Genomic, proteomic, and systems biology approaches in biomarker discovery for multiple sclerosis
•There is an urgent need to develop biomarkers for key aspects of MS diagnosis, prognosis, and treatment.•Large datasets hold the potential for discovering biomarkers to aid diagnosis and treatment.•The ability to analyze large datasets has lagged behind the ability to generate them.•Data science to...
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Veröffentlicht in: | Cellular immunology 2020-12, Vol.358, p.104219-104219, Article 104219 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | •There is an urgent need to develop biomarkers for key aspects of MS diagnosis, prognosis, and treatment.•Large datasets hold the potential for discovering biomarkers to aid diagnosis and treatment.•The ability to analyze large datasets has lagged behind the ability to generate them.•Data science tools will propel forward the discovery of clinically useful biomarkers.
Multiple sclerosis (MS) is a neuroinflammatory disorder characterized by autoimmune-mediated inflammatory lesions in CNS leading to myelin damage and axonal loss. MS is a heterogenous disease with variable and unpredictable disease course. Due to its complex nature, MS is difficult to diagnose and responses to specific treatments may vary between individuals. Therefore, there is an indisputable need for biomarkers for early diagnosis, prediction of disease exacerbations, monitoring the progression of disease, and for measuring responses to therapy. Genomic and proteomic studies have sought to understand the molecular basis of MS and find biomarker candidates. Advances in next-generation sequencing and mass-spectrometry techniques have yielded an unprecedented amount of genomic and proteomic data; yet, translation of the results into the clinic has been underwhelming. This has prompted the development of novel data science techniques for exploring these large datasets to identify biologically relevant relationships and ultimately point towards useful biomarkers. Herein we discuss optimization of omics study designs, advances in the generation of omics data, and systems biology approaches aimed at improving biomarker discovery and translation to the clinic for MS. |
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ISSN: | 0008-8749 1090-2163 |
DOI: | 10.1016/j.cellimm.2020.104219 |