Joshi et al., 2014 - Google Patents
Quantitative characterization of protein tertiary motifsJoshi et al., 2014
- Document ID
- 2881956359376969363
- Author
- Joshi R
- Sreenath S
- Publication year
- Publication venue
- Journal of molecular modeling
External Links
Snippet
A quantitative feature-vector representation/model of tertiary structural motifs of proteins is presented. Multiclass logistic regression and a probabilistic neural network were employed to apply this representation to large data sets in order to classify them into major families of …
- 102000004169 proteins and genes 0 title abstract description 48
Classifications
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- G06F19/16—Bioinformatics, i.e. methods or systems for genetic or protein-related data processing in computational molecular biology for molecular structure, e.g. structure alignment, structural or functional relations, protein folding, domain topologies, drug targeting using structure data, involving two-dimensional or three-dimensional structures
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