Deep transfer learning in the assessment of the quality of protein models
David Men\'endez Hurtado, Karolis Uziela, Arne Elofsson

TL;DR
This paper introduces a deep transfer learning approach for protein model quality assessment, achieving state-of-the-art results with fewer features and demonstrating the potential of transfer learning in this domain.
Contribution
It presents a novel deep neural network architecture for protein model quality estimation that uses fewer features and leverages transfer learning for improved performance.
Findings
Achieves state-of-the-art performance with fewer input features.
Demonstrates the effectiveness of transfer learning in protein quality assessment.
Provides a new methodology for training deep networks on protein structure data.
Abstract
MOTIVATION: Proteins fold into complex structures that are crucial for their biological functions. Experimental determination of protein structures is costly and therefore limited to a small fraction of all known proteins. Hence, different computational structure prediction methods are necessary for the modelling of the vast majority of all proteins. In most structure prediction pipelines, the last step is to select the best available model and to estimate its accuracy. This model quality estimation problem has been growing in importance during the last decade, and progress is believed to be important for large scale modelling of proteins. The current generation of model quality estimation programs performs well at separating incorrect and good models, but fails to consistently identify the best possible model. State-of-the-art model quality assessment methods use a combination of…
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Taxonomy
TopicsProtein Structure and Dynamics · Computational Drug Discovery Methods · Machine Learning in Bioinformatics
