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PRODUCCIÓN CIENTÍFICA · COCID

Publicaciones,
Artículos y Tesis

Conocimiento generado por docentes, investigadores y estudiantes, contribuyendo al avance científico, tecnológico y social.

Marco nacional de referencia en ética y autorregulación
para la ciencia de datos, big data e inteligencia artificial

ÉticaIABig Data
Autor
Colegio Universitario Científico de Datos
Registro INDAUTOR
03-2026-042413111000-01

Síntesis

En virtud de las necesidades detectadas debido a la falta de un comité dedicado exclusivamente a la ética e investigación en ciencia de datos, datos masivos e inteligencia artificial, se redacta un documento técnico Marco Nacional de Referencia para la autorregulación de comités en el acompañamiento y evaluación de proyectos, protocolos, tesis, artículos y otros que involucren uso de datos y tecnología emergente.
Conocer el CEI Ver publicación

Producción Académica — COCID

Publicaciones recientes de nuestros docentes

2
2025 Ciencia de Datos · PLN
Docentes COCID Enrique Díaz-Ocampo ★ responsable Areli K. Martínez-Tapia ★ responsable

Referencia APA

Díaz-Ocampo, E., Martínez-Tapia, A. K., Magadán-Salazar, A., Pinto-Elías, R., López-Sánchez, M., & Bensoussan, Y. (2025). Gender recognition of teen and adult voices in non-tonal and tonal languages in uncontrolled environments. Computación y Sistemas, 29(1), 353–364.

https://doi.org/10.13053/CyS-29-1-4495

Abstract

Voice gender recognition systems is a term that refers the automatization of gender detection by an acoustic signal of voice. These systems can be trained in uncontrolled environments, whose audios present different types of noises and speaker characteristics. However, the current systems present a bias in the training language, which is usually mainly English. The present work focused on the gender recognition of adult and teen voices in a group of tonal languages and Spanish under uncontrolled environments. The features used were 7 derived from pitch, and two from the mean of the fourth formant and vocal tract length. Two scenarios were built: a training-test scenario on one dataset, and a second validation scenario using the other dataset. The metrics used were accuracy, recall, F1-score, and area under the ROC curve. The algorithms used were Multilayer Perceptron and Random Forest. Despite the bias in the datasets, the biological features and the algorithms were robust to language change.

Computación y Sistemas · ISSN 2007-9737 · Vol. 29(1) · 2025 Ver artículo
3
2026
CIENCIA DE DATOS • PLN
DOCENTES COCID

Enrique Díaz-Ocampo ★ RESPONSABLE    • Violeta Larios-Serrato ★ RESPONSABLE

REFERENCIA APA

Cano-Sánchez, J., Méndez-Tenorio, A., Maldonado-Rodríguez, R., Díaz-Ocampo, E., Larios-Serrato, V. (2026). BioRemmer: un pipeline bioinformático para la identificación del perfil funcional de la biodegradación microbiana de plásticos. Journal of Bioengineering and Biomedicine Research, 10(2), 17–30.

https://doi.org/10.70632/jbbr.10.2.2026.17-30
ABSTRACT

Plastic pollution has become a persistent environmental issue due to the accumulation and long-term stability of synthetic polymers in natural ecosystems. In this study, we developed BioRemmer, an automated metagenomic pipeline designed to explore the putative plastic-degrading potential of microbial communities using raw paired-end FASTQ data. The workflow integrates tools for quality control, assembly, functional annotation, binning, and phylogenomic classification, together with a targeted search for enzyme families associated with nine plastic types using HMM profiles. Validation across three metagenomes of contrasting environmental origin, including a marine plastisphere, a plastic-contaminated soil, and a human gut microbiome as a negative control, demonstrated that BioRemmer produces functionally and taxonomically coherent profiles for each context, with no high-confidence hits in the negative control.

3
2026
CIENCIA DE DATOS • PLN
DOCENTES COCID

Enrique Díaz-Ocampo ★ RESPONSABLE    • Violeta Larios-Serrato ★ RESPONSABLE

REFERENCIA APA

Cano-Sánchez, J., Méndez-Tenorio, A., Maldonado-Rodríguez, R., Díaz-Ocampo, E., Larios-Serrato, V. (2026). BioRemmer: un pipeline bioinformático para la identificación del perfil funcional de la biodegradación microbiana de plásticos. Journal of Bioengineering and Biomedicine Research, 10(2), 17–30.

https://doi.org/10.70632/jbbr.10.2.2026.17-30
ABSTRACT

Plastic pollution has become a persistent environmental issue due to the accumulation and long-term stability of synthetic polymers in natural ecosystems. In this study, we developed BioRemmer, an automated metagenomic pipeline designed to explore the putative plastic-degrading potential of microbial communities using raw paired-end FASTQ data. The workflow integrates tools for quality control, assembly, functional annotation, binning, and phylogenomic classification, together with a targeted search for enzyme families associated with nine plastic types using HMM profiles. Validation across three metagenomes of contrasting environmental origin, including a marine plastisphere, a plastic-contaminated soil, and a human gut microbiome as a negative control, demonstrated that BioRemmer produces functionally and taxonomically coherent profiles for each context, with no high-confidence hits in the negative control.