| Literature DB >> 27412347 |
Julian Casciano1, Jerry A Krishnan2, Mary Buatti Small3, Philip O Buck3, Gokul Gopalan3, Chenghui Li4, Robert Kemp5, Zenobia Dotiwala5.
Abstract
BACKGROUND: Asthma is a common chronic condition with an economic burden of almost $56 billion annually in the US. Biologic markers like blood eosinophils, that help predict the risk of exacerbation could help guide more optimal treatment plans and reduce cost. The purpose of this study was to determine whether healthcare resource use and expenditures vary by eosinophil level among patients with asthma.Entities:
Keywords: Economic burden; Elevated eosinophils; Severe asthma
Mesh:
Year: 2016 PMID: 27412347 PMCID: PMC4944449 DOI: 10.1186/s12890-016-0263-8
Source DB: PubMed Journal: BMC Pulm Med ISSN: 1471-2466 Impact factor: 3.317
Definition of severity levels based on medication use
| Severity level | Medications |
|---|---|
| Mild | •Low dose ICS or |
| •Cromolyn, LTRA, nedocromil, or theophylline | |
| Moderate | •Low-dose ICS + LABA OR Medium-dose ICS OR Medium-dose ICS + LABA, or |
| •Low-dose ICS + either LeukoTriene Receptor Antagonist (LTRA),Theophylline, or Zileuton, or | |
| •Medium-dose ICS + either LTRA, Theophylline, or Zileuton | |
| Severe | •High-dose ICS + LABA OR High-dose ICS + LABA + oral corticosteroid,or |
| •High-dose ICS + LABA + _Omalizumab, or High-dose ICS + LABA + oral corticosteroid + Omalizumab |
Demographic and comorbidity distribution- Patients with Severe Asthma
| Patient characteristics | Eosinophil level | P | |
|---|---|---|---|
| Elevated eosinophils ( | Normal eosinophils ( | ||
| N (%) | N (%) | ||
| Gender | 0.953 | ||
| Female | 24 (68.6) | 98 (68.1) | |
| Race | 0.608 | ||
| White | 20 (57.1) | 74 (51.4) | |
| Black | 5 (14.3) | 14 (9.7) | |
| Hispanic | 5 (14.3) | 34 (23.6) | |
| Other/Unknown | 5 (14.3) | 22 (15.3) | |
| Age groups | 0.165 | ||
| 12–17 years | 2 (5.71) | 5 (3.5) | |
| 18–35 years | 8 (22.86) | 18(12.50) | |
| 36–64 years | 16 (45.71) | 92(63.89) | |
| Greater than/equal to 65 years | 9 (25.71) | 29 (20.14) | |
| Top 5 Comorbidities | |||
| Diabetes | 7 (20.0) | 24 (16.7) | 0.640 |
| Cancer/tumor | 3 (8.6) | 7 (4.9) | 0.413 |
| Congestive Heart Failure | 4 (11.4) | 7 (4.9) | 0.229 |
| Cerebrovascular disease | 0 (0.0) | 3 (2.1) | 1 |
| Renal disease | 2 (5.71) | 1 (0.7) | 0.098 |
Fig. 1Mean Per Patient Per Month Utilization and Cost-Overall (n = 2,164)
Proportion of Patients with Resource Utilization during Follow-up
| Overall ( | Patients with severe asthma ( | |||||
|---|---|---|---|---|---|---|
| Resource use | Elevated eosinophils | Normal eosinophils | P value | Elevated eosinophils | Normal eosinophils | P value |
| ( | ( | ( | ( | |||
| Hospital admissions | 73(17) | 214(12) | 0.011 | 10(29) | 12(8) | 0.001 |
| ER visits | 156(36) | 622(36) | 0.874 | 11(31) | 47(33) | 0.891 |
| OP visits | 373(87) | 1536(89) | 0.290 | 34(97) | 134(93) | 0.366 |
Fig. 2Mean Per Patient Per Month Utilization and Cost-Severe Asthma Patients (n = 179)
Fig. 3Magnitude of change in odds of incurring utilization among patients with severe asthma