Department of Radiology and Imaging Sciences, University of Utah, Salt Lake City, Utah, USA.
Department of Neurology and Biomedical Imaging, University of California San Francisco, San Francisco, California, USA.
Interv Neuroradiol. 2023 Jun;29(3):307-314. doi: 10.1177/15910199221088691. Epub 2022 Mar 21.
Better understanding of vessel biology and vascular pathophysiology is needed to improve understanding of cerebrovascular disorders. Tissue from diseased vessels can offer the best data. Rabbit models can be effective for studying intracranial vessels, filling gaps resulting from difficulties acquiring human tissue. Spatially-resolved transcriptomics (SRT) in particular hold promise for studying such models as they build on RNA sequencing methods, augmenting such data with histopathology.
Rabbit brains with intact arteries were flash frozen, cryosectioned, and stained with H&E to confirm adequate inclusion of intracranial vessels before proceeding with tissue optimization and gene expression analysis using the Visium SRT platform. SRT results were analyzed with k-means clustering analysis, and differential gene expression was examined, comparing arteries to veins.
Cryosections were successfully mounted on Visium proprietary slides. Quality control thresholds were met. Optimum permeabilization was determined to be 24 min for the tissue optimization step. In analysis of SRT data, k-means clustering distinguished vascular tissue from parenchyma. When comparing gene expression traits, the most differentially expressed genes were those found in smooth muscle cells. These genes were more commonly expressed in arteries compared to veins.
Intracranial vessels from model rabbits can be processed and analyzed with the Visium SRT platform. Face validity is found in the ability of SRT data to distinguish vessels from parenchymal tissue and differential expression analysis accurately distinguishing arteries from veins. SRT should be considered for future animal model investigations into cerebrovascular diseases.
为了更好地了解脑血管疾病,需要更好地了解血管生物学和血管病理生理学。病变血管的组织可以提供最佳的数据。兔模型可以有效地研究颅内血管,填补因难以获取人体组织而产生的空白。空间分辨转录组学(SRT)特别有希望用于研究这些模型,因为它们建立在 RNA 测序方法的基础上,通过组织病理学增强了这些数据。
用完整动脉的兔脑进行快速冷冻,冷冻切片,并用 H&E 染色,以确认颅内血管充分包含,然后再进行组织优化和基因表达分析,使用 Visium SRT 平台。使用 k-均值聚类分析对 SRT 结果进行分析,并比较动脉与静脉,检查差异基因表达。
成功地将冷冻切片安装在 Visium 专有载玻片上。达到了质量控制的阈值。确定组织优化步骤的最佳通透时间为 24 分钟。在 SRT 数据分析中,k-均值聚类区分了血管组织和实质组织。在比较基因表达特征时,差异表达最明显的基因是平滑肌细胞中的基因。这些基因在动脉中的表达比静脉更为常见。
模型兔的颅内血管可以用 Visium SRT 平台进行处理和分析。SRT 数据能够区分血管和实质组织,差异表达分析能够准确区分动脉和静脉,这表明 SRT 具有很好的可信度。SRT 应该被考虑用于未来的脑血管疾病动物模型研究。