Department of Biostatistics and Epidemiology, Perelman School of Medicine, University of Pennsylvania, USA.
Center for Biomedical Image Computing and Analytics, Department of Radiology, Perelman School of Medicine, University of Pennsylvania, USA.
Neuroimage. 2017 Nov 1;161:149-170. doi: 10.1016/j.neuroimage.2017.08.047. Epub 2017 Aug 18.
Diffusion tensor imaging (DTI) is a well-established magnetic resonance imaging (MRI) technique used for studying microstructural changes in the white matter. As with many other imaging modalities, DTI images suffer from technical between-scanner variation that hinders comparisons of images across imaging sites, scanners and over time. Using fractional anisotropy (FA) and mean diffusivity (MD) maps of 205 healthy participants acquired on two different scanners, we show that the DTI measurements are highly site-specific, highlighting the need of correcting for site effects before performing downstream statistical analyses. We first show evidence that combining DTI data from multiple sites, without harmonization, may be counter-productive and negatively impacts the inference. Then, we propose and compare several harmonization approaches for DTI data, and show that ComBat, a popular batch-effect correction tool used in genomics, performs best at modeling and removing the unwanted inter-site variability in FA and MD maps. Using age as a biological phenotype of interest, we show that ComBat both preserves biological variability and removes the unwanted variation introduced by site. Finally, we assess the different harmonization methods in the presence of different levels of confounding between site and age, in addition to test robustness to small sample size studies.
扩散张量成像(DTI)是一种成熟的磁共振成像(MRI)技术,用于研究白质的微观结构变化。与许多其他成像方式一样,DTI 图像存在技术上的扫描仪间差异,这阻碍了在不同成像地点、扫描仪和不同时间对图像进行比较。我们使用在两台不同扫描仪上获取的 205 名健康参与者的分数各向异性(FA)和平均扩散系数(MD)图,结果表明 DTI 测量结果高度依赖于特定的扫描部位,这突出了在进行下游统计分析之前纠正部位效应的必要性。我们首先证明,在不进行协调的情况下,结合来自多个部位的 DTI 数据可能适得其反,并对推断产生负面影响。然后,我们提出并比较了几种 DTI 数据的协调方法,结果表明,ComBat 是一种在基因组学中常用的批量效应校正工具,在对 FA 和 MD 图中的不需要的部位间变异性进行建模和去除方面表现最佳。使用年龄作为感兴趣的生物学表型,我们表明 ComBat 既保留了生物学变异性,又去除了部位引起的不需要的变异。最后,我们评估了不同的协调方法在部位和年龄之间存在不同程度的混杂以及对小样本量研究的稳健性。