基于虹膜学的机器学习技术在糖尿病诊断中的应用

Ratna Aminah, A. H. Saputro
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引用次数: 5

摘要

补充和替代医学(CAM)是医学领域中基于知识、能力和实践的一种系统和治疗方法。CAM用于维持健康,诊断疾病,或预防和治疗精神和身体疾病。这项技术可以预测和治疗疾病。同时,机器学习作为诊断疾病的工具在生物医学领域的应用也得到了广泛的应用。这项工作的目的是验证虹膜学作为一种有效的科学技术来诊断糖尿病。虹膜学结合机器学习,简化诊断过程。使用Camera Iriscope Iris Analyzer irridology采集虹膜图像。根据虹膜图上胰腺器官的位置裁剪感兴趣区域(ROI)。实现了灰度共生矩阵法进行特征提取。采用五种不同的分类方法对糖尿病和非糖尿病进行分类。然后分别使用k倍交叉验证和混淆矩阵对结果进行验证和评估。受试者分为两组:一组为16名非糖尿病患者,另一组为11名糖尿病患者。结果表明,该方法的最佳准确度为85.6%,特异性为0.90,灵敏度为0.80。
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Application of Machine Learning Techniques for Diagnosis of Diabetes Based on Iridology
Complementary and alternative medicine (CAM) is a system and therapy in the medical field that works based on knowledge, abilities, and practice. CAM is used to maintain health, diagnose disease, or to prevent and treat mental and physical illness. This technique can predict and treat disease. At the same time, machine learning has been widely used in the application of the biomedical field as a tool for diagnosing disease. The purpose of this work is to validate the use of iridology as a valid scientific technique to diagnose diabetes disease. Iridology combined with machine learning to simplify the diagnose process. Iris images were captured using Camera Iriscope Iris Analyzer Iridology. The region of interest (ROI) was cropped according to the location of the pancreas organ on iridology chart. The Gray Level Co-Occurrence Matrix method has been implemented for feature extraction. Five different classifiers method is used to classify diabetic and non-diabetic classes. The results are then validated and evaluated by using the k-fold cross-validation and confusion matrix, respectively. The subject consisted of two groups: one was 16 subjects non-diabetic and 11 subjects diabetic. The results show that the best accuracy is 85.6%, with specificity is 0.90, and the sensitivity is 0.80.
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