| Literature DB >> 31974247 |
Gunsagar S Gulati1, Shaheen S Sikandar1, Daniel J Wesche1, Anoop Manjunath1, Anjan Bharadwaj1, Mark J Berger2, Francisco Ilagan1, Angera H Kuo1, Robert W Hsieh1, Shang Cai3, Maider Zabala1, Ferenc A Scheeren4, Neethan A Lobo1, Dalong Qian1, Feiqiao B Yu5, Frederick M Dirbas6, Michael F Clarke1,7, Aaron M Newman8,9.
Abstract
Single-cell RNA sequencing (scRNA-seq) is a powerful approach for reconstructing cellular differentiation trajectories. However, inferring both the state and direction of differentiation is challenging. Here, we demonstrate a simple, yet robust, determinant of developmental potential-the number of expressed genes per cell-and leverage this measure of transcriptional diversity to develop a computational framework (CytoTRACE) for predicting differentiation states from scRNA-seq data. When applied to diverse tissue types and organisms, CytoTRACE outperformed previous methods and nearly 19,000 annotated gene sets for resolving 52 experimentally determined developmental trajectories. Additionally, it facilitated the identification of quiescent stem cells and revealed genes that contribute to breast tumorigenesis. This study thus establishes a key RNA-based feature of developmental potential and a platform for delineation of cellular hierarchies.Entities:
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Year: 2020 PMID: 31974247 PMCID: PMC7694873 DOI: 10.1126/science.aax0249
Source DB: PubMed Journal: Science ISSN: 0036-8075 Impact factor: 47.728