Diagnogsis of Diabete mellitus Using Deep Neural Network

Ömer Deperli̇oğlu, U. Köse
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引用次数: 3

Abstract

The basis for the determination of diabetes mellitus is the classification studies that constitute the infrastructure of clinical decision support systems. The main purpose of classification studies is to increase the classification performance and increase the diagnostic rate. Different classification methods and different optimization algorithms are used for this. In this context, in this study, a classification study with Autoencoder deep neural networks was performed for the diagnosis of diabetes mellitus. The Pima Indian diabetes dataset in the UCI machine learning laboratory, which is widely used in the classification study, was used. The results of the study were compared with the results of previous which focuses on the diagnosis of diabetes studies using the same UCI machine learning dataset. The obtained classification accuracy is 97.3% and higher than the previously mentioned classification methods. The obtained evaluations show that the proposed method is very efficient and increases the classification success.
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应用深度神经网络诊断糖尿病
诊断糖尿病的基础是分类研究,分类研究是临床决策支持系统的基础。分类研究的主要目的是提高分类性能,提高诊断率。为此采用了不同的分类方法和优化算法。在此背景下,本研究采用Autoencoder深度神经网络对糖尿病的诊断进行分类研究。使用UCI机器学习实验室的皮马印第安糖尿病数据集,该数据集广泛用于分类研究。该研究的结果与之前的结果进行了比较,该结果侧重于使用相同的UCI机器学习数据集诊断糖尿病的研究。得到的分类准确率为97.3%,高于前面提到的分类方法。结果表明,该方法具有较高的分类效率,提高了分类成功率。
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