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Cited 2 time in webofscience Cited 3 time in scopus
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Transforming L1000 profiles to RNA-seq-like profiles with deep learningopen access

Authors
Jeon, MinjiXie, ZhuoruiEvangelista, John E.Wojciechowicz, Megan L.Clarke, Daniel J. B.Ma'ayan, Avi
Issue Date
Sep-2022
Publisher
BioMed Central
Keywords
L1000; RNA-seq; Gene expression translation; Generative adversarial networks
Citation
BMC Bioinformatics, v.23, no.1
Indexed
SCIE
SCOPUS
Journal Title
BMC Bioinformatics
Volume
23
Number
1
URI
https://scholarworks.korea.ac.kr/kumedicine/handle/2021.sw.kumedicine/61505
DOI
10.1186/s12859-022-04895-5
ISSN
1471-2105
1471-2105
Abstract
The L1000 technology, a cost-effective high-throughput transcriptomics technology, has been applied to profile a collection of human cell lines for their gene expression response to > 30,000 chemical and genetic perturbations. In total, there are currently over 3 million available L1000 profiles. Such a dataset is invaluable for the discovery of drug and target candidates and for inferring mechanisms of action for small molecules. The L1000 assay only measures the mRNA expression of 978 landmark genes while 11,350 additional genes are computationally reliably inferred. The lack of full genome coverage limits knowledge discovery for half of the human protein coding genes, and the potential for integration with other transcriptomics profiling data. Here we present a Deep Learning two-step model that transforms L1000 profiles to RNA-seq-like profiles. The input to the model are the measured 978 landmark genes while the output is a vector of 23,614 RNA-seq-like gene expression profiles. The model first transforms the landmark genes into RNA-seq-like 978 gene profiles using a modified CycleGAN model applied to unpaired data. The transformed 978 RNA-seq-like landmark genes are then extrapolated into the full genome space with a fully connected neural network model. The two-step model achieves 0.914 Pearson's correlation coefficients and 1.167 root mean square errors when tested on a published paired L1000/RNA-seq dataset produced by the LINCS and GTEx programs. The processed RNA-seq-like profiles are made available for download, signature search, and gene centric reverse search with unique case studies.
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