Literature DB >> 27071399

Does Motivation Matter? Analysis of a Randomized Trial of Proactive Outreach to VA Smokers.

Elisheva R Danan1,2, Anne M Joseph2, Scott E Sherman3,4, Diana J Burgess1,2, Siamak Noorbaloochi1,2, Barbara Clothier1, Sandra J Japuntich5,6, Brent C Taylor1,2, Steven S Fu7,8.   

Abstract

BACKGROUND: Current guidelines advise providers to assess smokers' readiness to quit, then offer cessation therapies to smokers planning to quit and motivational interventions to smokers not planning to quit.
OBJECTIVES: We examined the relationship between baseline stage of change (SOC), treatment utilization, and smoking cessation to determine whether the effect of a proactive smoking cessation intervention was dependent on smokers' level of motivation to quit.
DESIGN: Secondary analysis of a multicenter randomized controlled trial. PARTICIPANTS: A total of 3006 current smokers, aged 18-80 years, at four Veterans Affairs (VA) medical centers.
INTERVENTIONS: Proactive care included proactive outreach (mailed invitation followed by telephone outreach), offer of smoking cessation services (telephone or face-to-face), and access to pharmacotherapy. Usual care participants had access to VA smoking cessation services and state telephone quitlines. MAIN MEASURES: Baseline SOC measured with Readiness to Quit Ladder, and 6-month prolonged abstinence self-reported at 1 year. KEY
RESULTS: At baseline, 35.8 % of smokers were in preparation, 38.2 % in contemplation, and 26.0 % in precontemplation. The overall interaction between SOC and treatment arm was not statistically significant (p = 0.30). Among smokers in preparation, 21.1 % of proactive care participants achieved 6-month prolonged abstinence, compared to 13.1 % of usual care participants (OR, 1.8 [95 % CI, 1.2-2.6]). Similarly, proactive care increased abstinence among smokers in contemplation (11.0 % vs. 6.5 %; OR, 1.8 [95 % CI, 1.1-2.8]). Smokers in precontemplation quit smoking at similar rates (5.3 % vs. 5.6 %; OR, 0.9 [95 % CI, 0.5-1.9]). Within each stage, uptake of smoking cessation treatments increased with higher SOC and with proactive care as compared with usual care. LIMITATIONS: Mostly male participants limits generalizability. Randomization was not stratified by SOC.
CONCLUSIONS: Proactive care increased treatment uptake compared to usual care across all SOC. Proactive care increased smoking cessation among smokers in preparation and contemplation but not in precontemplation. Proactively offering cessation therapies to smokers at all SOC will increase treatment utilization and population-level smoking cessation.

Entities:  

Keywords:  motivation; smoking cessation; veterans

Mesh:

Year:  2016        PMID: 27071399      PMCID: PMC4945562          DOI: 10.1007/s11606-016-3687-1

Source DB:  PubMed          Journal:  J Gen Intern Med        ISSN: 0884-8734            Impact factor:   5.128


INTRODUCTION

Current US smokers overwhelmingly want to quit (68.8 %), and most make at least one quit attempt each year (52.4 %), yet they rarely achieve sustained abstinence (6.2 % per year).1 As a result, the prevalence of smoking in the US has plateaued at approximately 18 % of adults.2 Evidence-based smoking cessation therapies such as medication and counseling significantly increase the success of quit attempts,3,4 but these therapies are underutilized.1,5 Current models of care for tobacco cessation treatment rely on highly motivated smokers to initiate therapy (e.g., by calling state telephone quitlines) or on clinical providers to offer therapy. The US Clinical Practice Guideline6 instructs providers to offer active therapy only to smokers who are “willing” to quit in the next 30 days. The guideline recommends that smokers who are not ready to quit receive brief motivational interventions (e.g., motivational interviewing) to enhance readiness to quit. The theoretical justification for evaluating smokers’ readiness to quit prior to offering therapy is rooted in the transtheoretical model (TTM).7 This model describes progression through five stages of change (SOC) (precontemplation, contemplation, and preparation for current smokers; action and maintenance for those who have quit) that correlate with ten processes of behavior change. Hundreds of published validation, population, and intervention studies have evaluated the TTM in the context of tobacco use.8,9 According to the TTM, “action-oriented” interventions such as cessation pharmacotherapy are most effective in the advanced stages.10–12 Unfortunately, 80 % of U.S. smokers have historically fallen into the precontemplation and contemplation stages.13,14 As motivated smokers have quit in response to public health campaigns and policy initiatives,15 the proportion of smokers in preparation has dropped even further, with levels now at only 9–12 %.16,17 Efforts to help early-stage smokers transition to higher stages through motivational interviewing have produced mixed results.18 As the percentage of smokers in preparation shrinks, the practice of offering active therapy only to those preparing to quit will have diminishing returns. While the TTM has served as a useful framework for understanding behavior change, it has limitations as the basis for clinical practice guidelines. The TTM systematically underestimates smokers’ motivation to quit,19–21 as many, if not most, precontemplators and contemplators both want to and try to quit.22 In fact, several interventions have documented successful abstinence among precontemplators and contemplators.23–25 These results substantiate critiques of the construct validity21,26–28 and inherent instability of the TTM stages.21,29 Interventions that proactively offer evidence-based smoking cessation therapies to all smokers, regardless of SOC, may provide an opportunity to reduce the prevalence of smoking.30 The Veterans Victory Over Tobacco Study randomized smokers to usual care or to a proactive, population-based tobacco cessation intervention that offered telephone or in-person counseling, as well as access to cessation medications, to smokers regardless of SOC. The primary results revealed a statistically significant higher population-level 6-month prolonged smoking abstinence rate at 1 year for proactive care (13.5 %) compared with usual care (10.9 %, p = 0.02).31 In this secondary analysis, we evaluate the effectiveness of proactive care among smokers at different baseline SOC. Our primary question is whether a proactive outreach intervention will increase prolonged abstinence even among those who say they are not ready to quit. Secondary outcomes include the uptake of cessation therapies and quit attempts by smokers at each SOC.

METHODS

Study Design and Participants

The Veterans Victory Over Tobacco Study was a pragmatic randomized controlled trial, and was approved by the institutional review boards of all participating sites. Current smokers (aged 18 to 80 years) were identified using the US Department of Veterans Affairs (VA) electronic medical record health factor data set. Participants were recruited from October 2009 to September 2010 from four VA medical centers (New York, NY; Jackson, MS; Tampa, FL: Minneapolis, MN), and follow-up was completed in November 2011. Additional details of the trial design and methods were described previously.31,32

Treatment

The proactive care intervention comprised proactive outreach (mailed materials followed by telephone outreach) combined with an offer of telephone smoking cessation counseling or referral to in-person counseling. Telephone care included a combination of proactive calls from trained counselors at the Minneapolis VA and facilitated access to smoking cessation pharmacotherapy through the participant’s VA provider. The usual care group did not receive proactive outreach but did have access to smoking cessation services through their local VA and their state telephone quitline.

Data Collection

VA administrative and health care utilization data were obtained from the VA National Patient Care Database. Survey data were collected at baseline and 1-year follow-up.

Measures

Nicotine dependence was evaluated at baseline and follow-up using time to first morning cigarette and number of cigarettes per day.33 SOC was assessed at baseline and follow-up with the ten-point Readiness to Quit Ladder (RQL).34 Ladder responses 1 through 10 were categorized into low (1–4), medium (5–6), and high (7–10) levels of readiness that approximate and are referenced hereafter as precontemplation, contemplation, and preparation (adapted from Abrams et al.34). The primary outcome was self-reported 6-month prolonged abstinence at 1-year follow-up, and was assessed among all participants, regardless of treatment utilization. Secondary outcomes included uptake of smoking cessation therapies and quit attempts measured at baseline and follow-up. The use of behavioral counseling (telephone or in-person) and/or smoking cessation medications from any source (including bupropion, varenicline, and nicotine replacement therapy [NRT]) was self-reported. Medications were also assessed using administrative prescription data. Quit attempts were assessed with the question, “During the past 12 months, how many times have you quit smoking intentionally for 24 hours or longer?”

Analysis

We used stratified random sampling (by site) to select the study sample and a completely randomized block design to assign participants to the intervention or usual care. Accordingly, our estimations, testing, and modeling procedures are stratified analyses. To compare baseline characteristics across the SOC, the weighted stratified Wald χ2 was used for categorical variables and the weighted stratified F-test was used for continuous variables. The weights were inverses of the sampling proportions from each site. To account for possible intra-block correlations, logistic regression mixed modeling was used to test the effect of SOC on the primary outcome, 6-month prolonged abstinence. All models included the intervention and blocking factor (site). We tested the interaction between SOC and treatment arm with respect to the primary outcome. Randomization was not stratified by SOC, which allowed for potentially imbalanced covariates (both measured and unmeasured) between the two treatment arms within each SOC to occur by chance, and this may have created a biased interaction term. To control for between-group imbalances, we have presented a stratified analysis, comparing the treatment effect within each SOC separately. Imbalanced characteristics at the 0.05 significance level were included in the models as adjusting covariates. To handle non-response, we hypothesized that this might depend on the unobserved smoking status of the subject; that is, we assumed a not-missing-at-random (NMAR) mechanism. We modeled the joint distribution of abstinence status and response status for the logistic regressions using an expectation–maximization algorithm to find maximum likelihood estimators, as described by Ibrahim and colleagues.35,36 This likelihood-based NMAR method creates two data sets, one that assumes all non-responders are smokers, and another that assumes they are all quitters. Then, through a series of iterative weightings, it produces maximum likelihood estimates. The data analysis for this paper including the macro for likelihood-based NMAR modeling was generated using SAS/STAT software, version 9.2 (SAS Institute Inc., Cary, NC, USA).

RESULTS

Of the 5123 eligible, randomized participants, 3006 provided complete baseline survey data, including the RQL, and thus constitute the sample for this secondary analysis (58.5 % [1473/2519] of those randomized to the proactive care intervention and 58.9 % [1533/2604] of those in usual care). At baseline, 781 smokers were in precontemplation (26.0 %), 1148 were in contemplation (38.2 %), and 1077 were in preparation (35.8 %) (Table 1).
Table 1

Participant Characteristics by Baseline Stage of Change

Total, n Precontemplation, n (%)*or mean (SD)Contemplation, n (%) or mean (SD)Preparation, n (%) or mean (SD) p value
All participants300678111481077
Treatment group
 Usual care1533 (51.3)396 (50.6)585 (50.7)552 (52.5)0.64
 Proactive care1473 (48.7)385 (49.5)563 (49.2)525 (47.5)
Demographic characteristics:
 Age (years)57.7 (10.6)59.4 (10.3)57.0 (10.7)57.3 (10.5)<0.001
 Race
  White1852 (67.2)543 (74.4)737 (70.0)572 (58.4)<0.001
  Black774 (22.2)154 (16.4)280 (20.2)340 (29.0)
  Hispanic85 (4.5)41 (4.2)59 (3.6)85 (5.8)
  Other95 (6.1)43 (5.1)72 (6.2)80 (6.8)
 Gender
  Male2838 (94.4)741 (94.9)1080 (94.2)1017 (94.1)0.71
 Marital status
  Married1460 (50.0)337 (44.8)602 (53.6)521 (50.0)0.001
Socioeconomic status:
 Income ($)
   < 10,000511 (17.0)123 (16.1)185 (16.0)203 (18.9)0.001
  10,000–20,000879 (30.8)238 (32.8)307 (28.1)334 (32.4)
  20,001–40,000841 (30.5)841 (29.7)207 (30.4)323 (31.3)
   ≥ 40,001593 (21.6)155 (21.4)266 (25.5)172 (17.4)
Social and environmental pressures:
 Home smoking rules
  Not allowed anywhere1116 (41.1)237 (33.3)406 (39.8)473 (48.6)<0.001
  Allowed some places/times602 (20.7)142 (19.2)219 (20.0)241 (22.3)
  Allowed anywhere1087 (38.2)354 (47.5)438 (40.2)295 (28.7)
 Friends who smoke
  None454 (16.2)116 (15.8)171 (16.2)167 (16.5)0.001
   < half809 (28.7)185 (24.6)296 (27.9)328 (32.7)
  About half614 (22.2)163 (22.3)238 (22.7)213 (21.7)
   > half530 (19.4)134 (18.8)217 (21.0)179 (18.0)
  All384 (13.6)130 (18.6)135 (12.2)119 (11.2)
 People important to me want me to quit smoking
  Strongly disagree to neutral580 (21.6)267 (37.8)188 (17.9)125 (13.2)<0.001
  Somewhat agree628 (22.8)196 (26.7)234 (23.1)198 (19.3)
  Strongly agree1569 (55.6)263 (35.5)635 (59.0)671 (67.5)
Smoking behaviors:
 Cigarettes per day
   ≤ 101018 (31.3)211 (24.7)290 (22.3)517 (46.7)<0.001
  11–201286 (45.0)341 (46.3)547 (49.5)398 (38.9)
   ≥ 21652 (23.7)213 (29.0)301 (28.3)138 (14.4)
 Time to first cigarette, min
   ≥ 31809 (25.8)185 (23.2)249 (20.7)375 (33.6)<0.001
  6–301535 (52.6)402 (52.2)615 (55.1)518 (50.1)
   < 5638 (21.6)188 (24.6)278 (24.2)172 (16.3)
 Quit in past 12 months
  Yes1673 (54.4)181 (22.4)626 (53.2)866 (80.6)<0.001
 Longest quit length
  Never quit255 (8.3)128 (16.3)72 (6.1)55 (4.7)<0.001
   < 1 month824 (27.1)230 (29.5)334 (27.9)260 (24.2)
  1–6 months809 (27.2)187 (24.4)309 (27.5)313 (28.9)
   > 6 months1092 (37.5)225 (29.8)426 (38.5)441 (42.2)

* Observed count (weighted column proportion)

Participant Characteristics by Baseline Stage of Change * Observed count (weighted column proportion) Within precontemplation and contemplation, observed baseline characteristics were balanced across treatment groups (Tables 3 and 4, available online). However, for the preparation group, male gender and level of agreement with the statement “People important to me want me to quit smoking” were not balanced across treatment groups (Table 5, available online). These imbalanced variables were included in the complete case and the NMAR models as adjusting covariates.

Primary Outcome: 6-Month Prolonged Abstinence (Table 2)

Primary Outcome: 6-Month Prolonged Abstinence by Baseline Stage of Change and Treatment Arm * Observed count (weighted column proportion) † Usual care is the reference group ‡ Among follow-up survey respondents § Likelihood-based NMAR (not-missing-at-random) model accounting for non-response Six-month prolonged abstinence at 1 year varied by baseline SOC (5.4 % for precontemplators, 8.6 % for contemplators, and 17.1 % for preparers [p < 0.001]). The overall interaction between SOC and treatment arm was not statistically significant (p = 0.30). Among smokers in preparation, those randomized to the proactive intervention were more likely to quit than those in usual care (21.1 % vs 13.1 %, respectively, p = 0.003). Logistic regression mixed modeling analysis, taking into account treatment arm and facility as well as the adjusting covariates described above, found a significant effect of proactive care compared with usual care among preparers (OR, 1.8 [95 % CI, 1.2–2.6]). Similarly, smokers in contemplation who were randomized to the proactive intervention were more likely to quit than those in usual care (11.0 % vs 6.5 %, p = 0.018; OR, 1.8, [95 % CI, 1.1–2.8]).). Smokers in precontemplation quit at similar rates in the two treatment arms (5.3 % vs 5.6 %, p = 0.85; OR, 0.9, [95 % CI, 0.5–1.9]). Analyses accounting for nonresponse using likelihood-based NMAR models showed a similar effect of the proactive care intervention on prolonged abstinence at each SOC (Table 2). Of the 254 study participants who achieved 6-month prolonged abstinence, 55.6 % began the study in preparation, while 44.4 % were not ready to quit at baseline (12.5 % began in precontemplation and 31.9 % in contemplation).
Table 2

Primary Outcome: 6-Month Prolonged Abstinence by Baseline Stage of Change and Treatment Arm

Baseline stage of changeParticipants, n (%)*Odds ratio (95 % CI)Complete case model n = 2351Odds ratio (95 % CI)NMAR model§ n = 3006
Usual care, n = 1236Proactive care, n = 1115
Precontemplation18 (5.6 %)15 (5.3 %)0.9 (0.5, 1.9)1.2 (0.8, 1.8)
Contemplation31 (6.5 %)48 (11.0 %) 1.8 (1.1, 2.8) 1.8 (1.3, 2.4)
Preparation60 (13.1 %)82 (21.1 %) 1.8 (1.2, 2.6) 1.6 (1.4, 2.0)

* Observed count (weighted column proportion)

† Usual care is the reference group

‡ Among follow-up survey respondents

§ Likelihood-based NMAR (not-missing-at-random) model accounting for non-response

Secondary Outcomes

Uptake of Smoking Cessation Therapies (Fig. 1)

Engagement with smoking cessation therapies by baseline stage of change and treatment arm. PC = precontemplation, C = contemplation, P = preparation, ns = not significant, TC = telephone counseling, C&Rx = counseling & medication, VA Rx = VA-prescribed medication. * 95 % confidence interval for odds ratio does not contain 1. Smokers at all SOC who were randomized to proactive care engaged in telephone counseling at significantly higher rates than usual-care smokers (7.4 vs. 0.6 % for precontemplation; 16.6 vs 2.7 % for contemplation; 18.8 vs. 3.1 % for preparation) and reported combined therapy with counseling and cessation medication at significantly higher rates than usual care smokers (6.0 vs. 1.5 % for precontemplation; 14.1 vs. 5.7 % for contemplation; 20.7 vs 8.4 % for preparation). Smokers in all SOC who received proactive care were more likely than usual care participants to be prescribed cessation medications through the VA, though this difference reached statistical significance only for contemplation and preparation (20.2 vs. 16.1 % for precontemplation [NS]; 40.9 vs. 33.3 % for contemplation; 44.9 vs. 37.4 % for preparation). Study participants reported using in-person counseling or attending VA smoking cessation clinics at low rates that were not significantly different by study arm or by baseline SOC.

Quit Attempts

Baseline SOC predicted the likelihood of making a quit attempt during the study period. Overall, 31.3 % of precontemplators, 55.6 % of contemplators, and 73.5 % of preparers reported making at least one 24-hour quit attempt during the study follow-up period. There was no significant difference in quit attempts between proactive and usual care.

DISCUSSION

This proactive population-based smoking cessation intervention included smokers at all stages of change (SOC), and increased long-term prolonged abstinence for smokers in both preparation and contemplation. Smokers in precontemplation did not quit at higher rates in response to proactive outreach, but they were more likely to try evidence-based cessation interventions, including telephone counseling and combined counseling and pharmacotherapy. Proactively offering evidence-based cessation therapies to all smokers led to increased therapeutic engagement and higher long-term population-level quit rates. Our assessment of an overall interaction between SOC and treatment group revealed no statistically significant difference among SOC subgroups with respect to the intervention. Interaction tests are often underpowered and may be biased when the study is not designed to detect these subgroup effects and randomization is not stratified by subgroup. Thus, we presented additional stratified analyses demonstrating the effect of proactive outreach on smokers at each baseline stage. Among highly motivated smokers (preparation), 73.5 % of whom made at least one quit attempt during follow-up, proactive outreach increased the likelihood of quitting successfully by 50 % (21.1 % vs 13.1 %). Though proactive outreach targets less motivated smokers,37 we found that even highly motivated smokers benefited from proactive outreach through increased uptake of cessation therapies. Proactive outreach to contemplators appeared to increase cessation by helping smokers overcome high nicotine dependence through the use of evidence-based therapies. Contemplators had attempted to quit in the past at rates similar to preparers, but had much higher levels of nicotine dependence (Table 1). A history of past quit attempts is a predictor of future attempts, but nicotine dependence levels predict the success of those attempts.38,39 Increased therapeutic engagement by contemplators resulted in more successful quit attempts. Our finding that treatment engagement was associated with cessation (OR 1.55 [95 % CI 1.06–2.28] for use of combined therapy) supports this proposed mechanism. Although proactive outreach increased treatment engagement among precontemplators, we did not observe a difference in smoking cessation rates. It may be that proactive outreach that offers standard cessation therapies is ineffective for precontemplators, who face greater barriers to quitting40 and may require tailored or high-intensity therapy.23 Alternatively, our analysis may have been underpowered to show a difference in cessation among precontemplators, given the smaller size of the subgroup and lower baseline quit rates. Further research is needed for a definitive answer to this question. We found no evidence that the proactive intervention increased unsuccessful quit attempts among precontemplators (31.4 % of precontemplators in usual care and 31.3 % in proactive care made at least one quit attempt during follow-up [p = 0.98]), and thus have no reason to believe that proactive care poses harm to precontemplators. Our results replicate and extend prior research that has evaluated population-based smoking cessation interventions for smokers at all SOC. Since 1995, when Curry and colleagues first demonstrated the potential effectiveness of telephone-based interventions with non-volunteer smokers at all SOC,25 dozens of telephone-based trials in various populations have supported this proactive approach. However, most have measured only point-prevalent abstinence and/or found short-term (6–9-month follow-up) effects.37,41,42 In contrast, our proactive care intervention achieved prolonged abstinence at long-term (12-month) follow-up among both preparers and contemplators. One reason for this robust effect may be that we combined population-based outreach (using electronic health technology to identify current smokers and to offer telephone-based care) with individual care management (linking care to VA providers to facilitate pharmacotherapy). Smokers in proactive care were much more likely to use combined counseling and pharmacotherapy (Fig. 1), which has been shown to be highly effective.4,6
Figure 1

Engagement with smoking cessation therapies by baseline stage of change and treatment arm. PC = precontemplation, C = contemplation, P = preparation, ns = not significant, TC = telephone counseling, C&Rx = counseling & medication, VA Rx = VA-prescribed medication. * 95 % confidence interval for odds ratio does not contain 1.

While earlier telephone counseling studies have included smokers at all SOC, those studies did not provide information as to whether smokers at lower SOC benefitted from the interventions or merely diluted the population-level treatment effect. In 2015, Haas and colleagues43 addressed this deficiency, reporting that their telephone-based intervention using interactive voice response increased abstinence both among those planning to quit within the next 30 days and among those with no plans to quit. Our report provides additional information on the magnitude of the treatment effect on less motivated smokers and divides less motivated smokers into subgroups of precontemplators and contemplators. Interest in treating smokers at all SOC has grown over the past decade. In 2005, Pisinger and colleagues first reported the success of the Inter99 trial, which found that a high-intensity intervention could engage less motivated smokers and increase rates of abstinence.23,44 Several editorials, citing the success of Inter99, have questioned current guideline recommendations to assess motivation to quit prior to offering cessation therapy.26,45 Aveyard and colleagues conducted a systematic review and meta-analysis of brief physician interventions among smokers at all motivation levels and concluded that combining physician advice to quit with the offer of cessation support motivated an additional 40–60 % of smokers to attempt to quit, compared with advice alone.30 The authors suggested that offering assistance in quitting to smokers at all SOC may be effective because the offer itself increases confidence in success. To explain why less motivated smokers often respond to offers of cessation therapy, others have advanced an alternative theory of smoking cessation based in “catastrophe theory,” which posits that motivational tension fluctuates, and small triggers can induce apparently spontaneous quit attempts.46,47 Carpenter and colleagues subsequently reported that among unmotivated smokers, NRT sampling was more successful for inducing quit attempts and short-term cessation than practice quit attempts alone.48 Two additional small studies compared the offer of NRT to usual care and found promising short-term results regardless of motivation.49,50 After more than a decade of small studies, meta-analyses, and editorials, we now report on the largest low-intensity, pragmatic, proactive care intervention with long-term outcomes among smokers who were not planning to quit at baseline. Limitations include a study population of mostly older male US veteran smokers, which may limit generalizability to other populations of smokers. Our study, a non-pre-specified subgroup analysis, is restricted to those participants who completed the baseline survey questions that established SOC, and thus this sample may be more engaged than the overall population. Follow-up data availability is limited to an even smaller group. We address the potential for response bias in follow-up data by including a likelihood-based NMAR model analysis. In the primary analysis,31 we also addressed possible differential non-response between treatment groups, and found that taking into account non-response bias did not substantially alter the results. Additional limitations result from inconsistencies in operationalizing the TTM across the literature, making it difficult to compare our SOC with those in other studies.9 This large, pragmatic randomized trial of a telephone-based intervention demonstrated increased uptake of smoking cessation therapies and prolonged abstinence at 1 year both for smokers who were already planning to quit and for those who were not. Similar to the results of prior studies,23,25 we found that among participants who quit successfully, nearly half began the study stating that they were not ready to quit. Restricting therapy to only those in the preparation stage would exclude 64 % of the smokers in our sample, and 44 % of those who quit. Our results add to the growing body of evidence that smoking cessation therapy should be proactively offered to all smokers, regardless of stated plans to quit.
Table 3

Baseline Participant Characteristics by Treatment Group Within Precontemplation

Total, n Proactive care, n (%)* or mean (SD)Usual care, n (%) or mean (SD) p value
All participants781385396
Demographic characteristics:
 Age (years)59.4 (10.3)58.8 (10.6)59.9 (10.0)0.06
 Race
  White543 (74.4)256 (71.7)287 (77.0)0.25
  Black154 (16.4)84 (17.6)70 (15.2)
  Hispanic41 (4.2)20 (4.3)21 (4.0)
  Other43 (5.1)25 (6.2)18 (3.8)
 Gender
  Male741 (94.9)366 (95.2)375 (94.6)0.71
 Marital status
  Married337 (44.8)181 (48.3)156 (41.3)0.06
Socioeconomic status:
 Income, ($)
   < 10,000123 (16.1)64 (17.3)59 (15.01)0.43
  10,000–20,000238 (32.8)103 (29.8)135 (35.6)
  20,001–40,000841 (29.7)107 (31.3)100 (28.2)
   ≥ 40,001155 (21.4)76 (21.7)79 (21.2)
Social and environmental pressures:
 Home smoking rules
  Not allowed anywhere237 (33.3)121 (35.1)116 (31.5)0.20
  Allowed some places/times142 (19.2)73 (20.8)69 (17.7)
  Allowed anywhere354 (47.5)161 (44.1)193 (50.8)
 Friends who smoke
  None116 (15.8)51 (14.4)65 (17.0)0.75
   < half185 (24.6)91 (24.6)94 (24.6)
  About half163 (22.3)79 (21.4)84 (23.1)
   > half134 (18.8)70 (20.4)64 (17.2)
  All130 (18.6)64 (19.2)66 (18.1)
 People important to me want me to quit smoking
  Strongly disagree to neutral267 (37.8)123 (36.4)144 (39.1)0.19
  Somewhat agree196 (26.7)109 (29.9)87 (23.7)
  Strongly agree263 (35.5)118 (33.7)145 (37.2)
Smoking behaviors:
 Cigarettes per day
   ≤ 10211 (24.7)111 (26.4)100 (23.1)0.35
  11–20341 (46.3)157 (43.7)184 (48.9)
   ≥ 21213 (29.0)107 (30.0)106 (28.0)
 Time to first cigarette (min)
   ≥ 31185 (23.2)94 (23.4)91 (23.0)0.95
  6–30402 (52.2)196 (51.6)206 (52.7)
   < 5188 (24.6)92 (25.0)96 (24.3)
 Quit in past 12 months
  Yes181 (22.4)91 (22.8)90 (22.1)0.80
 Longest quit length
  Never quit128 (16.3)65 (16.8)63 (15.8)0.25
   < 1 month230 (29.5)126 (32.6)104 (26.4)
  1–6 months187 (24.4)83 (22.5)104 (26.3)
   > 6 months225 (29.8)107 (28.1)118 (31.5)

* Observed count (weighted column proportion)

Table 4

Baseline Participant Characteristics by Treatment Group Within Contemplation

Total, n Proactive care, n (%)* or mean (SD)Usual care, n (%) or mean (SD) p value
All participants1148563585
Demographic characteristics:
 Age (years)57.0 (10.7)56.6 (10.9)57.2 (10.4)0.32
 Race
  White737 (70.0)358 (69.5)287 (70.5)0.18
  Black280 (20.2)150 (22.2)130 (18.3)
  Hispanic59 (3.6)26 (3.0)33 (4.1)
  Other72 (6.2)29 (5.3)43 (7.1)
 Gender
  Male1080 (94.2)530 (94.3)550 (94.1)0.88
 Marital status
  Married602 (53.6)292 (52.8)310 (54.4)0.60
Socioeconomic status:
 Income ($)
   < 10,000185 (16.0)85 (15.1)100 (16.8)0.81
  10,000–20,000307 (28.1)154 (28.2)153 (28.0)
  20,001–40,000207 (30.4)164 (31.6)159 (29.3)
   ≥ 40,001266 (25.5)132 (25.2)134 (25.9)
Social and environmental pressures:
 Home smoking rules
  Not allowed anywhere406 (39.8)209 (41.4)197 (38.3)0.45
  Allowed some places/times219 (20.0)97 (18.5)122 (21.4)
  Allowed anywhere438 (40.2)214 (40.1)224 (40.3)
 Friends who smoke
  None171 (16.2)88 (17.1)83 (15.2)0.26
   < half296 (27.9)132 (25.1)164 (30.5)
  About half238 (22.7)117 (22.4)121 (23.1)
   > half217 (21.0)109 (21.7)108 (20.4)
  All135 (12.2)71 (13.7)64 (10.8)
 People important to me want me to quit smoking
  Strongly disagree to neutral188 (17.9)95 (18.3)93 (17.5)0.30
  Somewhat agree234 (23.1)102 (21.0)132 (25.2)
  Strongly agree635 (59.0)321 (60.7)314 (57.4)
Smoking behaviors:
 Cigarettes per day
   ≤ 10290 (22.3)140 (22.1)150 (22.4)0.94
  11–20547 (49.5)274 (50.0)273 (48.9)
   ≥ 21301 (28.3)143 (27.9)158 (28.6)
 Time to first cigarette (min)
   ≥ 31249 (20.7)116 (20.0)133 (21.4)0.41
  6–30615 (55.1)298 (54.1)317 (56.1)
   < 5278 (24.2)146 (26.0)132 (22.5)
 Quit in past 12 months
  Yes626 (53.2)307 (54.4)319 (52.1)0.46
 Longest quit length
  Never quit72 (6.1)38 (6.6)34 (5.5)0.70
   < 1 month334 (27.9)172 (29.1)162 (26.8)
  1–6 months309 (27.5)149 (27.1)160 (27.9)
   > 6 months426 (38.5)201 (37.3)225 (39.7)

* Observed count (weighted column proportion)

Table 5

Baseline Participant Characteristics by Treatment Group Within Preparation

Total, n Proactive care, n (%)* or mean (SD)Usual care, n (%) or mean (SD) p value
All participants1077525552
Demographic characteristics:
 Age (years)57.4 (10.5)57.2 (10.3)57.6 (10.8)0.47
 Race
  White572 (58.4)260 (55.0)312 (61.6)0.20
  Black340 (29.0)178 (31.2)162 (27.1)
  Hispanic85 (5.8)43 (6.2)42 (5.4)
  Other80 (6.8)44 (7.7)36 (5.9)
 Gender
  Male1017 (94.1)504 (95.7)513 (92.6)0.045
 Marital status
  Married521 (50.0)250 (50.0)271 (50.1)0.98
Socioeconomic status:
 Income ($)
   < 10,000203 (18.9)98 (19.0)105 (18.9)0.91
  10,000–20,000334 (32.4)170 (33.4)164 (31.6)
  20,001–40,000311 (31.3)146 (31.2)165 (31.4)
   ≥ 40,001172 (17.4)81 (16.5)91 (18.1)
Social and environmental pressures:
 Home smoking rules
  Not allowed anywhere473 (48.6)227 (48.3)246 (48.9)0.58
  Allowed some places/times241 (22.3)113 (21.7)128 (23.7)
  Allowed anywhere295 (28.7)151 (30.1)144 (27.4)
 Friends who smoke
  None167 (16.5)85 (16.7)82 (16.3)0.96
   < half328 (32.7)149 (31.5)179 (33.7)
  About half213 (21.7)104 (22.0)109 (21.5)
   > half179 (18.0)92 (18.8)87 (17.3)
  All119 (11.2)59 (11.1)60 (11.2)
 People important to me want me to quit smoking
  Strongly disagree to neutral125 (13.2)47 (10.1)78 (16.0)0.031
  Somewhat agree198 (19.3)99 (19.7)99 (18.9)
  Strongly agree671 (67.5)332 (70.3)339 (65.1)
Smoking behaviors:
 Cigarettes per day
   ≤ 10517 (46.7)244 (45.3)273 (48.0)0.67
  11–20398 (38.9)201 (40.4)197 (37.7)
   ≥ 21138 (14.4)67 (14.4)71 (14.4)
 Time to first cigarette, min
   ≥ 31375 (33.6)172 (32.5)203 (34.5)0.75
  6–30518 (50.1)259 (50.5)259 (49.8)
   < 5172 (16.3)88 (17.0)84 (15.7)
 Quit in past 12 months
  Yes866 (80.6)414 (80.0)452 (81.1)0.66
 Longest quit length
  Never quit55 (4.7)30 (5.5)25 (4.1)0.11
   < 1 month260 (24.2)140 (26.4)120 (22.2)
  1–6 months313 (28.9)155 (29.8)158 (28.2)
   > 6 months441 (42.2)194 (38.4)247 (45.6)

* Observed count (weighted column proportion)

  39 in total

1.  Quitting smoking among adults--United States, 2001-2010.

Authors: 
Journal:  MMWR Morb Mortal Wkly Rep       Date:  2011-11-11       Impact factor: 17.586

2.  Individual-level predictors of cessation behaviours among participants in the International Tobacco Control (ITC) Four Country Survey.

Authors:  A Hyland; R Borland; Q Li; H-H Yong; A McNeill; G T Fong; R J O'Connor; K M Cummings
Journal:  Tob Control       Date:  2006-06       Impact factor: 7.552

3.  "Catastrophic" pathways to smoking cessation: findings from national survey.

Authors:  Robert West; Taj Sohal
Journal:  BMJ       Date:  2006-01-27

4.  Distribution of smokers by stage in three representative samples.

Authors:  W F Velicer; J L Fava; J O Prochaska; D B Abrams; K M Emmons; J P Pierce
Journal:  Prev Med       Date:  1995-07       Impact factor: 4.018

5.  Nicotine therapy sampling to induce quit attempts among smokers unmotivated to quit: a randomized clinical trial.

Authors:  Matthew J Carpenter; John R Hughes; Kevin M Gray; Amy E Wahlquist; Michael E Saladin; Anthony J Alberg
Journal:  Arch Intern Med       Date:  2011-11-28

Review 6.  Stage-based interventions for smoking cessation.

Authors:  Kate Cahill; Tim Lancaster; Natasha Green
Journal:  Cochrane Database Syst Rev       Date:  2010-11-10

Review 7.  Brief opportunistic smoking cessation interventions: a systematic review and meta-analysis to compare advice to quit and offer of assistance.

Authors:  Paul Aveyard; Rachna Begh; Amanda Parsons; Robert West
Journal:  Addiction       Date:  2012-02-28       Impact factor: 6.526

8.  It's time to change the default for tobacco treatment.

Authors:  Kimber P Richter; Edward F Ellerbeck
Journal:  Addiction       Date:  2014-10-16       Impact factor: 6.526

9.  Assessing 'stage of change' in current and former smokers.

Authors:  Jean-François Etter; Stephen Sutton
Journal:  Addiction       Date:  2002-09       Impact factor: 6.526

10.  Predictors of abstinence among smokers recruited actively to quitline support.

Authors:  Flora Tzelepis; Christine L Paul; Raoul A Walsh; John Wiggers; Sarah L Duncan; Jenny Knight
Journal:  Addiction       Date:  2012-08-28       Impact factor: 6.526

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  12 in total

1.  Smokers who are unmotivated to quit and have a child with asthma are more likely to quit with intensive motivational interviewing and repeated biomarker feedback.

Authors:  Belinda Borrelli; Romano Endrighi; S Katharine Hammond; Shira Dunsiger
Journal:  J Consult Clin Psychol       Date:  2017-11

2.  Capsule Commentary on Danan et al., Does Motivation Matter? Analysis of a Randomized Trial of Proactive Outreach to VA Smokers.

Authors:  Amir Mohammad
Journal:  J Gen Intern Med       Date:  2016-08       Impact factor: 5.128

3.  Getting to the 'Why' of Behavior Change.

Authors:  Mitchell D Feldman
Journal:  J Gen Intern Med       Date:  2016-08       Impact factor: 5.128

4.  Piloting a clinical laboratory method to evaluate the influence of potential modified risk tobacco products on smokers' quit-related motivation, choice, and behavior.

Authors:  Jenny E Ozga-Hess; Nicholas J Felicione; Stuart G Ferguson; Geri Dino; Daniel Elswick; Catherine Whitworth; Nicholas Turiano; Melissa D Blank
Journal:  Addict Behav       Date:  2019-08-21       Impact factor: 3.913

5.  Association of the Affordable Care Act With Smoking and Tobacco Treatment Utilization Among Adults Newly Enrolled in Health Care.

Authors:  Kelly C Young-Wolff; Daniella Klebaner; Cynthia I Campbell; Constance Weisner; Derek D Satre; Alyce S Adams
Journal:  Med Care       Date:  2017-05       Impact factor: 2.983

6.  We are all choice architects: using behavioral economics to improve smoking cessation in primary care.

Authors:  Kevin Selby; Joachim Marti; Marie-Anne Durand
Journal:  J Gen Intern Med       Date:  2022-01-11       Impact factor: 6.473

7.  Smoking Cessation for Smokers Not Ready to Quit: Meta-analysis and Cost-effectiveness Analysis.

Authors:  Ayesha Ali; Cameron M Kaplan; Karen J Derefinko; Robert C Klesges
Journal:  Am J Prev Med       Date:  2018-06-12       Impact factor: 5.043

8.  Proactively Offered Text Messages and Mailed Nicotine Replacement Therapy for Smokers in Primary Care Practices: A Pilot Randomized Trial.

Authors:  Gina R Kruse; Elyse R Park; Yuchiao Chang; Jessica E Haberer; Lorien C Abroms; Naysha N Shahid; Sydney Howard; Jennifer S Haas; Nancy A Rigotti
Journal:  Nicotine Tob Res       Date:  2020-08-24       Impact factor: 4.244

9.  Design Considerations for mHealth Programs Targeting Smokers Not Yet Ready to Quit: Results of a Sequential Mixed-Methods Study.

Authors:  Jennifer B McClure; Jaimee Heffner; Sarah Hohl; Predrag Klasnja; Sheryl L Catz
Journal:  JMIR Mhealth Uhealth       Date:  2017-03-10       Impact factor: 4.773

Review 10.  Lung Cancer Screening and Smoking Cessation Clinical Trials. SCALE (Smoking Cessation within the Context of Lung Cancer Screening) Collaboration.

Authors:  Anne M Joseph; Alexander J Rothman; Daniel Almirall; Abbie Begnaud; Caroline Chiles; Paul M Cinciripini; Steven S Fu; Amanda L Graham; Bruce R Lindgren; Anne C Melzer; Jamie S Ostroff; Elizabeth L Seaman; Kathryn L Taylor; Benjamin A Toll; Steven B Zeliadt; David M Vock
Journal:  Am J Respir Crit Care Med       Date:  2018-01-15       Impact factor: 30.528

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