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由自闭症谱系障碍幼儿的磁共振成像衍生脑特征生成的诊断模型。

Diagnostic model generated by MRI-derived brain features in toddlers with autism spectrum disorder.

作者信息

Xiao Xiang, Fang Hui, Wu Jiansheng, Xiao ChaoYong, Xiao Ting, Qian Lu, Liang FengJing, Xiao Zhou, Chu Kang Kang, Ke Xiaoyan

机构信息

Child Mental Health Research Center, Nanjing Brain Hospital, Nanjing Medical University, Nanjing, China.

Nanjing University of Posts and Telecommunications, Nanjing, China.

出版信息

Autism Res. 2017 Apr;10(4):620-630. doi: 10.1002/aur.1711. Epub 2016 Nov 22.

DOI:10.1002/aur.1711
PMID:27874271
Abstract

Autism spectrum disorder (ASD) is a complex neurodevelopmental disorder mainly showed atypical social interaction, communication, and restricted, repetitive patterns of behavior, interests and activities. Now clinic diagnosis of ASD is mostly based on psychological evaluation, clinical observation and medical history. All these behavioral indexes could not avoid defects such as subjectivity and reporter-dependency. Therefore researchers devoted themselves to seek relatively stable biomarkers of ASD as supplementary diagnostic evidence. The goal of present study is to generate relatively stable predictive model based on anatomical brain features by using machine learning technique. Forty-six ASD children and thirty-nine development delay children aged from 18 to 37 months were evolved in. As a result, the predictive model generated by regional average cortical thickness of regions with top 20 highest importance of random forest classifier showed best diagnostic performance. And random forest was proved to be the optimal approach for neuroimaging data mining in small size set and thickness-based classification outperformed volume-based classification and surface area-based classification in ASD. The brain regions selected by the models might attract attention and the idea of considering biomarkers as a supplementary evidence of ASD diagnosis worth exploring. Autism Res 2017, 0: 000-000. © 2016 International Society for Autism Research, Wiley Periodicals, Inc. Autism Res 2017, 10: 620-630. © 2016 International Society for Autism Research, Wiley Periodicals, Inc.

摘要

自闭症谱系障碍(ASD)是一种复杂的神经发育障碍,主要表现为非典型的社交互动、沟通以及局限的、重复的行为模式、兴趣和活动。目前ASD的临床诊断大多基于心理评估、临床观察和病史。所有这些行为指标都不可避免地存在主观性和报告依赖性等缺陷。因此,研究人员致力于寻找相对稳定的ASD生物标志物作为辅助诊断依据。本研究的目的是通过使用机器学习技术,基于大脑解剖特征生成相对稳定的预测模型。纳入了46名年龄在18至37个月的ASD儿童和39名发育迟缓儿童。结果,由随机森林分类器重要性排名前20的区域的平均皮质厚度生成的预测模型显示出最佳诊断性能。并且证明随机森林是小样本集神经影像数据挖掘的最佳方法,在ASD中基于厚度的分类优于基于体积的分类和基于表面积的分类。模型选择的脑区可能会引起关注,将生物标志物作为ASD诊断辅助证据的想法值得探索。《自闭症研究》2017年,0:000 - 000。©2016国际自闭症研究协会,威利期刊公司。《自闭症研究》2017年,10:620 - 630。©2016国际自闭症研究协会,威利期刊公司。

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