基于虹膜学的机器学习糖尿病预测系统

Ratna Aminah, A. H. Saputro
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引用次数: 9

摘要

糖尿病是一种最初症状往往无法察觉的疾病。因此,许多糖尿病病例没有及早发现。虹膜学是早期发现糖尿病的另一种方法。这种方法可以在疾病症状出现之前揭示体内器官的状态。本文利用机器学习技术构建了基于虹膜学或虹膜图像的糖尿病预测系统。机器学习用于简化检测过程。所开发的系统由眼图像采集仪器和图像处理算法组成。使用Camera Iriscope Iris Analyzer irridology采集虹膜图像。特征提取过程采用灰度共生矩阵(GLCM)方法,获取图像的纹理特征。使用kNN (k最近邻)方法对糖尿病和非糖尿病进行分类。然后使用k-fold交叉验证方法验证分类结果,并使用混淆矩阵进行评估。对两组受试者进行评估:一组是非糖尿病患者16名,糖尿病患者11名。结果表明,该方法准确率为85.6%,假阳性率(FPR)为11.07%,假阴性率(FNR)为20.40%,特异性为0.889,敏感性为0.796。
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Diabetes Prediction System Based on Iridology Using Machine Learning
Diabetes is a disease whose initial symptoms are often undetectable. As a result, many cases of diabetes are not detected early. Iridology can be an alternative to detect diabetes early. This method can reveal the state of the organ in the body before the appearance of symptoms of a disease. In this paper, a diabetes prediction system based on iridology or through iris images was constructed using machine learning. Machine learning used to simplify the detection process. The developed system consists of eye image acquisition instruments and image processing algorithms. Iris images were captured using Camera Iriscope Iris Analyzer Iridology. The GLCM (Gray Level Co-Occurrence Matrix) method is used for feature extraction processes to obtaining texture characteristics in the image. The kNN (k Nearest Neighbor) method are used to classify diabetic and non-diabetic classes. The classification results are then validated by using the k-fold cross-validation method and evaluated by using the confusion matrix. Two subject groups were evaluated: one was 16 subjects non-diabetic and 11 subjects diabetic. The results show that the accuracy is 85.6%, false-positive rate (FPR) is 11.07%, false-negative rate (FNR) 20.40%, specificity 0.889, and sensitivity 0.796.
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