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dc.contributor.authorLuo, W.
dc.contributor.authorNguyen, T.
dc.contributor.authorNichols, M.
dc.contributor.authorTran, The Truyen
dc.contributor.authorRana, S.
dc.contributor.authorGupta, S.
dc.contributor.authorPhung, D.
dc.contributor.authorVenkatesh, S.
dc.contributor.authorAllender, S.
dc.date.accessioned2017-01-30T13:35:44Z
dc.date.available2017-01-30T13:35:44Z
dc.date.created2015-10-29T04:09:59Z
dc.date.issued2015
dc.identifier.citationLuo, W. and Nguyen, T. and Nichols, M. and Tran, T.T. and Rana, S. and Gupta, S. and Phung, D. et al. 2015. Is demography destiny? Application of machine learning techniques to accurately predict population health outcomes from a minimal demographic dataset. PLoS ONE. 10 (5).
dc.identifier.urihttp://hdl.handle.net/20.500.11937/33226
dc.identifier.doi10.1371/journal.pone.0125602
dc.description.abstract

© 2015 Luo et al. For years, we have relied on population surveys to keep track of regional public health statistics, including the prevalence of non-communicable diseases. Because of the cost and limitations of such surveys, we often do not have the up-to-date data on health outcomes of a region. In this paper, we examined the feasibility of inferring regional health outcomes from socio-demographic data that are widely available and timely updated through national censuses and community surveys. Using data for 50 American states (excluding Washington DC) from 2007 to 2012, we constructed a machine-learning model to predict the prevalence of six non-communicable disease (NCD) outcomes (four NCDs and two major clinical risk factors), based on population socio-demographic characteristics from the American Community Survey. We found that regional prevalence estimates for non-communicable diseases can be reasonably predicted. The predictions were highly correlated with the observed data, in both the states included in the derivation model (median correlation 0.88) and those excluded from the development for use as a completely separated validation sample (median correlation 0.85), demonstrating that the model had sufficient external validity to make good predictions, based on demographics alone, for areas not included in the model development. This highlights both the utility of this sophisticated approach to model development, and the vital importance of simple socio-demographic characteristics as both indicators and determinants of chronic disease.

dc.publisherPublic Library of Science
dc.titleIs demography destiny? Application of machine learning techniques to accurately predict population health outcomes from a minimal demographic dataset
dc.typeJournal Article
dcterms.source.volume10
dcterms.source.number5
dcterms.source.titlePLoS ONE
curtin.note

This open access article is distributed under the Creative Commons license http://creativecommons.org/licenses/by/4.0/

curtin.departmentMulti-Sensor Proc & Content Analysis Institute
curtin.accessStatusOpen access


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