Meyers Benjamin, Lee Vincent K, Dennis Lauren, Wallace Julia, Schmithorst Vanessa, Votava-Smith Jodie K, Rajagopalan Vidya, Herrup Elizabeth, Baust Tracy, Tran Nhu N, Hunter Jill, Licht Daniel J, Gaynor J William, Andropoulos Dean B, Panigrahy Ashok, Ceschin Rafael
Department of Radiology, University of Pittsburgh School of Medicine, Pittsburgh, PA.
Division of Cardiology, Department of Pediatrics, Children's Hospital of Los Angeles and Keck School of Medicine University of Southern California, Los Angeles, CA.
Neuroimage Rep. 2022 Sep;2(3). doi: 10.1016/j.ynirp.2022.100114. Epub 2022 Jun 20.
Advanced brain imaging of neonatal macrostructure and microstructure, which has prognosticating importance, is more frequently being incorporated into multi-center trials of neonatal neuroprotection. Multicenter neuroimaging studies, designed to overcome small sample sized clinical cohorts, are essential but lead to increased technical variability. Few harmonization techniques have been developed for neonatal brain microstructural (diffusion tensor) analysis. The work presented here aims to remedy two common problems that exist with the current state of the art approaches: 1) variance in scanner and protocol in data collection can limit the researcher's ability to harmonize data acquired under different conditions or using different clinical populations. 2) The general lack of objective guidelines for dealing with anatomically abnormal anatomy and pathology. Often, subjects are excluded due to subjective criteria, or due to pathology that could be informative to the final analysis, leading to the loss of reproducibility and statistical power. This proves to be a barrier in the analysis of large multi-center studies and is a particularly salient problem given the relative scarcity of neonatal imaging data. We provide an objective, data-driven, and semi-automated neonatal processing pipeline designed to harmonize compartmentalized variant data acquired under different parameters. This is done by first implementing a search space reduction step of extracting the along-tract diffusivity values along each tract of interest, rather than performing whole-brain harmonization. This is followed by a data-driven outlier detection step, with the purpose of removing unwanted noise and outliers from the final harmonization. We then use an empirical Bayes harmonization algorithm performed at the along-tract level, with the output being a lower dimensional space but still spatially informative. After applying our pipeline to this large multi-site dataset of neonates and infants with congenital heart disease (n= 398 subjects recruited across 4 centers, with a total of n=763 MRI pre-operative/post-operative time points), we show that infants with single ventricle cardiac physiology demonstrate greater white matter microstructural alterations compared to infants with bi-ventricular heart disease, supporting what has previously been shown in literature. Our method is an open-source pipeline for delineating white matter tracts in subject space but provides the necessary modular components for performing atlas space analysis. As such, we validate and introduce Diffusion Imaging of Neonates by Group Organization (DINGO), a high-level, semi-automated framework that can facilitate harmonization of subject-space tractography generated from diffusion tensor imaging acquired across varying scanners, institutions, and clinical populations. Datasets acquired using varying protocols or cohorts are compartmentalized into subsets, where a cohort-specific template is generated, allowing for the propagation of the tractography mask set with higher spatial specificity. Taken together, this pipeline can reduce multi-scanner technical variability which can confound important biological variability in relation to neonatal brain microstructure.
对新生儿大脑宏观结构和微观结构进行的高级脑成像具有预后重要性,越来越多地被纳入新生儿神经保护的多中心试验中。旨在克服临床队列样本量小问题的多中心神经成像研究至关重要,但会导致技术变异性增加。针对新生儿脑微观结构(扩散张量)分析开发的协调技术很少。本文介绍的工作旨在解决当前先进方法存在的两个常见问题:1)数据收集过程中扫描仪和协议的差异会限制研究人员协调在不同条件下或使用不同临床人群获取的数据的能力。2)普遍缺乏处理解剖结构异常和病理情况的客观指导原则。通常,受试者会因主观标准或可能对最终分析有参考价值的病理情况而被排除,导致可重复性和统计效力丧失。这在大型多中心研究的分析中被证明是一个障碍,鉴于新生儿成像数据相对稀缺,这是一个尤为突出的问题。我们提供了一个客观、数据驱动且半自动的新生儿处理流程,旨在协调在不同参数下获取的分区变异数据。这首先通过实施一个搜索空间缩减步骤来实现,即沿着每条感兴趣的纤维束提取沿纤维束扩散率值,而不是进行全脑协调。接下来是一个数据驱动的异常值检测步骤,目的是从最终协调中去除不需要的噪声和异常值。然后我们在沿纤维束水平执行经验贝叶斯协调算法,输出是一个低维空间但仍具有空间信息。将我们的流程应用于这个患有先天性心脏病的新生儿和婴儿的大型多站点数据集(4个中心招募了398名受试者,共有763个MRI术前/术后时间点)后,我们发现单心室心脏生理的婴儿与双心室心脏病婴儿相比,白质微观结构改变更大,这支持了先前文献中的研究结果。我们的方法是一个用于在受试者空间中描绘白质纤维束的开源流程,但提供了进行图谱空间分析所需的模块化组件。因此,我们验证并引入了通过组组织进行的新生儿扩散成像(DINGO),这是一个高级半自动框架,可以促进对从不同扫描仪、机构和临床人群获取的扩散张量成像生成的受试者空间纤维束成像进行协调。使用不同协议或队列获取的数据集被划分为子集,在子集中生成特定队列的模板,从而允许具有更高空间特异性的纤维束成像掩码集的传播。总之,这个流程可以减少多扫描仪技术变异性,而这种变异性可能会混淆与新生儿脑微观结构相关的重要生物学变异性。