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Network modeling of patients' biomolecular profiles for clinical phenotype/outcome prediction.

Jessica GliozzoPaolo PerlascaMarco MesitiElena CasiraghiViviana VallacchiElisabetta VerganiMarco FrascaGiuliano GrossiAlessandro PetriniMatteo ReAlberto PaccanaroGiorgio Valentini
Published in: Scientific reports (2020)
Methods for phenotype and outcome prediction are largely based on inductive supervised models that use selected biomarkers to make predictions, without explicitly considering the functional relationships between individuals. We introduce a novel network-based approach named Patient-Net (P-Net) in which biomolecular profiles of patients are modeled in a graph-structured space that represents gene expression relationships between patients. Then a kernel-based semi-supervised transductive algorithm is applied to the graph to explore the overall topology of the graph and to predict the phenotype/clinical outcome of patients. Experimental tests involving several publicly available datasets of patients afflicted with pancreatic, breast, colon and colorectal cancer show that our proposed method is competitive with state-of-the-art supervised and semi-supervised predictive systems. Importantly, P-Net also provides interpretable models that can be easily visualized to gain clues about the relationships between patients, and to formulate hypotheses about their stratification.
Keyphrases
  • end stage renal disease
  • ejection fraction
  • newly diagnosed
  • gene expression
  • chronic kidney disease
  • machine learning
  • dna methylation
  • network analysis