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Integrating Smoking Cessation into Low-Dose Computed Tomography Lung Cancer Screening: Results of the Ontario, Canada Pilot.

William K. Evans,Martin C. Tammemagi,Meghan J. Walker, Erin Cameron,Yvonne W. Leung, Sara Ashton, Julie de Loe, Wanda Doyle, Chantal Bornais, Ellen Allie, Koop Alkema,Caroline A. Bravo,Caitlin McGarry,Michelle Rey,Rebecca Truscott,Gail Darling,Linda Rabeneck

JOURNAL OF THORACIC ONCOLOGY(2023)

McMaster Univ | Ontario Hlth Canc Care Ontario | Lakeridge Hlth | Ottawa Hosp | Champlain Reg Canc Program | Northeast Canc Ctr Hlth Sci North

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Abstract
Introduction: Low-dose computed tomography screening in high-risk individuals reduces lung cancer mortality. To inform the implementation of a provincial lung cancer screening program, Ontario Health undertook a Pilot study, which integrated smoking cessation (SC).Methods: The impact of integrating SC into the Pilot was assessed by the following: rate of acceptance of a SC referral; proportion of individuals who were currently smoking cigarettes and attended a SC session; the quit rate at 1 year; change in the number of quit attempts; change in Heaviness of Smoking Index; and relapse rate in those who previously smoked.Results: A total of 7768 individuals were recruited pre-dominantly through primary care physician referral. Of these, 4463 were currently smoking and were risk assessed and referred to SC services, irrespective of screening eligibility: 3114 (69.8%) accepted referral to an in-hospital SC program, 431 (9.7%) to telephone quit lines, and 50 (1.1%) to other programs. In addition, 4.4% reported no intention to quit and 8.5% were not interested in participating in a SC program. Of the 3063 screen-eligible individuals who were smoking at baseline low-dose computed tomography scan, 2736 (89.3%) attended in-hospital SC counseling. The quit rate at 1 year was 15.5% (95% confidence interval: 13.4%- 17.7%; range: 10.5%-20.0%). Improvements were also observed in Heaviness of Smoking Index (p < 0.0001), number of cigarettes smoked per day (p < 0.0001), time to first cigarette (p < 0.0001), and number of quit attempts (p < 0.001). Of those who reported having quit within the previous 6 months, 6.3% had resumed smoking at 1 year. Furthermore, 92.7% of the respondents reported satisfaction with the hospital-based SC program.Conclusions: On the basis of these observations, the Ontario Lung Screening Program continues to recruit through primary care providers, to assess risk for eligibility using trained navigators, and to use an opt-out approach to referral for cessation services. In addition, initial in-hospital SC support and intensive follow-on cessation interventions will be provided to the extent possible.(c) 2023 International Association for the Study of Lung Cancer. Published by Elsevier Inc. All rights reserved.
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LDCT screening,Lung cancer,Smoking cessation,Triage criteria
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要点】:本研究在加拿大多伦多的低剂量计算机断层扫描肺癌筛查项目中整合了戒烟服务,提高了戒烟率及改善了吸烟相关指标,证明了整合戒烟服务的有效性。

方法】:通过评估接受戒烟转诊率、参与戒烟会话的当前吸烟者比例、1年戒烟率、戒烟尝试次数的变化、吸烟严重度指数变化以及戒烟后复吸率,来评估整合戒烟服务的影响。

实验】:研究共招募了7768名个体,其中4463名当前吸烟者被评估风险并被转诊至戒烟服务,最终3063名符合筛查条件的吸烟者在基线低剂量计算机断层扫描后参与了医院内戒烟咨询。使用的数据集名称未在文中明确提及。结果显示,1年戒烟率为15.5%,吸烟严重度指数等指标有所改善,6个月内戒烟者在1年内复吸率为6.3%,92.7%的受访者对医院戒烟项目表示满意。