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Application of the gradient boosted method in randomised clinical trials: participant variables that contribute to depression treatment efficacy of duloxetine, SSRIs or placebo
journal contribution
posted on 2014-10-15, 00:00 authored by Seetal DoddSeetal Dodd, Michael BerkMichael Berk, K Kelin, Q Zhang, E Eriksson, W Deberdt, J Craig NelsonRandomised, placebo-controlled trials of treatments for depression typically collect outcomes data but traditionally only analyse data to demonstrate efficacy and safety. Additional post-hoc statistical techniques may reveal important insights about treatment variables useful when considering inter-individual differences amongst depressed patients. This paper aims to examine the Gradient Boosted Model (GBM), a statistical technique that uses regression tree analyses and can be applied to clinical trial data to identify and measure variables that may influence treatment outcomes.
History
Journal
Journal of affective disordersVolume
168Pagination
284 - 293Publisher
ElsevierLocation
Amsterdam, The NetherlandsPublisher DOI
eISSN
1573-2517Language
engPublication classification
C Journal article; C1 Refereed article in a scholarly journalCopyright notice
2014, ElsevierUsage metrics
Categories
Keywords
DepressionDuloxetineGradient Boosted methodRandomised clinical trialSSRIScience & TechnologyLife Sciences & BiomedicineClinical NeurologyPsychiatryNeurosciences & NeurologySEROTONIN-REUPTAKE INHIBITORSPAROXETINE-CONTROLLED TRIAL60 MGDOUBLE-BLINDELDERLY-PATIENTSNON-INFERIORITYDISORDERREMISSIONPREDICTORSTOLERABILITY