A New Preprocessing Method for Diabetes and Biomedical Data Classification

Sarbast Chalo, İbrahim Berkan Aydilek
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Abstract

People of all ages and socioeconomic levels, all over the world, are being diagnosed with type 2 diabetes at rates that are higher than they have ever been. It is possible for it to be the root cause of a wide variety of diseases, the most notable of which include blindness, renal illness, kidney disease, and heart disease. Therefore, it is of the utmost importance that a system is devised that, based on medical information, is capable of reliably detecting patients who have diabetes. We present a method for the identification of diabetes that involves the training of the features of a deep neural network between five and 10 times using the cross-validation training mode. The Pima Indian Diabetes (PID) data set was retrieved from the database that is part of the machine learning repository at UCI. In addition, the results of ten-fold cross-validation show an accuracy of 97.8%, a recall OF 97.8%, and a precision of 97.8% for PIMA dataset using RF algorithm. This research examined a variety of other biomedical datasets to demonstrate that machine learning may be used to develop an efficient system that can accurately predict diabetes. Several different types of machine learning classifiers, such as KNN, J48, RF, and DT, were utilized in the experimental findings of biological datasets. The findings that were obtained demonstrated that our trainable model is capable of correctly classifying biomedical data. This was demonstrated by achieving higher 99% accuracy, recall, and precision for parikson dataset.
一种新的糖尿病与生物医学数据分类预处理方法
世界各地所有年龄和社会经济水平的人被诊断患有2型糖尿病的比率比以往任何时候都高。它可能是多种疾病的根本原因,其中最显著的包括失明、肾病、肾病和心脏病。因此,最重要的是设计一种基于医学信息的系统,能够可靠地检测糖尿病患者。我们提出了一种识别糖尿病的方法,该方法涉及使用交叉验证训练模式对深度神经网络的特征进行5到10次的训练。皮马印第安人糖尿病(PID)数据集是从UCI机器学习存储库的一部分数据库中检索的。此外,采用RF算法对PIMA数据集进行10倍交叉验证,准确率为97.8%,召回率为97.8%,精密度为97.8%。这项研究检查了各种其他生物医学数据集,以证明机器学习可以用于开发一种可以准确预测糖尿病的有效系统。几种不同类型的机器学习分类器,如KNN、J48、RF和DT,被用于生物数据集的实验结果。得到的结果表明,我们的可训练模型能够正确分类生物医学数据。通过对parikson数据集实现更高的99%的准确率、召回率和精度来证明这一点。
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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