Title : 
Quality Assessment of Low Free-Energy Protein Structure Predictions
         
        
            Author : 
Cazzanti, Luca ; Gupta, Maya ; Malmström, Lars ; Baker, David
         
        
            Author_Institution : 
Dept. of Electr. Eng., Washington Univ., Seattle, WA
         
        
        
        
        
        
            Abstract : 
Analyzing and engineering cellular signaling processes requires accurate estimation of cellular subprocesses such as protein-folding. We apply parametric and nonparametric classification to the problem of assessing three-dimensional protein domain structure predictions generated by the Rosetta ab initio structure prediction method. The assessment is based on whether the predicted structure is similar enough to a known protein structure to be classified as being in the same protein superfamily. We develop appropriate features and apply Gaussian mixture models, K-nearest-neighbors, and the recently developed linear interpolation with maximum entropy method (LIME). The proposed learning methods outperform a previous quality assessment method based on generalized linear models. Results show that the proposed methods reject the vast majority of poor structural predictions while identifying a useful number of good predictions
         
        
            Keywords : 
Gaussian processes; ab initio calculations; biology; cellular biophysics; free energy; interpolation; learning (artificial intelligence); maximum entropy methods; pattern classification; proteins; 3D protein domain structure prediction; Gaussian mixture model; K-nearest-neighbors; Rosetta ab initio structure prediction; cellular signaling process; cellular subprocess; learning; linear interpolation; low free-energy protein structure prediction; maximum entropy method; nonparametric classification; parametric classification; protein folding; Entropy; Interpolation; Learning systems; Machine learning; Predictive models; Protein engineering; Quality assessment; Sequences; Signal analysis; Statistical learning;
         
        
        
        
            Conference_Titel : 
Machine Learning for Signal Processing, 2005 IEEE Workshop on
         
        
            Conference_Location : 
Mystic, CT
         
        
            Print_ISBN : 
0-7803-9517-4
         
        
        
            DOI : 
10.1109/MLSP.2005.1532932