TY - JOUR
T1 - Machine learning approach to identify a resting-state functional connectivity pattern serving as an endophenotype of autism spectrum disorder
AU - Yamagata, Bun
AU - Itahashi, Takashi
AU - Fujino, Junya
AU - Ohta, Haruhisa
AU - Nakamura, Motoaki
AU - Kato, Nobumasa
AU - Mimura, Masaru
AU - Hashimoto, Ryu ichiro
AU - Aoki, Yuta
N1 - Funding Information:
This study is the result of “Development of BMI Technologies for Clinical Application” carried out under the Strategic Research Program for Brain Sciences by the Japan Agency for Medical Research and Development (AMED). This work is partly supported by a grant from The Japan Foundation for Pediatric Research (to YA).
Funding Information:
Acknowledgements This study is the result of BDevelopment of BMI Technologies for Clinical Application^ carried out under the Strategic Research Program for Brain Sciences by the Japan Agency for Medical Research and Development (AMED). This work is partly supported by a grant from The Japan Foundation for Pediatric Research (to YA).
Publisher Copyright:
© 2018, Springer Science+Business Media, LLC, part of Springer Nature.
PY - 2019/12/1
Y1 - 2019/12/1
N2 - Endophenotype refers to a measurable and heritable component between genetics and diagnosis, and the same endophenotype is present in both individuals with a diagnosis and their unaffected siblings. Determination of the neural correlates of an endophenotype and diagnosis is important in autism spectrum disorder (ASD). However, prior studies enrolling individuals with ASD and their unaffected siblings have generally included only one group of typically developing (TD) subjects; they have not accounted for differences between TD siblings. Thus, they could not differentiate the neural correlates for endophenotype from the clinical diagnosis. In this context, we enrolled pairs of siblings with an ASD endophenotype (individuals with ASD and their unaffected siblings) and pairs of siblings without this endophenotype (pairs of TD siblings). Using resting-state functional MRI, we first aimed to identify an endophenotype pattern consisting of multiple functional connections (FCs) then examined the neural correlates of FCs for ASD diagnosis, controlling for differences between TD siblings. Sparse logistic regression successfully classified subjects as to the endophenotype (area under the curve = 0.78, classification accuracy = 75%). Then, a bootstrapping approach controlling for differences between TD siblings revealed that an FC between the right middle temporal gyrus and right anterior cingulate cortex was substantially different between individuals with ASD and their unaffected siblings, suggesting that this FC may be a neural correlate for the diagnosis, while the other FCs represent the endophenotype. The current findings suggest that an ASD endophenotype pattern exists in FCs, and a neural correlate for ASD diagnosis is dissociable from this endophenotype. (250 words).
AB - Endophenotype refers to a measurable and heritable component between genetics and diagnosis, and the same endophenotype is present in both individuals with a diagnosis and their unaffected siblings. Determination of the neural correlates of an endophenotype and diagnosis is important in autism spectrum disorder (ASD). However, prior studies enrolling individuals with ASD and their unaffected siblings have generally included only one group of typically developing (TD) subjects; they have not accounted for differences between TD siblings. Thus, they could not differentiate the neural correlates for endophenotype from the clinical diagnosis. In this context, we enrolled pairs of siblings with an ASD endophenotype (individuals with ASD and their unaffected siblings) and pairs of siblings without this endophenotype (pairs of TD siblings). Using resting-state functional MRI, we first aimed to identify an endophenotype pattern consisting of multiple functional connections (FCs) then examined the neural correlates of FCs for ASD diagnosis, controlling for differences between TD siblings. Sparse logistic regression successfully classified subjects as to the endophenotype (area under the curve = 0.78, classification accuracy = 75%). Then, a bootstrapping approach controlling for differences between TD siblings revealed that an FC between the right middle temporal gyrus and right anterior cingulate cortex was substantially different between individuals with ASD and their unaffected siblings, suggesting that this FC may be a neural correlate for the diagnosis, while the other FCs represent the endophenotype. The current findings suggest that an ASD endophenotype pattern exists in FCs, and a neural correlate for ASD diagnosis is dissociable from this endophenotype. (250 words).
KW - Autism spectrum disorder
KW - Endophenotype
KW - Machine learning
KW - Resting state
KW - Unaffected siblings
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U2 - 10.1007/s11682-018-9973-2
DO - 10.1007/s11682-018-9973-2
M3 - Article
C2 - 30280304
AN - SCOPUS:85054513501
SN - 1931-7557
VL - 13
SP - 1689
EP - 1698
JO - Brain Imaging and Behavior
JF - Brain Imaging and Behavior
IS - 6
ER -