Applying Zero-inflated Mixed Model to School Absenteeism Surveillance in Rural China |
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Authors: | Xiaoxiao Song Tao Tao Qi Zhao Fuqiang Yang Palm Lars Diwan Vinod Hui Yuan Biao Xu |
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Institution: | 1.School of Public Health, Fudan University, Shanghai, China;;2.Jiangxi Provincial Center for Disease Prevention and Control, nanchang, China;;3.Future Position X, Gavle, Sweden;;4.ICHAR, Karolinska Instituet, Stockholm, Sweden |
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Abstract: | ObjectiveTo describe and explore the spatial and temporal variability via ZIMM for absenteeism surveillance in primary school for early detection of infectious disease outbreak in rural China.IntroductionAbsenteeism has great advantages in promoting the early detection of epidemics1. Since August 2011, an integrated syndromic surveillance project (ISSC) has been implemented in China2. Distribution of the absenteeism generally are asymmetry, zero inflation, truncation and non-independence3. For handling these encumbrances, we should apply the Zero-inflated Mixed Model (ZIMM).MethodsData for this study was obtained from the web-based data of ISSC in 62 primary schools in two counties of Jiangxi province, China from April 1th, 2012 to June 30st, 2012. The ZIMM was used to explore: 1)the temporal and spatial variability regarding occurrence and intensity of absenteeism simultaneously, and 2) the heterogeneity among the reporting primary schools by introducing random effects into the intercepts. The analyse was processed in the SAS procedure NLMIXED4.ResultsThe total 4914 absenteeism events were reported in the 62 primary schools in the study period. The rate of zero report was 49.88% (). According to ZIMM, there are fixed and random effect parameters in this model (Open in a separate windowAbsenteeism from Apr. 1st to Jun. 30th 2012Table 1Fixed parameters and variance components estimates for the absenteeism using ZIMM | Logistic regression parameter with occurrence | lognormal regression parameter with intensity |
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parameters | β | Std Err | p value | β | Std Err | p value |
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Fixed parameters | Intercept | −0.733 | 0.262 | 0.005 | 0.718 | 0.039 | 0.000 | county | −0.188 | 0.103 | 0.068 | −0.020 | 0.042 | 0.632 | month | −0.165 | 0.074 | 0.026 | −0.073 | 0.027 | 0.007 | Variance components | Var (Ranndm Effect) | 0.548 | 1.906 | 0.774 | 0.316 | 0.120 | 0.009 | Residual | | 0.120 | 0.119 | 0.313 | Open in a separate windowConclusionsSchool absenteeism data has greater uncertain than many other sources and easier fluctuate by some factors such as holiday, season, family status and geographic distribution. Thus, the spatial and temporal dynamics should be taken into account in controlling fluctuate of absenteeism. Moreover, school absenteeism data are correlated within each school due to repeated measures. Applying the ZIMM, the occurrences and intensity of absenteeism could be evaluated to reduce the bias and improve the prediction precision. The ZIMM is an appropriate tool for health authorities in decision making for public health events. |
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Keywords: | surveillance absenteeism zero-inflated mixed model occurrence intensity |
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