4.5 Article

A multiple multilayer perceptron neural network with an adaptive learning algorithm for thyroid disease diagnosis in the internet of medical things

Journal

JOURNAL OF SUPERCOMPUTING
Volume 77, Issue 4, Pages 3616-3637

Publisher

SPRINGER
DOI: 10.1007/s11227-020-03404-w

Keywords

Internet of medical things; Multiple multilayer perceptron; Adaptive learning rate; Back-propagation; Thyroid disease; Artificial neural network

Funding

  1. [98-2-37-15607]
  2. [IR.IUMS.REC.1398.798]

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This study focuses on improving the diagnosis accuracy of thyroid diseases in IoMT systems using artificial neural networks. The proposed Multiple Multilayer Perceptron (MMLP) neural network, combined with an adaptive learning rate algorithm, significantly increases the overall accuracy of disease classification. By comparing with standard back-propagation, the MMLP with adaptive learning rate algorithm achieves a 4.6% improvement in accuracy.
Medical information systems such as Internet of Medical Things (IoMT) are gained special attention over recent years. X-ray and MRI images are important sources of information to be examined for a particular type of anomalies. Reports based on the images and laboratory examination results could be mined with machine learning techniques as well. Thyroid disease diagnosis is an important capability of medical information systems. The main objective of this study is to improve the diagnosis accuracy of thyroid diseases from semantic reports and examination results using artificial neural network (ANN) in IoMT systems. In order to improve generalization and avoid over-fitting of ANN during the training process, a set of multiple multilayer perceptron (MMLP) neural network with the back-propagation error ability is proposed in this paper. Moreover, an adaptive learning rate algorithm is used to deal with the slow convergence and the local minima problem of the back-propagation error algorithm. The proposed MMLP significantly increased the overall accuracy of thyroid disease classification. With MMLP with a set of 6 networks, an improvement of 0.7% accuracy is achieved compared to a single network. In addition, comparing to the standard back-propagation, by using an adaptive learning rate algorithm in the proposed MMLP, an improvement of 4.6% accuracy and the final accuracy of 99% have been obtained in IoMT systems. The proposed MMLP is compared to recent researches reported for thyroid disease diagnosis, and its superiority is shown.

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