Common Brain Networks Between Major Depressive-Disorder Diagnosis and Symptoms of Depression That Are Validated for Independent Cohorts

Large-scale neuroimaging data acquired and shared by multiple institutions are essential to advance neuroscientific understanding of pathophysiological mechanisms in psychiatric disorders, such as major depressive disorder (MDD). About 75% of studies that have applied machine learning technique to n...

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Veröffentlicht in:Frontiers in psychiatry 2021-06, Vol.12, p.667881-667881
Hauptverfasser: Yamashita, Ayumu, Sakai, Yuki, Yamada, Takashi, Yahata, Noriaki, Kunimatsu, Akira, Okada, Naohiro, Itahashi, Takashi, Hashimoto, Ryuichiro, Mizuta, Hiroto, Ichikawa, Naho, Takamura, Masahiro, Okada, Go, Yamagata, Hirotaka, Harada, Kenichiro, Matsuo, Koji, Tanaka, Saori C., Kawato, Mitsuo, Kasai, Kiyoto, Kato, Nobumasa, Takahashi, Hidehiko, Okamoto, Yasumasa, Yamashita, Okito, Imamizu, Hiroshi
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Sprache:eng
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Zusammenfassung:Large-scale neuroimaging data acquired and shared by multiple institutions are essential to advance neuroscientific understanding of pathophysiological mechanisms in psychiatric disorders, such as major depressive disorder (MDD). About 75% of studies that have applied machine learning technique to neuroimaging have been based on diagnoses by clinicians. However, an increasing number of studies have highlighted the difficulty in finding a clear association between existing clinical diagnostic categories and neurobiological abnormalities. Here, using resting-state functional magnetic resonance imaging, we determined and validated resting-state functional connectivity related to depression symptoms that were thought to be directly related to neurobiological abnormalities. We then compared the resting-state functional connectivity related to depression symptoms with that related to depression diagnosis that we recently identified. In particular, for the discovery dataset with 477 participants from 4 imaging sites, we removed site differences using our recently developed harmonization method and developed a brain network prediction model of depression symptoms (Beck Depression Inventory-II [BDI] score). The prediction model significantly predicted BDI score for an independent validation dataset with 439 participants from 4 different imaging sites. Finally, we found 3 common functional connections between those related to depression symptoms and those related to MDD diagnosis. These findings contribute to a deeper understanding of the neural circuitry of depressive symptoms in MDD, a hetero-symptomatic population, revealing the neural basis of MDD.
ISSN:1664-0640
1664-0640
DOI:10.3389/fpsyt.2021.667881