Translational Imaging Group, Centre for Medical Image Computing (CMIC), Department of Medical Physics and Biomedical Engineering, University College London, Malet Place Engineering Building, London, WC1E 6BT, UK.
Department of Development and Regeneration, Woman and Child Cluster, Group Biomedical Sciences, KU Leuven University of Leuven, Belgium.
Neuroimage. 2018 Oct 1;179:187-198. doi: 10.1016/j.neuroimage.2018.06.029. Epub 2018 Jun 14.
The rabbit model has become increasingly popular in neurodevelopmental studies as it is best suited to bridge the gap in translational research between small and large animals. In the context of preclinical studies, high-resolution magnetic resonance imaging (MRI) is often the best modality to investigate structural and functional variability of the brain, both in vivo and ex vivo. In most of the MRI-based studies, an important requirement to analyze the acquisitions is an accurate parcellation of the considered anatomical structures. Manual segmentation is time-consuming and typically poorly reproducible, while state-of-the-art automated segmentation algorithms rely on available atlases. In this work we introduce the first digital neonatal rabbit brain atlas consisting of 12 multi-modal acquisitions, parcellated into 89 areas according to a hierarchical taxonomy. Delineations were performed iteratively, alternating between segmentation propagation, label fusion and manual refinements, with the aim of controlling the quality while minimizing the bias introduced by the chosen sequence. Reliability and accuracy were assessed with cross-validation and intra- and inter-operator test-retests. Multi-atlas, versioned controlled segmentations repository and supplementary materials download links are available from the software repository documentation at https://github.com/gift-surg/SPOT-A-NeonatalRabbit.
兔子模型在神经发育研究中越来越受欢迎,因为它最适合弥合小动物和大动物之间转化研究的差距。在临床前研究中,高分辨率磁共振成像(MRI)通常是研究大脑结构和功能变异性的最佳方式,无论是在体内还是体外。在大多数基于 MRI 的研究中,分析采集数据的一个重要要求是对所考虑的解剖结构进行精确的分割。手动分割既耗时又通常缺乏可重复性,而最先进的自动分割算法依赖于可用的图谱。在这项工作中,我们引入了第一个数字化新生兔脑图谱,该图谱由 12 个多模态采集组成,根据分层分类法分为 89 个区域。通过分割传播、标签融合和手动细化的迭代来进行描绘,目的是在最小化所选序列引入的偏差的同时控制质量。通过交叉验证以及内部和外部操作员的测试-重测来评估可靠性和准确性。多图谱、版本控制的分割存储库以及补充材料的下载链接可从软件存储库文档(https://github.com/gift-surg/SPOT-A-NeonatalRabbit)中获得。