Provins Céline, MacNicol Eilidh, Seeley Saren H, Hagmann Patric, Esteban Oscar
Department of Radiology, Lausanne University Hospital and University of Lausanne, Lausanne, Switzerland.
Department of Neuroimaging, Institute of Psychiatry, Psychology and Neuroscience, King's College London, London, United Kingdom.
Front Neuroimaging. 2023 Jan 12;1:1073734. doi: 10.3389/fnimg.2022.1073734. eCollection 2022.
The implementation of adequate quality assessment (QA) and quality control (QC) protocols within the magnetic resonance imaging (MRI) research workflow is resource- and time-consuming and even more so is their execution. As a result, QA/QC practices highly vary across laboratories and "MRI schools", ranging from highly specialized knowledge spots to environments where QA/QC is considered overly onerous and costly despite evidence showing that below-standard data increase the false positive and false negative rates of the final results. Here, we demonstrate a protocol based on the visual assessment of images one-by-one with reports generated by MRIQC and fMRIPrep, for the QC of data in functional (blood-oxygen dependent-level; BOLD) MRI analyses. We particularize the proposed, open-ended scope of application to whole-brain voxel-wise analyses of BOLD to correspondingly enumerate and define the exclusion criteria applied at the QC checkpoints. We apply our protocol on a composite dataset ( = 181 subjects) drawn from open fMRI studies, resulting in the exclusion of 97% of the data (176 subjects). This high exclusion rate was expected because subjects were selected to showcase artifacts. We describe the artifacts and defects more commonly found in the dataset that justified exclusion. We moreover release all the materials we generated in this assessment and document all the QC decisions with the expectation of contributing to the standardization of these procedures and engaging in the discussion of QA/QC by the community.
在磁共振成像(MRI)研究工作流程中实施适当的质量评估(QA)和质量控制(QC)方案既耗费资源又耗时,执行起来更是如此。因此,QA/QC实践在不同实验室和“MRI学派”之间差异很大,从高度专业化的知识领域到认为QA/QC过于繁重和昂贵的环境,尽管有证据表明低于标准的数据会增加最终结果的假阳性和假阴性率。在此,我们展示了一种基于对图像逐一进行视觉评估的方案,该方案结合了由MRIQC和fMRIPrep生成的报告,用于功能(血氧依赖水平;BOLD)MRI分析中的数据质量控制。我们将所提出的开放式应用范围具体应用于BOLD的全脑体素级分析,相应地列举并定义在质量控制检查点应用的排除标准。我们将我们的方案应用于从公开的功能磁共振成像研究中获取的一个复合数据集(n = 181名受试者),结果排除了97%的数据(176名受试者)。这个高排除率是预期的,因为选择受试者是为了展示伪影。我们描述了数据集中更常见的、证明排除合理的伪影和缺陷。此外,我们发布了在此次评估中生成的所有材料,并记录了所有质量控制决策,期望有助于这些程序的标准化,并参与社区对QA/QC的讨论。