English

ProQ3D: Improved model quality assessments using Deep Learning

Biomolecules 2016-10-19 v2

Abstract

Summary: Protein quality assessment is a long-standing problem in bioinformatics. For more than a decade we have developed state-of-art predictors by carefully selecting and optimising inputs to a machine learning method. The correlation has increased from 0.60 in ProQ to 0.81 in ProQ2 and 0.85 in ProQ3 mainly by adding a large set of carefully tuned descriptions of a protein. Here, we show that a substantial improvement can be obtained using exactly the same inputs as in ProQ2 or ProQ3 but replacing the support vector machine by a deep neural network. This improves the Pearson correlation to 0.90 (0.85 using ProQ2 input features). Availability: ProQ3D is freely available both as a webserver and a stand-alone program at http://proq3.bioinfo.se/

Keywords

Cite

@article{arxiv.1610.05189,
  title  = {ProQ3D: Improved model quality assessments using Deep Learning},
  author = {Karolis Uziela and David Menéndez Hurtado and Björn Wallner and Arne Elofsson},
  journal= {arXiv preprint arXiv:1610.05189},
  year   = {2016}
}
R2 v1 2026-06-22T16:23:05.509Z