Abstract:Objective:To study how to model zero-inflated count data, and apply it to handle the data about respiratory infection. Methods:Zero-inflated model with 2 parts,zero and Poisson distribution, were transformed to conditional zero-inflated model. Logit and Log linkage function were used to promote the explanation of the result. Results:The results of significant risk factors were those who were younger and live lower in the ZTP part; the risk factors were younger exerciser, having history of chronic respiratory system disease and ill body conditions in the LOGIT part. Conclusion:The conditional zero-inflated model could be easier to explain the affected factors.