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Genome-wide functional screens enable the prediction of high activity CRISPR-Cas9 and -Cas12a guides in Yarrowia lipolytica

Author

Listed:
  • Dipankar Baisya

    (University of California)

  • Adithya Ramesh

    (University of California)

  • Cory Schwartz

    (University of California
    iBio Inc.)

  • Stefano Lonardi

    (University of California
    University of California)

  • Ian Wheeldon

    (University of California
    University of California
    University of California)

Abstract

Genome-wide functional genetic screens have been successful in discovering genotype-phenotype relationships and in engineering new phenotypes. While broadly applied in mammalian cell lines and in E. coli, use in non-conventional microorganisms has been limited, in part, due to the inability to accurately design high activity CRISPR guides in such species. Here, we develop an experimental-computational approach to sgRNA design that is specific to an organism of choice, in this case the oleaginous yeast Yarrowia lipolytica. A negative selection screen in the absence of non-homologous end-joining, the dominant DNA repair mechanism, was used to generate single guide RNA (sgRNA) activity profiles for both SpCas9 and LbCas12a. This genome-wide data served as input to a deep learning algorithm, DeepGuide, that is able to accurately predict guide activity. DeepGuide uses unsupervised learning to obtain a compressed representation of the genome, followed by supervised learning to map sgRNA sequence, genomic context, and epigenetic features with guide activity. Experimental validation, both genome-wide and with a subset of selected genes, confirms DeepGuide’s ability to accurately predict high activity sgRNAs. DeepGuide provides an organism specific predictor of CRISPR guide activity that with retraining could be applied to other fungal species, prokaryotes, and other non-conventional organisms.

Suggested Citation

  • Dipankar Baisya & Adithya Ramesh & Cory Schwartz & Stefano Lonardi & Ian Wheeldon, 2022. "Genome-wide functional screens enable the prediction of high activity CRISPR-Cas9 and -Cas12a guides in Yarrowia lipolytica," Nature Communications, Nature, vol. 13(1), pages 1-10, December.
  • Handle: RePEc:nat:natcom:v:13:y:2022:i:1:d:10.1038_s41467-022-28540-0
    DOI: 10.1038/s41467-022-28540-0
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    References listed on IDEAS

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    1. Daqi Wang & Chengdong Zhang & Bei Wang & Bin Li & Qiang Wang & Dong Liu & Hongyan Wang & Yan Zhou & Leming Shi & Feng Lan & Yongming Wang, 2019. "Optimized CRISPR guide RNA design for two high-fidelity Cas9 variants by deep learning," Nature Communications, Nature, vol. 10(1), pages 1-14, December.
    2. Xi Xiang & Giulia I. Corsi & Christian Anthon & Kunli Qu & Xiaoguang Pan & Xue Liang & Peng Han & Zhanying Dong & Lijun Liu & Jiayan Zhong & Tao Ma & Jinbao Wang & Xiuqing Zhang & Hui Jiang & Fengping, 2021. "Enhancing CRISPR-Cas9 gRNA efficiency prediction by data integration and deep learning," Nature Communications, Nature, vol. 12(1), pages 1-9, December.
    3. John Blazeck & Andrew Hill & Leqian Liu & Rebecca Knight & Jarrett Miller & Anny Pan & Peter Otoupal & Hal S. Alper, 2014. "Harnessing Yarrowia lipolytica lipogenesis to create a platform for lipid and biofuel production," Nature Communications, Nature, vol. 5(1), pages 1-10, May.
    4. E. A. Moreb & M. D. Lynch, 2021. "Genome dependent Cas9/gRNA search time underlies sequence dependent gRNA activity," Nature Communications, Nature, vol. 12(1), pages 1-13, December.
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    1. Dalton T. Ham & Tyler S. Browne & Pooja N. Banglorewala & Tyler L. Wilson & Richard K. Michael & Gregory B. Gloor & David R. Edgell, 2023. "A generalizable Cas9/sgRNA prediction model using machine transfer learning with small high-quality datasets," Nature Communications, Nature, vol. 14(1), pages 1-16, December.

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