A4 Article in conference proceedings
Enhancing Performance of Linked Independent Component Analysis : Investigating the Influence of Subjects and Modalities (2023)


Xu, H., Li, H., Kärkkäinen, T., & Cong, F. (2023). Enhancing Performance of Linked Independent Component Analysis : Investigating the Influence of Subjects and Modalities. In CIPAE 2023 : 2023 International Conference on Computers, Information Processing and Advanced Education (pp. 726-732). IEEE. https://doi.org/10.1109/cipae60493.2023.00141


JYU authors or editors


Publication details

All authors or editorsXu, Huashuai; Li, Huanjie; Kärkkäinen, Tommi; Cong, Fengyu

Parent publicationCIPAE 2023 : 2023 International Conference on Computers, Information Processing and Advanced Education

Conference:

  • International Conference on Computers, Information Processing and Advanced Education

Place and date of conferenceOttawa, ON, Canada26.-28.8.2023

ISBN979-8-3503-4272-7

eISBN979-8-3503-4271-0

Publication year2023

Publication date26/08/2023

Pages range726-732

PublisherIEEE

Publication countryUnited States

Publication languageEnglish

DOIhttps://doi.org/10.1109/cipae60493.2023.00141

Publication open accessNot open

Publication channel open access

Publication is parallel published (JYX)https://jyx.jyu.fi/handle/123456789/92579


Abstract

In recent years, neuroimaging studies have increasingly been acquiring multiple modalities of data. The benefit of integrating multiple modalities through fusion lies in its ability to combine the unique strengths of each modality when analyzed collectively, as opposed to examining each one individually. In 2011, Adrian R. Groves proposed the Linked independent component analysis (LICA) method, which simultaneously models and discovers common features across multiple modalities. LICA has emerged as a powerful technique for analyzing multivariate data, particularly in neuroimaging and biomedical signal processing. The performance of LICA can be affected by the number of subjects and modalities. However, the detailed influence of the number of subjects and modalities on its performance remains an open question. In this study, we test the effects of the number of subjects and modalities on the performance of LICA using both simulated multimodal MRI data and the real multimodal MRI datasets from Autism Brain Imaging Data Exchange II (ABIDE II). Simulated data were utilized to evaluate the influence of subjects and modalities' variabilities. Real multi-site MRI data were used to demonstrate the advantages of multimodal fusion in identifying site-related components and removing site effects. Based on the simulation results, we found that increasing the number of modalities and subjects can improve the results when LICA can not recover the spatial maps or subject courses well. The correlation among subject courses from various modalities, the number of modalities, and the choice of components for decomposition all affect the linking performance of LICA. Our results from real-world datasets also demonstrated the advantages of multimodal fusion by LICA: 1) identify more site-related components; 2) remove more site effects.


Keywordsimagingmodelling (representation)computerscorrelationmagnetic resonance imagingindependent component analysis

Free keywordsneuroimaging; computers; correlation; magnetic resonance imaging; simulation; education; independent component analysis


Contributing organizations


Ministry reportingYes

VIRTA submission year2023

JUFO rating1


Last updated on 2024-12-10 at 18:45