膜,最终影响心脏。通过使用机器学习算法模型,我们可以在智能医疗推荐系统的帮助下,更准确地在各种医疗数据集上推荐和预测糖尿病。不久前,为了预测糖尿病,人们引入了许多机器学习的模型和方法。但尽管如此,这些系统仍无法适当地处理庞大的多特征医疗保健数据集。利用机器学习技术,提出了一种用于糖尿病预测的智能医疗推荐系统。最终,训练机器学习模型来预测这种疾病,并进行K-Fold交叉验证测试。这种智能智能推荐系统的评估依赖于糖尿病的数据集,其执行与以往文献的最新发展有所区别。我们的系统在12毫秒的最短时间内完成了99.0%的效率,这是之前现有机器学习模型的高度分析。因此,该推荐系统在预测糖尿病方面优于以往的推荐系统。该系统提高了本病的自动诊断性能。代码可从(https://github.com/RaoHassanKaleem/Diebetes-Detection-using-Machine-Learning-Algorithms)获得。
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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