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. 2018 Dec 10;13(12):e0208626. doi: 10.1371/journal.pone.0208626

Fig 1. Main components of the proposed methodology to predict disease genes.

Fig 1

Functional similarities are computed for a given set of genes. Different machine learning methods are applied to functional similarity matrices to define rules that discriminate disease genes from non-disease genes. Two evaluation approaches, namely stratified and held-out restricted stratified five-fold cross-validation are used.