| Literature DB >> 33808217 |
Laia Castells-Roca1,2,3, Eudald Tejero4, Benjamín Rodríguez-Santiago2,5, Jordi Surrallés1,2,3,5.
Abstract
Cancer is a complex disease resulting from the accumulation of genetic dysfunctions. Tumor heterogeneity causes the molecular variety that divergently controls responses to chemotherapy, leading to the recurrent problem of cancer reappearance. For many decades, efforts have focused on identifying essential tumoral genes and cancer driver mutations. More recently, prompted by the clinical success of the synthetic lethality (SL)-based therapy of the PARP inhibitors in homologous recombinant deficient tumors, scientists have centered their novel research on SL interactions (SLI). The state of the art to find new genetic interactions are currently large-scale forward genetic CRISPR screens. CRISPR technology has rapidly evolved to be a common tool in the vast majority of laboratories, as tools to implement CRISPR screen protocols are available to all researchers. Taking advantage of SLI, combinatorial therapies have become the ultimate model to treat cancer with lower toxicity, and therefore better efficiency. This review explores the CRISPR screen methodology, integrates the up-to-date published findings on CRISPR screens in the cancer field and proposes future directions to uncover cancer regulation and individual responses to chemotherapy.Entities:
Keywords: CRISPR screen; cancer therapeutic resistance; combinatorial therapy; synthetic lethality
Year: 2021 PMID: 33808217 PMCID: PMC8037779 DOI: 10.3390/cancers13071591
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639
Figure 1Schematic outline of CRISPR/Cas genome-wide screens. (A) Previous to the screen, the experimental design must fit the biological question to solve. The experimental strategy includes selection of cell line/s, CRISPR library and its representation, number of biological and technical replicates and the total amount of samples to harvest, all together will dictate cell quantity and number of plates to culture. (B) Before starting the actual experiment, a setup preparation takes place: characterization of the cell line/s, integration of the endonuclease Cas9, library amplification, viral particles preparation and cell transduction. (C) The screening steps are: selection of the transduced cells, collection of the basal samples, drug treatment or pressure selection, samples harvest, DNA extraction, PCR amplification, NGS, computational analysis and candidate compilation. (D) For candidate hits validation, gene expression may be repressed by RNAi or shRNA or genes may be deleted using CRISPR KO, in vitro and in vivo.
Figure 2(A) Proof of principle CRISPR/Cas screen. 1. Minilibrary design with 3 sgRNAs for each gene of interest (3 genes that when depleted give PARPi resistance in BRCA2 background) plus 3 NT sgRNAs. 2. sgRNAs choice (at 5′ common exons, with minimal off-targets). 3. sgRNAs cloning into LentiGuide-Puro vector. 4. Minilibrary constructs amplification and lentiviral particles production. 5. Low MOI transduction into BRCA2 fibroblast cells previously transduced with the plasmid LentiCas9-Blast. 6. Puromycin selection of cells with transduced sgRNAs, during 9 days. 7. Screen: non-treated and treated samples collection, after 7 days of 100 nM olaparib. 8. PCR of the sgRNA region. 9. NGS by MiSeq. 10. FASTQ files analysis and mapping to sgRNA library. 11. Statistic significant candidate hits by quantification of the relative proportion of every sgRNA before and after the selection. (B) Relative percentage of sgRNAs in olaparib treated samples versus non-treated. Average of the three-targeted genes and the NT sgRNAs. Only sgRNAs with significant p-values from the student t-test statistics are shown. Values: CHD4 118.4%, 2 sgRNAs; MRE11A 102.6%, 3 sgRNAs, PTIP 103.5%, 1 sgRNA and NT 94.5% data from four sgRNA with no significant p-values (CHD4_3, PTIP_1, PTIP_3 and NT_2).
Synthetic lethal CRISPR screens.
| System | Library | Model | Analysis | SLI between |
|---|---|---|---|---|
| CRISPR-based double KO [ | 21,321 pairs of drug targets | K562 leukemia cells | casTLE | DNA repair proteins APEX1 and ATM, |
| CRISPR-based double KO [ | 119 KRAS interactor targets | lung adenocarcinoma cells | UPGMA | RAS adhesion controller RADIL and endocytosis regulator RIN1, |
| Enhance alisertib Aurora-A inhibitor activity [ | 507 kinase targets | Breast cancer cells | MAGeCK | GSG2 inhibition (interfering with AURORA-B) significantly decreased tumor growth in vitro and in vivo |
Novel drug targets CRISPR screens.
| Aim | Library | Model | Treatment | Analysis | Targets |
|---|---|---|---|---|---|
| Resistances to FLT3 inhibitor [ | GeCKO | MV4-11 acute myeloid leukemia cells | Quizartinib | Self-calculated | Expression of SPRY3 and GSK3A was significantly decreased in resistant cells |
| Resistances to multi-targeted tyrosine kinase inhibitors (TKIs) [ | Customized library (18,000 targets) | clear cell renal cell carcinoma (ccRCC) | Sunitinib | Self-calculated | farnesyltransferase expression as a factor of sunitinib resistance |
| Asparaginase responses [ | GeCKO | acute leukemia cells (ALC) | Asparaginase | MAGeCK v0.5.7 | Wnt signalling induced asparaginase sensitivity in resistant ALC |
| Synergizes with metformin [ | Brunello | U251 cells | Metformin | MAGeCK | Metformin and CDK4/6 inhibitor combination as tumoral therapy |
| Abemaciclib resistance CRISPR and CRISPRi screen [ | Brunello and CRISPRi-v2 | Hedgehog | Abemaciclib | MAGeCK | Hedgehog signaling in neuroblastoma depends on smoothened-activating sterol lipids |
| Molecular pathways depending on ataxia-telangiectasia and Rad3-related (ATR) kinase [ | TKOv1 and TKOv3 | colon carcinoma HCT116, HeLa and a p53-mutated clone of RPE1 hTERT cells | ATR | MAGeCK and drugZ | DNA replication, DNA repair and cell cycle regulators give hypersensitive to ATR inhibitors. |
| Druggable targets in RNF43-mutant | TKO gRNA | HPAF-II human pancreatic ductal adenocarcinoma cell line | - | BAGEL | Wnt receptor Frizzled-5 (FZD5) |
| Druggable targets in | 4,915 druggable targets library | Murine lung adenocarcinoma (LUAD) KrasG12D/+; p53−/− (KP) versus KrasG12D/+; p53−/−; Keap1−/− (KPK) cell lines | - | RSEM, JADE | SLC33A1 and unfolded protein response related genes are novel targets for patients harboring |
3D cultured cancer model CRISPR screens.
| Aim | Library | Model | Method | Analysis | Targets |
|---|---|---|---|---|---|
| Cancer biomarker and therapy [ | Customized CRISPR ko library | H23 LUAD 2D cell line and 3D spheroids |
3D versus 2D | computed t-value scores |
p53 and Ras are 3D hits, |
| NRF2 hyperactivation-induced spheroid growth | Customized 1,500 NRF2-hyperactivated related gene targets library | A549 and H1437 LUAD 2D cell line and 3D spheroids |
3D versus 2D | MAGeCK-VISPR | In spheroids, loss of TSC1 enhances inner clearance and depletion of GPX4 enhances proliferation |
| Resistances to TGF-β-mediated growth restriction [ | 283 potential tumor suppressor genes customized library and the Brunello library | Human small intestinal (hSI) organoids | wild-type versus APC mutant and APC and TP53 double mutant human intestinal organoids | MAGeCK V0.5.4 | Multiple subunits of the tumor-suppressive SWI/SNF chromatin remodeling complex |
| Tumor drivers in colorectal cancer (CRC) [ | 85 tumor suppressor genes customized library | Pre-malignant organoids with APC−/−; KRASG12D mutations | Primary organoids versus cancer cell lines |
CRISPR- | TGFBR2 and CRC growth mediators |
In vivo CRISPR screens.
| Aim | Library | Model | Method | Analysis | Targets |
|---|---|---|---|---|---|
| Loss-of-function screen in tumor growth and metastasis [ | mGeCKOa | Tumor-inducible non-small-cell lung cancer (NSCLC) cell line | Metastasis versus primary tumors | GSEA | Mutations that inactivate apoptosis and Nf2, Trim72, Ptges2 genes in primary tumor cells, and Ube2g2 mutations in metastasis |
| Epigenetic regulators of tumor immunity [ | Customized epigenetic sgRNA subpooled | Murine KrasG12D/Trp53−/− LUAD | Anti-PD-1 or isotype control treatments | DESeq2, MAGeCK and GSEA | Asf1a reduced in tumors of WT mice treated with anti–PD-1 |
| Cellular composition and architecture of cutaneous squamous cell carcinoma (cSCC) [ | Low expressed xenograft genes subpooled | Several cSCC cell lines | Tumor analysis | STARS | TSK-enriched integrin signaling genes |
| Non-small cell lung cancers treatment [ | Customized epigenetic sgRNA subpooled | KP, non-small cell lung cancers cells | Tumor analysis | GSEA, MSigDB and DESeq2 | Npm1 |
| Synergistic lethal drug interactions with MEK signalling pathway inhibitors to treat pancreatic ductal adenocarcinoma (PDAC) [ | Nuclear subpooled [ | PDX366 cells from pancreatic patients | Trametinib treatment | DREBIC | CENPE and RRM1 inhibition are sensitizers to trametinib |
| SL combinatorial target with gemcitabine to treat PDAC [ | Customized epigenetic sgRNA subpooled | PDX366 cells from pancreatic patients | Gemcitabine treatment | MAGeCK | Inhibition of PRMT5 increases cytotoxicity to gemcitabine |
| Find mechanisms of resistance to docetaxel to treat metastatic prostate cancer [ | GeCKOv2A | deficient Pten and Spry2 model cells | Docetaxel treatment | MAGeCK | Suppression of TCEAL1 enhances tumor sensitivity to docetaxel |
| Gene activation screen in vivo [ | CRISPRa | dCas9-VP64-expressing Bcr-Abl– driven murine acute B-cell lymphoblastic leukemia cells | Temozolomide treatment | DESeq and self- | Transcriptional activation of tumor suppressor Chek2 sensitizes tumor cells to temozolomide |