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Efficient Generation of Transcriptomic Profiles by Random Composite Measurements
Author(s) -
Brian Cleary,
Le Cong,
Anthea Cheung,
Eric S. Lander,
Aviv Regev
Publication year - 2017
Publication title -
cell
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 26.304
H-Index - 776
eISSN - 1097-4172
pISSN - 0092-8674
DOI - 10.1016/j.cell.2017.10.023
Subject(s) - biology , gene expression , computational biology , transcriptome , composite number , expression (computer science) , gene , similarity (geometry) , scale (ratio) , scaling , pattern recognition (psychology) , genetics , algorithm , artificial intelligence , computer science , physics , mathematics , quantum mechanics , image (mathematics) , programming language , geometry
RNA profiles are an informative phenotype of cellular and tissue states but can be costly to generate at massive scale. Here, we describe how gene expression levels can be efficiently acquired with random composite measurements-in which abundances are combined in a random weighted sum. We show (1) that the similarity between pairs of expression profiles can be approximated with very few composite measurements; (2) that by leveraging sparse, modular representations of gene expression, we can use random composite measurements to recover high-dimensional gene expression levels (with 100 times fewer measurements than genes); and (3) that it is possible to blindly recover gene expression from composite measurements, even without access to training data. Our results suggest new compressive modalities as a foundation for massive scaling in high-throughput measurements and new insights into the interpretation of high-dimensional data.

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