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Assessing hippocampal development and language in early childhood: Evidence from a new application of the Automatic Segmentation Adapter Tool

机译:评估幼儿期的海马发育和语言:自动分段适配器工具的新应用提供的证据

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摘要

Volumetric assessments of the hippocampus and other brain structures during childhood provide useful indices of brain development and correlates of cognitive functioning in typically and atypically developing children. Automated methods such as FreeSurfer promise efficient and replicable segmentation, but may include errors which are avoided by trained manual tracers. A recently devised automated correction tool that uses a machine learning algorithm to remove systematic errors, the Automatic Segmentation Adapter Tool (ASAT), was capable of substantially improving the accuracy of FreeSurfer segmentations in an adult sample [Wang et al., 2011], but the utility of ASAT has not been examined in pediatric samples. In Study 1, the validity of FreeSurfer and ASAT corrected hippocampal segmentations were examined in 20 typically developing children and 20 children with autism spectrum disorder aged 2 and 3 years. We showed that while neither FreeSurfer nor ASAT accuracy differed by disorder or age, the accuracy of ASAT corrected segmentations were substantially better than FreeSurfer segmentations in every case, using as few as 10 training examples. In Study 2, we applied ASAT to 89 typically developing children aged 2 to 4 years to examine relations between hippocampal volume, age, sex, and expressive language. Girls had smaller hippocampi overall, and in left hippocampus this difference was larger in older than younger girls. Expressive language ability was greater in older children, and this difference was larger in those with larger hippocampi, bilaterally. Overall, this research shows that ASAT is highly reliable and useful to examinations relating behavior to hippocampal structure. Hum Brain Mapp 36:4483-4496, 2015. (c) 2015 Wiley Periodicals, Inc.
机译:儿童期海马和其他大脑结构的体积评估提供了大脑发育的有用指标,并为典型和非典型发育中的儿童提供了认知功能的相关性。诸如FreeSurfer之类的自动化方法可以实现有效且可复制的分段,但可能包含一些错误,而这些错误可以通过训练有素的手动跟踪程序来避免。最近设计的使用机器学习算法消除系统错误的自动校正工具自动分段适配器工具(ASAT)能够显着提高成人样本中FreeSurfer分段的准确性[Wang等,2011]。尚未在儿科样本中检查过ASAT的效用。在研究1中,对20名典型的发育中儿童和20名2岁和3岁的自闭症谱系障碍儿童检查了FreeSurfer和ASAT校正的海马区隔的有效性。我们显示,尽管FreeSurfer或ASAT的准确度都没有因疾病或年龄而异,但是在每种情况下,仅使用10个训练示例,经ASAT校正的分割的准确度都明显优于FreeSurfer分割。在研究2中,我们将ASAT应用于89名典型的2至4岁发育中的儿童,以检查海马体积,年龄,性别和表达语言之间的关系。女孩的总体海马体较小,而在左侧海马中,年龄较大的女孩比年轻的女孩更大。年龄较大的儿童的表达语言能力较高,而双侧海马较大的儿童的表达能力较大。总的来说,这项研究表明,ASAT非常可靠,对于检查与海马结构行为有关的检查很有用。嗡嗡声大脑Mapp 36:4483-4496,2015.(c)2015 Wiley Periodicals,Inc.

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