Department of Genetics and Genomics, Pamela Sklar Division of Psychiatric Genomics, Icahn Institute for Data Science and Genomic Technology, Icahn School of Medicine at Mount Sinai, New York, NY, USA.
Graduate School of Biomedical Science, Icahn School of Medicine at Mount Sinai, New York, New York, NY, USA.
Nat Protoc. 2021 Feb;16(2):812-840. doi: 10.1038/s41596-020-00436-7. Epub 2021 Jan 11.
The mechanisms by which genetic risk variants interact with each other, as well as environmental factors, to contribute to complex genetic disorders remain unclear. We describe in detail our recently published approach to resolve distinct additive and synergistic transcriptomic effects after combinatorial manipulation of genetic variants and/or chemical perturbagens. Although first developed for CRISPR-based perturbation studies of isogenic human induced pluripotent stem cell-derived neurons, our methodology can be broadly applied to any RNA sequencing dataset, provided that raw read counts are available. Whereas other differential expression analyses reveal the effect of individual perturbations, here we specifically query interactions between two or more perturbagens, resolving the extent of non-additive (synergistic) interactions between perturbations. We discuss the careful experimental design required to resolve synergistic effects and considerations of statistical power and how to quantify observed synergy between experiments. Additionally, we speculate on potential future applications and explore the obvious limitations of this approach. Overall, by interrogating the effect of independent factors, alone and in combination, our analytic framework and experimental design facilitate the discovery of convergence and synergy downstream of gene and/or treatment perturbations hypothesized to contribute to complex diseases. We think that this protocol can be successfully applied by any scientist with bioinformatic skills and basic proficiency in the R programming language. Our computational pipeline ( https://github.com/nadschro/synergy-analysis ) is straightforward, does not require supercomputing support and can be conducted in a single day upon completion of RNA sequencing experiments.
遗传风险变异如何相互作用,以及遗传变异与环境因素如何相互作用导致复杂的遗传疾病,其机制仍不清楚。我们详细描述了我们最近发表的方法,该方法用于在组合操纵遗传变异和/或化学扰动剂后解析独特的加性和协同转录组效应。虽然该方法最初是为基于 CRISPR 的同源人类诱导多能干细胞衍生神经元的扰动研究开发的,但我们的方法可以广泛应用于任何 RNA 测序数据集,只要提供原始读数计数即可。虽然其他差异表达分析揭示了单个扰动的影响,但在这里我们特别查询了两个或更多扰动剂之间的相互作用,解析了扰动之间非加性(协同)相互作用的程度。我们讨论了为解析协同作用所需的仔细实验设计以及统计功效的考虑因素,以及如何量化实验之间观察到的协同作用。此外,我们还推测了这种方法的潜在未来应用,并探讨了这种方法的明显局限性。总的来说,通过单独和组合地询问独立因素的影响,我们的分析框架和实验设计有助于发现基因和/或治疗扰动假设导致复杂疾病的下游的收敛性和协同作用。我们认为,任何具有生物信息学技能和 R 编程语言基本熟练程度的科学家都可以成功应用此方案。我们的计算管道(https://github.com/nadschro/synergy-analysis)简单直接,不需要超级计算支持,并且在完成 RNA 测序实验后可以在一天内进行。