Differentiation between multiple sclerosis and neuromyelitis optica spectrum disorders by multiparametric quantitative MRI using convolutional neural network

被引:18
作者
Hagiwara, Akifumi [1 ]
Otsuka, Yujiro [1 ,2 ,3 ]
Andica, Christina [1 ]
Kato, Shimpei [1 ,4 ]
Yokoyama, Kazumasa [5 ]
Hori, Masaaki [1 ,6 ]
Fujita, Shohei [1 ,4 ]
Kamagata, Koji [1 ]
Hattori, Nobutaka [5 ]
Aoki, Shigeki [1 ]
机构
[1] Juntendo Univ, Dept Radiol, Sch Med, Bunkyo Ku, 1-2-1 Hongo, Tokyo 1138421, Japan
[2] Milliman Inc, Urbannet Kojimachi Bldg 8F,1-6-2 Kojimachi, Tokyo 1020083, Japan
[3] Plusman LLC, Chiyoda Ku, 2F 1-3-6 Hirakawacho, Tokyo 1020093, Japan
[4] Univ Tokyo, Grad Sch Med, Dept Radiol, Bunkyo Ku, 7-3-1 Hongo, Tokyo 1138655, Japan
[5] Juntendo Univ, Dept Neurol, Sch Med, Bunkyo Ku, 1-2-1 Hongo, Tokyo 1138421, Japan
[6] Toho Univ, Dept Radiol, Omori Med Ctr, Ota Ku, 6-11-1 Omorinishi, Tokyo 1438541, Japan
关键词
Deep learning; Multiple sclerosis; Magnetic resonance imaging; Neuromyelitis optica spectrum disorder; Multiparametric quantitative imaging; BRAIN; QUANTIFICATION; PATIENT;
D O I
10.1016/j.jocn.2021.02.018
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Multiple sclerosis and neuromyelitis optica spectrum disorders are both neuroinflammatory diseases and have overlapping clinical manifestations. We developed a convolutional neural network model that differentiates between the two based on magnetic resonance imaging data. Thirty-five patients with relapsing-remitting multiple sclerosis and eighteen age-, sex-, disease duration-, and Expanded Disease Status Scale-matched patients with anti-aquaporin-4 antibody-positive neuromyelitis optica spectrum disorders were included in this study. All patients were scanned on a 3-T scanner using a multi dynamic multi-echo sequence that simultaneously measures R1 and R2 relaxation rates and proton density. R1, R2, and proton density maps were analyzed using our convolutional neural network model. To avoid overfitting on a small dataset, we aimed to separate features of images into those specific to an image and those common to the group, based on SqueezeNet. We used only common features for classification. Leave-one-out cross validation was performed to evaluate the performance of the model. The area under the receiver operating characteristic curve of the developed convolutional neural network model for differentiating between the two disorders was 0.859. The sensitivity to multiple sclerosis and neuromyelitis optica spectrum disorders, and accuracy were 80.0%, 83.3%, and 81.1%, respectively. In conclusion, we developed a convolutional neural network model that differentiates between multiple sclerosis and neuromyelitis optica spectrum disorders, and which is designed to avoid overfitting on small training datasets. Our proposed algorithm may facilitate a differential diagnosis of these diseases in clinical practice. ? 2021 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
引用
收藏
页码:55 / 58
页数:4
相关论文
共 25 条
[1]  
[Anonymous], 2015, ACS SYM SER
[2]   Gray matter MRI differentiates neuromyelitis optica from multiple sclerosis using random forest [J].
Eshaghi, Arman ;
Wottschel, Viktor ;
Cortese, Rosa ;
Calabrese, Massimiliano ;
Sahraian, Mohammad Ali ;
Thompson, Alan J. ;
Alexander, Daniel C. ;
Ciccarelli, Olga .
NEUROLOGY, 2016, 87 (23) :2463-2470
[3]   Classification algorithms with multi-modal data fusion could accurately distinguish neuromyelitis optica from multiple sclerosis [J].
Eshaghi, Arman ;
Riyahi-Alam, Sadjad ;
Saeedi, Roghayyeh ;
Roostaei, Tina ;
Nazeri, Arash ;
Aghsaei, Aida ;
Doosti, Rozita ;
Ganjgahi, Habib ;
Bodini, Benedetta ;
Shakourirad, Ali ;
Pakravan, Manijeh ;
Ghana'ati, Hossein ;
Firouznia, Kavous ;
Zarei, Mojtaba ;
Azimi, Amir Reza ;
Sahraian, Mohammad Ali .
NEUROIMAGE-CLINICAL, 2015, 7 :306-314
[4]   Deep Learning Approach for Generating MRA Images From 3D Quantitative Synthetic MRI Without Additional Scans [J].
Fujita, Shohei ;
Hagiwara, Akifumi ;
Otsuka, Yujiro ;
Hori, Masaaki ;
Takei, Naoyuki ;
Hwang, Ken-Pin ;
Irie, Ryusuke ;
Andica, Christina ;
Kamagata, Koji ;
Akashi, Toshiaki ;
Kumamaru, Kanako Kunishima ;
Suzuki, Michimasa ;
Wada, Akihiko ;
Abe, Osamu ;
Aoki, Shigeki .
INVESTIGATIVE RADIOLOGY, 2020, 55 (04) :249-256
[5]   Variability and Standardization of Quantitative Imaging Monoparametric to Multiparametric Quantification, Radiomics, and Artificial Intelligence [J].
Hagiwara, Akifumi ;
Fujita, Shohei ;
Ohno, Yoshiharu ;
Aoki, Shigeki .
INVESTIGATIVE RADIOLOGY, 2020, 55 (09) :601-616
[6]   Linearity, Bias, Intrascanner Repeatability, and Interscanner Reproducibility of Quantitative Multidynamic Multiecho Sequence for Rapid Simultaneous Relaxometry at 3 T A Validation Study With a Standardized Phantom and Healthy Controls [J].
Hagiwara, Akifumi ;
Hori, Masaaki ;
Cohen-Adad, Julien ;
Nakazawa, Misaki ;
Suzuki, Yuichi ;
Kasahara, Akihiro ;
Horita, Moeko ;
Haruyama, Takuya ;
Andica, Christina ;
Maekawa, Tomoko ;
Kamagata, Koji ;
Kumamaru, Kanako Kunishima ;
Abe, Osamu ;
Aoki, Shigeki .
INVESTIGATIVE RADIOLOGY, 2019, 54 (01) :39-47
[7]   SyMRI of the Brain Rapid Quantification of Relaxation Rates and Proton Density, With Synthetic MRI, Automatic Brain Segmentation, and Myelin Measurement [J].
Hagiwara, Akifumi ;
Warntjes, Marcel ;
Hori, Masaaki ;
Andica, Christina ;
Nakazawa, Misaki ;
Kumamaru, Kanako Kunishima ;
Abe, Osamu ;
Aoki, Shigeki .
INVESTIGATIVE RADIOLOGY, 2017, 52 (10) :647-657
[8]  
Iandola F. N., 2016, SqueezeNet: AlexNet-level accuracy with 50x fewer parameters and <0.5MB model size'
[9]   A Novel Deep Learning Approach with a 3D Convolutional Ladder Network for Differential Diagnosis of Idiopathic Normal Pressure Hydrocephalus and Alzheimer's Disease [J].
Irie, Ryusuke ;
Otsuka, Yujiro ;
Hagiwara, Akifumi ;
Kamagata, Koji ;
Kamiya, Kouhei ;
Suzuki, Michimasa ;
Wada, Akihiko ;
Maekawa, Tomoko ;
Fujita, Shohei ;
Kato, Shimpei ;
Nakajima, Madoka ;
Miyajima, Masakazu ;
Motoi, Yumiko ;
Abe, Osamu ;
Aoki, Shigeki .
MAGNETIC RESONANCE IN MEDICAL SCIENCES, 2020, 19 (04) :351-358
[10]   Comparison of myelin water fraction values in periventricular white matter lesions between multiple sclerosis and neuromyelitis optica spectrum disorder [J].
Jeong, In Hye ;
Choi, Joon Yul ;
Kim, Su-Hyun ;
Hyun, Jae-Won ;
Joung, AeRan ;
Lee, Jongho ;
Kim, Ho Jin .
MULTIPLE SCLEROSIS JOURNAL, 2016, 22 (12) :1616-1620