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Automated quality assessment of structural magnetic resonance images in children: Comparison with visual inspection and surface‐based reconstruction

机译:儿童结构磁共振图像的自动质量评估:与目测和基于表面的重建的比较

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摘要

Motion‐related artifacts are one of the major challenges associated with pediatric neuroimaging. Recent studies have shown a relationship between visual quality ratings of T images and cortical reconstruction measures. Automated algorithms offer more precision in quantifying movement‐related artifacts compared to visual inspection. Thus, the goal of this study was to test three different automated quality assessment algorithms for structural MRI scans. The three algorithms included a Fourier‐, integral‐, and a gradient‐based approach which were run on raw T ‐weighted imaging data collected from four different scanners. The four cohorts included a total of 6,662 MRI scans from two waves of the Generation R Study, the NIH NHGRI Study, and the GUSTO Study. Using receiver operating characteristics with visually inspected quality ratings of the T images, the area under the curve (AUC) for the gradient algorithm, which performed better than either the integral or Fourier approaches, was 0.95, 0.88, and 0.82 for the Generation R, NHGRI, and GUSTO studies, respectively. For scans of poor initial quality, repeating the scan often resulted in a better quality second image. Finally, we found that even minor differences in automated quality measurements were associated with FreeSurfer derived measures of cortical thickness and surface area, even in scans that were rated as good quality. Our findings suggest that the inclusion of automated quality assessment measures can augment visual inspection and may find use as a covariate in analyses or to identify thresholds to exclude poor quality data.
机译:与运动有关的伪影是与小儿神经成像相关的主要挑战之一。最近的研究表明T图像的视觉质量等级与皮层重建措施之间存在关系。与视觉检查相比,自动化算法在量化与运动有关的伪影方面提供了更高的精度。因此,本研究的目标是测试三种不同的用于结构MRI扫描的自动化质量评估算法。这三种算法包括基于傅立叶,积分和梯度的方法,它们是基于从四个不同扫描仪收集的原始T加权成像数据运行的。这四个队列包括来自R世代研究,NIH NHGRI研究和GUSTO研究的两波研究,共进行了6662次MRI扫描。使用接收器的工作特性和目视检查的T图像质量等级,梯度算法的曲线下面积(AUC)相对于积分法或傅立叶方法要好,对于R代,其曲线下面积分别为0.95、0.88和0.82, NHGRI和GUSTO研究。对于初始质量较差的扫描,重复扫描通常会产生质量更好的第二张图像。最后,我们发现,即使在质量被评定为良好的扫描中,自动质量测量中的微小差异也与FreeSurfer得出的皮质厚度和表面积测量值有关。我们的发现表明,包括自动质量评估措施可以增强视觉检查,并可以用作分析的协变量或确定阈值以排除质量较差的数据。

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