4.6 Article

Multikernel Capsule Network for Schizophrenia Identification

期刊

IEEE TRANSACTIONS ON CYBERNETICS
卷 52, 期 6, 页码 4741-4750

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2020.3035282

关键词

Kernel; Biological neural networks; Routing; Functional magnetic resonance imaging; Feature extraction; Training; Diseases; Brain connectivity; deep learning (DL); functional magnetic resonance imaging (fMRI); multikernel capsule network (MKCapsnet); schizophrenia diagnosis

资金

  1. National Natural Science Foundation of China [61806149]
  2. Guangdong Basic and Applied Basic Research Foundation [2020A1515010991]
  3. Ministry of Education and Science of the Russian Federation [14.756.31.0001]
  4. Polish National Science Center [UMO-2016/20/W/NZ4/00354]

向作者/读者索取更多资源

A multi-kernel capsule network (MKCapsnet) was proposed for identifying schizophrenia, considering brain anatomical structure and outperforming existing methods. Comparison of performances using different parameters and illustration of routing process revealed characteristics of the proposed method.
Schizophrenia seriously affects the quality of life. To date, both simple (e.g., linear discriminant analysis) and complex (e.g., deep neural network) machine-learning methods have been utilized to identify schizophrenia based on functional connectivity features. The existing simple methods need two separate steps (i.e., feature extraction and classification) to achieve the identification, which disables simultaneous tuning for the best feature extraction and classifier training. The complex methods integrate two steps and can be simultaneously tuned to achieve optimal performance, but these methods require a much larger amount of data for model training. To overcome the aforementioned drawbacks, we proposed a multikernel capsule network (MKCapsnet), which was developed by considering the brain anatomical structure. Kernels were set to match partition sizes of the brain anatomical structure in order to capture interregional connectivities at the varying scales. With the inspiration of the widely used dropout strategy in deep learning, we developed capsule dropout in the capsule layer to prevent overfitting of the model. The comparison results showed that the proposed method outperformed the state-of-the-art methods. Besides, we compared performances using different parameters and illustrated the routing process to reveal characteristics of the proposed method. MKCapsnet is promising for schizophrenia identification. Our study first utilized the capsule neural network for analyzing functional connectivity of magnetic resonance imaging (MRI) and proposed a novel multikernel capsule structure with the consideration of brain anatomical parcellation, which could be a new way to reveal brain mechanisms. In addition, we provided useful information in the parameter setting, which is informative for further studies using a capsule network for other neurophysiological signal classification.

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