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dc.contributor.authorBarzine, MP
dc.contributor.authorFreivalds, K
dc.contributor.authorWright, JC
dc.contributor.authorOpmanis, M
dc.contributor.authorRituma, D
dc.contributor.authorGhavidel, FZ
dc.contributor.authorJarnuczak, AF
dc.contributor.authorCelms, E
dc.contributor.authorČerāns, K
dc.contributor.authorJonassen, I
dc.contributor.authorLace, L
dc.contributor.authorVizcaíno, JA
dc.contributor.authorChoudhary, JS
dc.contributor.authorBrazma, A
dc.contributor.authorViksna, J
dc.date.accessioned2020-09-30T14:20:28Z
dc.date.issued2020-11-01
dc.identifier.citationProteomics, 2020, 20 (21-22), pp. e2000009 - ?
dc.identifier.issn1615-9853
dc.identifier.urihttps://repository.icr.ac.uk/handle/internal/4113
dc.identifier.eissn1615-9861
dc.identifier.doi10.1002/pmic.202000009
dc.description.abstractMass spectrometry (MS)-based quantitative proteomics experiments typically assay a subset of up to 60% of the ≈20 000 human protein coding genes. Computational methods for imputing the missing values using RNA expression data usually allow only for imputations of proteins measured in at least some of the samples. In silico methods for comprehensively estimating abundances across all proteins are still missing. Here, a novel method is proposed using deep learning to extrapolate the observed protein expression values in label-free MS experiments to all proteins, leveraging gene functional annotations and RNA measurements as key predictive attributes. This method is tested on four datasets, including human cell lines and human and mouse tissues. This method predicts the protein expression values with average R2 scores between 0.46 and 0.54, which is significantly better than predictions based on correlations using the RNA expression data alone. Moreover, it is demonstrated that the derived models can be "transferred" across experiments and species. For instance, the model derived from human tissues gave a R2=0.51 when applied to mouse tissue data. It is concluded that protein abundances generated in label-free MS experiments can be computationally predicted using functional annotated attributes and can be used to highlight aberrant protein abundance values.
dc.formatPrint-Electronic
dc.format.extente2000009 - ?
dc.languageeng
dc.language.isoeng
dc.publisherWILEY
dc.rights.urihttps://creativecommons.org/licenses/by/4.0
dc.titleUsing Deep Learning to Extrapolate Protein Expression Measurements.
dc.typeJournal Article
dcterms.dateAccepted2020-09-03
rioxxterms.versionofrecord10.1002/pmic.202000009
rioxxterms.licenseref.urihttps://creativecommons.org/licenses/by/4.0
rioxxterms.licenseref.startdate2020-11
rioxxterms.typeJournal Article/Review
dc.relation.isPartOfProteomics
pubs.issue21-22
pubs.notesNot known
pubs.organisational-group/ICR
pubs.organisational-group/ICR/Primary Group
pubs.organisational-group/ICR/Primary Group/ICR Divisions
pubs.organisational-group/ICR/Primary Group/ICR Divisions/Cancer Biology
pubs.organisational-group/ICR/Primary Group/ICR Divisions/Cancer Biology/Functional Proteomics Group
pubs.publication-statusPublished
pubs.volume20
pubs.embargo.termsNot known
icr.researchteamFunctional Proteomics Group
dc.contributor.icrauthorWright, James
dc.contributor.icrauthorChoudhary, Jyoti


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