Defining subpopulations of differential drug response to reveal novel target populations.
Nirmal KeshavaTzen S TohHaobin YuanBingxun YangMichael P MendenDennis WangPublished in: NPJ systems biology and applications (2019)
Personalised medicine has predominantly focused on genetically altered cancer genes that stratify drug responses, but there is a need to objectively evaluate differential pharmacology patterns at a subpopulation level. Here, we introduce an approach based on unsupervised machine learning to compare the pharmacological response relationships between 327 pairs of cancer therapies. This approach integrated multiple measures of response to identify subpopulations that react differently to inhibitors of the same or different targets to understand mechanisms of resistance and pathway cross-talk. MEK, BRAF, and PI3K inhibitors were shown to be effective as combination therapies for particular BRAF mutant subpopulations. A systematic analysis of preclinical data for a failed phase III trial of selumetinib combined with docetaxel in lung cancer suggests potential indications in pancreatic and colorectal cancers with KRAS mutation. This data-informed study exemplifies a method for stratified medicine to identify novel cancer subpopulations, their genetic biomarkers, and effective drug combinations.
Keyphrases
- phase iii
- papillary thyroid
- machine learning
- squamous cell
- genome wide
- clinical trial
- big data
- wild type
- open label
- childhood cancer
- electronic health record
- phase ii
- artificial intelligence
- study protocol
- stem cells
- emergency department
- dna methylation
- young adults
- cell proliferation
- drug induced
- climate change
- signaling pathway
- metastatic colorectal cancer