Log-linear modeling between risk factors and interactions for human papillomaviruses infection and papanicolaou smear abnormalities

Cuesta-Herrera, L.; Torres-Mantilla, H. A.; Quintero-Vega, M.; Borges-Pena, R.; Martinez-Jeraldo, N.; IOP

Abstract

Modeling qualitative variables and their interactions often require multidimensional analysis through Log-linear models. Furthermore, these models are useful as alternatives in fields where probabilistic classification is required, such as speech recognition or pattern classification. This work uses log-linear modeling as a methodological approach to the analysis of 1114 valid cases of women participating in a human papillomavirus infection and cervical cancer screening program, thus relating a public health problem to biophysical knowledge. The objective of the study was to evaluate the main effects and interactions between the variables compared to the independence model. A backward stepwise selection with a 5% probability of elimination was performed to arrive at the best hierarchical model starting on the covariates that were significant in a previous bivariate analysis. This allows us to understand how biophysical process modeling can identify biomarkers and propose prevention methods for human papillomavirus infection and Papanicolaou smear abnormalities.

Más información

Título según WOS: Log-linear modeling between risk factors and interactions for human papillomaviruses infection and papanicolaou smear abnormalities
Título de la Revista: WORKSHOP ON MODELING AND SIMULATION FOR SCIENCE AND ENGINEERING, V WMSSE
Volumen: 2516
Editorial: IOP PUBLISHING LTD
Fecha de publicación: 2023
DOI:

10.1088/1742-6596/2516/1/012008

Notas: ISI