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Pairwise Input Neural Network for Target-Ligand Interaction Prediction #338

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enricoferrero opened this issue Apr 22, 2017 · 0 comments
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@enricoferrero
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http://doi.org/10.1109/BIBM.2014.6999129 (http://ieeexplore.ieee.org/document/6999129/)

Prediction the interactions between proteins (targets) and small molecules (ligands) is a critical task for the drug discovery in silico. In this work, we consider the target binding site instead of the whole target and propose a pairwise input neural network (PINN) for constructing the site-ligand interaction prediction model. Different with the ordinary artificial neural network (ANN) with one vector as input, the proposed PINN can accept a pair of vectors as the input, corresponding to a binding site and a ligand respectively. The 5-CV evaluation results show that PINN outperforms other representative target-ligand interaction prediction methods.

Currently considering whether I should include this in the drug repositioning section along with #113 and #317 (Treat).

@agitter agitter added the treat label Apr 22, 2017
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