Large-Scale Prediction of Disulphide Bond Connectivity

Neural Information Processing Systems 

The formation of disulphide bridges among cysteines is an important fea- ture of protein structures. Here we develop new methods for the predic- tion of disulphide bond connectivity. We first build a large curated data set of proteins containing disulphide bridges and then use 2-Dimensional Recursive Neural Networks to predict bonding probabilities between cys- teine pairs. These probabilities in turn lead to a weighted graph matching problem that can be addressed efficiently. We show how the method con- sistently achieves better results than previous approaches on the same validation data.