质量控制对自闭症患者皮质形态比较的影响

Saashi A. Bedford, Alfredo Ortiz-Rosa, Jenna M. Schabdach, Manuela Costantino, Stephanie Tullo, Tom Piercy, Meng-Chuan Lai, Michael V. Lombardo, Adriana Di Martino, Gabriel A. Devenyi, M. Mallar Chakravarty, Aaron F. Alexander-Bloch, Jakob Seidlitz, Simon Baron-Cohen, Richard A.I. Bethlehem
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引用次数: 0

摘要

众所周知,结构磁共振成像(MRI)质量会影响和偏向神经解剖学估计和下游分析,包括病例对照比较,越来越多的工作已经证明了仔细的质量控制(QC)的重要性,并评估了图像和图像处理质量的影响。然而,典型神经成像数据集的规模不断增长,对质量控制提出了额外的挑战,这通常是非常耗时和劳动密集型的。MRI质量最重要的方面之一是处理输出的准确性,这已被证明会影响估计的神经发育轨迹。在这里,我们评估FreeSurfer(最广泛使用的MRI处理管道之一)表面重建的质量是否与临床和人口因素相互作用。我们提出了一个工具,FSQC,它可以快速有效地全面评估FreeSurfer处理管道的输出。我们针对其他现有的QC指标验证了我们的方法,包括自动的FreeSurfer欧拉数,另外两种原始图像质量的手动评级,以及两种流行的自动化QC方法。我们在每个QC测量和皮质厚度之间的关系中显示出惊人的相似的空间模式;皮层体积和表面积的关系在不同的指标上基本一致,尽管存在一些显著的差异。接下来,我们证明了QC评分阈值会减弱但不会消除质量对皮质估计的影响。最后,在自闭症脑成像数据交换(Autism Brain Imaging Data Exchange,简称ABIDE)数据集中,我们探讨了不同的质量控制方法,以检验自闭症个体和神经正常对照组之间的差异,证明质量控制不足会改变病例对照比较的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The impact of quality control on cortical morphometry comparisons in autism
Abstract Structural magnetic resonance imaging (MRI) quality is known to impact and bias neuroanatomical estimates and downstream analysis, including case-control comparisons, and a growing body of work has demonstrated the importance of careful quality control (QC) and evaluated the impact of image and image-processing quality. However, the growing size of typical neuroimaging datasets presents an additional challenge to QC, which is typically extremely time and labour intensive. One of the most important aspects of MRI quality is the accuracy of processed outputs, which have been shown to impact estimated neurodevelopmental trajectories. Here, we evaluate whether the quality of surface reconstructions by FreeSurfer (one of the most widely used MRI processing pipelines) interacts with clinical and demographic factors. We present a tool, FSQC, that enables quick and efficient yet thorough assessment of outputs of the FreeSurfer processing pipeline. We validate our method against other existing QC metrics, including the automated FreeSurfer Euler number, two other manual ratings of raw image quality, and two popular automated QC methods. We show strikingly similar spatial patterns in the relationship between each QC measure and cortical thickness; relationships for cortical volume and surface area are largely consistent across metrics, though with some notable differences. We next demonstrate that thresholding by QC score attenuates but does not eliminate the impact of quality on cortical estimates. Finally, we explore different ways of controlling for quality when examining differences between autistic individuals and neurotypical controls in the Autism Brain Imaging Data Exchange (ABIDE) dataset, demonstrating that inadequate control for quality can alter results of case-control comparisons.
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