» Articles » PMID: 30477507

Practical Utility of General Practice Data Capture and Spatial Analysis for Understanding COPD and Asthma

Overview
Publisher Biomed Central
Specialty Health Services
Date 2018 Nov 28
PMID 30477507
Citations 6
Authors
Affiliations
Soon will be listed here.
Abstract

Background: General practice-based (GP) healthcare data have promise, when systematically collected, to support estimating local rates of chronic obstructive pulmonary disease (COPD) and asthma, variations in burden of disease, risk factors and comorbid conditions, and disease management and quality of care. The use of GP information systems for health improvement has been limited, however, in the scope and quality of data. This study assessed the practical utility of de-identified clinical databases for estimating local rates of COPD and asthma. We compared COPD and asthma rates to national benchmarks, examined health related risk factors and co-morbidities as correlates of COPD and asthma, and assessed spatial patterns in prevalence estimates at the small-area level.

Methods: Data were extracted from five GP databases in western Adelaide, South Australia, for active patients residing in the region between 2012 and 2014. Prevalence estimates were computed at the statistical area 1 (SA1) spatial unit level using the empirical Bayes estimation approach. Descriptive analyses included summary statistics, spatial indices and mapping of geographic patterns. Bivariate associations were assessed, and disease profiles investigated to ascertain multi-morbidities. Multilevel logistic regression models were fitted, accounting for individual covariates including the number of comorbid conditions to assess the influence of area-level socio-economic status (SES).

Results: For 33,725 active patients, prevalence estimates were 3.4% for COPD and 10.3% for asthma, 0.8% higher and 0.5% lower for COPD and asthma, respectively, against 2014-15 National Health Survey (NHS) benchmarks. Age-specific comparisons showed discrepancies for COPD in the '64 years or less' and 'age 65 and up' age groups, and for asthma in the '15-25 years' and '75 years and up' age groups. Analyses confirmed associations with individual-level factors, co-morbid conditions, and area-level SES. Geographic aggregation was seen for COPD and asthma, with clustering around GP clinics and health care centres. Spatial patterns were inversely related to area-level SES.

Conclusion: GP-based data capture and analysis has a clear potential to support research for improved patient outcomes for COPD and asthma via knowledge of geographic variability and its correlates, and how local prevalence estimates differ from NHS benchmarks for vulnerable age-groups.

Citing Articles

Social deprivation and spatial clustering of childhood asthma in Australia.

Khan J, Lingam R, Owens L, Chen K, Shanthikumar S, Oo S Glob Health Res Policy. 2024; 9(1):22.

PMID: 38910250 PMC: 11194868. DOI: 10.1186/s41256-024-00361-2.


Spatial-temporal distribution patterns and influencing factors analysis of comorbidity prevalence of chronic diseases among middle-aged and elderly people in China: focusing on exposure to ambient fine particulate matter (PM).

Zhang L, Wei L, Fang Y BMC Public Health. 2024; 24(1):550.

PMID: 38383335 PMC: 10882846. DOI: 10.1186/s12889-024-17986-0.


Multimorbidity in the elderly in China based on the China Health and Retirement Longitudinal Study.

Guo X, Zhao B, Chen T, Hao B, Yang T, Xu H PLoS One. 2021; 16(8):e0255908.

PMID: 34352011 PMC: 8341534. DOI: 10.1371/journal.pone.0255908.


Mortality rates due to respiratory tract diseases in Tehran, Iran during 2008-2018: a spatiotemporal, cross-sectional study.

Pishgar E, Fanni Z, Tavakkolinia J, Mohammadi A, Kiani B, Bergquist R BMC Public Health. 2020; 20(1):1414.

PMID: 32943045 PMC: 7495408. DOI: 10.1186/s12889-020-09495-7.


Are changes in depressive symptoms, general health and residential area socio-economic status associated with trajectories of waist circumference and body mass index?.

Niyonsenga T, Carroll S, Coffee N, Taylor A, Daniel M PLoS One. 2020; 15(1):e0227029.

PMID: 31914169 PMC: 6948738. DOI: 10.1371/journal.pone.0227029.


References
1.
Carr W, Zeitel L, Weiss K . Variations in asthma hospitalizations and deaths in New York City. Am J Public Health. 1992; 82(1):59-65. PMC: 1694413. DOI: 10.2105/ajph.82.1.59. View

2.
Lokke A, Ulrik C, Dahl R, Plauborg L, Dollerup J, Kristiansen L . Detection of previously undiagnosed cases of COPD in a high-risk population identified in general practice. COPD. 2012; 9(5):458-65. DOI: 10.3109/15412555.2012.685118. View

3.
Allan D . Catchments of general practice in different countries--a literature review. Int J Health Geogr. 2014; 13:32. PMC: 4150420. DOI: 10.1186/1476-072X-13-32. View

4.
Siu A, Bibbins-Domingo K, C Grossman D, Davidson K, Epling Jr J, Garcia F . Screening for Chronic Obstructive Pulmonary Disease: US Preventive Services Task Force Recommendation Statement. JAMA. 2016; 315(13):1372-7. DOI: 10.1001/jama.2016.2638. View

5.
Cooke G, Valenti L, Glasziou P, Britt H . Common general practice presentations and publication frequency. Aust Fam Physician. 2013; 42(1-2):65-8. View