Investigator

Francisco M. Ortuño

Assistant Professor · University of Granada, Department of Computer Engineering, Automatics and Robotics

About

FMOFrancisco M. Ortu…
Papers(1)
Gene Expression Analy…
Collaborators(4)
Ignacio RojasLaura AntequeraLucía AlmoroxLuis Javier Herrera
Institutions(1)
Universidad De Granada

Papers

Gene Expression Analysis for Uterine Cervix and Corpus Cancer Characterization

The analysis of gene expression quantification data is a powerful and widely used approach in cancer research. This work provides new insights into the transcriptomic changes that occur in healthy uterine tissue compared to those in cancerous tissues and explores the differences associated with uterine cancer localizations and histological subtypes. To achieve this, RNA-Seq data from the TCGA database were preprocessed and analyzed using the KnowSeq package. Firstly, a kNN model was applied to classify uterine cervix cancer, uterine corpus cancer, and healthy uterine samples. Through variable selection, a three-gene signature was identified (VWCE, CLDN15, ADCYAP1R1), achieving consistent 100% test accuracy across 20 repetitions of a 5-fold cross-validation. A supplementary similar analysis using miRNA-Seq data from the same samples identified an optimal two-gene miRNA-coding signature potentially regulating the three-gene signature previously mentioned, which attained optimal classification performance with an 82% F1-macro score. Subsequently, a kNN model was implemented for the classification of cervical cancer samples into their two main histological subtypes (adenocarcinoma and squamous cell carcinoma). A uni-gene signature (ICA1L) was identified, achieving 100% test accuracy through 20 repetitions of a 5-fold cross-validation and externally validated through the CGCI program. Finally, an examination of six cervical adenosquamous carcinoma (mixed) samples revealed a pattern where the gene expression value in the mixed class aligned closer to the histological subtype with lower expression, prompting a reconsideration of the diagnosis for these mixed samples. In summary, this study provides valuable insights into the molecular mechanisms of uterine cervix and corpus cancers. The newly identified gene signatures demonstrate robust predictive capabilities, guiding future research in cancer diagnosis and treatment methodologies.

51Works
1Papers
4Collaborators

Positions

2021–

Assistant Professor

University of Granada · Department of Computer Engineering, Automatics and Robotics

2018–

Researcher

Fundacion Progreso y Salud · Clinical Bioinformatics Area

2016–

Senior Bioinformatician

University of Chicago · Center for Data Intensive Science

2014–

Postdoctoral Researcher

University of Granada · Department of Computer Architecture and Computer Technology

2010–

PhD Student

University of Granada · Department of Computer Architecture and Computer Technology

Education

2011

Master in Computer and Network Engineering

University of Granada

2014

Doctorate (PhD)

University of Granada · Department of Computer Architecture and Computer Technology

2008

Telecommunications Engineering

University of Granada

Keywords
bioinformaticscomputational biologymultiple sequence alignmentsmicroarrays