| Literature DB >> 32933076 |
Javier Perez-Garcia1, José M Hernández-Pérez2,3, Ruperto González-Pérez4,5, Olaia Sardón6,7, Elena Martin-Gonzalez1, Antonio Espuela-Ortiz1, Elena Mederos-Luis4, Ariel Callero8, Esther Herrera-Luis1, Paula Corcuera6, Inmaculada Sánchez-Machín4, Paloma Poza-Guedes4,5, Luis Manuel González García3,9, Purificación Ramírez-Martín2, Lorenzo Pérez-Negrín2, Hemily Izaguirre-Flores10, Javier Barrios-Recio8, Eva Pérez-Rodríguez8, Julia Alcoba-Florez11, José A Cañas12,13, José M Rodrigo Muñoz12,13, Victoria Del Pozo12,13, Javier Korta-Murua6,7, Lina I Pérez Méndez13,14, Mariano Hernandez-Ferrer15,16, Jesús Villar13,17, Fabian Lorenzo-Diaz1,16, Maria Pino-Yanes1,13,18.
Abstract
Asthma exacerbations are a major contributor to the global disease burden, but no significant predictive biomarkers are known. The Genomics and Metagenomics of Asthma Severity (GEMAS) study aims to assess the role of genomics and the microbiome in severe asthma exacerbations. Here, we present the design of GEMAS and the characteristics of patients recruited from March 2018 to March 2020. Different biological samples and demographic and clinical variables were collected from asthma patients recruited by allergy and pulmonary medicine units in several hospitals from Spain. Cases and controls were defined by the presence/absence of severe asthma exacerbations in the past year (oral corticosteroid use, emergency room visits, and/or asthma-related hospitalizations). A total of 137 cases and 120 controls were recruited. After stratifying by recruitment location (i.e., Canary Islands and Basque Country), cases and controls did not differ for most demographic and clinical variables (p > 0.05). However, cases showed a higher proportion of characteristics inherent to asthma exacerbations (impaired lung function, severe disease, uncontrolled asthma, gastroesophageal reflux, and use of asthma medications) compared to controls (p < 0.05). Similar results were found after stratification by recruitment unit. Thereby, asthma patients enrolled in GEMAS are balanced for potential confounders and have clinical characteristics that support the phenotype definition. GEMAS will improve the knowledge of potential biomarkers of asthma exacerbations.Entities:
Keywords: asthma; biomarker; exacerbation; genetics; microbiome; precision medicine; respiratory disease
Year: 2020 PMID: 32933076 PMCID: PMC7563269 DOI: 10.3390/jpm10030123
Source DB: PubMed Journal: J Pers Med ISSN: 2075-4426
Description of patients with asthma recruited in the GEMAS study.
| Canary Islands Patients | Basque Country Patients | |||||||
|---|---|---|---|---|---|---|---|---|
| Sample Size (n) | Controls (n = 102) | Cases (n = 103) | Sample Size (n) | Controls (n = 18) | Cases (n = 34) | |||
| Age (years) | 205 | 50.5 (33.0–62.0) | 46.0 (29.5–59.5) | 0.253 | 52 | 10.0 (9.0–11.8) | 11.0 (9.0–12.8) | 0.507 |
| Gender (female) | 205 | 65 (63.7) | 71 (68.9) | 0.462 | 52 | 4 (22.2) | 16 (47.1) | 0.133 |
| Ever smoker or secondhand smoke exposure a | 202 | 29 (28.7) | 38 (37.6) | 0.232 | 52 | 9 (50.0) | 19 (55.9) | 0.774 |
| Lung function | ||||||||
| pre-FEV1 (% predicted) | 197 | 90.3 (76.1–101.9) | 83.4 (69.2–92.6) |
| 48 | 95.8 (89.2–102.3) | 99.4 (89.4–106.4) | 0.455 |
| pre-FEV1 (z-score) | 197 | −0.8 (1.3) | −1.3 (1.3) |
| 48 | −0.3 (0.8) | −0.1 (1.2) | 0.415 |
| pre-FVC (% predicted) | 196 | 94.2 (81.3–102.6) | 87.7 (79.3–96.5) |
| 48 | 102.2 (92.9–108.3) | 104.4 (92.1–109.9) | 0.579 |
| pre-FVC (z-score) | 196 | −0.5 (1.1) | −0.9 (1.1) |
| 48 | 0.0 (0.8) | 0.2 (1.0) | 0.511 |
| pre-FEV1/FVC (%) | 196 | 79.1 (72.4–83.5) | 75.9 (68.3–83.2) | 0.138 | 48 | 83.9 (79.2–86.9) | 83.8 (80.4–89.2) | 0.429 |
| BDR (%) | 71 | 4.7 (1.8–10.5) | 9.0 (3.1–15.0) | 0.166 | 48 | 3.4 (1.8–5.3) | 2.4 (−0.5–3.6) | 0.344 |
| FeNO (ppb) | NA | NA | NA | NA | 48 | 15.0 (9.0–39.7) | 14.9 (8.6–28.1) | 0.491 |
| Total IgE levels (UI/mL) | 187 | 149.8 (42.1–434.5) | 125.7 (39.3–449.3) | 0.641 | 17 | 902.5 (287.5–2402.5) | 450.0 (172.5–635.5) | 0.216 |
| Absolute eosinophil count (cells/µL) | 192 | 300.0 (200.0–500.0) | 300.0 (100.0–500.0) | 0.209 | 15 | 750.0 (467.5–1027.5) | 500.0 (425.0–710.0) | 0.412 |
| Eosinophil percentage (%) | 186 | 4.3 (2.6–6.8) | 3.7 (1.5–7.0) | 0.190 | 10 | 5.1 (5.0–11.3) | 6.0 (3.8–8.7) | 0.933 |
| Comorbidities | 52 | |||||||
| Otorhinolaryngology disease | 202 | 24 (23.8) | 29 (28.7) | 0.523 | 51 | 2 (11.8) | 5 (14.7) | 1.000 |
| Gastroesophageal reflux | 203 | 16 (15.7) | 33 (32.7) |
| 52 | 1 (5.6) | 0 (0) | 0.346 |
| Sleep apnea | 202 | 15 (15.0) | 12 (11.8) | 0.540 | 52 | 1 (5.6) | 1 (2.9) | 1.000 |
| Obesity | 197 | 37 (36.6) | 33 (34.4) | 0.768 | 49 | 3 (17.6) | 4 (12.5) | 0.681 |
| Atopy | 179 | 69 (76.7) | 70 (78.7) | 0.858 | 50 | 14 (82.4) | 26 (78.8) | 1.000 |
| Other allergic phenotypes | 202 | 72 (70.6) | 74 (74.0) | 0.639 | 52 | 15 (83.3) | 28 (82.4) | 1.000 |
| Rhinitis | 202 | 65 (63.7) | 67 (67.0) | 0.659 | 52 | 10 (55.6) | 23 (67.6) | 0.546 |
| Dermatitis | 202 | 18 (17.6) | 20 (20.0) | 0.721 | 52 | 6 (33.3) | 9 (26.5) | 0.749 |
| Drug allergy | 202 | 17 (16.7) | 22 (22.0) | 0.376 | 52 | 1 (5.6) | 0 (0) | 0.346 |
| Food allergy | 202 | 7 (6.9) | 12 (12.0) | 0.236 | 52 | 6 (33.3) | 5 (14.7) | 0.159 |
| Age of asthma onset (years) | 188 | 16.0 (5.0–40.0) | 20.0 (6.0–44.8) | 0.572 | 48 | 2.5 (1.8–4.8) | 2.3 (1.0–4.0) | 0.423 |
| Family history | ||||||||
| Allergy | 205 | 70 (68.6) | 71 (68.9) | 1.000 | 52 | 15 (83.3) | 27 (79.4) | 1.000 |
| Asthma | 205 | 44 (43.1) | 46 (44.7) | 0.888 | 52 | 11 (61.1) | 18 (52.9) | 0.770 |
| Asthma exacerbations | 205 | 52 | ||||||
| OCS use | 205 | 0 (0) | 70 (68.0) | NA | 52 | 0 (0) | 34 (100) | NA |
| ER visits | 205 | 0 (0) | 93 (90.3) | NA | 52 | 0 (0) | 20 (58.8) | NA |
| Hospitalizations | 205 | 0 (0) | 20 (19.4) | NA | 52 | 0 (0) | 5 (14.7) | NA |
| Asthma severity | 200 | 52 | ||||||
| Mild | 8 (7.9) | 0 (0) |
| 3 (16.7) | 1 (2.9) | 0.113 | ||
| Moderate | 9 (8.9) | 4 (4.0) |
| 11 (61.1) | 1 (2.9) |
| ||
| Severe | 84 (83.2) | 95 (96) |
| 4 (22.2) | 32 (94.1) |
| ||
| Asthma control | 191 | 48 | ||||||
| Well controlled | 55 (56.1) | 26 (28.0) |
| 14 (82.4) | 26 (83.9) | 1.000 | ||
| Partially controlled | 29 (29.6) | 27 (29.0) | 1.000 | 3 (17.6) | 2 (6.5) | 0.331 | ||
| Poorly controlled | 14 (14.3) | 40 (43.0) |
| 0 (0) | 3 (9.7) | 0.543 | ||
| Pharmacological treatment | ||||||||
| SABA | 205 | 47 (46.1) | 79 (77.5) |
| 52 | 13 (72.2) | 31 (91.2) | 0.108 |
| ICS | 205 | 95 (93.1) | 103 (100) |
| 52 | 18 (100) | 34 (100) | NA |
| LABA | 205 | 90 (88.2) | 101 (98.1) |
| 52 | 11 (61.1) | 26 (76.5) | 0.337 |
| LTRA | 205 | 50 (49.0) | 63 (61.8) | 0.091 | 51 | 0 (0) | 1 (3.0) | 1.000 |
| OCS | 204 | 7 (6.9) | 51 (50.5) |
| 52 | 1 (5.6) | 32 (94.1) |
|
| SAMA | 205 | 19 (18.6) | 42 (41.2) |
| 52 | 0 (0) | 0 (0) | NA |
| LAMA | 205 | 25 (24.5) | 31 (30.4) | 0.433 | 51 | 0 (0) | 0 (0) | NA |
| Theophylline | 205 | 0 (0) | 9 (8.8) |
| 52 | 0 (0) | 0 (0) | NA |
| Antihistamines | 205 | 58 (56.9) | 74 (72.5) |
| 52 | 3 (16.7) | 14 (41.2) | 0.120 |
| Azithromycin | 205 | 5 (4.9) | 15 (14.7) |
| 52 | 1 (5.6) | 10 (29.4) | 0.073 |
| Biological therapies | 205 | 14 (13.7) | 16 (15.7) | 0.844 | 52 | 0 (0) | 1 (2.9) | 1.000 |
| Immunotherapy | 204 | 21 (20.6) | 17 (16.8) | 0.590 | 51 | 0 (0) | 0 (0) | NA |
| Antibiotics | 205 | 18 (17.8) | 45 (44.1) |
| 52 | 1 (5.6) | 6 (17.6) | 0.399 |
| Medication adherence | 203 | 25.0 (23.0–25.0) | 25.0 (23.0–25.0) | 0.121 | 52 | 24.0 (24.0–25.0) | 24.0 (22.3–25.0) |
|
| Home environment (rural) | 204 | 52 (51.0) | 60 (58.8) | 0.325 | 52 | 6 (33.3) | 4 (11.8) | 0.076 |
| Household pets | 201 | 48 (48.5) | 49 (48.0) | 1.000 | 52 | 1 (5.6) | 9 (26.5) | 0.136 |
| Education level a | 204 | 51 | ||||||
| No schooling completed | 2 (2.0) | 1 (1.0) | 1.000 | 0 (0) | 0 (0) | NA | ||
| Lower secondary education | 40 (39.2) | 39 (38.2) | 1.000 | 3 (17.6) | 7 (20.6) | 1.000 | ||
| Higher secondary education | 37 (36.3) | 41 (40.2) | 0.666 | 8 (47.1) | 9 (26.5) | 0.208 | ||
| Higher education | 23 (22.5) | 21 (20.6) | 0.865 | 6 (35.3) | 18 (52.9) | 0.372 | ||
a Data referred to the parents in case of children from the Basque Country. Descriptives are represented by the mean (standard deviation) and the median (interquartile range) values for continuous variables with a normal and non-normal distribution, respectively, and the count (proportion) for categorical variables. Differences between groups were evaluated using the t-test and the Mann–Whitney U-test for continuous variables with normal and non-normal distribution, respectively, and Fisher’s exact test for categorical variables. Statistically significant differences are indicated in boldface (p < 0.05). Abbreviations: FEV1: Forced expiratory volume in the first second; FVC: Forced vital capacity; BDR: Bronchodilator response; FeNO: Fraction of exhaled nitric oxide; IgE: Immunoglobulin E; OCS: Oral corticosteroids; ER: Emergency room; SABA: Short-acting beta agonists; ICS: Inhaled corticosteroids; LABA: Long-acting beta agonists; LTRA: Leukotriene receptor antagonists; SAMA: Short-acting muscarinic antagonists; LAMA: Long-acting muscarinic antagonists; NA: Not applicable.