Please use this identifier to cite or link to this item: http://ricaxcan.uaz.edu.mx/jspui/handle/20.500.11845/1932
Title: Identification of diabetic patients through clinical and para-clinical features in Mexico: an approach using deep neural networks
Authors: Alcalá Ramírez, Vanessa
Zanella Calzada, Laura Alejandra
Galván Tejada, Carlos Eric
García Hernández, Alejandra
Crúz López, Miguel
Valladares Salgado, Adan
Galván Tejada, Jorge Issac
Gamboa Rosales, Hamurabi
Issue Date: 10-Jan-2019
Publisher: MDPI
Abstract: Diabetes is a chronic and noncommunicable but preventable disease that is affecting the Mexican population at worrying levels, being the first place in prevalence worldwide. Early diabetes detection has become important to prevent other health conditions that involve low organ yield until the patient death. Based on this problem, this work proposes the architecture of an Artificial Neural Network (ANN) for the automated classification of healthy patients from diabetics patients. The analysis was performed used a set of 19 para-clinical features to determine the health status of the patients. The developed model was evaluated through a statistical analysis based on the calculation of the loss function, accuracy, area under the curve (AUC) and receiving operating characteristics (ROC) curve. The results obtained present statistically significant values, with accuracy of 0.94 and AUC values of 0.98. Based on these results, it is possible to conclude that the ANN implemented in this work can classify patients with presence of diabetes from controls with significant accuracy, presenting preliminary results for the development of a diagnostic tool that can be supportive for health specialists
URI: http://ricaxcan.uaz.edu.mx/jspui/handle/20.500.11845/1932
ISSN: 1660-4601
Other Identifiers: info:eu-repo/semantics/publishedVersion
Appears in Collections:*Documentos Académicos*-- M. en Ciencias del Proc. de la Info.

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