ID | 118731 |
Author |
Yamagata, Hirotaka
Yamaguchi University|Kokoro Hospital Machida
Tsunedomi, Ryouichi
Yamaguchi University
Kamishikiryo, Toshiharu
Hiroshima University
Kobayashi, Ayumi
Yamaguchi University
Seki, Tomoe
Yamaguchi University
Kobayashi, Masaaki
Yamaguchi University
Hagiwara, Kosuke
Yamaguchi University
Yamada, Norihiro
Yamaguchi University
Chen, Chong
Yamaguchi University
Uchida, Shusaku
Kyoto University
Ogihara, Hiroyuki
Yamaguchi University|National Institute of Technology, Tokuyama Collage
Hamamoto, Yoshihiko
Yamaguchi University
Okada, Go
Hiroshima University
Fuchikami, Manabu
Hiroshima University
Numata, Shusuke
Tokushima University
Tokushima University Educator and Researcher Directory
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Kato, Takahiro A.
Kyushu University
Hashimoto, Ryota
National Center of Neurology and Psychiatry
Nagano, Hiroaki
Yamaguchi University
Ueno, Shuichi
Ehime University
Okamoto, Yasumasa
Hiroshima University
Ohmori, Tetsuro
Tokushima University
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Nakagawa, Shin
Yamaguchi University
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Keywords | Antidepressant
Biomarkers
Gene expression
Hypercytokinemia
Interferon
Peripheral blood
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Content Type |
Journal Article
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Description | Only 50% of patients with depression respond to the first antidepressant drug administered. Thus, biomarkers for prediction of antidepressant responses are needed, as predicting which patients will not respond to antidepressants can optimize selection of alternative therapies. We aimed to identify biomarkers that could predict antidepressant responsiveness using a novel data-driven approach based on statistical pattern recognition. We retrospectively divided patients with major depressive disorder into antidepressant responder and non-responder groups. Comprehensive gene expression analysis was performed using peripheral blood without narrowing the genes. We designed a classifier according to our own discrete Bayes decision rule that can handle categorical data. Nineteen genes showed differential expression in the antidepressant non-responder group (n = 15) compared to the antidepressant responder group (n = 15). In the training sample of 30 individuals, eight candidate genes had significantly altered expression according to quantitative real-time polymerase chain reaction. The expression of these genes was examined in an independent test sample of antidepressant responders (n = 22) and non-responders (n = 12). Using the discrete Bayes classifier with the HERC5, IFI6, and IFI44 genes identified in the training set yielded 85% discrimination accuracy for antidepressant responsiveness in the 34 test samples. Pathway analysis of the RNA sequencing data for antidepressant responsiveness identified that hypercytokinemia- and interferon-related genes were increased in non-responders. Disease and biofunction analysis identified changes in genes related to inflammatory and infectious diseases, including coronavirus disease. These results strongly suggest an association between antidepressant responsiveness and inflammation, which may be useful for future treatment strategies for depression.
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Journal Title |
Heliyon
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ISSN | 24058440
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Publisher | Elsevier
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Volume | 9
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Issue | 1
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Start Page | e13059
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Published Date | 2023-01-16
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Rights | This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
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EDB ID | |
DOI (Published Version) | |
URL ( Publisher's Version ) | |
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language |
eng
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TextVersion |
Publisher
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departments |
Medical Sciences
University Hospital
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