Litcius/Paper detail

Improving the analysis of biological ensembles through extended similarity measures

Liwei Chang, Alberto Pérez, Ramón Alain Miranda‐Quintana

2021Physical Chemistry Chemical Physics34 citationsDOI

Abstract

). Here we take advantage of this favorable cost to develop several highly efficient techniques, including a linear-scaling algorithm to determine the medoid of a set (which we effectively use to select the most representative structure of a cluster). Moreover, we use our extended similarity indices as a linkage criterion in a novel hierarchical agglomerative clustering algorithm. We apply these new metrics to analyze the ensembles of several systems of biological interest such as folding and binding of macromolecules (peptide, protein, DNA-protein). In particular, we design a new workflow that is capable of identifying the most important conformations contributing to the protein folding process. We show excellent performance in the resulting clusters (surpassing traditional linkage criteria), along with faster performance and an efficient cost-function to identify when to merge clusters.

Topics & Concepts

Cluster analysisComputer scienceMedoidHierarchical clusteringData miningSimilarity (geometry)Merge (version control)Artificial intelligenceInformation retrievalImage (mathematics)Protein Structure and DynamicsMachine Learning in BioinformaticsComputational Drug Discovery Methods