A genome editing approach to study cancer stem cells in human tumors

Carme Cortina(Institute for Research in Biomedicine), Gemma Turón(Institute for Research in Biomedicine), Diana Stork(Institute for Research in Biomedicine), Xavier Hernando‐Momblona(Institute for Research in Biomedicine), Marta Sevillano(Institute for Research in Biomedicine), Mònica Aguilera(Institute for Research in Biomedicine), Sébastien Tosi(Institute for Research in Biomedicine), Anna Merlos‐Suárez(Institute for Research in Biomedicine), Camille Stephan‐Otto Attolini(Institute for Research in Biomedicine), Elena Sancho(Institute for Research in Biomedicine), Eduard Batlle(Institució Catalana de Recerca i Estudis Avançats)
EMBO Molecular Medicine
May 3, 2017
Cited by 124Open Access
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Abstract

Abstract The analysis of stem cell hierarchies in human cancers has been hampered by the impossibility of identifying or tracking tumor cell populations in an intact environment. To overcome this limitation, we devised a strategy based on editing the genomes of patient‐derived tumor organoids using CRISPR /Cas9 technology to integrate reporter cassettes at desired marker genes. As proof of concept, we engineered human colorectal cancer ( CRC ) organoids that carry EGFP and lineage‐tracing cassettes knocked in the LGR 5 locus. Analysis of LGR 5‐ EGFP + cells isolated from organoid‐derived xenografts demonstrated that these cells express a gene program similar to that of normal intestinal stem cells and that they propagate the disease to recipient mice very efficiently. Lineage‐tracing experiments showed that LGR 5 + CRC cells self‐renew and generate progeny over long time periods that undergo differentiation toward mucosecreting‐ and absorptive‐like phenotypes. These genetic experiments confirm that human CRC s adopt a hierarchical organization reminiscent of that of the normal colonic epithelium. The strategy described herein may have broad applications to study cell heterogeneity in human tumors.


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