Automatic diagnosis of neurological diseases using MEG signals with a deep neural network

被引:34
作者
Aoe, Jo [1 ]
Fukuma, Ryohei [2 ]
Yanagisawa, Takufumi [1 ,2 ,3 ]
Harada, Tatsuya [4 ,5 ]
Tanaka, Masataka [2 ]
Kobayashi, Maki [2 ]
Inoue, You [2 ]
Yamamoto, Shota [2 ]
Ohnishi, Yuichiro [2 ]
Kishima, Haruhiko [2 ]
机构
[1] Osaka Univ, Inst Adv Cocreat Studies, Suita, Osaka, Japan
[2] Osaka Univ, Dept Neurosurg, Grad Sch Med, Suita, Osaka, Japan
[3] JST PRESTO, Suita, Osaka, Japan
[4] Univ Tokyo, Grad Sch Informat Sci & Technol, Dept Mechanoinformat, Tokyo, Japan
[5] RIKEN, Tokyo, Japan
关键词
MULTIPLE-SCLEROSIS LESIONS; EEG SIGNALS; CLASSIFICATION; EPILEPSY; ALGORITHM; DYNAMICS; IMAGES; MRI;
D O I
10.1038/s41598-019-41500-x
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
The application of deep learning to neuroimaging big data will help develop computer-aided diagnosis of neurological diseases. Pattern recognition using deep learning can extract features of neuroimaging signals unique to various neurological diseases, leading to better diagnoses. In this study, we developed MNet, a novel deep neural network to classify multiple neurological diseases using resting-state magnetoencephalography (MEG) signals. We used the MEG signals of 67 healthy subjects, 26 patients with spinal cord injury, and 140 patients with epilepsy to train and test the network using 10-fold cross-validation. The trained MNet succeeded in classifying the healthy subjects and those with the two neurological diseases with an accuracy of 70.7 +/- 10.6%, which significantly exceeded the accuracy of 63.4 +/- 12.7% calculated from relative powers of six frequency bands (delta: 1-4 Hz; 0: 4-8 Hz; low-alpha: 8-10 Hz; high-alpha: 10-13 Hz; beta: 13-30 Hz; low-gamma: 30-50 Hz) for each channel using a support vector machine as a classifier (p = 4.2 x 10(-2)). The specificity of classification for each disease ranged from 8694%. Our results suggest that this technique would be useful for developing a classifier that will improve neurological diagnoses and allow high specificity in identifying diseases.
引用
收藏
页数:9
相关论文
共 57 条
[41]  
Okuta R., 2017, P WORKSH MACH LEARN
[42]  
Pedregosa F, 2011, J MACH LEARN RES, V12, P2825
[43]   Current-source density estimation based on inversion of electrostatic forward solution: Effects of finite extent of neuronal activity and conductivity discontinuities [J].
Pettersen, Klas H. ;
Devor, Anna ;
Ulbert, Istvan ;
Dale, Anders M. ;
Einevoll, Gaute T. .
JOURNAL OF NEUROSCIENCE METHODS, 2006, 154 (1-2) :116-133
[44]  
Razali Najwani, 2011, 2011 IEEE 15th International Symposium on Consumer Electronics, P536, DOI 10.1109/ISCE.2011.5973888
[45]   Deep learning [J].
Rusk, Nicole .
NATURE METHODS, 2016, 13 (01) :35-35
[46]   The advantage of combining MEG and EEG:: Comparison to fMRI in focally stimulated visual cortex [J].
Sharon, Dahlia ;
Hamalainen, Matti S. ;
Tootell, Roger B. H. ;
Halgren, Eric ;
Belliveau, John W. .
NEUROIMAGE, 2007, 36 (04) :1225-1235
[47]   Connectivity analysis of quantitative Eelectroencephalogram background activity in Autism disorders with short time Fourier transform and Coherence [J].
Sheikhani, Ali ;
Behnam, Hamid ;
Mohammadi, Mohammad Reza ;
Noroozian, Maryam ;
Golabi, Pari .
CISP 2008: FIRST INTERNATIONAL CONGRESS ON IMAGE AND SIGNAL PROCESSING, VOL 1, PROCEEDINGS, 2008, :207-+
[48]   Clustering technique-based least square support vector machine for EEG signal classification [J].
Siuly ;
Li, Yan ;
Wen, Peng .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2011, 104 (03) :358-372
[49]   Medical Big Data: Neurological Diseases Diagnosis Through Medical Data Analysis [J].
Siuly S. ;
Zhang Y. .
Data Science and Engineering, 2016, 1 (2) :54-64
[50]  
Srivastava N, 2014, J MACH LEARN RES, V15, P1929