Literature DB >> 35620350

Associations Between Physical Activity, Smoking Status, and Airflow Obstruction and Self-Reported COPD: A Population-Based Study.

Yao-Kuang Wu1,2, Wen-Lin Su1,2, Mei-Chen Yang1,2, Sin-Yi Chen1, Chih-Wei Wu1, Chou-Chin Lan1,2.   

Abstract

Background: Chronic obstructive pulmonary disease (COPD) is a preventable and treatable disease with an increased mortality rate in recent years, mainly caused by exposure to tobacco smoke. Regular physical activity is thought to diminish the risk of COPD exacerbation, while very few studies investigate the interaction between smoking and physical activity on COPD development. This study aims to investigate the association between smoking status, physical activity and prevalent COPD.
Methods: This study analyzed data of adults 20 to 79 years old from the National Health and Nutrition Examination Survey (NHANES) 2007-2012.
Results: A total of 6404 participants aged 20-79 were included and divided into four groups by their physical activity levels and smoking status. Amongst, 2819 (43.7%) were physically active non-smokers, 957 (14.8%) were physically inactive non-smokers, 1952 (30.3%) were physically active smokers, and 717 (11.1%) were physically inactive smokers. Prevalence of airflow obstruction were 5.7%, 7.1%, 17.7% and 18.6%, respectively. After adjustment, physically active smokers (aOR=2.71, 95% CI=1.94-3.80) and physically inactive smokers (aOR=2.70, 95% CI=1.78-4.09) but not physically active non-smokers were more likely to have airflow obstruction than physically active non-smokers. These associations were similar among most subgroups by age, sex, or BMI. Among smokers, being physically inactive was not significantly associated with a greater chance for prevalent airflow obstruction than being physically active.
Conclusion: Smokers, regardless of their physical activity level, are more likely to have airflow obstruction as compared with physically active non-smokers. Within smokers, being physically inactive poses no excess chance to be airflow obstructed. The findings indicate that physical activity level seem not altering the relationship between smoking and airflow obstruction.
© 2022 Wu et al.

Entities:  

Keywords:  airflow obstruction; chronic obstructive pulmonary disease; physical activity; smoking

Mesh:

Year:  2022        PMID: 35620350      PMCID: PMC9128642          DOI: 10.2147/COPD.S337683

Source DB:  PubMed          Journal:  Int J Chron Obstruct Pulmon Dis        ISSN: 1176-9106


Introduction

Chronic obstructive pulmonary disease (COPD) is a common preventable and treatable disease, characterized by persistent airflow limitation that is usually progressive and associated with an aggravated chronic inflammatory response in the airways and the lung to noxious particles or gases.1 The main symptoms of COPD are breathlessness, cough, and sputum production. There are 251 million cases of COPD globally.2 An estimate by the Global Burden of Diseases Study (GBD) 2017 reports, 3.2 million people died from COPD worldwide in 2015, an increase of 11.6% compared with 1990.3 The goals of COPD assessment are to determine the level of airflow limitation, its impact on the patient’s health status, and the risk of future events (such as exacerbations, hospital admissions, or death). Airflow limitation severity in COPD can be defined and classified according to the FEV1 and FEV1/FVC ratios.4 The primary cause of COPD is exposure to tobacco smoke (either active smoking or second-hand smoke).5–7 Smokers often continue to cough, experience chest tightness and usually have a higher mortality rate.8 Some studies suggest that regular physical activity reduces the risk of COPD exacerbation.9,10 Smoking and physical inactivity are known risk factors for many chronic lung diseases, and of course, COPD is no exception.11–13 However, evidence on the interaction between smoking status and physical activity level in association with COPD and airflow obstruction are relatively scarce. This study aims to investigate the association between smoking status, physical activity level, and prevalent airflow obstruction and COPD, using data from the National Health and Nutrition Examination Survey (NHANES) of the US.

Methods

Data Source

Data of participants from the National Health and Nutrition Examination Survey (NHANES) 2007–2012 were used for this cross-sectional analysis. The NHANES program initiated since the early 1960s and has been guided as a series of surveys focusing on different health topics. The selected samples for the NHANES survey represented the United States population. Further detail information such as background, design, and operation are available on the NHANES website ().

Ethics Statement

Due to de-identification of participants in the NHANES database, and all participants in NHANES have written and signed the informed consent, consistent with and deemed by the National Center for Health Statistics Institutional Review Board (NCHSIRB) (Protocol #98-12), the IRB of the study hospital waived both IRB review and informed consent by the participants for the present study.

Study Subjects

Data of NHANES adult participants 20 to 79 years old with complete data of pre-bronchodilator spirometry were included. Exclusion criteria were: 1) Participants whose data of self-reported physical activity were missing; 2) participants whose data of smoking status were missing; 3) participants whose data of pre-bronchodilator spirometry were missing; 4) participants with end-stage renal disease defined by an eGFR <15 mL/min per 1.73 m2; 5) participants with a history of any malignancy; 6) participants with asthma diagnosed by physician.

Study Variables

Measurement of Airway Obstruction

In this study, airway obstruction was defined by both doctor-diagnosed chronic bronchitis or emphysema, or a FEV1/FVC <70% or FEV1/FVC < the lower 5th percentile (ie, the lower limit of normal, LLN) measured by pre-bronchodilator spirometry. This approach to define airway obstruction was utilized and validated by previous NHANES studies.14 With regard to physician-diagnosed chronic bronchitis or emphysema, participants were asked two questions on emphysema or chronic bronchitis during the in-home interview: “Has a doctor ever told you that you have emphysema?” or “Do you still have chronic bronchitis?”.15

Demographic and Lifestyle Factors

Age, gender, race, education level (college or above; never attend college), and family income (not poor; poor) were extracted from the NHANES data. Data of smoking status, physical activity level, and body mass index (BMI) were collected by trained interviewers, as follows: Smokers were categorized as: Non-smokers: reported never having smoked 100 cigarettes during their lifetime. Current smokers: had smoked ≥ 100 cigarettes and with no intention to quit smoking at the time of the interview. Physical activity: To estimate physical activity level, we summed the product of weekly time spent in each leisure-time activity reported by the participant multiplied by the metabolic equivalent of task (MET) value for that activity yielding a MET-min/week index. One MET is the energy expenditure of 1 kcal/kg body weight per hour. A MET-min/week ≥500 was regarded as physically active, whereas a MET-min/week <500 was regarded as physically inactive.16,17 Body mass index (BMI): This value was calculated during participants’ physical examinations at the NHANES MEC. According to the World Health Organization (WHO) criteria,18 BMI data were classified into four subgroups: underweight, BMI<18.5 kg/m2, normal (BMI = 18.5~24.9 kg/m2), overweight (BMI = 25~29.9 kg/m2), and obese (BMI ≥ 30.0 kg/m2).

Comorbidities

Comorbidities were defined using interviewer-administered questionnaires of NHANES by the question “Have you ever been told by a doctor or other health professional that you had … ?” In the present study, we included diabetes, hypertension sleep apnea, dyslipidemia, cardiovascular disease, and chronic kidney diseases.

Statistical Analysis

All analyses were performed by using SAS survey analysis procedures to generate nationally representative estimates (SAS Institute Inc., Cary, NC, USA). Subject’s characteristics were expressed as unweighted count and weighted percentage for categorical variables, and continuous variables were expressed as mean ± standard error (SE). Differences in means between groups were compared by using SURVEYREG procedure for continuous variables, while Rao-Scott chi-square test was performed to examine the differences in the proportions between groups by using SURVEYFREQ procedure for categorical variables. Univariate and multivariate logistic regression were performed to examine the associations of study variables and the presence of airway obstruction. Variables with p-value < 0.05 in the univariate analysis were considered as potential confounding factors and were entered in the multivariate models. We used SURVEYLOGISTIC to estimate OR and 95% confidence interval (CI) in multivariate analysis. A two-tailed P value < 0.05 was considered significant.

Results

Characteristics of Study Subjects

Figure 1 depicts the flow diagram of cohort selection. Among a total of 30,442 participants whose data were collected in NHANES (2007–2012), 13,387 adults aged 20 to 79 years with complete data of pre-bronchodilator spirometry were identified. After excluding participants with missing information on physical activity level (n=4994), smoking status (n=3), eGFR (n=448), and an eGFR <15 mL/min per 1.73 m2 (n=9), history of malignancy (n=522) and physician-diagnosed asthma (n=966), the final cohort size was 6445.
Figure 1

Flowchart.

Flowchart.

Characteristic of the Study Population

Table 1 shows the characteristics of the study cohort. Using the NHANES sample weight formulae, this analytic sample size was equivalent to a population size of 92,372,486 in the US. The included subjects were categorized into four groups according to their physical activity level and smoking status. Among the 6445 subjects, 2819 (43.7%) were physically active non-smokers, 957 (14.8%) were physically inactive non-smokers, 1952 (30.3%) were physically active smokers, and 717 (11.1%) were physically inactive smokers. The prevalence of airflow obstruction for physically active non-smokers, physically inactive non-smokers, physically active smokers, and physically inactive smokers were 5.7%, 7.1%, 17.7% and 18.6%, respectively, and there were statistically significant differences between the four groups (p<0.001). Mean age of the subjects was 42.7 ± 0.4 years old. In addition, there were significant differences in age, gender, race, education level, BMI, and frequencies of all comorbidities between the four groups (all p<0.001), except for chronic kidney disease (Table 1).
Table 1

Characteristics of Study Population 20–79 Years Old

Study VariablesTotal (n=6445, N=92,372,486)Physical Activity and Smoking StatusP-value
Physically Active Non-Smoker (n=2819)Physically Inactive Non-Smoker (n=957)Physically Active Smoker (n=1952)Physically Inactive Smoker (n=717)
Airflow obstruction678 (11.0)159 (5.7)59 (7.1)328 (17.7)132 (18.6)<0.001
Demography
 Age42.7 ± 0.440.6 ± 0.644.1 ± 0.643.9 ± 0.645.5 ± 0.7<0.001
  20–291422 (23.3)775 (28.0)170 (18.0)369 (21.3)108 (16.5)<0.001
  30–391380 (21.6)619 (22.1)216 (23.5)411 (20.7)134 (19.6)
  40–491262 (22.2)551 (22.7)207 (24.3)379 (20.7)125 (21.9)
  50–591041 (18.3)407 (15.7)146 (18.2)350 (20.6)138 (22.7)
  60–69918 (10.5)333 (8.6)137 (10.5)301 (12.3)147 (13.5)
  70–79422 (4.1)134 (3.0)81 (5.5)142 (4.4)65 (5.7)
 Sex<0.001
  Male3439 (53.0)1414 (51.4)332 (36.8)1299 (62.4)394 (53.2)
  Female3006 (47.0)1405 (48.6)625 (63.2)653 (37.6)323 (46.8)
 Race<0.001
  Non-Hispanic White2720 (68.5)1082 (65.7)345 (63.0)933 (72.3)360 (76.2)
  Non-Hispanic Black1290 (9.9)542 (9.7)206 (11.9)391 (9.3)151 (9.7)
  Hispanic including   Mexican American1747 (13.9)831 (15.4)289 (15.9)464 (11.8)163 (10.9)
  Others688 (7.8)364 (9.2)117 (9.2)164 (6.6)43 (3.3)
 Education level<0.001
  Never attend college4621 (64.0)1808 (53.3)670 (64.2)1549 (74.2)594 (78.8)
  College graduate or   above1820 (36.0)1009 (46.7)286 (35.8)403 (25.8)122 (21.2)
  Missing42101
 Family income0.056
  Poor (PIR<1)1185 (13.0)465 (12.4)155 (10.4)410 (14.5)155 (14.1)
  Not poor (PIR≥1)4746 (87.0)2116 (87.6)709 (89.6)1412 (85.5)509 (85.9)
  Missing5142389313053
 BMI (kg/m2)<0.001
  Underweight (<18.5)114 (1.8)38 (1.6)17 (1.8)41 (2.1)18 (1.8)
  Normal (18.5~24.9)2020 (33.1)928 (34.8)246 (25.6)639 (34.4)207 (31.9)
  Overweight (25~29.9)2260 (35.8)993 (36.4)306 (33.2)722 (36.7)239 (34.0)
  Obese (≥30.0)2051 (29.3)860 (27.1)388 (39.5)550 (26.8)253 (32.4)
Comorbidities
 Diabetes685 (6.8)227 (5.2)144 (10.0)208 (6.8)106 (9.8)<0.001
 Hypertension1877 (25.1)704 (21.2)307 (28.7)604 (27.1)262 (31.0)<0.001
 Dyslipidemia3330 (51.3)1351 (47.7)515 (51.9)1029 (52.9)435 (60.4)<0.001
 Cardiovascular disease288 (3.7)85 (2.6)25 (1.6)128 (6.0)50 (4.8)<0.001
 Chronic kidney disease282 (4.3)103 (3.9)51 (4.2)88 (5.1)40 (3.7)0.374

Abbreviations: BMI, body mass index; PIR, poverty income ratio. Significant values are shown in bold.

Characteristics of Study Population 20–79 Years Old Abbreviations: BMI, body mass index; PIR, poverty income ratio. Significant values are shown in bold.

Associations Between Airflow Obstruction and Study Variables

Univariate and multivariate logistic regressions were conducted to determine the associations between airway obstructions, physical activity and smoking status, and the other study variables. The results are shown in Table 2. In the univariate analysis, physically active smokers (odds ratio [OR]=3.54, 95% CI=2.55–4.91) and physically inactive smokers (OR=3.74, 95% CI=2.57–5.45) but not physically inactive non-smokers (OR=1.25, 95% CI=0.78, 1.99) had significantly greater odds for having airflow obstruction as compared with physically active non-smokers. After adjustment in the multivariate analysis, physically active smokers (aOR=2.71, 95% CI=1.94–3.80) and physically inactive smokers (aOR=2.70, 95% CI=1.78–4.09) were still significantly more likely to have airway obstruction than physically active non-smokers, whereas physically inactive non-smokers were not associated with an increased chance for having airflow obstruction than physically active non-smoker (Table 2).
Table 2

Associations Between Airflow Obstruction and Study Variables

VariablesAirflow Obstruction
UnivariateMultivariate
OR (95% CI)p-valueaOR (95% CI)p-value
Physical activity and smoking status
 Physically active non-smokerReferenceReference
 Physically inactive non-smoker1.25 (0.78, 1.99)0.3451.15 (0.70, 1.88)0.568
 Physically active smoker3.54 (2.55, 4.91)<0.0012.71 (1.94, 3.80)<0.001
 Physically inactive smoker3.74 (2.57, 5.45)<0.0012.70 (1.78, 4.09)<0.001
Demography
 Age
  20–29ReferenceReference
  30–392.32 (1.42, 3.81)<0.0012.62 (1.59, 4.33)<0.001
  40–494.25 (2.37, 7.63)<0.0014.94 (2.72, 8.97)<0.001
  50–599.52 (5.87, 15.44)<0.00110.61 (6.63, 16.97)<0.001
  60–6912.35 (7.36, 20.73)<0.00114.36 (8.57, 24.06)<0.001
  70–7917.21 (10.03, 29.55)<0.00119.43 (11.78, 32.05)<0.001
 Sex
  FemaleReferenceReference
  Male1.65 (1.32, 2.07)<0.0011.88 (1.45, 2.45)<0.001
 Race
  Non-Hispanic WhiteReferenceReference
  Non-Hispanic Black0.61 (0.46, 0.81)<0.0010.64 (0.47, 0.89)0.007
  Hispanic including Mexican American0.25 (0.19, 0.34)<0.0010.33 (0.24, 0.45)<0.001
  Others0.63 (0.42, 0.95)0.0230.70 (0.43, 1.13)0.137
 Education level
  College Graduate or aboveReferenceReference
  Never attend college1.35 (1.07, 1.70)0.0081.43 (1.13, 1.82)0.002
 Family income
  Poor (PIR<1)Reference
  Not poor (PIR≥1)1.43 (0.99, 2.08)0.051
 BMI (kg/m2)
  Underweight (<18.5)1.86 (1.00, 3.44)0.0442.06 (1.08, 3.93)0.025
  Normal (18.5~24.9)ReferenceReference
  Overweight (25~29.9)0.90 (0.68, 1.18)0.4200.65 (0.48, 0.88)0.004
  Obese (≥30.0)0.74 (0.56, 0.98)0.0310.54 (0.37, 0.79)<0.001
Comorbidities
 Diabetes1.46 (1.08, 1.98)0.0120.95 (0.68, 1.33)0.759
 Hypertension1.97 (1.62, 2.41)<0.0011.03 (0.81, 1.32)0.787
 Dyslipidemia1.67 (1.28, 2.18)<0.0010.89 (0.66, 1.21)0.457
 Cardiovascular disease2.62 (1.79, 3.84)<0.0010.96 (0.59, 1.54)0.849
 Chronic kidney disease2.05 (1.43, 2.96)<0.0010.99 (0.70, 1.41)0.970

Note: Significant values are shown in bold.

Abbreviations: aOR, adjusted odds ratios; BMI, body mass index; CI, confidence interval; OR, odds ratio; PIR, poverty income ratio.

Associations Between Airflow Obstruction and Study Variables Note: Significant values are shown in bold. Abbreviations: aOR, adjusted odds ratios; BMI, body mass index; CI, confidence interval; OR, odds ratio; PIR, poverty income ratio.

Associations Between Airflow Obstruction and Study Variables in Smokers

A subgroup analysis upon smokers was performed, and the results are summarized in Table 3. The odds for airway obstruction among physically inactive smokers comparing with physically active ones was not significant in either univariate or multivariate analysis (OR=1.06, 95% CI=0.79–1.41, aOR=0.96, 95% CI=0.70–1.31).
Table 3

Associations Between Study Variables in Smokers

VariableAirflow Obstruction
UnivariateMultivariate
OR (95% CI)p-valueaOR (95% CI)p-value
Physical activity
  Physically activeReferenceReference
  Physically inactive1.06 (0.79, 1.41)0.7030.96 (0.70, 1.31)0.804
Demography
 Age
  20–29ReferenceReference
  30–391.79 (0.84, 3.78)0.1192.13 (1.02, 4.45)0.039
  40–493.88 (1.79, 8.40)<0.0014.99 (2.27, 11.00)<0.001
  50–598.57 (4.50, 16.31)<0.00111.43 (6.08, 21.48)<0.001
  60–6911.24 (5.89, 21.48)<0.00116.59 (8.67, 31.75)<0.001
  70–7913.71 (6.26, 30.01)<0.00118.31 (8.97, 37.39)<0.001
 Sex
  FemaleReferenceReference
  Male1.41 (1.02, 1.96)0.0351.90 (1.30, 2.78)<0.001
 Race
  Non-Hispanic WhiteReferenceReference
  Non-Hispanic Black0.60 (0.43, 0.86)0.0040.50 (0.33, 0.74)<0.001
  Hispanic including Mexican American0.22 (0.15, 0.32)<0.0010.24 (0.16, 0.35)<0.001
  Others0.74 (0.42, 1.28)0.2700.55 (0.29, 1.02)0.050
 Education level
  College graduate or aboveReferenceReference
  Never attend college1.26 (0.90, 1.76)0.1621.81 (1.24, 2.63)0.001
 Family income
  Poor (PIR<1)Reference
  Not poor (PIR≥1)1.41 (0.93, 2.12)0.095
 BMI (kg/m2)
  Underweight (<18.5)2.14 (1.08, 4.22)0.0252.53 (1.15, 5.57)0.018
  Normal (18.5~24.9)ReferenceReference
  Overweight (25~29.9)0.77 (0.59, 1.01)0.0520.57 (0.40, 0.82)0.002
  Obese (≥30.0)0.70 (0.47, 1.05)0.0750.47 (0.29, 0.77)0.002
Comorbidities
 Diabetes1.68 (1.12, 2.53)0.0111.30 (0.86, 1.98)0.198
 Hypertension1.79 (1.37, 2.33)<0.0010.99 (0.71, 1.37)0.944
 Dyslipidemia1.57 (1.14, 2.15)0.0040.91 (0.62, 1.33)0.615
 Cardiovascular disease2.08 (1.38, 3.14)<0.0010.92 (0.56, 1.50)0.722
 Chronic kidney disease1.47 (0.80, 2.70)0.2050.78 (0.42, 1.43)0.403
Associations Between Study Variables in Smokers

Associations Between Physical Activity, Smoking Status, and Airflow Obstruction Stratified by Age, Sex and BMI

In stratified analyses, similarly, physically active smokers and physically inactive smokers had significantly greater OR for airflow obstruction than that of physically active non-smokers regardless of age <60 or ≥60, male or female sex, and with overweight/obese or not after adjustments. Physically inactive non-smoker had a significantly greater chance for having airflow obstruction than physically active non-smoker only among subjects with a normal BMI, but not among other subgroups (aOR=2.46, 95% CI=1.20–5.05) (Table 4).
Table 4

Associations Between Physical Activity and Smoking Status and Airflow Obstruction Stratified by Age, Sex, and BMI

SubgroupPhysical Activity and Smoking StatusAirflow Obstruction
UnivariateMultivariate
OR (95% CI)p-valueaOR (95% CI)p-value
Age
<60Physically active non-smokerReferenceReference
Physically inactive non-smoker1.10 (0.64, 1.91)0.7151.19 (0.66, 2.13)0.552
Physically active smoker3.38 (2.28, 5.00)<0.0012.85 (1.92, 4.22)<0.001
Physically inactive smoker3.40 (2.22, 5.21)<0.0012.79 (1.77, 4.41)<0.001
≥60Physically active non-smokerReferenceReference
Physically inactive non-smoker1.29 (0.67, 2.46)0.4361.41 (0.72, 2.73)0.301
Physically active smoker3.41 (1.97, 5.91)<0.0013.06 (1.77, 5.28)<0.001
Physically inactive smoker3.58 (1.86, 6.90)<0.0013.56 (1.84, 6.88)<0.001
Sex
MalePhysically active non-smokerReferenceReference
Physically inactive non-smoker1.65 (0.95, 2.85)0.0671.28 (0.71, 2.30)0.395
Physically active smoker3.39 (2.35, 4.90)<0.0012.65 (1.84, 3.83)<0.001
Physically inactive smoker4.00 (2.63, 6.08)<0.0012.60 (1.70, 3.98)<0.001
FemalePhysically active non-smokerReferenceReference
Physically inactive non-smoker1.06 (0.57, 1.94)0.8601.00 (0.49, 2.03)0.993
Physically active smoker3.51 (2.08, 5.95)<0.0012.73 (1.60, 4.66)<0.001
Physically inactive smoker3.38 (1.70, 6.71)<0.0012.75 (1.35, 5.60)0.004
BMI (kg/m2)
Normal weightPhysically active non-smokerReferenceReference
Physically inactive non-smoker2.62 (1.31, 5.23)0.0052.46 (1.20, 5.05)0.012
Physically active smoker5.52 (3.75, 8.12)<0.0013.70 (2.48, 5.53)<0.001
Physically inactive smoker4.79 (2.53, 9.06)<0.0012.99 (1.47, 6.10)0.002
Overweight and ObesePhysically active non-smokerReferenceReference
Physically inactive non-smoker0.84 (0.48, 1.47)0.5360.75 (0.42, 1.36)0.338
Physically active smoker2.71 (1.73, 4.25)<0.0012.22 (1.40, 3.53)<0.001
Physically inactive smoker3.09 (1.89, 5.06)<0.0012.35 (1.39, 3.97)0.001

Note: Significant values are shown in bold.

Abbreviations: aOR, adjusted odds ratios; BMI, body mass index; CI, confidence interval; OR, odds ratio.

Associations Between Physical Activity and Smoking Status and Airflow Obstruction Stratified by Age, Sex, and BMI Note: Significant values are shown in bold. Abbreviations: aOR, adjusted odds ratios; BMI, body mass index; CI, confidence interval; OR, odds ratio.

Discussion

The present cross-sectional study queried the interaction between physical activity level and smoking status in association with prevalent airflow obstruction or self-reported COPD. The results suggested that smokers, regardless physically active or not, were about three times more likely to be airflow obstructed than non-smokers with high physical activity. The association remained similar among subjects <60 or ≥60 years, male or female sex, and subjects of normal weight or overweight/obesity. Within smokers, particularly, low physical activity did not pose a greater chance for being airflow obstructed as compared with high physical activity. Previous studies had revealed that physical activity is associated with reduced pulmonary function decline and COPD risk and may achieve the ultimate goal of pulmonary rehabilitation of smokers.19–21 In addition, extreme inactivity aggravated lung inflammation and emphysema among smokers.22 From these findings, it is speculated that higher physical activity might attenuate the risk for lung functional decline or COPD development that posed by smoking. However, there were concerns that the protective effect of high physical activity on lung function levels among active smokers suggested in previous longitudinal studies is due to a reverse causation.21,23 A previous study suggested a bi-directional causation and support a true protective effect of physical activity on lung function in smokers, after accounting for reverse causation and time-dependent confounding.24 In addition, a prior prospective study that included 2966 initially healthy participants from English Longitudinal Study of Ageing reported that remaining physically active or becoming active in older age is beneficial in lung function and is associated with reduced odds of abnormal lung function.25 Another large-scale study using data from the Canadian Longitudinal Study on Aging suggested concluded that replacing sitting time with physical activity leads to improvements in lung function among adults with an obstructive lung disease, as well as among those without a respiratory disease26. Taking together, these studies have indicated a protective effect of higher physical activity on lung function both in healthy subjects and subjects with COPD, smokers and non-smokers. In contrast, in the present cross-sectional study, we found that the chance for having airflow obstruction among smokers was similar between low or high physical activity, doubting the protective effect reported in the medical literature. In the stratified analyses, we have compared different physical activity level in combinations with different smoking status on the odds for airflow obstruction. Furthermore, in non-smokers, no significant different chance for airflow obstruction was observed when comparing low to high physical activity among different age or sex. However, in non-smokers, subjects with physically activity levels did have significant different chance for airflow obstruction in those of normal BMI. Future longitudinal studies are warranted to confirm this interesting finding. Nevertheless, the present study has several limitations. Firstly, the analysis was of cross-sectional design, thus causal inferences cannot be made. Secondly, although spirometry data were utilized, part of the cases were identified upon individual’s answers to the questionnaires, which inaccurate reporting or recall bias might exist. Information of pack-year of cigarette smoking was not identified and analyzed. Physical activity level (MET index) was calculated from the subjective response to the questionnaires on leisure time activity, not measured by accelerometry, which also might contain information bias. Lastly, there might have been unknown sociodemographic confounders not included in the NHANES dataset.

Conclusion

Smokers, regardless of their physical activity level, are more likely to have airflow obstruction than physically active non-smokers. Within smokers, being physically inactive poses no excess chance to be airflow obstructed. The findings indicate that physical activity level seem not altering the relationship between smoking and airflow obstruction in most cases.
  22 in total

1.  Regular physical activity modifies smoking-related lung function decline and reduces risk of chronic obstructive pulmonary disease: a population-based cohort study.

Authors:  Judith Garcia-Aymerich; Peter Lange; Marta Benet; Peter Schnohr; Josep M Antó
Journal:  Am J Respir Crit Care Med       Date:  2006-12-07       Impact factor: 21.405

Review 2.  Global Burden of Chronic Respiratory Diseases.

Authors:  Giovanni Viegi; Sara Maio; Salvatore Fasola; Sandra Baldacci
Journal:  J Aerosol Med Pulm Drug Deliv       Date:  2020-05-18       Impact factor: 2.849

Review 3.  Exacerbations of COPD.

Authors:  Christian Viniol; Claus F Vogelmeier
Journal:  Eur Respir Rev       Date:  2018-03-14

4.  Worldwide burden of disease from exposure to second-hand smoke: a retrospective analysis of data from 192 countries.

Authors:  Mattias Oberg; Maritta S Jaakkola; Alistair Woodward; Armando Peruga; Annette Prüss-Ustün
Journal:  Lancet       Date:  2011-01-08       Impact factor: 79.321

5.  Classification of Airflow Limitation Based on z-Score Underestimates Mortality in Patients with Chronic Obstructive Pulmonary Disease.

Authors:  Elena Tejero; Eva Prats; Raquel Casitas; Raúl Galera; Paloma Pardo; Adelaida Gavilán; Elisabet Martínez-Cerón; Carolina Cubillos-Zapata; Luis Del Peso; Francisco García-Río
Journal:  Am J Respir Crit Care Med       Date:  2017-08-01       Impact factor: 21.405

Review 6.  Chronic obstructive pulmonary disease and comorbidities.

Authors:  Marc Decramer; Wim Janssens
Journal:  Lancet Respir Med       Date:  2013-01-14       Impact factor: 30.700

7.  Years of life gained due to leisure-time physical activity in the U.S.

Authors:  Ian Janssen; Valerie Carson; I-Min Lee; Peter T Katzmarzyk; Steven N Blair
Journal:  Am J Prev Med       Date:  2013-01       Impact factor: 5.043

Review 8.  Tobacco smoking: the leading cause of preventable disease worldwide.

Authors:  Jonathan M Samet
Journal:  Thorac Surg Clin       Date:  2013-02-13       Impact factor: 1.750

9.  Leisure-time vigorous physical activity is associated with better lung function: the prospective ECRHS study.

Authors:  Elaine Fuertes; Anne-Elie Carsin; Josep M Antó; Roberto Bono; Angelo Guido Corsico; Pascal Demoly; Thorarinn Gislason; José-Antonio Gullón; Christer Janson; Deborah Jarvis; Joachim Heinrich; Mathias Holm; Bénédicte Leynaert; Alessandro Marcon; Jesús Martinez-Moratalla; Dennis Nowak; Silvia Pascual Erquicia; Nicole M Probst-Hensch; Chantal Raherison; Wasif Raza; Francisco Gómez Real; Melissa Russell; José Luis Sánchez-Ramos; Joost Weyler; Judith Garcia Aymerich
Journal:  Thorax       Date:  2018-01-06       Impact factor: 9.139

Review 10.  Efficacy of supervised maintenance exercise following pulmonary rehabilitation on health care use: a systematic review and meta-analysis.

Authors:  Alex R Jenkins; Holly Gowler; Ffion Curtis; Neil S Holden; Christopher Bridle; Arwel W Jones
Journal:  Int J Chron Obstruct Pulmon Dis       Date:  2018-01-10
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