Laboratory of Psychological Health and Imaging, Shanghai Mental Health Center, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Shanghai Key Laboratory of Psychotic Disorders, Shanghai Mental Health Center, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Hum Brain Mapp. 2023 Apr 1;44(5):2062-2084. doi: 10.1002/hbm.26194. Epub 2022 Dec 30.
Magnetic resonance imaging (MRI) has been one of the primary instruments to measure the properties of the human brain non-invasively in vivo. MRI data generally needs to go through a series of processing steps (i.e., a pipeline) before statistical analysis. Currently, the processing pipelines for multi-modal MRI data are still rare, in contrast to single-modal pipelines. Furthermore, the reliability and validity of the output of the pipelines are critical for the MRI studies. However, the reliability and validity measures are not available or adequate for almost all pipelines. Here, we present PhiPipe, a multi-modal MRI processing pipeline. PhiPipe could process T1-weighted, resting-state BOLD, and diffusion-weighted MRI data and generate commonly used brain features in neuroimaging. We evaluated the test-retest reliability of PhiPipe's brain features by computing intra-class correlations (ICC) in four public datasets with repeated scans. We further evaluated the predictive validity by computing the correlation of brain features with chronological age in three public adult lifespan datasets. The multivariate reliability and predictive validity of the PhiPipe results were also evaluated. The results of PhiPipe were consistent with previous studies, showing comparable or better reliability and validity when compared with two popular single-modality pipelines, namely DPARSF and PANDA. The publicly available PhiPipe provides a simple-to-use solution to multi-modal MRI data processing. The accompanied reliability and validity assessments could help researchers make informed choices in experimental design and statistical analysis. Furthermore, this study provides a framework for evaluating the reliability and validity of image processing pipelines.
磁共振成像(MRI)是一种主要的非侵入性活体测量人脑特性的仪器。MRI 数据通常需要经过一系列的处理步骤(即流水线),然后才能进行统计分析。目前,与单模态流水线相比,多模态 MRI 数据的处理流水线仍然很少。此外,流水线的输出的可靠性和有效性对于 MRI 研究至关重要。然而,几乎所有的流水线都没有或没有足够的可靠性和有效性度量。在这里,我们提出了 PhiPipe,一个多模态 MRI 处理流水线。PhiPipe 可以处理 T1 加权、静息态 BOLD 和弥散加权 MRI 数据,并生成神经影像学中常用的脑特征。我们通过在四个具有重复扫描的公共数据集上计算组内相关系数(ICC),评估了 PhiPipe 的脑特征的测试-再测试可靠性。我们还通过计算三个公共成人寿命数据集的脑特征与实际年龄的相关性,评估了 PhiPipe 的预测有效性。我们还评估了 PhiPipe 结果的多变量可靠性和预测有效性。PhiPipe 的结果与之前的研究一致,与两个流行的单模态流水线(即 DPARSF 和 PANDA)相比,具有可比或更好的可靠性和有效性。可用的 PhiPipe 提供了一个简单易用的多模态 MRI 数据处理解决方案。伴随的可靠性和有效性评估可以帮助研究人员在实验设计和统计分析中做出明智的选择。此外,本研究为评估图像处理流水线的可靠性和有效性提供了一个框架。