SciELO - Scientific Electronic Library Online

 
 número46O uso de desperdiço de mandioca (Manihot esculenta Crantz) na remoção de verde e laranja de metiloModelo para definir índices de corrupção na contratação de processos de licitação na colômbia baseado em big data e processamento de linguagem natural índice de autoresíndice de assuntospesquisa de artigos
Home Pagelista alfabética de periódicos  

Serviços Personalizados

Journal

Artigo

Indicadores

Links relacionados

  • Em processo de indexaçãoCitado por Google
  • Não possue artigos similaresSimilares em SciELO
  • Em processo de indexaçãoSimilares em Google

Compartilhar


Revista científica

versão impressa ISSN 0124-2253versão On-line ISSN 2344-8350

Resumo

ZAPATA-SALDARRIAGA, Luisa-María et al. Evaluation of Strategies Based on Wavelet-ICA and ICLabel for Artifact Correction in EEG Recordings. Rev. Cient. [online]. 2023, n.46, pp.61-76.  Epub 25-Abr-2023. ISSN 0124-2253.  https://doi.org/10.14483/23448350.19068.

In quantitative electroencephalography, it is of vital importance to eliminate non-neural components, as these can lead to an erroneous analysis of the acquired signals, limiting their use in diagnosis and other clinical applications. In light of this drawback, preprocessing pipelines based on the joint use of the Wavelet Transform and the Independent Component Analysis technique (wICA) were proposed in the 2000s. Recently, with the advent of data-driven methods, deep learning models were developed for the automatic labeling of independent components, which constitutes an opportunity for the optimization of ICA-based techniques. In this paper, ICLabel, one of these deep learning models, was added to the wICA methodology in order to explore its improvement. To assess the usefulness of this approach, it was compared to different pipelines which feature the use of wICA and ICLabel independently and a lack thereof. The impact of each pipeline was measured by its capacity to highlight known statistical differences between asymptomatic carriers of the PSEN-1 E280A mutation and a healthy control group. Specifically, the between-group effect size and the P-values were calculated to compare the pipelines. The results show that using ICLabel for artifact removal can improve the effect size (ES) and that, by leveraging it with wICA, an artifact smoothing approach that is less prone to the loss of neural information can be built.

Palavras-chave : alzheimer; artifacts; E280A; effect size; electroencephalography; pipelines; precuneus; preprocessing; wICA..

        · resumo em Português | Espanhol     · texto em Inglês     · Inglês ( pdf )