论文标题
用于映射空间转录组学的网格上的图像varifolds
Image Varifolds on Meshes for Mapping Spatial Transcriptomics
论文作者
论文摘要
在很大程度上自动化显微镜方法的发展(例如用于成像小鼠大脑中细胞结构的Merfish)的进展正在提供微分辨率基因表达的空间检测。尽管在现场计算解剖结构(CA)中取得了巨大进展,以在组织尺度上执行差异图映射技术,以在公共坐标中进行晚期神经信息学研究,但通过公共坐标通过统计平均进行分子量表和细胞规模群体的整合仍然存在。本文介绍了用于计算差异形态空间中的大地学的第一组算法,我们称其为图像 - varifold lddmm,扩展了大变形差异度量映射(LDDMM)算法的大型家族,以适应“复制和粘贴”的粒子动作,以扩展“ varifold”的粒子动作,以扩展组织一致的量表。我们将大脑数据表示为几何措施,称为{\ em Image varifolds},由大量非结构化点(即在2D或3D网格上都不对齐)支持,每个点代表较小的空间%(可能不完整地描述),并携带{\ em em em em lemutient a a a a a a a的密度列表,并携带;图像大脑空间的形状是通过通过差异形态转化的。将这些对象嵌入到具有标准的线性空间中,产生所谓的“和弦度量”后,将获得图像varifolds之间的度量。
Advances in the development of largely automated microscopy methods such as MERFISH for imaging cellular structures in mouse brains are providing spatial detection of micron resolution gene expression. While there has been tremendous progress made in the field Computational Anatomy (CA) to perform diffeomorphic mapping technologies at the tissue scales for advanced neuroinformatic studies in common coordinates, integration of molecular- and cellular-scale populations through statistical averaging via common coordinates remains yet unattained. This paper describes the first set of algorithms for calculating geodesics in the space of diffeomorphisms, what we term Image-Varifold LDDMM,extending the family of large deformation diffeomorphic metric mapping (LDDMM) algorithms to accommodate the "copy and paste" varifold action of particles which extends consistently to the tissue scales. We represent the brain data as geometric measures, termed as {\em image varifolds} supported by a large number of unstructured points, % (i.e., not aligned on a 2D or 3D grid), each point representing a small volume in space % (which may be incompletely described) and carrying a list of densities of {\em features} elements of a high-dimensional feature space. The shape of image varifold brain spaces is measured by transforming them by diffeomorphisms. The metric between image varifolds is obtained after embedding these objects in a linear space equipped with the norm, yielding a so-called "chordal metric."