Predicting local malaria exposure using a Lasso-based two-level cross validation algorithm.

Recent studies have highlighted the importance of local environmental factors to determine the fine-scale heterogeneity of malaria transmission and exposure to the vector. In this work, we compare a classical GLM model with backward selection with different versions of an automatic LASSO-based algor...

Full description

Bibliographic Details
Main Authors: Bienvenue Kouwaye, Fabrice Rossi, Noël Fonton, André Garcia, Simplice Dossou-Gbété, Mahouton Norbert Hounkonnou, Gilles Cottrell
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5663424?pdf=render
id doaj-7f059ea5e4e64d22b0eafc763c596427
record_format Article
spelling doaj-7f059ea5e4e64d22b0eafc763c5964272020-11-24T22:05:32ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-011210e018723410.1371/journal.pone.0187234Predicting local malaria exposure using a Lasso-based two-level cross validation algorithm.Bienvenue KouwayeFabrice RossiNoël FontonAndré GarciaSimplice Dossou-GbétéMahouton Norbert HounkonnouGilles CottrellRecent studies have highlighted the importance of local environmental factors to determine the fine-scale heterogeneity of malaria transmission and exposure to the vector. In this work, we compare a classical GLM model with backward selection with different versions of an automatic LASSO-based algorithm with 2-level cross-validation aiming to build a predictive model of the space and time dependent individual exposure to the malaria vector, using entomological and environmental data from a cohort study in Benin. Although the GLM can outperform the LASSO model with appropriate engineering, the best model in terms of predictive power was found to be the LASSO-based model. Our approach can be adapted to different topics and may therefore be helpful to address prediction issues in other health sciences domains.http://europepmc.org/articles/PMC5663424?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Bienvenue Kouwaye
Fabrice Rossi
Noël Fonton
André Garcia
Simplice Dossou-Gbété
Mahouton Norbert Hounkonnou
Gilles Cottrell
spellingShingle Bienvenue Kouwaye
Fabrice Rossi
Noël Fonton
André Garcia
Simplice Dossou-Gbété
Mahouton Norbert Hounkonnou
Gilles Cottrell
Predicting local malaria exposure using a Lasso-based two-level cross validation algorithm.
PLoS ONE
author_facet Bienvenue Kouwaye
Fabrice Rossi
Noël Fonton
André Garcia
Simplice Dossou-Gbété
Mahouton Norbert Hounkonnou
Gilles Cottrell
author_sort Bienvenue Kouwaye
title Predicting local malaria exposure using a Lasso-based two-level cross validation algorithm.
title_short Predicting local malaria exposure using a Lasso-based two-level cross validation algorithm.
title_full Predicting local malaria exposure using a Lasso-based two-level cross validation algorithm.
title_fullStr Predicting local malaria exposure using a Lasso-based two-level cross validation algorithm.
title_full_unstemmed Predicting local malaria exposure using a Lasso-based two-level cross validation algorithm.
title_sort predicting local malaria exposure using a lasso-based two-level cross validation algorithm.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Recent studies have highlighted the importance of local environmental factors to determine the fine-scale heterogeneity of malaria transmission and exposure to the vector. In this work, we compare a classical GLM model with backward selection with different versions of an automatic LASSO-based algorithm with 2-level cross-validation aiming to build a predictive model of the space and time dependent individual exposure to the malaria vector, using entomological and environmental data from a cohort study in Benin. Although the GLM can outperform the LASSO model with appropriate engineering, the best model in terms of predictive power was found to be the LASSO-based model. Our approach can be adapted to different topics and may therefore be helpful to address prediction issues in other health sciences domains.
url http://europepmc.org/articles/PMC5663424?pdf=render
work_keys_str_mv AT bienvenuekouwaye predictinglocalmalariaexposureusingalassobasedtwolevelcrossvalidationalgorithm
AT fabricerossi predictinglocalmalariaexposureusingalassobasedtwolevelcrossvalidationalgorithm
AT noelfonton predictinglocalmalariaexposureusingalassobasedtwolevelcrossvalidationalgorithm
AT andregarcia predictinglocalmalariaexposureusingalassobasedtwolevelcrossvalidationalgorithm
AT simplicedossougbete predictinglocalmalariaexposureusingalassobasedtwolevelcrossvalidationalgorithm
AT mahoutonnorberthounkonnou predictinglocalmalariaexposureusingalassobasedtwolevelcrossvalidationalgorithm
AT gillescottrell predictinglocalmalariaexposureusingalassobasedtwolevelcrossvalidationalgorithm
_version_ 1725825909977513984