Patterns and predictors of smoking by race and medical diagnosis during hospital admission: A latent class analysis

Amanda M. Palmer, B. Toll, Georges J. Nahhas, Kayla Haire, Brandon T. Sanford, K. Cummings, A. Rojewski
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Abstract

Hospital-based tobacco treatment programs provide tobacco cessation for a diverse array of admitted patients. Person-centered approaches to classifying subgroups of individuals within large datasets are useful for evaluating the characteristics of the sample. This study categorized patients who received tobacco treatment while hospitalized and determined whether demographics and smoking-related health conditions were associated with group membership. Chart review data was obtained from 4854 patients admitted to a large hospital in South Carolina, USA, from July 2014 through December 2019 who completed a tobacco treatment visit. Smoking characteristics obtained from the visit interview were dichotomized, and then latent class analysis (LCA) was conducted to categorize patients based on smoking history and interest in stopping smoking. Finally, logistic regressions were used to evaluate demographics and smoking-related health conditions as predictors of class membership. LCA generated 5 classes of patients, differentiated by heaviness of smoking and motivation to quit. Patients who were black/African American were more likely to be lighter smokers compared to white patients. Hospitalized patients with a history of hypertension, diabetes, and congestive heart failure were more likely to be motivated to quit and also were more likely to be lighter smokers at the time of hospitalization. Hospitalized patients who smoke and receive tobacco treatment are heterogeneous in terms of their smoking histories and motivation to quit. Understanding latent categories of patients provides insight for tailoring interventions and potentially improving tobacco treatment outcomes.
住院期间因种族和医学诊断而吸烟的模式和预测因素:潜在分类分析
以医院为基础的烟草治疗项目为各种各样的入院患者提供戒烟服务。以人为中心的方法对大型数据集中的个体亚组进行分类,有助于评估样本的特征。这项研究对住院期间接受烟草治疗的患者进行了分类,并确定了人口统计学和吸烟相关的健康状况是否与群体成员有关。图表审查数据来自2014年7月至2019年12月美国南卡罗来纳州一家大型医院收治的4854名完成烟草治疗就诊的患者。将访视访谈中获得的吸烟特征进行二分,然后进行潜在类别分析(LCA),根据吸烟史和戒烟兴趣对患者进行分类。最后,使用逻辑回归来评估人口统计学和吸烟相关的健康状况,作为阶级成员的预测因素。LCA产生了5类患者,根据吸烟的严重程度和戒烟的动机进行区分。与白人患者相比,黑人/非裔美国人患者的吸烟者更轻。有高血压、糖尿病和充血性心力衰竭病史的住院患者更有可能戒烟,住院时吸烟者也更轻。在吸烟史和戒烟动机方面,吸烟和接受烟草治疗的住院患者是异质的。了解潜在的患者类别为制定干预措施和潜在改善烟草治疗结果提供了见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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