Department of Biomedical Engineering, College of Engineering and Technology, SRM Institute of Science and Technology, Kattankulathur, Chennai, Tamil Nadu, 603203, India.
Department of Biomedical Engineering, Easwari Engineering college, Ramapuram, Chennai, Tamil Nadu, India.
Sci Rep. 2023 Sep 20;13(1):15638. doi: 10.1038/s41598-023-42111-3.
Rheumatoid arthritis is an autoimmune disease which affects the small joints. Early prediction of RA is necessary for the treatment and management of the disease. The current work presents a deep learning and quantum computing-based automated diagnostic approach for RA in hand thermal imaging. The study's goals are (i) to develop a custom RANet model and compare its performance with the pretrained models and quanvolutional neural network (QNN) to distinguish between the healthy subjects and RA patients, (ii) To validate the performance of the custom model using feature selection method and classification using machine learning (ML) classifiers. The present study developed a custom RANet model and employed pre-trained models such as ResNet101V2, InceptionResNetV2, and DenseNet201 to classify the RA patients and normal subjects. The deep features extracted from the RA Net model are fed into the ML classifiers after the feature selection process. The RANet model, RA Net+ SVM, and QNN model produced an accuracy of 95%, 97% and 93.33% respectively in the classification of healthy groups and RA patients. The developed RANet and QNN models based on thermal imaging could be employed as an accurate automated diagnostic tool to differentiate between the RA and control groups.
类风湿关节炎是一种影响小关节的自身免疫性疾病。RA 的早期预测对于疾病的治疗和管理是必要的。目前的工作提出了一种基于深度学习和量子计算的手部热成像 RA 自动诊断方法。该研究的目的是:(i) 开发一个定制的 RANet 模型,并将其性能与预训练模型和 quanvolutional 神经网络(QNN)进行比较,以区分健康受试者和 RA 患者;(ii) 使用特征选择方法和机器学习 (ML) 分类器验证定制模型的性能。本研究开发了一个定制的 RANet 模型,并使用预训练模型(如 ResNet101V2、InceptionResNetV2 和 DenseNet201)对 RA 患者和正常受试者进行分类。从 RA Net 模型中提取的深度特征在特征选择过程后被输入到 ML 分类器中。RANet 模型、RA Net+SVM 和 QNN 模型在健康组和 RA 患者的分类中分别产生了 95%、97%和 93.33%的准确率。基于热成像的开发的 RANet 和 QNN 模型可以作为一种准确的自动诊断工具,用于区分 RA 和对照组。