Machine learning predicts treatment sensitivity in multiple myeloma based on molecular and clinical information coupled with drug response.
Lucas Venezian PovoaCarlos Henrique Costa RibeiroIsrael Tojal da SilvaPublished in: PloS one (2021)
Providing treatment sensitivity stratification at the time of cancer diagnosis allows better allocation of patients to alternative treatment options. Despite many clinical and biological risk markers having been associated with variable survival in cancer, assessing the interplay of these markers through Machine Learning (ML) algorithms still remains to be fully explored. Here, we present a Multi Learning Training approach (MuLT) combining supervised, unsupervised and self-supervised learning algorithms, to examine the predictive value of heterogeneous treatment outcomes for Multiple Myeloma (MM). We show that gene expression values improve the treatment sensitivity prediction and recapitulates genetic abnormalities detected by Fluorescence in situ hybridization (FISH) testing. MuLT performance was assessed by cross-validation experiments, in which it predicted treatment sensitivity with 68.70% of AUC. Finally, simulations showed numerical evidences that in average 17.07% of patients could get better response to a different treatment at the first line.
Keyphrases
- machine learning
- gene expression
- end stage renal disease
- multiple myeloma
- chronic kidney disease
- newly diagnosed
- ejection fraction
- healthcare
- dna methylation
- prognostic factors
- artificial intelligence
- emergency department
- papillary thyroid
- squamous cell
- big data
- molecular dynamics
- patient reported outcomes
- young adults
- lymph node metastasis
- genome wide
- energy transfer