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Machine Learning to Identify and Understand Key Factors for Provider-patient Discussions About Smoking

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Journal Prev Med Rep
Date 2020 Nov 23
PMID 33224719
Citations 6
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Abstract

We sought to identify key determinants of the likelihood of provider-patient discussions about smoking and to understand the effects of these determinants. We used data on 3666 self-reported current smokers who talked to a health professional within a year of the time the survey was conducted using the 2017 National Health Interview Survey. We included wide-ranging information on 43 potential covariates across four domains, demographic and socio-economic status, behavior, health status and healthcare utilization. We exploited a principled nonparametric permutation based approach using Bayesian machine learning to identify and rank important determinants of discussions about smoking between health providers and patients. In the order of importance, frequency of doctor office visits, intensity of cigarette use, length of smoking history, chronic obstructive pulmonary disease, emphysema, marital status were major determinants of disparities in provider-patient discussions about smoking. There was a distinct interaction between intensity of cigarette use and length of smoking history. Our analysis may provide some insights into strategies for promoting discussions on smoking and facilitating smoking cessation. Health care resource usage, smoking intensity and duration and smoking-related conditions were key drivers. The "usual suspects", age, gender, race and ethnicity were less important, and gender, in particular, had little effect.

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References
1.
Friedman J, Hastie T, Tibshirani R . Regularization Paths for Generalized Linear Models via Coordinate Descent. J Stat Softw. 2010; 33(1):1-22. PMC: 2929880. View

2.
Mahmud A, Feely J . Effect of smoking on arterial stiffness and pulse pressure amplification. Hypertension. 2003; 41(1):183-7. DOI: 10.1161/01.hyp.0000047464.66901.60. View

3.
Hu L, Liu B, Li Y . Ranking sociodemographic, health behavior, prevention, and environmental factors in predicting neighborhood cardiovascular health: A Bayesian machine learning approach. Prev Med. 2020; 141:106240. PMC: 7704682. DOI: 10.1016/j.ypmed.2020.106240. View

4.
Samet J . Tobacco smoking: the leading cause of preventable disease worldwide. Thorac Surg Clin. 2013; 23(2):103-12. DOI: 10.1016/j.thorsurg.2013.01.009. View

5.
Tong E, Ong M, Vittinghoff E, Perez-Stable E . Nondaily smokers should be asked and advised to quit. Am J Prev Med. 2006; 30(1):23-30. DOI: 10.1016/j.amepre.2005.08.048. View