Protein Secondary Structure Prediction

12 benchmarks26 papers

Protein secondary structure prediction is a vital task in bioinformatics, aiming to determine the arrangement of amino acids in proteins, including α-helices, β-sheets, and coils. By analyzing amino acid sequences, computational algorithms and machine learning techniques predict these structural elements. This knowledge is crucial for understanding protein function and interactions. While progress has been made, challenges remain, especially with non-local interactions and low sequence homology. Advancements in machine learning hold promise for improving prediction accuracy, furthering our understanding of protein biology.

Benchmarks

Protein Secondary Structure Prediction on CB513

Protein Secondary Structure Prediction on CASP12

Protein Secondary Structure Prediction on TS115

Protein Secondary Structure Prediction on PS4

Protein Secondary Structure Prediction on 2017_test set

Protein Secondary Structure Prediction on 2019_test set

Protein Secondary Structure Prediction on CullPDB

Protein Secondary Structure Prediction on Jpred4 blind set