Prognostic risk score of genotypic characteristics in oral cancer based on logistic regression model
The prediction models represent the only way to stop or reduce the incidence of oral cancer in thepopulation, especially some socio cultural vulnerable population; and allow the development of a preventiveintervention protocol. These methodologies should be applied more rigorously to pre-cancerous l...
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Autores principales: | , , , , , , , , , |
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Lenguaje: | Inglés |
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2022
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Acceso en línea: | http://hdl.handle.net/11086/25854 |
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I10-R141-11086-25854 |
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institution |
Universidad Nacional de Córdoba |
institution_str |
I-10 |
repository_str |
R-141 |
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Repositorio Digital Universitario (UNC) |
language |
Inglés |
topic |
Prognosis Diagnosis, oral Logistic models |
spellingShingle |
Prognosis Diagnosis, oral Logistic models Galíndez Costa, María Fernanda Carrica, Victoriano Andrés Don, Julieta Unamuno, Victoria Gónzalez Segura, Ignacio Centeno, Viviana Andrea Secchi, Dante Gustavo Zárate, Ana María Barra, José Luis Brunotto, Mabel Prognostic risk score of genotypic characteristics in oral cancer based on logistic regression model |
topic_facet |
Prognosis Diagnosis, oral Logistic models |
description |
The prediction models represent the only way to stop or reduce the incidence of oral cancer in thepopulation, especially some socio cultural vulnerable population; and allow the development of a preventiveintervention protocol. These methodologies should be applied more rigorously to pre-cancerous lesions that can beconsidered early stages of oral cancer. The purpose of this work was to evaluate the genotypic characteristics ofpatients with oral cancer and precancerous in order to develop a statistical risk score, in order to improve theirprevention, treatment and follow-up. In order to identify prognostic factors, models were built through classificationmethods such as logistic regression. The logistic regression can be assimilated to a classifier in the context of twoclasses. If x is a p-dimensional vector of covariates, and a variable indicating class 1 (1 if it belongs to class 1, 0 if not)and f (x) the conditional density of Y given x, then the fundamental assumption of the logistic proposal used in thecontext of the discriminant analysis is the linearity of the log of the ratio of conditional densities, this is log[f(x)/(1-f(x))]=βo+β?x, , where βo and βx=( β1?βp)? represents p + 1 parameters to be estimated. The latter assumptionimplies that the probability of belonging to class 1 conditional on the observed vector x is given byπ1(x)=exp(βo+β?x)/[1+ exp(βo+β?x)]. The analyzed data are obtained from patients with oral cancer and precancerouslesions, who?s attended at Dentistry School of National University of Cordoba and participated of research oral cancerproject about single nucleotide polymorphisms |
format |
conferenceObject |
author |
Galíndez Costa, María Fernanda Carrica, Victoriano Andrés Don, Julieta Unamuno, Victoria Gónzalez Segura, Ignacio Centeno, Viviana Andrea Secchi, Dante Gustavo Zárate, Ana María Barra, José Luis Brunotto, Mabel |
author_facet |
Galíndez Costa, María Fernanda Carrica, Victoriano Andrés Don, Julieta Unamuno, Victoria Gónzalez Segura, Ignacio Centeno, Viviana Andrea Secchi, Dante Gustavo Zárate, Ana María Barra, José Luis Brunotto, Mabel |
author_sort |
Galíndez Costa, María Fernanda |
title |
Prognostic risk score of genotypic characteristics in oral cancer based on logistic regression model |
title_short |
Prognostic risk score of genotypic characteristics in oral cancer based on logistic regression model |
title_full |
Prognostic risk score of genotypic characteristics in oral cancer based on logistic regression model |
title_fullStr |
Prognostic risk score of genotypic characteristics in oral cancer based on logistic regression model |
title_full_unstemmed |
Prognostic risk score of genotypic characteristics in oral cancer based on logistic regression model |
title_sort |
prognostic risk score of genotypic characteristics in oral cancer based on logistic regression model |
publishDate |
2022 |
url |
http://hdl.handle.net/11086/25854 |
work_keys_str_mv |
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Repositorios |
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1764820391691288577 |