Análisis de datos funcionales aplicado en electroencefalogramas: agrupamiento por k-medias funcional

Technological developments have made it possible for researchers in many areas to have large volumes of information for the same individual. Usually these data can be represented through curves or in general functions. From this arises a new field of study in statistics called Functional Data Analysi...

Full description

Autores:
Pineda Ríos, Wilmer
Carrillo Ramírez, Alexis
Garatejo Escobar, Olga
Tipo de recurso:
Fecha de publicación:
2017
Institución:
Universidad Santo Tomás
Repositorio:
Repositorio Institucional USTA
Idioma:
spa
OAI Identifier:
oai:repository.usta.edu.co:11634/6426
Acceso en línea:
https://revistas.usantotomas.edu.co/index.php/estadistica/article/view/3200
Palabra clave:
Electroencephalography; functional data analysis; Fourier series; machine learning; functional k-means; functional principal component analysis.
electroencefalografía (EEG); datos funcionales; series de Fourier; aprendizaje automático; k-medias funcional; análisis de componentes principales funcionales.
Rights
License
Copyright (c) 2017 Comunicaciones en Estadística
Description
Summary:Technological developments have made it possible for researchers in many areas to have large volumes of information for the same individual. Usually these data can be represented through curves or in general functions. From this arises a new field of study in statistics called Functional Data Analysis (FDA). In the FDA the basic unit of information is the complete function, rather than a set of values (Ramsay & Dalzell 1991). The usual statistical methods have been adapted to this situation, in particular the analysis of functional conglomerates by the k-means method has been developed. Since the brain activity responds to a wave function of the neuronal charge over time, the opportunity arises to apply the FDA to this type of record. The objective of this work is to describe the applicability of the functional cluster analysis by the k-means method to classify brain activity in Norvegicus Wistar rats. The conversion of the registers into wave functions was carried out using Fourier bases, which were analyzed according to the methodology developed in (Yamamoto 2012) and a simple correspondence analysis between the clusters and the phases of activity manually recorded in the hypnogram. The obtained conglomerates make a consistent unsupervised categorization, especially with respect to the attributes of frequency and regularity of the waves.