Kim Hosung, Irimia Andrei, Hobel Samuel M, Pogosyan Mher, Tang Haoteng, Petrosyan Petros, Blanco Rita Esquivel Castelo, Duffy Ben A, Zhao Lu, Crawford Karen L, Liew Sook-Lei, Clark Kristi, Law Meng, Mukherjee Pratik, Manley Geoffrey T, Van Horn John D, Toga Arthur W
Laboratory of Neuro Imaging, USC Mark and Mary Stevens Neuroimaging and Informatics Institute, University of Southern California, Los Angeles, CA, United States.
Department of Gerontology, University of Southern California, Los Angeles, CA, United States.
Front Neuroinform. 2019 Aug 28;13:60. doi: 10.3389/fninf.2019.00060. eCollection 2019.
Quantifying, controlling, and monitoring image quality is an essential prerequisite for ensuring the validity and reproducibility of many types of neuroimaging data analyses. Implementation of quality control (QC) procedures is the key to ensuring that neuroimaging data are of high-quality and their validity in the subsequent analyses. We introduce the QC system of the Laboratory of Neuro Imaging (LONI): a web-based system featuring a workflow for the assessment of various modality and contrast brain imaging data. The design allows users to anonymously upload imaging data to the LONI-QC system. It then computes an exhaustive set of QC metrics which aids users to perform a standardized QC by generating a range of scalar and vector statistics. These procedures are performed in parallel using a large compute cluster. Finally, the system offers an automated QC procedure for structural MRI, which can flag each QC metric as being 'good' or 'bad.' Validation using various sets of data acquired from a single scanner and from multiple sites demonstrated the reproducibility of our QC metrics, and the sensitivity and specificity of the proposed Auto QC to 'bad' quality images in comparison to visual inspection. To the best of our knowledge, LONI-QC is the first online QC system that uniquely supports the variety of functionality where we compute numerous QC metrics and perform visual/automated image QC of multi-contrast and multi-modal brain imaging data. The LONI-QC system has been used to assess the quality of large neuroimaging datasets acquired as part of various multi-site studies such as the Transforming Research and Clinical Knowledge in Traumatic Brain Injury (TRACK-TBI) Study and the Alzheimer's Disease Neuroimaging Initiative (ADNI). LONI-QC's functionality is freely available to users worldwide and its adoption by imaging researchers is likely to contribute substantially to upholding high standards of brain image data quality and to implementing these standards across the neuroimaging community.
量化、控制和监测图像质量是确保多种类型神经影像数据分析的有效性和可重复性的重要前提。实施质量控制(QC)程序是确保神经影像数据高质量及其在后续分析中的有效性的关键。我们介绍了神经影像实验室(LONI)的QC系统:一个基于网络的系统,具有用于评估各种模态和对比度脑成像数据的工作流程。该设计允许用户将成像数据匿名上传到LONI-QC系统。然后,它会计算一组详尽的QC指标,通过生成一系列标量和矢量统计数据来帮助用户执行标准化的QC。这些程序使用大型计算集群并行执行。最后,该系统为结构MRI提供了自动化的QC程序,可以将每个QC指标标记为“良好”或“不良”。使用从单个扫描仪和多个站点获取的各种数据集进行的验证证明了我们的QC指标的可重复性,以及与目视检查相比,所提出的自动QC对“质量差”图像的敏感性和特异性。据我们所知,LONI-QC是第一个在线QC系统,它独特地支持各种功能,我们可以计算众多的QC指标,并对多对比度和多模态脑成像数据进行视觉/自动图像QC。LONI-QC系统已被用于评估作为各种多站点研究一部分获取的大型神经影像数据集的质量,如创伤性脑损伤转化研究与临床知识(TRACK-TBI)研究和阿尔茨海默病神经影像倡议(ADNI)。LONI-QC的功能向全球用户免费提供,成像研究人员采用它可能会极大地有助于维持脑图像数据质量的高标准,并在神经影像社区实施这些标准。