An additive Gaussian process regression model for interpretable non-parametric analysis of longitudinal data

dc.contributor.authorLu Cheng
dc.contributor.authorSiddharth Ramchandran
dc.contributor.authorTommi Vatanen
dc.contributor.authorNiina Lietzén
dc.contributor.authorRiitta Lahesmaa
dc.contributor.authorAki Vehtari
dc.contributor.authorHarri Lähdesmäki
dc.contributor.organizationfi=Turun biotiedekeskus|en=Turku Bioscience Centre|
dc.contributor.organization-code1.2.246.10.2458963.20.18586209670
dc.contributor.organization-code2609201
dc.converis.publication-id40092706
dc.converis.urlhttps://research.utu.fi/converis/portal/Publication/40092706
dc.date.accessioned2022-10-28T13:06:44Z
dc.date.available2022-10-28T13:06:44Z
dc.description.abstract<p>Biomedical research typically involves longitudinal study designs where samples from individuals are measured repeatedly over time and the goal is to identify risk factors (covariates) that are associated with an outcome value. General linear mixed effect models are the standard workhorse for statistical analysis of longitudinal data. However, analysis of longitudinal data can be complicated for reasons such as difficulties in modelling correlated outcome values, functional (time-varying) covariates, nonlinear and non-stationary effects, and model inference. We present LonGP, an additive Gaussian process regression model that is specifically designed for statistical analysis of longitudinal data, which solves these commonly faced challenges. LonGP can model time-varying random effects and non-stationary signals, incorporate multiple kernel learning, and provide interpretable results for the effects of individual covariates and their interactions. We demonstrate LonGP's performance and accuracy by analysing various simulated and real longitudinal -omics datasets.</p>
dc.format.pagerange1798
dc.identifier.eissn2041-1723
dc.identifier.jour-issn2041-1723
dc.identifier.olddbid179778
dc.identifier.oldhandle10024/162872
dc.identifier.urihttps://www.utupub.fi/handle/11111/54630
dc.identifier.urlhttps://www.ncbi.nlm.nih.gov/pmc/articles/PMC6470127/pdf/41467_2019_Article_9785.pdf
dc.identifier.urnURN:NBN:fi-fe2021042821257
dc.language.isoen
dc.okm.affiliatedauthorLietzen, Niina
dc.okm.affiliatedauthorLahesmaa, Riitta
dc.okm.discipline111 Mathematicsen_GB
dc.okm.discipline112 Statistics and probabilityen_GB
dc.okm.discipline113 Computer and information sciencesen_GB
dc.okm.discipline1182 Biochemistry, cell and molecular biologyen_GB
dc.okm.discipline3111 Biomedicineen_GB
dc.okm.discipline111 Matematiikkafi_FI
dc.okm.discipline112 Tilastotiedefi_FI
dc.okm.discipline113 Tietojenkäsittely ja informaatiotieteetfi_FI
dc.okm.discipline1182 Biokemia, solu- ja molekyylibiologiafi_FI
dc.okm.discipline3111 Biolääketieteetfi_FI
dc.okm.internationalcopublicationinternational co-publication
dc.okm.internationalityInternational publication
dc.okm.typeA1 ScientificArticle
dc.publisher.countryUnited Kingdomen_GB
dc.publisher.countryBritanniafi_FI
dc.publisher.country-codeGB
dc.relation.articlenumber1798
dc.relation.doi10.1038/s41467-019-09785-8
dc.relation.ispartofjournalNature Communications
dc.relation.volume10
dc.source.identifierhttps://www.utupub.fi/handle/10024/162872
dc.titleAn additive Gaussian process regression model for interpretable non-parametric analysis of longitudinal data
dc.year.issued2019

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