| Literature DB >> 36030233 |
Dinah Jane Lope1, Haydar Demirhan2, Anil Dolgun1.
Abstract
BACKGROUND: Measuring health inequality is essential to ensure that everyone has equal accessibility to health care. Studies in the past have continuously presented and showed areas or groups of people affected by various inequality in accessing the health resources and services to help improve this matter. Alongside, disease prevention is as important to minimise the disease burden and improve health and quality of life. These aspects are interlinked and greatly contributes to one's health.Entities:
Keywords: Bayesian model averaging; Bayesian statistics; Case detection; Gini coefficient; Incidence; Influenza; Lorenz curve
Mesh:
Year: 2022 PMID: 36030233 PMCID: PMC9419354 DOI: 10.1186/s12939-022-01713-5
Source DB: PubMed Journal: Int J Equity Health ISSN: 1475-9276
Fig. 1Distribution of Influenza Notifications 2013-2016. Each line on the right panel corresponds to an LGA
Fig. 2Exploratory analysis of the raw and transformed covariates
Fig. 3Correlation matrix of the incidence covariates. Influenza counts are divided by 100 for plotting purposes. *: P-value <0.05, **: P-value <0.01, ***: P-value <0.001
Fig. 1024 Candidate Models. Here f(t)=α5t+α6t2
Fig. 11Model Diagram
Fig. 12Bayesian Model Averaging (BMA)
Fig. 4Distribution of GP and GP clinic in Victoria 2013-2016
Fig. 5Posterior model probabilities
5 Models streamlined during model selection
| Model No. | Combination of | |
|---|---|---|
| Model 4 | 0.054 | |
| Model 13 | 0.109 | |
| Model 16 | 0.164 | |
| Model 19 | 0.062 | |
| Model 22 | 0.402 | |
Fig. 6Predictors of incidence and case detection rate
Fig. 7Estimated influenza incidence and notification in Victoria 2013-2016 (per 100,000 population)
Fig. 8Observed and predicted influenza cases (per 100,000 population) 2013-2016
Fig. 9Predictions of under and over-reported influenza cases across the LGAs of Victoria, Australia for 2013-2016