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Optimization and scaling of patient-derived brain organoids uncovers deep phenotypes of disease

Authors :
Spencer Brown
Daniel Chao
Zhixiang Tong
Rishi Bedi
Justin Nicola
Anthony Batarse
Jordan M. Sorokin
Julia Bergamaschi
Kelly Li
Arden Piepho
Shiron Drusinsky
David Grayson
Austin McKay
Brenda Dang
Oliver Wueseke
Brian G. Rash
Matthew Schultz
Geffen Treiman
Carlos Castrillo
Alex Rogozhnikov
Pei-Ken Hsu
Andy Lash
Juliana Hilliard
Noah Young
Deborah Pascoe
Elliot Mount
Luigi Enriquez
Morgan M. Stanton
Patrick A. Taylor
G. Sean Escola
Saul Kato
Pavan Ramkumar
Ismael Oumzil
Cagsar Apaydin
Doug Flanzer
Kevan Shah
Jessica Sims
Robert Blattner
Gaia Skibinski
Justin Paek
Sean Poust
Alex Pollen
Daphne Quang
Ryan Jones
Chia-Yao Lee
Chili Johnson
Anthony Bosshardt
Publication Year :
2020
Publisher :
Cold Spring Harbor Laboratory, 2020.

Abstract

Cerebral organoids provide unparalleled access to human brain development in vitro. However, variability induced by current culture methodologies precludes using organoids as robust disease models. To address this, we developed an automated Organoid Culture and Assay (ORCA) system to support longitudinal unbiased phenotyping of organoids at scale across multiple patient lines. We then characterized organoid variability using novel machine learning methods and found that the contribution of donor, clone, and batch is significant and remarkably consistent over gene expression, morphology, and cell-type composition. Next, we performed multi-factorial protocol optimization, producing a directed forebrain protocol compatible with 96-well culture that exhibits low variability while preserving tissue complexity. Finally, we used ORCA to study tuberous sclerosis, a disease with known genetics but poorly representative animal models. For the first time, we report highly reproducible early morphological and molecular signatures of disease in heterozygous TSC+/− forebrain organoids, demonstrating the benefit of a scaled organoid system for phenotype discovery in human disease models.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........928d514e9d6b98ad5d89699c1dcc2572
Full Text :
https://doi.org/10.1101/2020.08.26.251611