Improving Diagnosis Accuracy of Diabetic Disease Using Radial Basis Function Network and Fuzzy Clustering

H. Hosseini, Amid Khatibi Bardsiri
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引用次数: 1

Abstract

Introduction: Nowadays, medical sciences and physicians face a huge amount of data. Diabetes is one of the most expensive glands in the world. Since it is not always easy to diagnose the disease, the physician should examine the outcome of patient tests and decisions made in the past for patients with similar conditions to make an appropriate decision. Due to the large number of patients and the multiple tests performed on each patient, an automated tool for exploring previous patients is needed.Materials and Methods: One of the most important methods used to derive data is data mining. Due to the high number of diabetic patients, timely diagnosis and treatment of this disease can reduce the risk of death and its associated medical costs. So far, different systems have been proposed for the diagnosis and prediction of diabetes, but fuzzy logic based systems are used in this study to increase accuracy and efficiency. In the proposed model, fuzzy clustering is first grouped into separate clusters, and then the radial neural network is predicted for each patient with diabetes mellitus. A compatible neuro-fuzzy inference system has also been used to diagnose diabetes.Results: In this paper different classification techniques have been used in MATLAB software to diagnose diabetes mellitus and to classify patients as diabetic and non diabetic. The dataset used is extracted from the UCI database. The accuracy of the proposed method is 97.14% which is significantly higher than other models of diabetes diagnosis.Conclusion: The application of two fuzzy models has significantly improved the accuracy of diagnosis of diabetes compared to other models proposed in this field.
利用径向基函数网络和模糊聚类提高糖尿病疾病诊断准确率
导读:如今,医学科学和医生面临着大量的数据。糖尿病是世界上最昂贵的腺体之一。由于诊断这种疾病并不总是容易的,医生应该检查病人的检查结果和过去对有类似情况的病人作出的决定,以作出适当的决定。由于患者数量众多,而且每个患者都要进行多次检查,因此需要一种自动化的工具来探索以前的患者。材料和方法:用于导出数据的最重要的方法之一是数据挖掘。由于糖尿病患者人数众多,及时诊断和治疗这种疾病可以降低死亡风险和相关的医疗费用。到目前为止,已经提出了不同的系统用于糖尿病的诊断和预测,但本研究采用基于模糊逻辑的系统来提高准确性和效率。在该模型中,首先将模糊聚类划分为单独的聚类,然后对每个糖尿病患者进行径向神经网络预测。一个兼容的神经模糊推理系统也被用于诊断糖尿病。结果:本文在MATLAB软件中采用了不同的分类技术对糖尿病进行诊断,并将患者分为糖尿病患者和非糖尿病患者。使用的数据集是从UCI数据库中提取的。该方法的准确率为97.14%,显著高于其他糖尿病诊断模型。结论:两种模糊模型的应用相比于该领域的其他模型,显著提高了糖尿病诊断的准确性。
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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