Identification of a gene signature for discriminating metastatic from primary melanoma using a molecular interaction network approach.
Rahul MetriAbhilash MohanJérémie NsengimanaJoanna PozniakCarmen Molina-ParisJulia Newton-BishopD Timothy Timothy BishopNagasuma ChandraPublished in: Scientific reports (2017)
Understanding the biological factors that are characteristic of metastasis in melanoma remains a key approach to improving treatment. In this study, we seek to identify a gene signature of metastatic melanoma. We configured a new network-based computational pipeline, combined with a machine learning method, to mine publicly available transcriptomic data from melanoma patient samples. Our method is unbiased and scans a genome-wide protein-protein interaction network using a novel formulation for network scoring. Using this, we identify the most influential, differentially expressed nodes in metastatic as compared to primary melanoma. We evaluated the shortlisted genes by a machine learning method to rank them by their discriminatory capacities. From this, we identified a panel of 6 genes, ALDH1A1, HSP90AB1, KIT, KRT16, SPRR3 and TMEM45B whose expression values discriminated metastatic from primary melanoma (87% classification accuracy). In an independent transcriptomic data set derived from 703 primary melanomas, we showed that all six genes were significant in predicting melanoma specific survival (MSS) in a univariate analysis, which was also consistent with AJCC staging. Further, 3 of these genes, HSP90AB1, SPRR3 and KRT16 remained significant predictors of MSS in a joint analysis (HR = 2.3, P = 0.03) although, HSP90AB1 (HR = 1.9, P = 2 × 10-4) alone remained predictive after adjusting for clinical predictors.
Keyphrases
- genome wide
- machine learning
- genome wide identification
- dna methylation
- skin cancer
- bioinformatics analysis
- squamous cell carcinoma
- small cell lung cancer
- big data
- heat shock protein
- copy number
- protein protein
- genome wide analysis
- heat shock
- heat stress
- drug delivery
- artificial intelligence
- basal cell carcinoma
- computed tomography
- electronic health record
- deep learning
- small molecule
- magnetic resonance imaging
- single cell
- magnetic resonance
- oxidative stress
- lymph node
- rna seq
- sentinel lymph node
- pet ct
- early stage
- single molecule
- locally advanced