Overlapping but Asymmetrical Relationships Between Schizophrenia and Autism Revealed by Brain Connectivity
Author(s) -
Yujiro Yoshihara,
Giuseppe Lisi,
Noriaki Yahata,
Junya Fujino,
Yukiko Matsumoto,
Jun Miyata,
Gen-ichi Sugihara,
Shin-ichi Urayama,
Manabu Kubota,
Masahiro Yamashita,
Ryuichiro Hashimoto,
Naho Ichikawa,
W. Cahn,
Neeltje E.M. van Haren,
Susumu Mori,
Yasumasa Okamoto,
Kiyoto Kasai,
Nobumasa Kato,
Hiroshi Imamizu,
René S. Kahn,
Akira Sawa,
Mitsuo Kawato,
Toshiya Murai,
Jun Morimoto,
Hidehiko Takahashi
Publication year - 2020
Publication title -
schizophrenia bulletin
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.823
H-Index - 190
eISSN - 1745-1707
pISSN - 0586-7614
DOI - 10.1093/schbul/sbaa021
Subject(s) - autism spectrum disorder , generalizability theory , classifier (uml) , artificial intelligence , resting state fmri , population , functional connectivity , psychology , autism , pattern recognition (psychology) , machine learning , computer science , neuroscience , medicine , psychiatry , developmental psychology , environmental health
Although the relationship between schizophrenia spectrum disorder (SSD) and autism spectrum disorder (ASD) has long been debated, it has not yet been fully elucidated. The authors quantified and visualized the relationship between ASD and SSD using dual classifiers that discriminate patients from healthy controls (HCs) based on resting-state functional connectivity magnetic resonance imaging. To develop a reliable SSD classifier, sophisticated machine-learning algorithms that automatically selected SSD-specific functional connections were applied to Japanese datasets from Kyoto University Hospital (N = 170) including patients with chronic-stage SSD. The generalizability of the SSD classifier was tested by 2 independent validation cohorts, and 1 cohort including first-episode schizophrenia. The specificity of the SSD classifier was tested by 2 Japanese cohorts of ASD and major depressive disorder. The weighted linear summation of the classifier’s functional connections constituted the biological dimensions representing neural classification certainty for the disorders. Our previously developed ASD classifier was used as ASD dimension. Distributions of individuals with SSD, ASD, and HCs s were examined on the SSD and ASD biological dimensions. We found that the SSD and ASD populations exhibited overlapping but asymmetrical patterns in the 2 biological dimensions. That is, the SSD population showed increased classification certainty for the ASD dimension but not vice versa. Furthermore, the 2 dimensions were correlated within the ASD population but not the SSD population. In conclusion, using the 2 biological dimensions based on resting-state functional connectivity enabled us to discover the quantified relationships between SSD and ASD.
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