PiPred – a deep-learning method for prediction of π-helices in protein sequences

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作者
Jan Ludwiczak
Aleksander Winski
Antonio Marinho da Silva Neto
Krzysztof Szczepaniak
Vikram Alva
Stanislaw Dunin-Horkawicz
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[1] University of Warsaw,Laboratory of Structural Bioinformatics, Centre of New Technologies
[2] Nencki Institute of Experimental Biology,Laboratory of Bioinformatics
[3] Max-Planck-Institute for Developmental Biology,Department of Protein Evolution
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Canonical π-helices are short, relatively unstable secondary structure elements found in proteins. They comprise seven or more residues and are present in 15% of all known protein structures, often in functionally important regions such as ligand- and ion-binding sites. Given their similarity to α-helices, the prediction of π-helices is a challenging task and none of the currently available secondary structure prediction methods tackle it. Here, we present PiPred, a neural network-based tool for predicting π-helices in protein sequences. By performing a rigorous benchmark we show that PiPred can detect π-helices with a per-residue precision of 48% and sensitivity of 46%. Interestingly, some of the α-helices mispredicted by PiPred as π-helices exhibit a geometry characteristic of π-helices. Also, despite being trained only with canonical π-helices, PiPred can identify 6-residue-long α/π-bulges. These observations suggest an even higher effective precision of the method and demonstrate that π-helices, α/π-bulges, and other helical deformations may impose similar constraints on sequences. PiPred is freely accessible at: https://toolkit.tuebingen.mpg.de/#/tools/quick2d. A standalone version is available for download at: https://github.com/labstructbioinf/PiPred, where we also provide the CB6133, CB513, CASP10, and CASP11 datasets, commonly used for training and validation of secondary structure prediction methods, with correctly annotated π-helices.
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