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  PiPred: a deep-learning method for prediction of pi-helices in protein sequences

Ludwiczak, J., Wiński, A., Marinho da Silva Neto, A., Szczepaniak, K., Alva, V., & Dunin-Horkawicz, S. (2019). PiPred: a deep-learning method for prediction of pi-helices in protein sequences. In BioInformatics in Torun 2019 - BIT19 (pp. 61).

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 Creators:
Ludwiczak, J, Author                 
Wiński, A, Author
Marinho da Silva Neto, A, Author
Szczepaniak, K, Author
Alva, V1, 2, Author                 
Dunin-Horkawicz, S2, Author                 
Affiliations:
1Protein Bioinformatics Group, Department Protein Evolution, Max Planck Institute for Developmental Biology, Max Planck Society, ou_3477398              
2Department Protein Evolution, Max Planck Institute for Developmental Biology, Max Planck Society, ou_3375791              

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 Abstract: pi-helices are short and unstable protein secondary structure motifs. They are present in 15% of all known protein structures, often in functionally important regions such as ligand-binding sites. Thus, the correct prediction of pi-helices is essential for the detection of potential functional sites and can aid design tasks aiming at the creation of ligand-binding pockets. Due to the similarity of pi-helices to much more abundant alpha-helices, it is a challenging task to predict them based on the sequence data and there are no methods devoted to this problem. We present a deep learning neural network trained with sequences where pi-helical residues were assigned based on high-quality X-ray structures [1]. The model achieved 48% precision and 46% sensitivity in per-residue prediction on a test set. Moreover, in the benchmark on commonly used datasets like CB6133, CB513, CASP10, and CASP11 the model outperforms other state-of-the-art methods used for secondary structure prediction.

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 Dates: 2019-06
 Publication Status: Published online
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Title: BioInformatics in Torun 2019 (BIT19)
Place of Event: Torun, Poland
Start-/End Date: 2019-06-27 - 2019-06-29

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Title: BioInformatics in Torun 2019 - BIT19
Source Genre: Proceedings
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Pages: - Volume / Issue: - Sequence Number: - Start / End Page: 61 Identifier: -