Dissertação
Análise de dados de vigilância epidemiológica por meio de diferentes tipos de modelos de séries temporais
Fecha
2014-03-07Autor
Silva, Caroline Pafiadache da
Institución
Resumen
The analysis of time series obtained in the databases of public health plays an
important role in processes of health surveillance. However, implementation of
methodologies for time series has not yet become a routine in the midst of healthcare
practitioners. The objective of this study is to present a theoretical review about time
series analysis used for epidemiological surveillance data and practical application of
statistical methods for the estimation of three models for notifiable diseases: the Box
and Jenkins methodological in the presence and absence of exogenous variable
(ARIMAX and ARIMA) and vector autoregression (VAR) model. For this, we perfomed
a cross-sectional study using secondary data from SINAN (Information System for
Notifiable Diseases) consisting of cases of hepatitis A and leptospirosis recorded in
Rio Grande do Sul, in the period January 2008 to December 2012. The models were
analyzed and discussed through comparison of performance measures. The ARIMA
models presented the best properties for the prediction of new cases of the diseases
studied. The one-way causality between the diseases was also established.