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. 2019 Feb 4;15(2):e1006718. doi: 10.1371/journal.pcbi.1006718

Table 1. Performance of various algorithms to classify nucleotide-binding sites.

DeepDrug3D is compared to volume- and shape-based approaches, a classifier employing the histogram of gradients with principal component analysis (HOG/PCA), pocket matching with G-LoSA, molecular docking with Vina, and sequence signature detection with ScanProsite. The performance is assessed with the accuracy (ACC), precision (PPV), sensitivity (TPR), specificity (TNR), and the area under the curve (AUC).

Algorithm ACC PPV TPR TNR AUC
DeepDrug3D 0.943 0.951 0.896 0.971 0.986
Pocket volume 0.783 - - - 0.512
Pocket shape 0.739 0.654 0.730 0.746 0.824
HOG/PCA 0.689 0.607 0.645 0.719 0.611
ScanProsite 0.722 0.917 0.411 0.970 -
G-LoSA 0.730 0.750 0.589 0.843 0.770
Vina 0.634 0.578 0.648 0.622 0.701