Abstract

Rapid detection of nucleic acids is integral to applications in clinical diagnostics and biotechnology. We have recently established a CRISPR-based diagnostic platform that combines nucleic acid pre-amplification with CRISPR-Cas enzymology for specific recognition of desired DNA or RNA sequences. This platform, termed specific high-sensitivity enzymatic reporter unlocking (SHERLOCK), allows multiplexed, portable, and ultra-sensitive detection of RNA or DNA from clinically relevant samples. Here, we provide step-by-step instructions for setting up SHERLOCK assays with recombinase-mediated polymerase pre-amplification of DNA or RNA and subsequent Cas13- or Cas12-mediated detection via fluorescence and colorimetric readouts that provide results in <1 h with a setup time of less than 15 min. We also include guidelines for designing efficient CRISPR RNA (crRNA) and isothermal amplification primers, as well as discuss important considerations for multiplex and quantitative SHERLOCK detection assays.

Keywords

CRISPRTrans-activating crRNANucleic acidRecombinase Polymerase AmplificationMultiplexDNAComputational biologyRNALoop-mediated isothermal amplificationNucleic acid detectionBiologyGenome editingMolecular biologyGeneGenetics

MeSH Terms

CRISPR-Cas SystemsDNA PrimersEndonucleasesHumansLeptotrichiaNucleic Acid Amplification TechniquesNucleic AcidsProtein EngineeringRNAGuideCRISPR-Cas SystemsRecombinant ProteinsRibonucleasesWorkflowZika VirusZika Virus Infection

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Publication Info

Year
2019
Type
article
Volume
14
Issue
10
Pages
2986-3012
Citations
1419
Access
Closed

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

1419
OpenAlex
50
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Cite This

Max J. Kellner, Jeremy Koob, Jonathan S. Gootenberg et al. (2019). SHERLOCK: nucleic acid detection with CRISPR nucleases. Nature Protocols , 14 (10) , 2986-3012. https://doi.org/10.1038/s41596-019-0210-2

Identifiers

DOI
10.1038/s41596-019-0210-2
PMID
31548639
PMCID
PMC6956564

Data Quality

Data completeness: 86%