2019
DOI: 10.1016/j.tibtech.2018.08.002
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RNAi/CRISPR Screens: from a Pool to a Valid Hit

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Cited by 95 publications
(88 citation statements)
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“…Screens were also done in a simple and cost-effective process compared to arrayed screens. This highlights that our platform has the same advantage as other pooled screening methods (26). In addition, by employing scRNA-seq technology, we identified the perturbation as well as the signature of SNVs at the transcriptome level.…”
Section: Discussionmentioning
confidence: 74%
“…Screens were also done in a simple and cost-effective process compared to arrayed screens. This highlights that our platform has the same advantage as other pooled screening methods (26). In addition, by employing scRNA-seq technology, we identified the perturbation as well as the signature of SNVs at the transcriptome level.…”
Section: Discussionmentioning
confidence: 74%
“…Before the advent of CRISPRi, RNAi was mostly used for gene knockdowns. In comparison to RNAi, which presents higher sequence‐specific off‐targets and varying knockdown efficiencies, CRISPRi‐mediated knockdown is considered a more secure gene perturbation technique [55]. Genome‐wide phenotypic screens using sgRNA libraries can be employed to identify novel protein functions by knocking down genes across a population of cells.…”
Section: Gaining Physiological Insights From Crispri Screensmentioning
confidence: 99%
“…For this analysis, we use MAGeCK MLE (using the maximum-likelihood estimate statistical approach; Li et al, 2014). Note that numerous analysis tools exist for CRISPR screening data, each employing different statistical approaches, and no consensus yet exists regarding best practices (Schuster et al, 2019). To use MAGeCK MLE, first use standard spreadsheet software to reorganize sample read counts into a single tab-delineated text file.…”
Section: Gene-level Statisticsmentioning
confidence: 99%