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Development and evaluation of a risk algorithm predicting alcohol dependence after early onset of regular alcohol use

dc.contributor.authorBharat, Chrianna
dc.contributor.authorGlantz, Meyer D.
dc.contributor.authorAguilar-Gaxiola, Sergio
dc.contributor.authorAlonso, Jordi
dc.contributor.authorBruffaerts, Ronny
dc.contributor.authorBunting, Brendan
dc.contributor.authorCaldas-de-Almeida, José Miguel
dc.contributor.authorCardoso, Graça
dc.contributor.authorChardoul, Stephanie
dc.contributor.authorJonge, Peter
dc.contributor.authorGureje, Oye
dc.contributor.authorHaro, Josep Maria
dc.contributor.authorHarris, Meredith G.
dc.contributor.authorKaram, Elie G.
dc.contributor.authorKawakami, Norito
dc.contributor.authorKiejna, Andrzej
dc.contributor.authorKovess-Masfety, Viviane
dc.contributor.authorLee, Sing
dc.contributor.authorMcGrath, John J.
dc.contributor.authorMoskalewicz, Jacek
dc.contributor.authorNavarro-Mateu, Fernando
dc.contributor.authorRapsey, Charlene
dc.contributor.authorSampson, Nancy A.
dc.contributor.authorScott, Kate M.
dc.contributor.authorTachimori, Hisateru
dc.contributor.authorHave, Margreet
dc.contributor.authorVilagut, Gemma
dc.contributor.authorWojtyniak, Bogdan
dc.contributor.authorXavier, Miguel
dc.contributor.authorKessler, Ronald C.
dc.contributor.authorDegenhardt, Louisa
dc.date.accessioned2023-04-04T17:40:42Z
dc.date.available2024-06-04 13:40:41en
dc.date.available2023-04-04T17:40:42Z
dc.date.issued2023-05
dc.identifier.citationBharat, Chrianna; Glantz, Meyer D.; Aguilar-Gaxiola, Sergio ; Alonso, Jordi; Bruffaerts, Ronny; Bunting, Brendan; Caldas-de-Almeida, José Miguel ; Cardoso, Graça ; Chardoul, Stephanie; Jonge, Peter; Gureje, Oye; Haro, Josep Maria; Harris, Meredith G.; Karam, Elie G.; Kawakami, Norito; Kiejna, Andrzej; Kovess-Masfety, Viviane ; Lee, Sing; McGrath, John J.; Moskalewicz, Jacek; Navarro-Mateu, Fernando ; Rapsey, Charlene; Sampson, Nancy A.; Scott, Kate M.; Tachimori, Hisateru; Have, Margreet; Vilagut, Gemma; Wojtyniak, Bogdan; Xavier, Miguel; Kessler, Ronald C.; Degenhardt, Louisa (2023). "Development and evaluation of a risk algorithm predicting alcohol dependence after early onset of regular alcohol use." Addiction 118(5): 954-966.
dc.identifier.issn0965-2140
dc.identifier.issn1360-0443
dc.identifier.urihttps://hdl.handle.net/2027.42/176048
dc.description.abstractAimsLikelihood of alcohol dependence (AD) is increased among people who transition to greater levels of alcohol involvement at a younger age. Indicated interventions delivered early may be effective in reducing risk, but could be costly. One way to increase cost-effectiveness would be to develop a prediction model that targeted interventions to the subset of youth with early alcohol use who are at highest risk of subsequent AD.DesignA prediction model was developed for DSM-IV AD onset by age 25 years using an ensemble machine-learning algorithm known as ‘Super Learner’. Shapley additive explanations (SHAP) assessed variable importance.Setting and ParticipantsRespondents reporting early onset of regular alcohol use (i.e. by 17 years of age) who were aged 25 years or older at interview from 14 representative community surveys conducted in 13 countries as part of WHO’s World Mental Health Surveys.MeasurementsThe primary outcome to be predicted was onset of life-time DSM-IV AD by age 25 as measured using the Composite International Diagnostic Interview, a fully structured diagnostic interview.FindingsAD prevalence by age 25 was 5.1% among the 10 687 individuals who reported drinking alcohol regularly by age 17. The prediction model achieved an external area under the curve [0.78; 95% confidence interval (CI) = 0.74–0.81] higher than any individual candidate risk model (0.73–0.77) and an area under the precision-recall curve of 0.22. Overall calibration was good [integrated calibration index (ICI) = 1.05%]; however, miscalibration was observed at the extreme ends of the distribution of predicted probabilities. Interventions provided to the 20% of people with highest risk would identify 49% of AD cases and require treating four people without AD to reach one with AD. Important predictors of increased risk included younger onset of alcohol use, males, higher cohort alcohol use and more mental disorders.ConclusionsA risk algorithm can be created using data collected at the onset of regular alcohol use to target youth at highest risk of alcohol dependence by early adulthood. Important considerations remain for advancing the development and practical implementation of such models.
dc.publisherWiley Periodicals, Inc.
dc.publisherWHO
dc.subject.otherdependence
dc.subject.otherdiscrimination
dc.subject.othermachine learning
dc.subject.otherAdolescence
dc.subject.otheralcohol use
dc.subject.othercalibration
dc.titleDevelopment and evaluation of a risk algorithm predicting alcohol dependence after early onset of regular alcohol use
dc.typeArticle
dc.rights.robotsIndexNoFollow
dc.subject.hlbsecondlevelPublic Health
dc.subject.hlbsecondlevelPsychiatry
dc.subject.hlbtoplevelHealth Sciences
dc.description.peerreviewedPeer Reviewed
dc.description.bitstreamurlhttp://deepblue.lib.umich.edu/bitstream/2027.42/176048/1/add16122_am.pdf
dc.description.bitstreamurlhttp://deepblue.lib.umich.edu/bitstream/2027.42/176048/2/add16122.pdf
dc.identifier.doi10.1111/add.16122
dc.identifier.sourceAddiction
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dc.working.doiNOen
dc.owningcollnameInterdisciplinary and Peer-Reviewed


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