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Detection of Rheumatoid Arthritis From Hand Radiographs Using A Convolutional Neural Network

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2020

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Springer London Ltd

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Abstract

Introduction Plain hand radiographs are the first-line and most commonly used imaging methods for diagnosis or differential diagnosis of rheumatoid arthritis (RA) and for monitoring disease activity. In this study, we used plain hand radiographs and tried to develop an automated diagnostic method using the convolutional neural networks to help physicians while diagnosing rheumatoid arthritis. Methods A convolutional neural network (CNN) is a deep learning method based on a multilayer neural network structure. The network was trained on a dataset containing 135 radiographs of the right hands, of which 61 were normal and 74 RA, and tested it on 45 radiographs, of which 20 were normal and 25 RA. Results The accuracy of the network was 73.33% and the error rate 0.0167. The sensitivity of the network was 0.6818; the specificity was 0.7826 and the precision 0.7500. Conclusion Using only pixel information on hand radiographs, a multi-layer CNN architecture with online data augmentation was designed. The performance metrics such as accuracy, error rate, sensitivity, specificity, and precision state shows that the network is promising in diagnosing rheumatoid arthritis.

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Convolutional Neural Network, Deep Learning, Plain Hand Radiographs, Rheumatoid Arthritis

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Citation

Üreten, K.; Erbay, H.; Maraş, H.H., "Detection of Rheumatoid Arthritis From Hand Radiographs Using A Convolutional Neural Network", Clinical Rheumatology, Vol. 39, No. 4, pp. 969-974, (2020).

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39

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4

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969

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974