Plasma Lipidomic Profiling Using Mass Spectrometry for Multiple Sclerosis Diagnosis and Disease Activity Stratification (LipidMS).
Seyed Siyawasch Justus LattauLisa-Marie BorschKristina Auf dem BrinkeChristian KloseLiza VinhovenManuel Manfred NietertDirk FitznerPublished in: International journal of molecular sciences (2024)
This investigation explores the potential of plasma lipidomic signatures for aiding in the diagnosis of Multiple Sclerosis (MS) and evaluating the clinical course and disease activity of diseased patients. Plasma samples from 60 patients with MS (PwMS) were clinically stratified to either a relapsing-remitting (RRMS) or a chronic progressive MS course and 60 age-matched controls were analyzed using state-of-the-art direct infusion quantitative shotgun lipidomics. To account for potential confounders, data were filtered for age and BMI correlations. The statistical analysis employed supervised and unsupervised multivariate data analysis techniques, including a principal component analysis (PCA), a partial least squares discriminant analysis (oPLS-DA) and a random forest (RF). To determine whether the significant absolute differences in the lipid subspecies have a relevant effect on the overall composition of the respective lipid classes, we introduce a class composition visualization (CCV). We identified 670 lipids across 16 classes. PwMS showed a significant increase in diacylglycerols (DAG), with DAG 16:0;0_18:1;0 being proven to be the lipid with the highest predictive ability for MS as determined by RF. The alterations in the phosphatidylethanolamines (PE) were mainly linked to RRMS while the alterations in the ether-bound PEs (PE O-) were found in chronic progressive MS. The amount of CE species was reduced in the CPMS cohort whereas TAG species were reduced in the RRMS patients, both lipid classes being relevant in lipid storage. Combining the above mentioned data analyses, distinct lipidomic signatures were isolated and shown to be correlated with clinical phenotypes. Our study suggests that specific plasma lipid profiles are not merely associated with the diagnosis of MS but instead point toward distinct clinical features in the individual patient paving the way for personalized therapy and an enhanced understanding of MS pathology.
Keyphrases
- multiple sclerosis
- disease activity
- mass spectrometry
- data analysis
- rheumatoid arthritis
- white matter
- systemic lupus erythematosus
- end stage renal disease
- fatty acid
- ms ms
- chronic kidney disease
- rheumatoid arthritis patients
- ankylosing spondylitis
- ejection fraction
- newly diagnosed
- machine learning
- prognostic factors
- electronic health record
- peritoneal dialysis
- stem cells
- juvenile idiopathic arthritis
- physical activity
- body mass index
- climate change
- patient reported outcomes
- bone marrow
- computed tomography
- cell therapy
- weight gain
- ionic liquid
- single cell
- smoking cessation
- drug induced