Randomized controlled trial testing a video-text tobacco cessation intervention among economically disadvantaged African American adults.

Abstract

Objective

This pilot study tested the acceptability and short-term outcomes of a culturally specific mobile health (mHealth) intervention (Path2Quit) in a sample of economically disadvantaged African American adults. We hypothesized that Path2Quit would demonstrate greater acceptability, biochemically verified abstinence, and promote nicotine replacement therapy (NRT) use compared with a standard text-messaging program.

Method

In a 2-arm pilot randomized trial, adults who sought to quit smoking (N = 119) received either Path2Quit or the National Cancer Institute's (NCI) SmokefreeTXT, both combined with a brief behavioral counseling session plus 2 weeks of NRT. Outcomes included acceptability (intervention evaluation and use), NRT utilization, 24-hr quit attempts, self-reported 7-day point prevalence abstinence (ppa), and biochemically verified smoking abstinence at the 6-week follow-up.

Results

Participants were 52% female/48% male, mostly single (60%), completed ≥ 12 years of education (83%), middle-aged, and 63% reported a household income < $10K/year. Participants smoked 11 (SD = 8.2) cigarettes/day for 25 (SD = 16) years, and reported low nicotine dependence. There were no differences in intervention evaluations or use (ps > .05), yet Path2Quit led to significantly greater NRT utilization at follow-up (p < .05). There was no difference in quit attempts between conditions or 7-day ppa (p > .05). However, Path2Quit resulted in significantly greater carbon monoxide confirmed ppa (adjusted odds ratio [AOR] = 3.55; 95% CI [1.32, 9.54]) at the 6-week follow-up.

Conclusions

A culturally specific mHealth intervention demonstrated positive effects on NRT use and short-term abstinence. Additional research in a larger sample and with long-term follow-up is warranted. (PsycInfo Database Record (c) 2021 APA, all rights reserved).

Department

Description

Provenance

Citation

Published Version (Please cite this version)

10.1037/adb0000691

Publication Info

Webb Hooper, Monica, David B Miller, Enrique Saldivar, Charlene Mitchell, Lacresha Johnson, Marilyn Burns and Ming-Chun Huang (2021). Randomized controlled trial testing a video-text tobacco cessation intervention among economically disadvantaged African American adults. Psychology of addictive behaviors : journal of the Society of Psychologists in Addictive Behaviors, 35(7). pp. 769–777. 10.1037/adb0000691 Retrieved from https://hdl.handle.net/10161/31315.

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Scholars@Duke

Huang

Ming-Chun Huang

Associate Professor of Data and Computation at Duke Kunshan University

Huang has a B.S (2007) in Electrical Engineering at Tsing Hua University, Taiwan, an M.S. (2010) in Electrical Engineering at the University of Southern California, and a Ph.D. (2014) in Computer Science at the University of California, Los Angeles. Prior to joining Duke Kunshan University in 2021, he was an Associate Professor at Case Western Reserve University (2014-2021). His research focus is the intersection among Precision Health and Medicine, Internet-of-Things, Machine Learning and Informatics, Motion and Physiological Signal Sensing. He had over 15 years of research experience conducting interdisciplinary scientific projects with researchers from distinct areas (e.g., Biomedical Engineering, Medicine, and Nursing). He had successfully administered past funded projects and productively published over a hundred peer-reviewed publications, 6 invention patents and software copyrights, and won 7 best paper awards/runner-up, 3000+ citations. His research has been reported in hundreds of high-impact media outlets. For the nature of richness and high impact of the research topics he was involved in, his research results in a plethora of new knowledge in aspects ranging from innovative IoT sensing technology, closed-loop AI analytics methodology, optimized clinical decision-making, and just-in-time patient risk assessment.


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