كليدواژه :
مدل هاي داده هاي شمارشي , مدل رگرسيون پوآسني , زن , زنان , مدل دوجمله اي منفي , مدت زمان اقامت پس از زايمان , countable data models , Poisson and negative binomial regression , Post delivery motherʹs hospitalization time
چكيده لاتين :
Background: Mothersʹ delivery is one of the most common hospitalization factors throughout the world and itʹs modeling can explain distribution and effective factors on rising and decreasing of it. The objective of the present study was a suitable modeling for mother hospitalization time and comparing it with different models.
Materials & Methods: Present study is an observational and cross-sectional study with randomized sampled of 1600 mothersʹ refered to Arak university treatment centers in the first seamester in 2004 for delivery. The following parameters were registered: hospitalization time as dependent variable, motherʹs age and its square, mother job, having abnormal child, ordinal pregnancy or delivery and its square, number of abortions and its square, number of present children and its square, mothersʹ residency, type of delivery, twice and triplets all were considered as independent variables. For analysis of data, advanced recent methods of countable data modeling were used. We also introduced an innovative method of analysis.
Results: The results of modeling of mothersʹ hospitalization time showed negative binomial model was a suitable model because of unequal variance and means of dependent variables for explanation of mothersʹ hospitalization time, having abnormal child, type of delivery (NVD, C&S) and twice delivery all were significant variables in this model. More specific models (Zero-truncated Poisson and negative binomial), showed to be more suitable for age and its square, having abnormal child, type of delivery, twice delivery and triplet delivery which were all significant variables in determining of mothersʹ hospitalization time rates.
Conclusion: In this article, with a simple change of mothers hospitalization time, a suitable statistical model to explain them and modeling of these times were achieved. The suggested model could included more variables than conventional because of its higher specificity.