Publication detail

Sentiments analysis of fMRI using automatically generated stimuli labels under naturalistic paradigm

MAHRUKH, R. SHAKIL, S. MALIK, A.

Original Title

Sentiments analysis of fMRI using automatically generated stimuli labels under naturalistic paradigm

Type

journal article in Web of Science

Language

English

Original Abstract

Our emotions and sentiments are influenced by naturalistic stimuli such as the movies we watch and the songs we listen to, accompanied by changes in our brain activation. Comprehension of these brain-activation dynamics can assist in identification of any associated neurological condition such as stress and depression, leading towards making informed decision about suitable stimuli. A large number of open-access functional magnetic resonance imaging (fMRI) datasets collected under natzuralistic conditions can be used for classification/prediction studies. However, these datasets do not provide emotion/sentiment labels, which limits their use in supervised learning studies. Manual labeling by subjects can generate these labels, however, this method is subjective and biased. In this study, we are proposing another approach of generating automatic labels from the naturalistic stimulus itself. We are using sentiment analyzers (VADER, TextBlob, and Flair) from natural language processing to generate labels using movie subtitles. Subtitles generated labels are used as the class labels for positive, negative, and neutral sentiments for classification of brain fMRI images. Support vector machine, random forest, decision tree, and deep neural network classifiers are used. We are getting reasonably good classification accuracy (42-84%) for imbalanced data, which is increased (55-99%) for balanced data.

Keywords

fMRI, natural paradigm, sentiments, automatic, machine learning

Authors

MAHRUKH, R.; SHAKIL, S.; MALIK, A.

Released

4. 5. 2023

Publisher

Springer Nature

ISBN

2045-2322

Periodical

Scientific Reports

Year of study

13

Number

1

State

United Kingdom of Great Britain and Northern Ireland

Pages from

1

Pages to

15

Pages count

15

URL

Full text in the Digital Library

BibTex

@article{BUT185142,
  author="Rimsha {Mahrukh} and Sadia {Shakil} and Aamir Saeed {Malik}",
  title="Sentiments analysis of fMRI using automatically generated stimuli labels under naturalistic paradigm",
  journal="Scientific Reports",
  year="2023",
  volume="13",
  number="1",
  pages="1--15",
  doi="10.1038/s41598-023-33734-7",
  issn="2045-2322",
  url="https://www.nature.com/articles/s41598-023-33734-7"
}