Prostate organoid cultures as tools to translate genotypes and mutational profiles to pharmacological responses Journal Article


Authors: Pappas, K. J.; Choi, D.; Sawyers, C. L.; Karthaus, W. R.
Article Title: Prostate organoid cultures as tools to translate genotypes and mutational profiles to pharmacological responses
Abstract: Presented here is a protocol to study pharmacodynamics, stem cell potential, and cancer differentiation in prostate epithelial organoids. Prostate organoids are androgen responsive, three-dimensional (3D) cultures grown in a defined medium that resembles the prostatic epithelium. Prostate organoids can be established from wild-type and genetically engineered mouse models, benign human tissue, and advanced prostate cancer. Importantly, patient derived organoids closely resemble tumors in genetics and in vivo tumor biology. Moreover, organoids can be genetically manipulated using CRISPR/Cas9 and shRNA systems. These controlled genetics make the organoid culture attractive as a platform for rapidly testing the effects of genotypes and mutational profiles on pharmacological responses. However, experimental protocols must be specifically adapted to the 3D nature of organoid cultures to obtain reproducible results. Described here are detailed protocols for performing seeding assays to determine organoid formation capacity. Subsequently, this report shows how to perform drug treatments and analyze pharmacological response via viability measurements, protein isolation, and RNA isolation. Finally, the protocol describes how to prepare organoids for xenografting and subsequent in vivo growth assays using subcutaneous grafting. These protocols yield highly reproducible data and are widely applicable to 3D culture systems.
Journal Title: Journal of Visualized Experiments
Issue: 152
ISSN: 1940-087X
Publisher: MYJoVE Corporation  
Date Published: 2019-10-01
Start Page: e60346
Language: English
DOI: 10.3791/60346
PUBMED: 31710046
PROVIDER: scopus
PMCID: PMC7318111
DOI/URL:
Notes: Article -- Source: Scopus
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  1. Charles L Sawyers
    225 Sawyers
  2. Danielle Wai-pui Li
    12 Li
  3. Kyrie Jean Pappas
    3 Pappas