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- Publisher Website: 10.1093/biomet/asad049
- Scopus: eid_2-s2.0-85193341158
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Article: Deep Kronecker network
Title | Deep Kronecker network |
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Authors | |
Keywords | Brain imaging Convolutional neural network Kronecker product Tensor decomposition |
Issue Date | 1-Jun-2024 |
Publisher | Oxford University Press |
Citation | Biometrika, 2024, v. 111, n. 2, p. 707-714 How to Cite? |
Abstract | We develop a novel framework for the analysis of medical imaging data, including magnetic resonance imaging, functional magnetic resonance imaging, computed tomography and more. Medical imaging data differ from general images in two main aspects: (i) the sample size is often considerably smaller and (ii) the interpretation of the model is usually more crucial than predicting the outcome. As a result, standard methods such as convolutional neural networks cannot be directly applied to medical imaging analysis. Therefore, we propose the deep Kronecker network, which can adapt to the low sample size constraint and offer the desired model interpretation. Our approach is versatile, as it works for both matrix- and tensor-represented image data and can be applied to discrete and continuous outcomes. The deep Kronecker network is built upon a Kronecker product structure, which implicitly enforces a piecewise smooth property on coefficients. Moreover, our approach resembles a fully convolutional network as the Kronecker structure can be expressed in a convolutional form. Interestingly, our approach also has strong connections to the tensor regression framework proposed by Zhou et al. (2013), which imposes a canonical low-rank structure on tensor coefficients. We conduct both classification and regression analyses using real magnetic resonance imaging data from the Alzheimer’s Disease Neuroimaging Initiative to demonstrate the effectiveness of our approach. |
Persistent Identifier | http://hdl.handle.net/10722/345793 |
ISSN | 2023 Impact Factor: 2.4 2023 SCImago Journal Rankings: 3.358 |
DC Field | Value | Language |
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dc.contributor.author | Feng, Long | - |
dc.contributor.author | Yang, Guang | - |
dc.date.accessioned | 2024-08-28T07:40:46Z | - |
dc.date.available | 2024-08-28T07:40:46Z | - |
dc.date.issued | 2024-06-01 | - |
dc.identifier.citation | Biometrika, 2024, v. 111, n. 2, p. 707-714 | - |
dc.identifier.issn | 0006-3444 | - |
dc.identifier.uri | http://hdl.handle.net/10722/345793 | - |
dc.description.abstract | We develop a novel framework for the analysis of medical imaging data, including magnetic resonance imaging, functional magnetic resonance imaging, computed tomography and more. Medical imaging data differ from general images in two main aspects: (i) the sample size is often considerably smaller and (ii) the interpretation of the model is usually more crucial than predicting the outcome. As a result, standard methods such as convolutional neural networks cannot be directly applied to medical imaging analysis. Therefore, we propose the deep Kronecker network, which can adapt to the low sample size constraint and offer the desired model interpretation. Our approach is versatile, as it works for both matrix- and tensor-represented image data and can be applied to discrete and continuous outcomes. The deep Kronecker network is built upon a Kronecker product structure, which implicitly enforces a piecewise smooth property on coefficients. Moreover, our approach resembles a fully convolutional network as the Kronecker structure can be expressed in a convolutional form. Interestingly, our approach also has strong connections to the tensor regression framework proposed by Zhou et al. (2013), which imposes a canonical low-rank structure on tensor coefficients. We conduct both classification and regression analyses using real magnetic resonance imaging data from the Alzheimer’s Disease Neuroimaging Initiative to demonstrate the effectiveness of our approach. | - |
dc.language | eng | - |
dc.publisher | Oxford University Press | - |
dc.relation.ispartof | Biometrika | - |
dc.subject | Brain imaging | - |
dc.subject | Convolutional neural network | - |
dc.subject | Kronecker product | - |
dc.subject | Tensor decomposition | - |
dc.title | Deep Kronecker network | - |
dc.type | Article | - |
dc.identifier.doi | 10.1093/biomet/asad049 | - |
dc.identifier.scopus | eid_2-s2.0-85193341158 | - |
dc.identifier.volume | 111 | - |
dc.identifier.issue | 2 | - |
dc.identifier.spage | 707 | - |
dc.identifier.epage | 714 | - |
dc.identifier.eissn | 1464-3510 | - |
dc.identifier.issnl | 0006-3444 | - |