| Literature DB >> 30732605 |
Veronica Cappa1, Alessandro Marcon1, Gianfranco Di Gennaro2, Liliya Chamitava1, Lucia Cazzoletti1, Cristina Bombieri3, Morena Nicolis4, Luigi Perbellini5, Silvia Sembeni4, Roberto de Marco1, Francesco Spelta6, Marcello Ferrari6, Maria Elisabetta Zanolin7.
Abstract
BACKGROUND ANDEntities:
Keywords: Allergy; Asthma; COPD; Clinical epidemiology; Quality of life
Mesh:
Year: 2019 PMID: 30732605 PMCID: PMC6367788 DOI: 10.1186/s12890-019-0796-8
Source DB: PubMed Journal: BMC Pulm Med ISSN: 1471-2466 Impact factor: 3.317
Fig. 1Timeline for the new random sample and the cohorts of the GEIRD study
Characteristics of subjects who did and did not complete the SF-36
| SF-36 | SF-36 | ||
|---|---|---|---|
| Gender (female), n (%) | 520 (51.4%) | 21 (61.8%) | 0.233 |
| Age years, mean (sd) | 43.96 (9.8) | 47.11 (10.4) | 0.047 |
| BMI kg/m2, mean (sd) | 24.8 (4.3) | 24.5(4.2) | 0.488 |
| Education (low), n (%) | 209 (20.7%) | 14 (41.2%) | 0.004 |
| Smoking habits, n(%) | 0.094 | ||
| never smokers | 500 (49.5%) | 12 (35.3%) | |
| past smokers | 277 (27.4%) | 15 (44.1%) | |
| current smokers | 233 (23.7%) | 8 (22.2%) | |
| Non-resp. comorbidities, n (%) | 336 (33.3%) | 9 (26.5%) | 0.403 |
| Cardiac comorbidities, n (%) | 148 (14.7%) | 5 (14.7%) | 0.997 |
| Phenotypesa, n (%) | 0.448 | ||
| controls | 328 (32.4%) | 15 (44.1%) | |
| NAR | 95 (9.4%) | 6 (17.6%) | |
| AR | 163 (16.1%) | 5 (14.7%) | |
| CB | 48 (4.7%) | 1 (2.9%) | |
| PA | 126 (12.4%) | 1 (2.9%) | |
| CA | 224 (22.1%) | 5 (14.7%) | |
| COPD | 28 (2.8%) | 1 (2.9%) | |
aNAR non-allergic rhinitis, AR allergic rhinitis, CB chronic bronchitis, PA past asthma, CA current asthma, COPD chronic obstructive pulmonary disease
Characteristics of casesa and controls who filled-in SF-36
| Controls | NAR | AR | CB | PA | CA | COPD | ||
|---|---|---|---|---|---|---|---|---|
| n (%) | 328 (32.4%) | 95 (9.5%) | 163 (16.1%) | 48 (4.7%) | 126 (12.4%) | 224 (22.1%) | 28 (2.8%) | |
| Gender (female), n (%) | 168 (51.2) | 58 (61.1) | 79 (48.5) | 26 (54.2) | 73 (57.9) | 109 (48.7) | 7 (25.0) | 0.021 |
| Age years, mean (sd) | 45.3 (9.6) | 44.8 (9.7) | 42.9 (10.7) | 43.8 (9.6) | 43.1 (9.4) | 41.9 (9.4) | 52.2 (8.5) | < 0.001 |
| BMI kg/m2, mean (sd) | 25.0 (4.3) | 24.3 (4.4) | 24.3 (4.0) | 24.8 (4.3) | 24.9 (4.7) | 24.8 (4.2) | 25.8 (3.4) | 0.231 |
| Education (low), n (%) | 78 (23.8) | 24 (25.3) | 25 (15.3) | 18 (37.5) | 15 (12.0) | 39 (17.4) | 10 (35.7) | < 0.001 |
| Smoking habits, n(%) | < 0.001 | |||||||
| never smokers | 172 (52.8) | 34 (35.8) | 96 (58.9) | 22 (45.8) | 67 (53.2) | 99 (44.2) | 10 (35.7) | |
| past smokers | 98 (30.1) | 33 (34.7) | 38 (23.3) | 8 (16.7) | 31 (24.6) | 60 (26.8) | 9 (32.1) | |
| current smokers | 56 (17.2) | 28 (29.8) | 29 (17.8) | 18 (37.5) | 28 (22.2) | 65 (29.0) | 9 (32.1) | |
| Non-resp. comorbidities, n (%) | 74 (22.6) | 45 (47.9) | 55 (33.7) | 20 (41.7) | 47 (37.6) | 81 (36.3) | 14 (50.0) | < 0.001 |
| Cardiac comorbidities, n (%) | 33 (10.2) | 24 (25.2) | 31 (19.0) | 11 (22.9) | 17 (13.6) | 28 (12.5) | 4 (14.3) | 0.010 |
| FEV1% predicted, mean (sd) | 101.9(11.3) | 100.9(12.6) | 100.3 (12.0) | 96.8(10.7) | 98.9(12.4) | 97.0 (12.3) | 78.6 (15.5) | < 0.001 |
aNAR non-allergic rhinitis, AR allergic rhinitis, CB other respiratory condition, PA past asthma, CA current asthma, COPD chronic obstructive pulmonary disease
bDifferences in categorical variables among phenotypes were tested by Pearson Chi-square test; differences in continuous variables among phenotypes were tested using Kruskal-Wallis test
Fig. 2Physical and Mental SF-36 median scores and inter-quartile range by respiratory diseases
Relationshipsa between HRQL (in terms of PCS and MCS), respiratory diseases
| PCS | MCS | |
|---|---|---|
| Coeff. (95%CI) | Coeff. (95%CI) | |
| Respiratory diseasesb (vs | ||
| NAR | 0.1 (−1.4;1.5) | −0.8 (−3.3;1.7) |
| AR | −0.8 (−2.0;0.4) | − 1.5 (− 3.5;0.5) |
| CB |
|
|
| Past asthma | −0.7 (− 2.0;0.6) | 0.7 (− 1.5;2.9) |
| Current asthma |
|
|
| COPD |
|
|
aassessed through quantile regression models (estimating conditional medians of the response variable) considering PCS and MCS as dependent variables and respiratory diseases and characteristics of the sample as independent variables (adjusting for sex, age, BMI, educational level, smoking habits, non-respiratory comorbidities, cardiac comorbidities, study cohort and calendar period). Negative regression coefficients indicate a worsening in HRQL at an increase of the independent variable and vice versa
bNAR non-allergic rhinitis, AR allergic rhinitis, CB chronic bronchitis, PA past asthma, CA current asthma, COPD chronic obstructive pulmonary disease
All the values in bold are statistically significant (p<0.05)