| Literature DB >> 33004859 |
Petteri Oura1,2, Ina Rissanen3,4,5, Juho-Antti Junno6, Terttu Harju7, Markus Paananen8,9.
Abstract
Smoking remains among the leading causes of mortality worldwide. Obtaining a comprehensive understanding of a population's smoking behaviour is essential for tobacco control. Here, we aim to characterize lifelong smoking patterns and explore underlying sociodemographic and lifestyle factors in a population-based birth cohort population followed up for 46 years. Our analysis is based on 5797 individuals from the Northern Finland Birth Cohort 1966 who self-reported their tobacco smoking behaviour at the ages of 14, 31 and 46. Data on sex, education, employment, body mass index, physical activity, alcohol consumption, and substance addiction were also collected at the follow-ups. We profile each individual's annual smoking history from the age of 5 to 47, and conduct a latent class trajectory analysis on the data. We then characterize the identified smoking trajectory classes in terms of the background variables, and compare the heaviest smokers with other classes in order to reveal specific predictors of non-smoking and discontinued smoking. Six smoking trajectories are identified in our sample: never-smokers (class size 41.0%), youth smokers (12.6%), young adult quitters (10.8%), late adult quitters (10.5%), late starters (4.3%), and lifetime smokers (20.7%). Smoking is generally associated with male sex, lower socioeconomic status and unhealthier lifestyle. Multivariable between-class comparisons identify unemployment (odds ratio [OR] 1.28-1.45) and physical inactivity (OR 1.20-1.52) as significant predictors of lifetime smoking relative to any other class. Female sex increases the odds of never-smoking and youth smoking (OR 1.29-1.33), and male sex increases the odds of adult quitting (OR 1.30-1.41), relative to lifetime smoking. We expect future initiatives to benefit from our data by exploiting the identified predictors as direct targets of intervention, or as a means of identifying individuals who may benefit from such interventions.Entities:
Mesh:
Year: 2020 PMID: 33004859 PMCID: PMC7529914 DOI: 10.1038/s41598-020-73334-3
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Timeline of the study.
Figure 2Overall prevalence of smoking from age 5 to 47 in the study population (n = 5797). Supplementary Table 2 presents the annual smoking prevalences in numerical format.
Fit statistics from trajectory models with one to six classes.
| Number of classes | |BIC| | |AIC| | Relative class sizes (%) | Posterior membership probabilities (class means) |
|---|---|---|---|---|
| 1 | 137,860.4 | 137,845.8 | 100 | 1.00 |
| 2 | 62,163.4 | 62,140.0 | 61.2/38.8 | 1.00/0.99 |
| 3 | 46,184.9 | 46,148.2 | 47.7/18.4/33.9 | 1.00/0.99/1.00 |
| 4 | 40,553.1 | 40,503.1 | 43.7/29.4/16.6/10.3 | 1.00/1.00/0.99/0.98 |
| 5 | 38,970.2 | 38,910.2 | 16.0/45.3/13.5/20.7/4.4 | 0.99/1.00/1.00/0.99/0.98 |
| 6 | 35,259.0 | 35,189.0 | 10.8/12.6/10.5/20.7/4.3/41.0 | 0.99/0.98/1.00/0.99/0.99/1.00 |
AIC Akaike information criterion, BIC Bayesian information criterion.
Figure 3Six distinct trajectories for lifelong smoking behaviour among the study population (n = 5797). Supplementary Table 2 presents the annual smoking prevalences of each class in numerical format.
Sociodemographic and lifestyle characteristics among the smoking trajectory classes.
| Characteristic | All (n = 5797) | Smoking trajectory class | |||||
|---|---|---|---|---|---|---|---|
| Never-smokers (n = 2376) | Youth smokers (n = 730) | Young adult quitters (n = 627) | Late adult quitters (n = 611) | Late starters (n = 252) | Lifetime smokers (n = 1201) | ||
| Male sex | 44.0 (2552) | 39.2 (932) | 38.8 (283) | 52.0 (326) | 54.5 (333) | 51.2 (129) | 45.7 (549) |
| Low education1 | 22.2 (1277) | 18.9 (447) | 24.2 (176) | 22.5 (140) | 24.7 (150) | 24.6 (62) | 25.3 (302) |
| At age 14 | 13.4 (776) | 13.1 (311) | 14.1 (103) | 12.6 (79) | 13.6 (83) | 9.9 (25) | 14.6 (175) |
| At age 31 | 13.4 (768) | 11.0 (259) | 13.7 (99) | 12.7 (78) | 15.1 (92) | 13.3 (33) | 17.4 (207) |
| At age 46 | 11.9 (668) | 9.7 (225) | 10.7 (76) | 10.8 (66) | 11.3 (67) | 16.0 (39) | 16.9 (195) |
| At age 14 | 1.1 (57) | 0.7 (15) | 0.7 (5) | 1.9 (11) | 1.4 (8) | 2.2 (5) | 1.2 (13) |
| At age 31 | 8.1 (346) | 5.6 (132) | 6.7 (36) | 8.3 (38) | 9.1 (42) | 10.8 (20) | 8.7 (78) |
| At age 46 | 20.3 (974) | 15.7 (373) | 18.9 (118) | 21.8 (116) | 26.0 (129) | 22.8 (44) | 21.5 (194) |
| At age 14 | 23.9 (1368) | 21.2 (498) | 25.4 (184) | 23.4 (147) | 24.9 (150) | 21.4 (53) | 28.4 (336) |
| At age 31 | 32.3 (1873) | 28.2 (666) | 29.9 (217) | 33.4 (209) | 36.8 (224) | 29.9 (75) | 40.3 (482) |
| At age 46 | 27.2 (1554) | 22.9 (539) | 23.8 (171) | 27.6 (173) | 28.5 (170) | 30.0 (75) | 36.0 (426) |
| At age 14 | 0.5 (31) | 0.1 (3) | 0.7 (5) | 1.8 (11) | 0.5 (3) | 0.0 (0) | 0.8 (9) |
| At age 31 | 42.3 (2435) | 36.2 (860) | 42.1 (305) | 47.0 (293) | 46.8 (285) | 49.6 (124) | 47.7 (568) |
| At age 46 | 52.7 (3039) | 45.2 (1075) | 54.9 (401) | 57.8 (361) | 58.2 (353) | 58.2 (146) | 58.9 (703) |
| At age 14 | 0.0 (0) | 0.0 (0) | 0.0 (0) | 0.0 (0) | 0.0 (0) | 0.0 (0) | 0.0 (0) |
| At age 31 | 0.2 (10) | 0.0 (1) | 0.0 (0) | 0.3 (2) | 0.3 (2) | 0.4 (1) | 0.3 (4) |
| At age 46 | 0.5 (28) | 0.2 (5) | 0.1 (1) | 0.6 (4) | 0.7 (4) | 0.8 (2) | 1.0 (12) |
Values are presented as: Percentage (frequency). N varies due to missing sociodemographic/lifestyle data.
1Primary education only.
2Parental unemployment at age 14; own unemployment at age 31 and 46.
3According to body mass index, following definitions of World Health Organization.
4Leisure-time physical activity < 1/week.
5Drinking ≥ 1/week.
6Regular substance use at age 14; self-reported substance addiction at age 31 and 46.
Multivariable generalized estimating equations (GEE) analysis addressing the association of sociodemographic and lifestyle characteristics with smoking trajectory.
| Characteristic | Lifetime smokers compared to… | ||||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Never-smokers | Youth smokers | Young adult quitters | Late adult quitters | Late starters | |||||||||||
| OR | 95% CI | P | OR | 95% CI | P | OR | 95% CI | P | OR | 95% CI | P | OR | 95% CI | P | |
| Male sex | 0.82 | 0.62; 1.07 | 0.144 | ||||||||||||
| Low education | 1.06 | 0.85; 1.31 | 0.621 | 1.16 | 0.92; 1.46 | 0.213 | 1.03 | 0.82; 1.30 | 0.788 | 1.03 | 0.75; 1.42 | 0.853 | |||
| Unemployment | |||||||||||||||
| Obesity | 1.04 | 0.86; 1.24 | 0.712 | 1.08 | 0.85; 1.37 | 0.540 | 0.88 | 0.69; 1.12 | 0.298 | 0.78 | 0.56; 1.10 | 0.158 | |||
| Physical inactivity | |||||||||||||||
| Regular drinking | 0.99 | 0.87; 1.12 | 0.831 | 0.91 | 0.80; 1.04 | 0.186 | 1.04 | 0.91; 1.20 | 0.535 | 1.02 | 0.85; 1.23 | 0.831 | |||
| Substance addiction | 1.98 | 0.68; 5.76 | 0.212 | 3.76 | 0.46; 30.6 | 0.216 | 0.66 | 0.21; 2.09 | 0.481 | 0.98 | 0.29; 3.29 | 0.969 | 0.80 | 0.17; 3.74 | 0.778 |
Odds ratios (OR) with 95% confidence intervals (CI) from logistic GEE models. Lifetime smokers are compared to the other smoking trajectories, i.e., OR > 1 indicates increased odds of belonging to the lifetime smokers’ trajectory, and OR < 1 indicates increased odds of belonging to the reference trajectory.
Bold denotes statistical significance.