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Scientific Programming
Volume 2018, Article ID 4304017, 21 pages
https://doi.org/10.1155/2018/4304017
Research Article

Analysis of Medical Opinions about the Nonrealization of Autopsies in a Mexican Hospital Using Association Rules and Bayesian Networks

1División de Estudios de Posgrado e Investigación, Instituto Tecnológico de Orizaba, Orizaba, VER, Mexico
2Hospital Regional de Río Blanco (HRRB), Río Blanco, VER, Mexico
3Universidad Autónoma del Estado de México, Centro Universitario UAEM Texcoco, Texcoco, MEX, Mexico
4CONACYT-Instituto Tecnológico de Orizaba, Orizaba, VER, Mexico
5Universidad Autónoma del Estado de México, Centro Universitario UAEM Zumpango, Zumpango, MEX, Mexico

Correspondence should be addressed to Lisbeth Rodríguez-Mazahua; moc.liamg@80rhtebsil

Received 6 May 2017; Revised 28 September 2017; Accepted 9 January 2018; Published 13 February 2018

Academic Editor: José María Álvarez-Rodríguez

Copyright © 2018 Elayne Rubio Delgado et al. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

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