Observatory of Healthy & Active Living of Spain Active Foundation, Centre for Sport Studies, King Juan Carlos University, Madrid, Spain.
Performance and Health Group, Department of Physical Education and Sport, Faculty of Sports Sciences and Physical Education, University of A Coruna, A Coruña, Spain.
Eur J Public Health. 2022 Nov 29;32(6):894-899. doi: 10.1093/eurpub/ckac116.
The lack of systematic factors affecting physical inactivity (PIA) challenges policymakers to implement evidence-based solutions at a population level. The study utilizes the Eurobarometer to analyse PIA-modifiable variables.
Special Eurobarometer 412 physical activity (PA) data were analysed (n = 18 336), including 40 variables along with the International PA Questionnaire. PIA was used as the dependent variable. Variables considered were alternatives to car, places, reasons and barriers to engaging in PA, memberships to clubs and categorical responses about the agreement extent with the area, provision of activities and local governance statements. Logistic regression was used to identify variables contributing to PIA. Beta values (β), standard errors, 95% confidence intervals, the exponentiation for odds ratio and Cox & Snell and Nagelkerke R2 were indicated.
The resulting model correctly identified 10.7% inactives and 96.9% of actives (R2 of Nagelkerke: 0.153). Variables contributing to the detection of PIA were (P ≤ 0.01): having a disability or an illness, not having friends to do sport with, lacking motivation or interest in and being afraid of injury risk. Additionally, totally agreeing, tend to agree and tend to disagree regarding the extent of local providers offering enough opportunities to be more active also contributed to the model.
The model reported a limited ability to detect modifiable factors affecting PIA, identifying a small percentage of inactive individuals correctly. New questions focused on understanding inactive behaviour are needed to support the European PA public health agenda.
缺乏影响身体活动不足(PIA)的系统因素,这使得政策制定者难以在人群层面实施基于证据的解决方案。本研究利用欧洲民意调查来分析可改变 PIA 的变量。
分析了特殊欧洲民意调查 412 个身体活动(PA)数据(n=18336),包括 40 个变量以及国际 PA 问卷。将 PIA 作为因变量。考虑的变量包括替代汽车的方式、参与 PA 的场所、原因和障碍、俱乐部会员以及对区域、活动提供和地方治理声明的认同程度的分类回答。使用逻辑回归来确定导致 PIA 的变量。给出了β值、标准误差、95%置信区间、优势比的指数和 Cox & Snell 和 Nagelkerke R2。
该模型正确识别了 10.7%的不活跃者和 96.9%的活跃者(Nagelkerke R2:0.153)。导致 PIA 检测的变量有(P≤0.01):残疾或患病、没有一起运动的朋友、缺乏运动动机或兴趣、害怕受伤风险。此外,完全同意、倾向于同意和倾向于不同意关于当地提供者提供足够机会以更活跃的程度也为模型做出了贡献。
报告的模型对检测影响 PIA 的可改变因素的能力有限,正确识别出的不活跃个体比例很小。需要新的问题来关注理解不活跃行为,以支持欧洲 PA 公共卫生议程。