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Applicability of machine learning algorithm to predict the therapeutic intervention success in Brazilian smokers.

Publication ,  Journal Article
Massago, M; Massago, M; Iora, PH; Tavares Gurgel, SJ; Conegero, CI; Carolino, IDR; Mushi, MM; Chaves Forato, GA; de Souza, JVP; Bonfim, S ...
Published in: PLoS One
2024

Smoking cessation is an important public health policy worldwide. However, as far as we know, there is a lack of screening of variables related to the success of therapeutic intervention (STI) in Brazilian smokers by machine learning (ML) algorithms. To address this gap in the literature, we evaluated the ability of eight ML algorithms to correctly predict the STI in Brazilian smokers who were treated at a smoking cessation program in Brazil between 2006 and 2017. The dataset was composed of 12 variables and the efficacies of the algorithms were measured by accuracy, sensitivity, specificity, positive predictive value (PPV) and area under the receiver operating characteristic curve. We plotted a decision tree flowchart and also measured the odds ratio (OR) between each independent variable and the outcome, and the importance of the variable for the best model based on PPV. The mean global values for the metrics described above were, respectively, 0.675±0.028, 0.803±0.078, 0.485±0.146, 0.705±0.035 and 0.680±0.033. Supporting vector machines performed the best algorithm with a PPV of 0.726±0.031. Smoking cessation drug use was the roof of decision tree with OR of 4.42 and importance of variable of 100.00. Increase in the number of relapses also promoted a positive outcome, while higher consumption of cigarettes resulted in the opposite. In summary, the best model predicted 72.6% of positive outcomes correctly. Smoking cessation drug use and higher number of relapses contributed to quit smoking, while higher consumption of cigarettes showed the opposite effect. There are important strategies to reduce the number of smokers and increase STI by increasing services and drug treatment for smokers.

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Published In

PLoS One

DOI

EISSN

1932-6203

Publication Date

2024

Volume

19

Issue

3

Start / End Page

e0295970

Location

United States

Related Subject Headings

  • Smokers
  • Recurrence
  • Machine Learning
  • Humans
  • General Science & Technology
  • Brazil
  • Algorithms
 

Citation

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Massago, M., Iora, P. H., Tavares Gurgel, S. J., Conegero, C. I., Carolino, I. D. R., Mushi, M. M., … de Andrade, L. (2024). Applicability of machine learning algorithm to predict the therapeutic intervention success in Brazilian smokers. PLoS One, 19(3), e0295970. https://doi.org/10.1371/journal.pone.0295970
Massago, Miyoko, Mamoru Massago, Pedro Henrique Iora, Sanderland José Tavares Gurgel, Celso Ivam Conegero, Idalina Diair Regla Carolino, Maria Muzanila Mushi, et al. “Applicability of machine learning algorithm to predict the therapeutic intervention success in Brazilian smokers.PLoS One 19, no. 3 (2024): e0295970. https://doi.org/10.1371/journal.pone.0295970.
Massago M, Iora PH, Tavares Gurgel SJ, Conegero CI, Carolino IDR, Mushi MM, et al. Applicability of machine learning algorithm to predict the therapeutic intervention success in Brazilian smokers. PLoS One. 2024;19(3):e0295970.
Massago, Miyoko, et al. “Applicability of machine learning algorithm to predict the therapeutic intervention success in Brazilian smokers.PLoS One, vol. 19, no. 3, 2024, p. e0295970. Pubmed, doi:10.1371/journal.pone.0295970.
Massago M, Iora PH, Tavares Gurgel SJ, Conegero CI, Carolino IDR, Mushi MM, Chaves Forato GA, de Souza JVP, Hernandes Rocha TA, Bonfim S, Staton CA, Nihei OK, Vissoci JRN, de Andrade L. Applicability of machine learning algorithm to predict the therapeutic intervention success in Brazilian smokers. PLoS One. 2024;19(3):e0295970.

Published In

PLoS One

DOI

EISSN

1932-6203

Publication Date

2024

Volume

19

Issue

3

Start / End Page

e0295970

Location

United States

Related Subject Headings

  • Smokers
  • Recurrence
  • Machine Learning
  • Humans
  • General Science & Technology
  • Brazil
  • Algorithms