基于人工神经网络的CapsNet方法对糖尿病相关重要遗传综合征的分类

N. Rajesh, Amalraj Irudayasamy, M. Mohideen, C. Ranjith
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引用次数: 2

摘要

糖尿病与许多遗传异常或疾病有关,如库欣综合征、沃尔夫勒姆综合征。这些相对不常见的疾病的实际意义源于对驱动流行糖尿病的潜在过程的了解。目前根据临床和生化特征对糖尿病相关综合征进行分类。然而,到目前为止,还没有制定出有效、准确地对糖尿病相关综合征进行分类的专业分类策略。因此,我们引入了一个基于CapsNets的人工神经网络框架来对与糖尿病相关的重要遗传疾病进行分类。在这里,胶囊代表一束或一组神经元,用于保存有关基本主题的数据,并在每张图像中提供精确的信息。采用前沿方法和基本分类模型对建议的方法进行了系统比较。基于capsnets的方法总体准确率为91.4%,灵敏度为89.93%,特异性为90.77%,f1评分值为93.10%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Vital Genetic Syndromes Associated With Diabetes Using ANN-Based CapsNet Approach
Diabetes has been linked to a wide range of genetic abnormalities or disorders like Cushing syndrome, Wolfram’s syndrome. The factual significance of these relatively uncommon disorders originates from the knowledge that supplies into the potential processes driving prevalent diabetes. Diabetes-related syndromes are presently classified based on clinical and biochemical characteristics. However, until now, no expertise classification strategies are developed for classifying diabetes-associated syndrome disorders efficiently and accurately. Thus, we introduce an Artificial Neural Network framework based on CapsNets to categorize vital genetic disorders related to diabetes. Here, a capsule represents a bundle or set of neurons used to retain data about an essential subject and provides precise information in each image. The suggested approach was systematically compared using cutting-edge methods and basic classification models. With an overall 91.4 percent accuracy, the proposed CapsNets-based method provides the best sensitivity89.93%, specificity 90.77%, and F1-score value 93.10%
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