一种单细胞 CRISPRi 平台,用于鉴定与人类脂肪细胞代谢紊乱相关的候选基因。
A single-cell CRISPRi platform for characterizing candidate genes relevant to metabolic disorders in human adipocytes.
机构信息
Division of Cardiovascular Medicine, Department of Medicine, Stanford University School of Medicine, Stanford, California, United States.
Stanford Diabetes Research Center, Stanford University School of Medicine, Stanford, California, United States.
出版信息
Am J Physiol Cell Physiol. 2023 Sep 1;325(3):C648-C660. doi: 10.1152/ajpcell.00148.2023. Epub 2023 Jul 24.
CROP-Seq combines gene silencing using CRISPR interference with single-cell RNA sequencing. Here, we applied CROP-Seq to study adipogenesis and adipocyte biology. Human preadipocyte SGBS cell line expressing KRAB-dCas9 was transduced with a sgRNA library. Following selection, individual cells were captured using microfluidics at different timepoints during adipogenesis. Bioinformatic analysis of transcriptomic data was used to determine the knockdown effects, the dysregulated pathways, and to predict cellular phenotypes. Single-cell transcriptomes recapitulated adipogenesis states. For all targets, over 400 differentially expressed genes were identified at least at one timepoint. As a validation of our approach, the knockdown of and (which encode key proadipogenic transcription factors) resulted in the inhibition of adipogenesis. Gene set enrichment analysis generated hypotheses regarding the molecular function of novel genes. knockdown led to downregulation of transcriptional response to proinflammatory cytokine TNF-α in preadipocytes and to decreased CXCL-16 and IL-6 secretion. knockdown resulted in increased expression of adipogenesis markers. In summary, this powerful, hypothesis-free tool can identify novel regulators of adipogenesis, preadipocyte, and adipocyte function associated with metabolic disease. Genomics efforts led to the identification of many genomic loci that are associated with metabolic traits, many of which are tied to adipose tissue function. However, determination of the causal genes, and their mechanism of action in metabolism, is a time-consuming process. Here, we use an approach to determine the transcriptional outcome of candidate gene knockdown for multiple genes at the same time in a human cell model of adipogenesis.
CROP-Seq 将 CRISPR 干扰引起的基因沉默与单细胞 RNA 测序相结合。在这里,我们将 CROP-Seq 应用于研究脂肪生成和脂肪细胞生物学。表达 KRAB-dCas9 的人前脂肪细胞 SGBS 细胞系被 sgRNA 文库转导。选择后,在脂肪生成的不同时间点使用微流控技术捕获单个细胞。对转录组数据的生物信息学分析用于确定基因敲低效果、失调的途径,并预测细胞表型。单细胞转录组重现已分化的脂肪生成状态。对于所有靶点,至少在一个时间点鉴定出超过 400 个差异表达基因。作为我们方法的验证, 和 (编码关键的促脂肪生成转录因子)的敲低导致脂肪生成的抑制。基因集富集分析生成了关于新基因分子功能的假设。 敲低导致前脂肪细胞中促炎细胞因子 TNF-α 的转录反应下调,并导致 CXCL-16 和 IL-6 分泌减少。 敲低导致脂肪生成标志物的表达增加。总之,这种强大的、无假设的工具可以识别与代谢疾病相关的脂肪生成、前脂肪细胞和脂肪细胞功能的新调节因子。基因组学研究导致确定了许多与代谢特征相关的基因组位点,其中许多与脂肪组织功能有关。然而,确定因果基因及其在代谢中的作用机制是一个耗时的过程。在这里,我们使用一种方法来确定候选基因敲低在人类脂肪生成细胞模型中多个基因的转录结果。