David Benjamin M, Jensen Paul A
Department of Bioengineering, University of Illinois Urbana-Champaign, 1406 W Green St, Urbana, IL, 61801, United States.
Department of Bioengineering, University of Illinois Urbana-Champaign, 1406 W Green St, Urbana, IL, 61801, United States; Department of Microbiology, University of Illinois Urbana-Champaign, 601 S Goodwin Av, Urbana, IL, 61801, United States; Carl Woese Institute of Genomic Biology, University of Illinois Urbana-Champaign, 1206 W Gregory Dr, Urbana, IL, 61801, United States.
SLAS Technol. 2023 Feb;28(1):16-21. doi: 10.1016/j.slast.2022.09.004. Epub 2022 Sep 20.
In prokaryotic RNA-seq library preparation, rRNA depletion is required to remove highly abundant rRNA transcripts from total RNA. rRNA is so abundant that small improvements in depletion efficiency lead to large increases in mRNA sequencing coverage. The current gold-standard method for rRNA depletion makes rRNA depletion the most expensive step in prokaryotic RNA-seq library preparation. A variety of commercial and home-made methods exist to lower the cost or increase the efficiency of rRNA removal. Many of these techniques are suboptimal when applied to new species of bacteria or when the protocol or reagents need to be changed. Re-optimizing a protocol by trial-and-error is an expensive and laborious process. Systematic frameworks like the statistical design of experiments (DOE) can efficiently improve processes by exploring the quantitative relationship between multiple factors. DOE allows experimenters to find factor interactions that may not be apparent when factors are studied in isolation. We used DOE to optimize an rRNA depletion protocol by updating reagents and identifying factors that maximize rRNA removal and minimize cost. The optimized protocol more efficiently removes rRNA, uses fewer reagents, and is less expensive than the original protocol. Our optimization required only 36 experiments and identified two significant interactions among three protocol factors. Overall, our approach demonstrates the utility of a rational, DOE framework for improving complex molecular biology protocols.
在原核生物RNA测序文库制备过程中,需要去除核糖体RNA(rRNA),以便从总RNA中去除高度丰富的rRNA转录本。rRNA含量非常高,以至于去除效率的微小提高都会导致信使RNA(mRNA)测序覆盖率的大幅增加。当前用于rRNA去除的金标准方法使rRNA去除成为原核生物RNA测序文库制备中最昂贵的步骤。存在多种商业和自制方法来降低成本或提高rRNA去除效率。当应用于新的细菌物种或需要更改方案或试剂时,这些技术中的许多都不是最佳的。通过反复试验重新优化方案是一个昂贵且费力的过程。像实验设计(DOE)这样的系统框架可以通过探索多个因素之间的定量关系来有效地改进过程。DOE使实验者能够发现当单独研究因素时可能不明显的因素相互作用。我们使用DOE通过更新试剂并确定使rRNA去除最大化和成本最小化的因素来优化rRNA去除方案。优化后的方案能更有效地去除rRNA,使用的试剂更少,并且比原始方案更便宜。我们的优化仅需要36次实验,并确定了三个方案因素之间的两个显著相互作用。总体而言,我们的方法证明了合理的DOE框架在改进复杂分子生物学方案方面的实用性。