| Literature DB >> 34881774 |
Medina Colic1,2, Traver Hart1,3.
Abstract
CRISPR-Cas technology offers a versatile toolbox for genome editing, with applications in various cancer-related fields such as functional genomics, immunotherapy, synthetic lethality and drug resistance, metastasis, genome regulation, chromatic accessibility and RNA-targeting. The variety of screening platforms and questions in which they are used have caused the development of a wide array of analytical methods for CRISPR analysis. In this review, we focus on the algorithms and frameworks used in the computational analysis of pooled CRISPR knockout (KO) screens and highlight some of the most significant target discoveries made using these methods. Lastly, we offer perspectives on the design and analysis of state-of-art multiplex screening for genetic interactions.Entities:
Keywords: CRISPR; bioinformatcis; drug targeting
Mesh:
Year: 2021 PMID: 34881774 PMCID: PMC8786280 DOI: 10.1042/ETLS20210222
Source DB: PubMed Journal: Emerg Top Life Sci ISSN: 2397-8554
Figure 1.CRISPR Toolbox.
(A) CRISPR knockout. (B) CRISPR activation. (C) CRISPR interferance, (D) Pooled screens: (1) In vivo, (2) Chemogenetic, (3) Immuno-oncology, and (4) Isogenic screens. (E) Cas9 multiplex platforms: (1) Single Cas9 (e.g. S. pyogenes) system using two copies of the U6 promoter. (2) Single Cas9 system uses two different promoters. (3) A two Cas9, two different promoters system. (F) EnCas12a multiplex platform.
Non web-based algorithms/methods for analysis of pooled CRISPR screens
| Algorithm name | Description | Language |
|---|---|---|
| MAGeCK [ | Negative binomial model — based analysis of genome-wide CRISPR–Cas9 KO screens for prioritizing sgRNAs, genes and pathways. | Python, R |
| HiTSelect [ | Uses Poisson distribution to evaluate sgRNAs and stochastic multiobjective ranking method to generate gene-level statistics. | Matlab |
| ScreenBEAM [ | Bayesian hierarchical (multilevel) model to directly assess gene-level activity from all relevant measurements. | R |
| STARS [ | Gene-ranking algorithm for genetic perturbation screens — gene scores are computed using the probability mass function of a binomial distribution. | Python |
| BAGEL [ | Bayesian analysis for identifying essential genes from pooled screens, based on core essential and nonessential gene sets. | Python |
| CaRpools [ | A pipeline for end-to-end analysis of pooled CRISPR/Cas9 screening data. Including in-depth analysis of screening quality and sgRNA phenotypes. | R |
| CasTLE [ | Maximum likelihood estimator and empirical Bayesian framework to account for multiple sources of variability, including reagent efficacy and off-target effects for the analysis of large-scale genomic perturbation screens. | Python |
| CERES [ | A method to estimate gene dependency from essentiality screens while computationally correcting the copy number effect, therefore enabling unbiased interpretation of gene dependency at all levels of copy number. | R |
| ENCoRE [ | Workflow for NGS to CRISPR gene results. | Java |
| PBNPA [ | Permutation-based non-parametric analysis, which computes | R |
| CRISPhieRmix [ | Broad-tailed null distribution is fit using negative control sgRNAs. Then, a mixture distribution is fit on all sgRNAs, ignoring gene identities. Lastly, using the mixture distribution the false discovery rate for each gene is calculated. | R |
| CB2 [ | Beta-binomial model with a modified Student's | R |
| JACKS [ | Bayesian method that jointly analyzes screens performed with the same library and assigns a gene | Python |
| DrugZ [ | Identifies synergistic and suppressor drug-gene interactions from CRISPR-based chemogenetic screens. | Python |
| Gscreend [ | Mixture of a parametric null distribution is used to calculate | R |
| CRISPRcleanR [ | Unsupervised copy number correction of gene-independent responses in genome wide CRISPR KO screens based on circular binary segmentation algorithm. | Python, R |
| CRISPy [ | Supervised copy number correction of gene-independent effects, which uses Gaussian processes regression to model non-linear effects between the segment copy number ratio and CRISPR fold changes. | R |