计算生物学
生物
电池类型
谷氨酸的
转录组
原位杂交
细胞
单细胞分析
马尔可夫随机场
神经科学
基因
基因表达
遗传学
计算机科学
人工智能
受体
谷氨酸受体
分割
图像分割
作者
Qian Zhu,Sheel Shah,Ruben Dries,Long Cai,Guo‐Cheng Yuan
摘要
How intrinsic gene-regulatory networks interact with a cell's spatial environment to define its identity remains poorly understood. We developed an approach to distinguish between intrinsic and extrinsic effects on global gene expression by integrating analysis of sequencing-based and imaging-based single-cell transcriptomic profiles, using cross-platform cell type mapping combined with a hidden Markov random field model. We applied this approach to dissect the cell-type- and spatial-domain-associated heterogeneity in the mouse visual cortex region. Our analysis identified distinct spatially associated, cell-type-independent signatures in the glutamatergic and astrocyte cell compartments. Using these signatures to analyze single-cell RNA sequencing data, we identified previously unknown spatially associated subpopulations, which were validated by comparison with anatomical structures and Allen Brain Atlas images.
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