• español
    • English
  • Políticas
  • español 
    • español
    • English
  • Acceder
Ver ítem 
  •   Repositorio Institucional ULima
  • Artículos
  • 1. En revistas indexadas en Scopus, Web of Science y SciELO
  • Ingeniería de Sistemas
  • Ver ítem
  •   Repositorio Institucional ULima
  • Artículos
  • 1. En revistas indexadas en Scopus, Web of Science y SciELO
  • Ingeniería de Sistemas
  • Ver ítem
JavaScript is disabled for your browser. Some features of this site may not work without it.

Classification of Breast Cancer and Breast Neoplasm Scenarios Based on Machine Learning and Sequence Features from lncRNAs–miRNAs-Diseases Associations

Thumbnail
Fecha
2021
Autor(es)
Gutiérrez Cárdenas, Juan Manuel
Wang, Z.
Metadatos
Mostrar el registro completo del ítem
Resumen
The influence of non-coding RNAs, such as lncRNAs (long non-coding RNAs) and miRNAs (microRNAs), is undeniable in several diseases, for example, in the formation of neoplasms and cancer scenarios. However, there are challenges due to the scarcity of validated datasets and the imbalance in the data. We found that the research of associations between miRNAs-lncRNAs and diseases is limited or done separately. In addition, those investigations, which use Machine Learning models joined with genomic sequence features extracted from miRNAs and lncRNAs, are few compared with using some methods such as genomic expression or Deep Learning techniques. In this paper, we propose a structure of using supervised and unsupervised machine learning models with genomic sequence features, such as k-mers, sequence alignments, and energy folding values, to validate miRNAs and lncRNAs association with breast cancer and neoplasms scenarios. Using One-Class SVM for outlier detection and comparing two supervised models such as SVM and Random Forest, we manage to obtain accuracy results of 95.44% for the One-class model, with 88.79% and 99.65% for the SVM and Random Forest models, respectively. The results showed a promising path for the study of sequence features interactions joined with Machine Learning models comparable to those found in the existing literature.
URI
https://hdl.handle.net/20.500.12724/19567
DOI
https://doi.org/10.1007/s12539-021-00451-6
Cómo citar
Gutiérrez-Cárdenas,J., & Wang, Z. (2021). Classification of Breast Cancer and Breast Neoplasm Scenarios Based on Machine Learning and Sequence Features from lncRNAs–miRNAs-Diseases Associations. Interdisciplinary Sciences – Computational Life Sciences, (13), 572-581. https://doi.org/10.1007/s12539-021-00451-6
Editor
Springer
Temas
Breast cancer
Non-coding RNA
Supervised learning (Machine learning)
Cáncer de mama
ARN no codificante
Aprendizaje supervizado (Aprendizaje automático)
Revista
Interdisciplinary Sciences – Computational Life Sciences
ISSN
1867-1462
Coleccion(es)
  • Ingeniería de Sistemas [56]


Contacto: [email protected]

Todos los derechos reservados. Diseñado por Chimera Software
 

 

Listar

Todo el RepositorioComunidades & ColeccionesPor fecha de publicaciónAutoresTítulosTemasAsesoresAutores UlimaTipos de documentoEsta colecciónPor fecha de publicaciónAutoresTítulosTemasAsesoresAutores UlimaTipos de documento

Mi cuenta

AccederRegistro

Estadísticas

Ver Estadísticas de uso

Contacto: [email protected]

Todos los derechos reservados. Diseñado por Chimera Software