| Literature DB >> 32518403 |
Elisabetta Mereu1, Atefeh Lafzi1, Catia Moutinho1, Christoph Ziegenhain2, Davis J McCarthy3,4,5, Adrián Álvarez-Varela6, Eduard Batlle6,7,8, Dominic Grün9, Julia K Lau10, Stéphane C Boutet10, Chad Sanada11, Aik Ooi11, Robert C Jones12, Kelly Kaihara13, Chris Brampton13, Yasha Talaga13, Yohei Sasagawa14, Kaori Tanaka14, Tetsutaro Hayashi14, Caroline Braeuning15, Cornelius Fischer15, Sascha Sauer15, Timo Trefzer16, Christian Conrad16, Xian Adiconis17,18, Lan T Nguyen17, Aviv Regev17,19,20, Joshua Z Levin17,18, Swati Parekh21, Aleksandar Janjic22, Lucas E Wange22, Johannes W Bagnoli22, Wolfgang Enard22, Marta Gut1, Rickard Sandberg2, Itoshi Nikaido14,23, Ivo Gut1,24, Oliver Stegle3,4,25, Holger Heyn26,27.
Abstract
Single-cell RNA sequencing (scRNA-seq) is the leading technique for characterizing the transcriptomes of individual cells in a sample. The latest protocols are scalable to thousands of cells and are being used to compile cell atlases of tissues, organs and organisms. However, the protocols differ substantially with respect to their RNA capture efficiency, bias, scale and costs, and their relative advantages for different applications are unclear. In the present study, we generated benchmark datasets to systematically evaluate protocols in terms of their power to comprehensively describe cell types and states. We performed a multicenter study comparing 13 commonly used scRNA-seq and single-nucleus RNA-seq protocols applied to a heterogeneous reference sample resource. Comparative analysis revealed marked differences in protocol performance. The protocols differed in library complexity and their ability to detect cell-type markers, impacting their predictive value and suitability for integration into reference cell atlases. These results provide guidance both for individual researchers and for consortium projects such as the Human Cell Atlas.Entities:
Mesh:
Year: 2020 PMID: 32518403 DOI: 10.1038/s41587-020-0469-4
Source DB: PubMed Journal: Nat Biotechnol ISSN: 1087-0156 Impact factor: 54.908