Centre for Image Analysis, Department of Information Technology and Science for Life Laboratory, Uppsala University, Uppsala, Sweden.
Science for Life Laboratory, Department of Biochemistry and Biophysics, Stockholm University, Solna, Sweden.
BMC Biol. 2020 Oct 19;18(1):144. doi: 10.1186/s12915-020-00874-5.
Neuroanatomical compartments of the mouse brain are identified and outlined mainly based on manual annotations of samples using features related to tissue and cellular morphology, taking advantage of publicly available reference atlases. However, this task is challenging since sliced tissue sections are rarely perfectly parallel or angled with respect to sections in the reference atlas and organs from different individuals may vary in size and shape and requires manual annotation. With the advent of in situ sequencing technologies and automated approaches, it is now possible to profile the gene expression of targeted genes inside preserved tissue samples and thus spatially map biological processes across anatomical compartments.
Here, we show how in situ sequencing data combined with dimensionality reduction and clustering can be used to identify spatial compartments that correspond to known anatomical compartments of the brain. We also visualize gradients in gene expression and sharp as well as smooth transitions between different compartments. We apply our method on mouse brain sections and show that a fully unsupervised approach can computationally define anatomical compartments, which are highly reproducible across individuals, using as few as 18 gene markers. We also show that morphological variation does not always follow gene expression, and different spatial compartments can be defined by various cell types with common morphological features but distinct gene expression profiles.
We show that spatial gene expression data can be used for unsupervised and unbiased annotations of mouse brain spatial compartments based only on molecular markers, without the need of subjective manual annotations based on tissue and cell morphology or matching reference atlases.
小鼠大脑的神经解剖学区域主要是基于利用与组织和细胞形态相关的特征对样本进行手动注释来识别和勾勒,利用公开的参考图谱。然而,由于切片组织很少与参考图谱中的切片完全平行或成一定角度,而且不同个体的器官在大小和形状上可能存在差异,因此需要手动注释,所以这项任务具有挑战性。随着原位测序技术和自动化方法的出现,现在可以对保存的组织样本中的靶向基因的表达进行分析,从而在解剖学区域之间对生物过程进行空间定位。
在这里,我们展示了如何将原位测序数据与降维和聚类相结合,以识别与大脑已知解剖区域相对应的空间区域。我们还可视化了基因表达的梯度以及不同区域之间的急剧和平滑过渡。我们将我们的方法应用于小鼠脑切片,并表明完全无监督的方法可以使用尽可能少的 18 个基因标记,在个体之间高度可重复地计算定义解剖区域,这些区域基于分子标记。我们还表明,形态变异并不总是与基因表达相关,并且不同的空间区域可以由具有共同形态特征但不同基因表达谱的不同细胞类型来定义。
我们表明,仅基于分子标记,就可以使用空间基因表达数据对小鼠大脑的空间区域进行无监督和无偏的注释,而无需基于组织和细胞形态或匹配参考图谱的主观手动注释。