Big data and artificial intelligence applied to blood and CSF fluid biomarkers in multiple sclerosis
Date
2024-10-18Permanent link
https://hdl.handle.net/11351/12369DOI
10.3389/fimmu.2024.1459502
ISSN
1664-3224
WOS
001345289100001
PMID
39493759
Abstract
Artificial intelligence (AI) has meant a turning point in data analysis, allowing predictions of unseen outcomes with precedented levels of accuracy. In multiple sclerosis (MS), a chronic inflammatory-demyelinating condition of the central nervous system with a complex pathogenesis and potentially devastating consequences, AI-based models have shown promising preliminary results, especially when using neuroimaging data as model input or predictor variables. The application of AI-based methodologies to serum/blood and CSF biomarkers has been less explored, according to the literature, despite its great potential. In this review, we aimed to investigate and summarise the recent advances in AI methods applied to body fluid biomarkers in MS, highlighting the key features of the most representative studies, while illustrating their limitations and future directions.
Keywords
Fluid biomarkers; Artificial intelligence; Multiple scleorsisBibliographic citation
Arrambide G, Comabella M, Tur C. Big data and artificial intelligence applied to blood and CSF fluid biomarkers in multiple sclerosis. Front Immunol. 2024 Oct 18;15:1459502.
Audience
Professionals
This item appears in following collections
- CEMCAT - Articles científics [161]
- HVH - Articles científics [4476]
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