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Multiple Sclerosis Identification Based on Fractional Fourier Entropy and a Modified Jaya Algorithm

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journal contribution
posted on 2019-08-01, 11:23 authored by S-H Wang, H Cheng, P Phillips, Y-D Zhang
Aim: Currently, identifying multiple sclerosis (MS) by human experts may come across the problem of “normal-appearing white matter”, which causes a low sensitivity. Methods: In this study, we presented a computer vision based approached to identify MS in an automatic way. This proposed method first extracted the fractional Fourier entropy map from a specified brain image. Afterwards, it sent the features to a multilayer perceptron trained by a proposed improved parameter-free Jaya algorithm. We used cost-sensitivity learning to handle the imbalanced data problem. Results: The 10 × 10-fold cross validation showed our method yielded a sensitivity of 97.40 ± 0.60%, a specificity of 97.39 ± 0.65%, and an accuracy of 97.39 ± 0.59%. Conclusions: We validated by experiments that the proposed improved Jaya performs better than plain Jaya algorithm and other latest bioinspired algorithms in terms of classification performance and training speed. In addition, our method is superior to four state-of-the-art MS identification approaches.

Funding

Natural Science Foundation of China (61602250), Natural Science Foundation of Jiangsu Province (BK20150983, BK20150982), Open fund of Key Laboratory of Guangxi High Schools Complex System and Computational Intelligence (2016CSCI01), Open Fund of Fujian Provincial Key Laboratory of Data Intensive Computing (BD201607), Key Laboratory of Measurement and Control of Complex Systems of Engineering, Southeast University, Ministry of Education (MCCSE2017A02), Open fund for Jiangsu Key Laboratory of Advanced Manufacturing Technology (HGAMTL-1703), Project of Science and Technology of Henan Province (172102210272), Program for Science & Technology Innovation Talents of Henan Province (174100510009), Open Fund of Guangxi Key Laboratory of Manufacturing System & Advanced Manufacturing Technology (17-259-05-011K).

History

Citation

Entropy, 2018, 20 (4), pp. 254

Author affiliation

/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/Department of Informatics

Version

  • VoR (Version of Record)

Published in

Entropy

Publisher

MDPI

issn

1099-4300

Acceptance date

2018-04-03

Copyright date

2018

Available date

2019-08-01

Language

en