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Prediction of anti-inflammatory peptides by a sequence-based stacking ensemble model named AIPStack

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This is the corresponding repository of the paper titled "Prediction of anti-inflammatory peptides by a sequence-based stacking ensemble model named AIPStack".

AIPStack

The AIPStack is a two-layer stacking ensemble model, proposed for the identification of Anti-inflammatory peptides. In this model, the peptide sequences are represented by the combination of two feature encoding schemes, i.e. dipeptide deviation from expected mean and composition of k-spaced amino acid pairs. To construct the prediction framework, random forest and extremely randomized tree are employed as the base-classifiers in the first layer and logistic regression is applied as a meta-classifier in the second layer, which accepts the outputs from the first layer. The systematic workflow for the prediction of AIPs is depicted in the figure below.

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The code and datasets are only allowed for accedemic research. Commercial usage is not granted.

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Prediction of anti-inflammatory peptides by a sequence-based stacking ensemble model named AIPStack

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