STATegra, a comprehensive multi-omics dataset of B-cell differentiation in mouse

David Gómez-Cabrero(Universidad Publica de Navarra), Sonia Tarazona(Universitat Politècnica de València), Isabel Ferreirós-Vidal(MRC London Institute of Medical Sciences), Ricardo N. Ramírez(University of California, Irvine), Andreas Schmidt(Center for Integrated Protein Science Munich), Theo Reijmers(Leiden University), Veronica von Saint Paul(Biomax Informatics (Germany)), Francesco Marabita(Biomax Informatics (Germany)), Javier Rodríguez‐Ubreva(Karolinska Institutet), Antonio García-Gómez(Institut d'Investigació Biomédica de Bellvitge), Thomas Carroll(Institut d'Investigació Biomédica de Bellvitge), Lauren Cooper(MRC London Institute of Medical Sciences), Ziwei Liang(MRC London Institute of Medical Sciences), Gopuraja Dharmalingam(MRC London Institute of Medical Sciences), Frans van der Kloet(North-West University), Amy C. Harms(Leiden University), Leandro Balzano‐Nogueira(Leiden University), Vincenzo Lagani(University of Crete), Ioannis Tsamardinos(University of Crete), Michael Lappé(Ilia State University), Dieter Maier(Biomax Informatics (Germany)), Johan A. Westerhuis(Biomax Informatics (Germany)), Thomas Hankemeier(Leiden University), Axel Imhof(Leiden University), Esteban Ballestar(Center for Integrated Protein Science Munich), A Mortazavi(University of California, Irvine), Matthias Merkenschlager(University of California, Irvine), Jesper Tegnér(Science for Life Laboratory), Ana Conesa(University of Florida)
Scientific Data
October 31, 2019
Cited by 33Open Access
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Abstract

Multi-omics approaches use a diversity of high-throughput technologies to profile the different molecular layers of living cells. Ideally, the integration of this information should result in comprehensive systems models of cellular physiology and regulation. However, most multi-omics projects still include a limited number of molecular assays and there have been very few multi-omic studies that evaluate dynamic processes such as cellular growth, development and adaptation. Hence, we lack formal analysis methods and comprehensive multi-omics datasets that can be leveraged to develop true multi-layered models for dynamic cellular systems. Here we present the STATegra multi-omics dataset that combines measurements from up to 10 different omics technologies applied to the same biological system, namely the well-studied mouse pre-B-cell differentiation. STATegra includes high-throughput measurements of chromatin structure, gene expression, proteomics and metabolomics, and it is complemented with single-cell data. To our knowledge, the STATegra collection is the most diverse multi-omics dataset describing a dynamic biological system.


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