von Buchholtz Lars J, Lam Ruby M, Emrick Joshua J, Chesler Alexander T, Ryba Nicholas J P
National Institute of Dental and Craniofacial Research, Bethesda, MD, United States.
National Center for Integrative and Complementary Health, Bethesda, MD, United States.
Pain. 2020 Sep 1;161(9):2212-2224. doi: 10.1097/j.pain.0000000000001911.
Single cell sequencing has provided unprecedented information about the transcriptomic diversity of somatosensory systems. Here, we describe a simple and versatile in situ hybridization (ISH)-based approach for mapping this information back to the tissue. We illustrate the power of this approach by demonstrating that ISH localization with just 8 probes is sufficient to distinguish all major classes of neurons in sections of the trigeminal ganglion. To further simplify the approach and make transcriptomic class assignment and cell segmentation automatic, we developed a machine learning approach for analyzing images from multiprobe ISH experiments. We demonstrate the power of in situ class assignment by examining the expression patterns of voltage-gated sodium channels that play roles in distinct somatosensory processes and pain. Specifically, this analysis resolves intrinsic problems with single cell sequencing related to the sparseness of data leading to ambiguity about gene expression patterns. We also used the multiplex in situ approach to study the projection fields of the different neuronal classes. Our results demonstrate that the surface of the eye and meninges are targeted by broad arrays of neural classes despite their very different sensory properties but exhibit idiotypic patterns of innervation at a quantitative level. Very surprisingly, itch-related neurons extensively innervated the meninges, indicating that these transcriptomic cell classes are not simply labeled lines for triggering itch. Together, these results substantiate the importance of a sensory neuron's peripheral and central connections as well as its transcriptomic class in determining its role in sensation.
单细胞测序提供了关于体感系统转录组多样性的前所未有的信息。在这里,我们描述了一种基于原位杂交(ISH)的简单通用方法,用于将这些信息映射回组织。我们通过证明仅用8个探针进行ISH定位就足以区分三叉神经节切片中的所有主要神经元类别,来说明这种方法的强大之处。为了进一步简化该方法并使转录组分类和细胞分割自动化,我们开发了一种机器学习方法来分析多探针ISH实验的图像。我们通过检查在不同体感过程和疼痛中起作用的电压门控钠通道的表达模式,展示了原位分类的强大功能。具体而言,该分析解决了单细胞测序中与数据稀疏性相关的内在问题,这些问题导致基因表达模式存在模糊性。我们还使用多重原位方法研究了不同神经元类别的投射场。我们的结果表明,尽管眼睛表面和脑膜具有非常不同的感觉特性,但它们被广泛的神经类别所靶向,不过在定量水平上表现出独特型的神经支配模式。非常令人惊讶的是,与瘙痒相关的神经元广泛支配脑膜,这表明这些转录组细胞类别并非简单的触发瘙痒的标记线。总之,这些结果证实了感觉神经元的外周和中枢连接以及其转录组类别在确定其感觉作用方面的重要性。