| Archives of Public Health | |
| Modeling time-to-cure from severe acute malnutrition: application of various parametric frailty models | |
| Akalu Banbeta1  Dinberu Seyoum1  Tefera Belachew2  Belay Birlie1  Yehenew Getachew1  | |
| [1] Department of Statistics, College of Natural Science, Jimma University, Jimma, Ethiopia | |
| [2] Department of Population and Family Health, College of Public Health and Medical Science, Jimma University, Jimma, Ethiopia | |
| 关键词: Accelerated failure time model; Parametric frailty; Severe acute malnutrition; | |
| Others : 1089704 DOI : 10.1186/2049-3258-73-6 |
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| received in 2014-06-30, accepted in 2014-09-09, 发布年份 2015 | |
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【 摘 要 】
Background
In developing countries about 3.5% of children aged 0–5 years are victims of severe acute malnutrition (SAM). Once the morbidity has developed the cure process takes variable period depending on various factors. Knowledge of time-to-cure from SAM will enable health care providers to plan resources and monitor the progress of cases with SAM. The current analysis presents modeling time-to-cure from SAM starting from the day of diagnosis in Wolisso St. Luke Catholic hospital, southwest Ethiopia.
Methods
With the aim of coming up with appropriate survival (time-to-event) model that describes the SAM dataset, various parametric clustered time-to-event (frailty) models were compared. Frailty model, which is an extension of the proportional hazards Cox survival model, was used to analyze time-to-cure from SAM. Kebeles (villages) of the children were considered as the clustering variable in all the models. We used exponential, weibull and log-logistic as baseline hazard functions and the gamma as well as inverse Gaussian for the frailty distributions and then based on AIC criteria, all models were compared for their performance.
Results
The median time-to-cure from SAM cases was 14 days with the maximum of 63 days of which about 83% were cured. The log-logistic model with inverse Gaussian frailty has the minimum AIC value among the models compared. The clustering effect was significant in modeling time-to-cure from SAM. The results showed that age of a child and co-infection were the determinant prognostic factors for SAM, but sex of the child and the type of malnutrition were not significant.
Conclusions
The log-logistic with inverse Gaussian frailty model described the SAM dataset better than other distributions used in this study. There is heterogeneity between the kebeles in the time-to-cure from SAM, indicating that one needs to account for this clustering variable using appropriate clustered time-to-event frailty models.
【 授权许可】
2015 Banbeta et al.; licensee BioMed Central.
【 预 览 】
| Files | Size | Format | View |
|---|---|---|---|
| 20150128010335450.pdf | 322KB | ||
| Figure 5. | 38KB | Image | |
| Figure 4. | 31KB | Image | |
| Figure 3. | 27KB | Image | |
| Figure 2. | 30KB | Image | |
| Figure 1. | 41KB | Image |
【 图 表 】
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