Literature DB >> 29292402

Structured detection of interactions with the directed lasso.

Hristina Pashova1, Michael LeBlanc2, Charles Kooperberg3.   

Abstract

When considering low-dimensional gene-treatment or gene-environment interactions we might suspect groups of genes to interact with treatment or environment in a similar way. For example, genes associated with related biological processes might interact with an environmental factor or a clinical treatment in its effect on a phenotype correspondingly. We use the idea of a structured interaction model together with penalized regression to limit the model complexity in a model in which we believe the interactions might behave in a similar way. We propose the directed lasso, a regression modeling strategy using a pairwise fused lasso penalty to encourage interaction model simplicity through fusion of effect size. We compare the performance of the directed lasso to the lasso and other methods in a simulation study and on data sampled from a breast cancer clinical trial.

Entities:  

Keywords:  fusion; gene-environment interaction; gene-treatment interaction; interaction; lasso

Year:  2016        PMID: 29292402      PMCID: PMC5747322          DOI: 10.1007/s12561-016-9184-6

Source DB:  PubMed          Journal:  Stat Biosci        ISSN: 1867-1764


  9 in total

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Authors:  Patrick Danaher; Pei Wang; Daniela M Witten
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7.  Prognostic and predictive value of the 21-gene recurrence score assay in postmenopausal women with node-positive, oestrogen-receptor-positive breast cancer on chemotherapy: a retrospective analysis of a randomised trial.

Authors:  Kathy S Albain; William E Barlow; Steven Shak; Gabriel N Hortobagyi; Robert B Livingston; I-Tien Yeh; Peter Ravdin; Roberto Bugarini; Frederick L Baehner; Nancy E Davidson; George W Sledge; Eric P Winer; Clifford Hudis; James N Ingle; Edith A Perez; Kathleen I Pritchard; Lois Shepherd; Julie R Gralow; Carl Yoshizawa; D Craig Allred; C Kent Osborne; Daniel F Hayes
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8.  Testing in semiparametric models with interaction, with applications to gene-environment interactions.

Authors:  Arnab Maity; Raymond J Carroll; Enno Mammen; Nilanjan Chatterjee
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9.  A LASSO FOR HIERARCHICAL INTERACTIONS.

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  9 in total

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