从自动皮层包块测量表面积不对称的系统偏差。

IF 2.9 3区 医学 Q1 ANATOMY & MORPHOLOGY
Yinuo Liu, Ja Young Choi, Tyler K Perrachione
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引用次数: 0

摘要

解剖上的不对称是人类大脑的一个标志,可能反映了其功能组织的半球差异。像FreeSurfer这样广泛使用的软件可以自动进行神经解剖学测量,并促进半球不对称的研究。然而,使用FreeSurfer测量的表面积侧向化模式在不同的样本中出奇地一致。在这里,我们演示了从默认处理管道获得的这些测量中的系统偏差。我们比较了从原始大脑重建中测量到的表面积不对称性与在翻转左右方向后的相同扫描结果。默认的管道在原始和翻转的大脑之间返回了令人难以置信的不对称模式:许多结构总是向左或向右偏侧。值得注意的是,这些偏见明显发生在关键的语音和语言区域。相比之下,手动标记和基于曲率的关键结构分割在翻转大脑中都产生了预期的左/右侧化逆转。我们确定这些偏差是由于在皮层包裹图谱的左右半球之间如何定义区域标签的差异造成的。这些偏差被带入到单个的分割中,因为分割算法优先考虑与模板对应的顶点,而不是个体神经解剖变异,这意味着这种偏差可能存在于任何不对称的基于图谱的分割中。我们进一步展示了几种直接的、无偏差的测量表面积不对称性的方法,包括使用对称配准模板和分割地图集、顶点分析和基于主体曲率的分割。这些结果强调了仅使用基于图谱的分组来推断人口水平大脑不对称的理论问题,并强调了验证无偏见神经解剖学测量的必要性,特别是为了更好地研究结构侧化如何成为功能侧化的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Systematic bias in surface area asymmetry measurements from automatic cortical parcellations.

Anatomical asymmetry is a hallmark of the human brain and may reflect hemispheric differences in its functional organization. Widely used software like FreeSurfer can automate neuroanatomical measurements and facilitate studies of hemispheric asymmetry. However, patterns of surface area lateralization measured using FreeSurfer are curiously consistent across diverse samples. Here, we demonstrate systematic biases in these measurements obtained from the default processing pipeline. We compared surface area asymmetry measured from reconstructions of original brains vs. the same scans after flipping their left-right orientation. The default pipeline returned implausible asymmetry patterns between the original and flipped brains: Many structures were always left- or right-lateralized. Notably, these biases occur prominently in key speech and language regions. In contrast, manual labeling and curvature-based parcellations of key structures both yielded the expected reversals of left/right lateralization in flipped brains. We determined that these biases result from discrepancies in how regional labels are defined between the cortical parcellation atlases' left and right hemispheres. These biases are carried into individual parcellations because the parcellation algorithm prioritizes vertex correspondence to the template over individual neuroanatomical variation, meaning such biases could exist in any asymmetric atlas-based parcellation. We further demonstrate several straightforward, bias-free approaches to measuring surface area asymmetry, including using symmetric registration templates and parcellation atlases, vertex-wise analyses, and within-subject curvature-based parcellations. These results highlight theoretical concerns about using only atlas-based parcellations to make inferences about population-level brain asymmetry and underscore the need for validating bias-free neuroanatomical measurements, particularly to better examine how structural lateralization underlies functional lateralization.

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来源期刊
Brain Structure & Function
Brain Structure & Function 医学-解剖学与形态学
CiteScore
6.00
自引率
6.50%
发文量
168
审稿时长
8 months
期刊介绍: Brain Structure & Function publishes research that provides insight into brain structure−function relationships. Studies published here integrate data spanning from molecular, cellular, developmental, and systems architecture to the neuroanatomy of behavior and cognitive functions. Manuscripts with focus on the spinal cord or the peripheral nervous system are not accepted for publication. Manuscripts with focus on diseases, animal models of diseases, or disease-related mechanisms are only considered for publication, if the findings provide novel insight into the organization and mechanisms of normal brain structure and function.
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