Britton Chance Center for Biomedical Photonics, Wuhan National Laboratory for Optoelectronics, Huazhong University of Science and Technology, Wuhan, China.
MoE Key Laboratory for Biomedical Photonics, School of Engineering Sciences, Huazhong University of Science and Technology, Wuhan, China.
Sci Rep. 2020 Feb 7;10(1):2139. doi: 10.1038/s41598-020-59042-y.
Accurately mapping brain structures in three-dimensions is critical for an in-depth understanding of brain functions. Using the brain atlas as a hub, mapping detected datasets into a standard brain space enables efficient use of various datasets. However, because of the heterogeneous and nonuniform brain structure characteristics at the cellular level introduced by recently developed high-resolution whole-brain microscopy techniques, it is difficult to apply a single standard to robust registration of various large-volume datasets. In this study, we propose a robust Brain Spatial Mapping Interface (BrainsMapi) to address the registration of large-volume datasets by introducing extracted anatomically invariant regional features and a large-volume data transformation method. By performing validation on model data and biological images, BrainsMapi achieves accurate registration on intramodal, individual, and multimodality datasets and can also complete the registration of large-volume datasets (approximately 20 TB) within 1 day. In addition, it can register and integrate unregistered vectorized datasets into a common brain space. BrainsMapi will facilitate the comparison, reuse and integration of a variety of brain datasets.
准确地在三维空间中绘制大脑结构对于深入了解大脑功能至关重要。利用大脑图谱作为枢纽,将检测到的数据集映射到标准大脑空间中,可以有效地利用各种数据集。然而,由于最近开发的高分辨率全脑显微镜技术在细胞水平上引入了异构和非均匀的大脑结构特征,因此很难应用单一标准对各种大容量数据集进行稳健的配准。在这项研究中,我们提出了一种稳健的大脑空间映射接口(BrainsMapi),通过引入提取的解剖不变的区域特征和大容量数据变换方法来解决大容量数据集的配准问题。通过对模型数据和生物图像进行验证,BrainsMapi 可以实现模态内、个体和多模态数据集的精确配准,并且可以在 1 天内完成大容量数据集(约 20 TB)的配准。此外,它还可以将未配准的矢量化数据集注册并集成到一个通用的大脑空间中。BrainsMapi 将促进各种大脑数据集的比较、重用和集成。