TY - JOUR
T1 - Unilateral sensorineural hearing loss identification based on double-density dual-tree complex wavelet transform and multinomial logistic regression
AU - Wang, Shui Hua
AU - Zhang, Yu Dong
AU - Yang, Ming
AU - Liu, Bin
AU - Ramirez, Javier
AU - Gorriz, Juan Manuel
N1 - Publisher Copyright:
© 2019 - IOS Press and the authors. All rights reserved.
PY - 2019
Y1 - 2019
N2 - AIM: Unilateral sensorineural hearing loss is a brain disease, which causes slight morphology changes within brain structure. Traditional manual method may ignore this change. METHOD: In this work, we developed a novel method, based on the double-density dual-tree complex (DDDTCWT), and radial basis function kernel principal component analysis (RKPCA) and multinomial logistic regression (MLR) for the magnetic resonance imaging scanning. We first used DDDTCWT to extract features. Afterwards, we used RKPCA to reduce feature dimensionalities. Finally, MLR was employed to be the classifier. RESULT: The 10 times of 10-fold stratified cross validation showed our method achieved an overall accuracy of 96.44 ± 0.88%. The sensitivities of detecting left-sided sensorineural hearing loss, right-sided sensorineural hearing loss, and healthy controls were 96.67 ± 2.72%, 96.67 ± 3.51%, and 96.00 ± 4.10%, respectively. CONCLUSION: Our method performed better than both raw and improved AlexNet, and eight state-of-the-art methods via a stringent statistical 10 × 10-fold stratified cross validation. The MLR gives better classification performance than decision tree, support vector machine, and back-propagation neural network.
AB - AIM: Unilateral sensorineural hearing loss is a brain disease, which causes slight morphology changes within brain structure. Traditional manual method may ignore this change. METHOD: In this work, we developed a novel method, based on the double-density dual-tree complex (DDDTCWT), and radial basis function kernel principal component analysis (RKPCA) and multinomial logistic regression (MLR) for the magnetic resonance imaging scanning. We first used DDDTCWT to extract features. Afterwards, we used RKPCA to reduce feature dimensionalities. Finally, MLR was employed to be the classifier. RESULT: The 10 times of 10-fold stratified cross validation showed our method achieved an overall accuracy of 96.44 ± 0.88%. The sensitivities of detecting left-sided sensorineural hearing loss, right-sided sensorineural hearing loss, and healthy controls were 96.67 ± 2.72%, 96.67 ± 3.51%, and 96.00 ± 4.10%, respectively. CONCLUSION: Our method performed better than both raw and improved AlexNet, and eight state-of-the-art methods via a stringent statistical 10 × 10-fold stratified cross validation. The MLR gives better classification performance than decision tree, support vector machine, and back-propagation neural network.
KW - Unilateral sensorineural hearing loss
KW - alexNet
KW - double-density dual-tree complex wavelet transform
KW - dual-tree complex wavelet transform
KW - kernel principal component analysis
KW - magnetic resonance imaging
KW - multinomial logistic regression
UR - http://www.scopus.com/inward/record.url?scp=85072563439&partnerID=8YFLogxK
U2 - 10.3233/ICA-190605
DO - 10.3233/ICA-190605
M3 - Article
AN - SCOPUS:85072563439
SN - 1069-2509
VL - 26
SP - 411
EP - 426
JO - Integrated Computer-Aided Engineering
JF - Integrated Computer-Aided Engineering
IS - 4
ER -