Data Structures and Algorithms for k-th Nearest Neighbours Conformational Entropy Estimation
Biophysica, ISSN: 2673-4125, Vol: 2, Issue: 4, Page: 340-352
2022
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Biophysica, Vol. 2, Pages 340-352: Data Structures and Algorithms for k-th Nearest Neighbours Conformational Entropy Estimation
Biophysica, Vol. 2, Pages 340-352: Data Structures and Algorithms for k-th Nearest Neighbours Conformational Entropy Estimation Biophysica doi: 10.3390/biophysica2040031 Authors: Roberto Borelli Agostino Dovier Federico
Article Description
Entropy of multivariate distributions may be estimated based on the distances of nearest neighbours from each sample from a statistical ensemble. This technique has been applied on biomolecular systems for estimating both conformational and translational/rotational entropy. The degrees of freedom which mostly define conformational entropy are torsion angles with their periodicity. In this work, tree structures and algorithms to quickly generate lists of nearest neighbours for periodic and non-periodic data are reviewed and applied to biomolecular conformations as described by torsion angles. The effect of dimensionality, number of samples, and number of neighbours on the computational time is assessed. The main conclusion is that using proper data structures and algorithms can greatly reduce the complexity of nearest neighbours lists generation, which is the bottleneck step in nearest neighbours entropy estimation.
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