静息状态功能磁共振成像的质量控制程序和指标。

Frontiers in neuroimaging Pub Date : 2023-03-13 eCollection Date: 2023-01-01 DOI:10.3389/fnimg.2023.1072927
Rasmus M Birn
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摘要

监测和评估数据质量是获取和分析功能磁共振成像(fMRI)数据的重要步骤。理想情况下,数据质量监控是在数据采集过程中进行的,受试者仍在核磁共振成像扫描仪中,这样可以及早发现并解决任何错误。在处理管道的多个点进行数据质量评估也很重要。在分析有大量受试者、来自多个研究者和/或机构的数据集时尤其如此。这些质量控制程序不仅要监控原始数据和处理后数据的质量,还要监控采集参数的准确性和一致性。不同研究地点之间采集参数的差异可以指导选择某些处理步骤(例如,从倾斜方向重新采样、空间平滑)。各种质量控制指标可以确定哪些受试者应排除在分组分析之外,还可以指导可能需要的额外处理步骤。本文介绍了一种定性与定量相结合的评估方法,以确定 fMRI 数据的质量。数据处理使用 AFNI 数据分析软件包进行。定性评估包括对结构性 T1 加权图像和 fMRI 回声平面图像、功能连接图、功能连接强度和时间信噪比图进行目测,并将所有受试者的数据合并成影片格式。定量指标包括采集参数、受试者运动水平统计、时间信噪比、数据平滑度和平均功能连接强度。在处理管道的不同步骤中对这些指标进行评估,以捕捉数据中的严重异常,并确定采集参数的偏差、与模板空间的对齐、头部运动水平以及其他噪声源。我们还评估了不同定量 QC 截止值的效果,特别是运动剔除阈值和带通滤波的影响。这些定性和定量指标可以为分析大型数据集时排除哪些受试者和更仔细地检查哪些受试者提供信息。
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Quality control procedures and metrics for resting-state functional MRI.

The monitoring and assessment of data quality is an essential step in the acquisition and analysis of functional MRI (fMRI) data. Ideally data quality monitoring is performed while the data are being acquired and the subject is still in the MRI scanner so that any errors can be caught early and addressed. It is also important to perform data quality assessments at multiple points in the processing pipeline. This is particularly true when analyzing datasets with large numbers of subjects, coming from multiple investigators and/or institutions. These quality control procedures should monitor not only the quality of the original and processed data, but also the accuracy and consistency of acquisition parameters. Between-site differences in acquisition parameters can guide the choice of certain processing steps (e.g., resampling from oblique orientations, spatial smoothing). Various quality control metrics can determine what subjects to exclude from the group analyses, and can also guide additional processing steps that may be necessary. This paper describes a combination of qualitative and quantitative assessments to determine the quality of fMRI data. Processing is performed using the AFNI data analysis package. Qualitative assessments include visual inspection of the structural T1-weighted and fMRI echo-planar images, functional connectivity maps, functional connectivity strength, and temporal signal-to-noise maps concatenated from all subjects into a movie format. Quantitative metrics include the acquisition parameters, statistics about the level of subject motion, temporal signal-to-noise ratio, smoothness of the data, and the average functional connectivity strength. These measures are evaluated at different steps in the processing pipeline to catch gross abnormalities in the data, and to determine deviations in acquisition parameters, the alignment to template space, the level of head motion, and other sources of noise. We also evaluate the effect of different quantitative QC cutoffs, specifically the motion censoring threshold, and the impact of bandpass filtering. These qualitative and quantitative metrics can then provide information about what subjects to exclude and what subjects to examine more closely in the analysis of large datasets.

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