Molecular models of multiple sclerosis severity identify heterogeneity of pathogenic mechanisms.
Peter KosaChristopher BarbourMihael VarosanecAlison WichmanMary SandfordMark GreenwoodBibiana BielekovaPublished in: Nature communications (2022)
While autopsy studies identify many abnormalities in the central nervous system (CNS) of subjects dying with neurological diseases, without their quantification in living subjects across the lifespan, pathogenic processes cannot be differentiated from epiphenomena. Using machine learning (ML), we searched for likely pathogenic mechanisms of multiple sclerosis (MS). We aggregated cerebrospinal fluid (CSF) biomarkers from 1305 proteins, measured blindly in the training dataset of untreated MS patients (N = 129), into models that predict past and future speed of disability accumulation across all MS phenotypes. Healthy volunteers (N = 24) data differentiated natural aging and sex effects from MS-related mechanisms. Resulting models, validated (Rho 0.40-0.51, p < 0.0001) in an independent longitudinal cohort (N = 98), uncovered intra-individual molecular heterogeneity. While candidate pathogenic processes must be validated in successful clinical trials, measuring them in living people will enable screening drugs for desired pharmacodynamic effects. This will facilitate drug development making, it hopefully more efficient and successful.
Keyphrases
- multiple sclerosis
- cerebrospinal fluid
- clinical trial
- white matter
- mass spectrometry
- end stage renal disease
- ms ms
- single cell
- ejection fraction
- palliative care
- chronic kidney disease
- newly diagnosed
- prognostic factors
- blood brain barrier
- randomized controlled trial
- cross sectional
- single molecule
- drug induced
- deep learning
- open label