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Automated processing pipeline for neonatal diffusion MRI in the developing Human Connectome Project

机译:开发人体连接项目中的新生扩散MRI自动化处理管道

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The developing Human Connectome Project is set to create and make available to the scientific community a 4-dimensional map of functional and structural cerebral connectivity from 20 to 44 weeks post-menstrual age, to allow exploration of the genetic and environmental influences on brain development, and the relation between connectivity and neurocognitive function. A large set of multi-modal MRI data from fetuses and newborn infants is currently being acquired, along with genetic, clinical and developmental information. In this overview, we describe the neonatal diffusion MRI (dMRI) image processing pipeline and the structural connectivity aspect of the project. Neonatal dMRI data poses specific challenges, and standard analysis techniques used for adult data are not directly applicable. We have developed a processing pipeline that deals directly with neonatal-specific issues, such as severe motion and motion-related artefacts, small brain sizes, high brain water content and reduced anisotropy. This pipeline allows automated analysis of in-vivo dMRI data, probes tissue microstructure, reconstructs a number of major white matter tracts, and includes an automated quality control framework that identifies processing issues or inconsistencies. We here describe the pipeline and present an exemplar analysis of data from 140 infants imaged at 38-44 weeks post-menstrual age.
机译:开发的人类连接项目设定为在月经期后20至44周的44周,允许探索对大脑发育的遗传和环境影响的44维地图。连接与神经认知函数之间的关系。目前正在获得来自胎儿和新生儿婴儿的大量多模态MRI数据以及遗传,临床和发展信息。在此概述中,我们描述了新生儿扩散MRI(DMRI)图像处理管道和项目的结构连接方面。新生儿DMRI数据造成特定的挑战,并且用于成人数据的标准分析技术不可直接适用。我们开发了一个处理管道,直接涉及新生儿特定问题,例如严重的运动和与运动相关的艺术品,小脑尺寸,高脑水含量和各向异性降低。该流水线允许自动分析体内DMRI数据,探测组织微观结构,重建多个主要白质散,并包括自动化质量控制框架,用于识别处理问题或不一致。我们在这里描述了流水线,并在月经期时代后38-44周的140个婴儿的数据分析。

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