| Literature DB >> 25879872 |
Yang Lei1, Nikki Nollen2, Jasjit S Ahluwahlia3, Qing Yu4, Matthew S Mayo5.
Abstract
BACKGROUND: Other forms of tobacco use are increasing in prevalence, yet most tobacco control efforts are aimed at cigarettes. In light of this, it is important to identify individuals who are using both cigarettes and alternative tobacco products (ATPs). Most previous studies have used regression models. We conducted a traditional logistic regression model and a classification and regression tree (CART) model to illustrate and discuss the added advantages of using CART in the setting of identifying high-risk subgroups of ATP users among cigarettes smokers.Entities:
Mesh:
Year: 2015 PMID: 25879872 PMCID: PMC4415362 DOI: 10.1186/s12889-015-1582-z
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Univariate differences between smokers who use cigarettes in combination with alternative tobacco product (cigarettes + ATP) compared to those who use cigarettes only
|
|
|
| |
|---|---|---|---|
|
|
| ||
|
| |||
| Male | 662 (27.9%) | 332 (14.0%) | <0.001 |
| Age (±SD) | 40.24 ± 11.64 | 45.85 ± 12.62 | <0.001 |
| Race | <0.001 | ||
| African American | 436 (18.4%) | 358 (15.1%) | |
| Latino | 455 (19.1%) | 331 (13.9%) | |
| White | 329 (13.8%) | 467 (19.7%) | |
| Education, % college graduate or higher | 474 (19.9%) | 364 (15.3%) | <0.001 |
| Income, % < $1800/month | 480 (20.2%) | 463 (19.5%) | 0.725 |
|
| |||
| Smoking status (%) | <0.001 | ||
| Nondaily | 673 (28.3%) | 528 (22.2%) | |
| Daily light (1–10 cpd) | 259 (10.9%) | 319 (13.4%) | |
| Daily heavy (11+ cpd) | 288 (12.1%) | 309 (13.0%) | |
| Menthol smoker | 737 (31.0%) | 623 (26.2%) | 0.001 |
| Cigarettes per day, mean (±SD) | 9.30 ± 8.70 | 10.14 ± 8.52 | 0.017 |
| Time to first cigarette, % within 30 minutes of waking | 720 (30.3%) | 629 (26.5%) | 0.024 |
| 24 hour quit attempts in last 12 months, mean (±SD) | 5.50 ± 9.53 | 5.94 ± 11.79 | 0.451 |
|
| |||
| Price of cigs influenced them to smoke less, % yes | 726 (30.6%) | 644 (27.1%) | 0.061 |
| Price of cigs influenced where they buy cigs, % yes | 840 (35.4%) | 826 (34.8%) | 0.166 |
| Price of cigs influenced the brand they buy, % yes | 590 (24.8%) | 455 (19.1%) | <0.001 |
| Buy versus borrow cigs, % buy all cigs they smoke | 683 (28.7%) | 824 (34.7%) | <0.001 |
|
| |||
| Trying to cut down on cigs smoke, % yes | 862 (36.3%) | 818 (34.4%) | 0.955 |
| Limit cpd to decrease health risk, % yes | 596 (25.1%) | 505 (21.3%) | 0.012 |
| Limit smoking in last year to decrease health risks, % always or often | 360 (15.2%) | 356 (15.0%) | 0.494 |
|
| |||
| Depression score, mean (±SD)a | 2.14 ± 1.83 | 1.80 ± 1.84 | <0.001 |
| Alcohol score, mean (±SD)b | 4.64 ± 3.10 | 3.30 ± 2.98 | <0.001 |
| Discrimination score, mean (±SD)c | 8.28 ± 6.72 | 5.85 ± 5.66 | <0.001 |
aScores range from 0–6 with scores of 3 or higher indicating possible depressive symptoms.
bScores range from 0–12 with scores of ≥4 for men and ≥3 for women indicating possible alcohol misuse.
cScores range from 0–25 with higher scores indicating greater frequency of discrimination in daily life.
Univariate Differences between training sample and validation sample
|
|
|
| |
|---|---|---|---|
|
|
| ||
|
| |||
| Male | 657 (27.7%) | 337 (14.2%) | 0.617 |
| Age (±SD) | 42.94 ± 12.39 | 43.03 ± 12.5 | 0.880 |
| Race | 0.997 | ||
| African American | 530 (22.3%) | 264 (11.1%) | |
| Latino | 524 (22.1%) | 262 (11.0%) | |
| White | 530 (22.3%) | 266 (11.2%) | |
| Education, % college graduate or higher | 550 (23.1%) | 288 (12.1%) | 0.430 |
| Income, % < $1800/month | 614 (25.8%) | 329 (13.8%) | 0.192 |
|
| |||
| Smoking status (%) | 0.263 | ||
| Nondaily | 799 (33.6%) | 402 (16.9%) | |
| Daily light (1–10 cpd) | 373 (15.7%) | 205 (8.6%) | |
| Daily heavy (11+ cpd) | 412 (17.3 ) | 185 (7.8%) | |
| Menthol smoker | 899 (37.8%) | 461 (19.4%) | 0.500 |
| Cigarettes per day, mean (±SD) | 10.03 ± 9.03 | 9.06 ± 7.69 | 0.009 |
| Time to first cigarette, % within 30 minutes of waking | 900 (37.9%) | 449 (18.9%) | 0.953 |
| 24 hour quit attempts in last 12 months, mean (±SD) | 5.54 ± 9.87 | 6.00 ± 11.93 | 0.454 |
|
| |||
| Price of cigs influenced them to smoke less, % yes | 920 (38.7%) | 450 (18.9%) | 0.557 |
| Price of cigs influenced where they buy cigs, % yes | 1100 (46.3%) | 566 (23.8%) | 0.311 |
| Price of cigs influenced the brand they buy, % yes | 685 (28.8%) | 360 (15.2%) | 0.306 |
| Buy versus borrow cigs, % buy all cigs they smoke | 1004 (42.3%) | 503 (21.2%) | 0.952 |
|
| |||
| Trying to cut down on cigs smoke, % yes | 1119 (47.1%) | 561 (23.6%) | 0.924 |
| Limit cpd to decrease health risk, % yes | 730 (30.7%) | 371 (15.6%) | 0.727 |
| Limit smoking in last year to decrease health risks, % always or often | 476 (20.0%) | 240 (10.1%) | 0.899 |
|
| |||
| Depression score, mean (±SD)a | 1.99 ± 1.86 | 1.96 ± 1.82 | 0.683 |
| Alcohol score, mean (±SD)b | 4.02 ± 3.16 | 3.93 ± 3.03 | 0.494 |
| Discrimination score, mean (±SD)c | 7.03 ± 6.30 | 7.23 ± 6.44 | 0.460 |
aScores range from 0–6 with scores of 3 or higher indicating possible depressive symptoms.
bScores range from 0–12 with scores of ≥4 for men and ≥3 for women indicating possible alcohol misuse.
cScores range from 0–25 with higher scores indicating greater frequency of discrimination in daily life.
Results from logistic regression on the training cohort: parameter estimates and odds ratios
|
|
|
|
|
|
|---|---|---|---|---|
| Intercept | −0.2617 | NA | NA | 0.3497 |
| Age | −0.0265 | 0.974 | (0.964, 0.983) | <.0001 |
| Male | 0.9766 | 2.655 | (2.118, 3.329) | <.0001 |
| Buy vs. Borrow | −0.4832 | 0.617 | (0.486, 0.783) | <.0001 |
| Alcohol | 0.0986 | 1.104 | (1.064, 1.145) | <.0001 |
| Price influenced the brand they buy | 0.3579 | 1.430 | (1.144, 1.788) | 0.0017 |
| African American vs. white | 0.4576 | 1.580 | (1.208, 2.066) | 0.0008 |
| Latino vs. white | 0.4170 | 1.517 | (1.155, 1.994) | 0.0028 |
| Discrimination | 0.0259 | 1.026 | (1.007, 1.045) | 0.0065 |
| Time to first cig less than 30 min | 0.4100 | 1.507 | (1.197, 1.897) | 0.0005 |
| Limit cigarettes per day | 0.2612 | 1.299 | (1.041, 1.619) | 0.0203 |
Figure 1ROC curve from logistic regression on the training sample. Area under the curve = 0.7403.
Figure 2Calibration plot from the validation sample. Observed vs. predicted probabilities across deciles, R 2 = 0.96.
Figure 3Classification and Regression Tree model for predicting Cig + ATP users. The number of participants (N) and the probability of Cig + ATP users (P) are given inside of each node for both training and validation samples.