Machine learning applied to whole-blood RNA-sequencing data uncovers distinct subsets of patients with systemic lupus erythematosus.
William A FiggettKatherine MonaghanMilica NgMonther AlhamdooshEugene MaraskovskyNicholas J WilsonAlberta Y HoiEric F MorandFabienne MackayPublished in: Clinical & translational immunology (2019)
Given that SLE disease heterogeneity is a key challenge hindering the design of optimal clinical trials and the adequate management of patients, our approach opens a new possible avenue addressing this limitation via a greater understanding of SLE heterogeneity in humans. Stratification of patients based on gene expression signatures may be a valuable strategy allowing the identification of separate molecular mechanisms underpinning disease in SLE. Further, this approach may have a use in understanding the variability in responsiveness to therapeutics, thereby improving the design of clinical trials and advancing personalised therapy.
Keyphrases
- systemic lupus erythematosus
- clinical trial
- single cell
- gene expression
- machine learning
- disease activity
- end stage renal disease
- ejection fraction
- newly diagnosed
- dna methylation
- peritoneal dialysis
- prognostic factors
- randomized controlled trial
- peripheral blood
- artificial intelligence
- genome wide
- stem cells
- deep learning
- patient reported outcomes
- bone marrow
- data analysis
- double blind
- placebo controlled