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Predicting smoking cessation and its relapse in HIV-infected patients: the Swiss HIV Cohort Study

Schäfer, Juliane and Young, J. and Bernasconi, E. and Ledergerber, B. and Nicca, Dunja and Calmy, A. and Cavassini, M. and Furrer, H. and Battegay, M. and Bucher, H. C. and The Swiss HIV Cohort Study, . (2015) Predicting smoking cessation and its relapse in HIV-infected patients: the Swiss HIV Cohort Study. HIV Medicine, 16 (1). pp. 3-14.

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Official URL: https://edoc.unibas.ch/59782/

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Abstract

OBJECTIVES: The aim of the study was to assess whether prospective follow-up data within the Swiss HIV Cohort Study can be used to predict patients who stop smoking; or among smokers who stop, those who start smoking again.
METHODS: We built prediction models first using clinical reasoning ('clinical models') and then by selecting from numerous candidate predictors using advanced statistical methods ('statistical models'). Our clinical models were based on literature that suggests that motivation drives smoking cessation, while dependence drives relapse in those attempting to stop. Our statistical models were based on automatic variable selection using additive logistic regression with component-wise gradient boosting.
RESULTS: Of 4833 smokers, 26% stopped smoking, at least temporarily; because among those who stopped, 48% started smoking again. The predictive performance of our clinical and statistical models was modest. A basic clinical model for cessation, with patients classified into three motivational groups, was nearly as discriminatory as a constrained statistical model with just the most important predictors (the ratio of nonsmoking visits to total visits, alcohol or drug dependence, psychiatric comorbidities, recent hospitalization and age). A basic clinical model for relapse, based on the maximum number of cigarettes per day prior to stopping, was not as discriminatory as a constrained statistical model with just the ratio of nonsmoking visits to total visits.
CONCLUSIONS: Predicting smoking cessation and relapse is difficult, so that simple models are nearly as discriminatory as complex ones. Patients with a history of attempting to stop and those known to have stopped recently are the best candidates for an intervention.
Faculties and Departments:03 Faculty of Medicine > Departement Public Health > Institut für Pflegewissenschaft
UniBasel Contributors:Nicca, Dunja
Item Type:Article, refereed
Article Subtype:Research Article
Publisher:Wiley-Blackwell
ISSN:1464-2662
e-ISSN:1468-1293
Note:Publication type according to Uni Basel Research Database: Journal article
Identification Number:
Last Modified:01 Oct 2018 17:29
Deposited On:01 Oct 2018 17:29

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