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Designing Diabetes Mellitus Detection System Based on Iridology with Convolutional Neural Network Modeling

机译:基于彩色神经网络建模的基于虹膜的设计糖尿病检测系统

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Diabetes mellitus is one of the uncontagious diseases with the highest mortality rate in the world. It happens because of the increased risk of complications caused by the disease. One of the preventative ways is to do early detection, one of which is by using the iridology method. The method detects damage to the body’s organs through the signs that appear on the iris. The paper has introduced a Diabetes Mellitus Detection System to classify diabetes using a Convolutional Neural Network (CNN). The proposed method removed the pupil segmentation step that is important in the traditional machine learning classification system. The squared pupil image size 720×360 pixel was trained using Adam’s algorithm with a learning rate of 0.001 to develop the CNN model. The pupil image was collected using Iriscope Iris Analyzer Iridology 9822U camera. The dataset consists of 35 healthy and 14 diabetes subjects that repeat three times of each person. The proposed approach has an accuracy of 96.43% that better performance compared to traditional machine learning.
机译:糖尿病是世界上死亡率最高的无关疾病之一。它发生,因为疾病引起的并发症风险增加。其中一种预防方法是进行早期检测,其中一个是通过使用虹膜方法。该方法通过虹膜上显示的标志检测到身体器官的损坏。本文介绍了一种糖尿病检测系统,用于使用卷积神经网络(CNN)对糖尿病进行分类。所提出的方法除去了传统机器学习分类系统中重要的瞳孔分割步骤。使用ADAM的算法培训平方瞳孔图像尺寸720×360像素,其学习速率为0.001以开发CNN模型。使用IRISCOPE IRIS分析仪思想9822U相机收集瞳孔图像。数据集由35个健康和14个糖尿病科目组成,重复每个人的三次。与传统机器学习相比,所提出的方法的准确性为96.43%,更好的性能。

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