Prediction and Diagnosis of Diabetes Mellitus Using a Water Wave Optimization Algorithm

S. T. Dehkordi, A. K. Bardsiri, M. Zahedi
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引用次数: 9

Abstract

Data mining is an appropriate way to discover information and hidden patterns in large amounts of data, where the hidden patterns cannot be easily discovered in normal ways. One of the most interesting applications of data mining is the discovery of diseases and disease patterns through investigating patients' records. Early diagnosis of diabetes can reduce the effects of this devastating disease. A common way to diagnose this disease is performing a blood test, which, despite its high precision, has some disadvantages such as: pain, cost, patient stress, lack of access to a laboratory, and so on. Diabetic patients’ information has hidden patterns, which can help you investigate the risk of diabetes in individuals, without performing any blood tests. Use of neural networks, as powerful data mining tools, is an appropriate method to discover hidden patterns in diabetic patients’ information. In this paper, in order to discover the hidden patterns and diagnose diabetes, a water wave optimization(WWO) algorithm; as a precise metaheuristic algorithm, was used along with a neural network to increase the precision of diabetes prediction. The results of our implementation in the MATLAB programming environment, using the dataset related to diabetes, indicated that the proposed method diagnosed diabetes at a precision of 94.73%,sensitivity of 94.20%, specificity of 93.34%, and accuracy of 95.46%, and was more sensitive than methods such as: support vector machines, artificial neural networks, and decision trees.
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用水波优化算法预测和诊断糖尿病
数据挖掘是在大量数据中发现信息和隐藏模式的一种合适的方法,在这些数据中,隐藏模式不容易用常规方法发现。数据挖掘最有趣的应用之一是通过调查病人的记录来发现疾病和疾病模式。糖尿病的早期诊断可以减少这种毁灭性疾病的影响。诊断这种疾病的一种常用方法是进行血液检查,尽管这种方法精度很高,但也有一些缺点,例如:疼痛、费用、患者压力、无法进入实验室等等。糖尿病患者的信息具有隐藏的模式,这可以帮助您调查个人患糖尿病的风险,而无需进行任何血液检查。利用神经网络作为强大的数据挖掘工具,是发现糖尿病患者信息中隐藏模式的合适方法。为了发现糖尿病的隐藏模式,诊断糖尿病,本文提出了一种水波优化(WWO)算法;作为一种精确的元启发式算法,该算法与神经网络相结合,提高了糖尿病预测的精度。在MATLAB编程环境下,利用糖尿病相关数据集对糖尿病进行诊断,结果表明,该方法诊断糖尿病的精密度为94.73%,灵敏度为94.20%,特异度为93.34%,准确度为95.46%,比支持向量机、人工神经网络、决策树等方法更敏感。
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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