Litcius/Paper detail

Extended many-item similarity indices for sets of nucleotide and protein sequences

Dávid Bajusz, Ramón Alain Miranda‐Quintana, Anita Rácz, Károly Héberger

2021Computational and Structural Biotechnology Journal21 citationsDOIOpen Access PDF

Abstract

Quantification of similarities between protein sequences or DNA/RNA strands is a (sub-)task that is ubiquitously present in bioinformatics workflows, and is usually accomplished by pairwise comparisons of sequences, utilizing simple (e.g. percent identity) or more intricate concepts (e.g. substitution scoring matrices). Complex tasks (such as clustering) rely on a large number of pairwise comparisons under the hood, instead of a direct quantification of set similarities. Based on our recently introduced framework that enables multiple comparisons of binary molecular fingerprints (i.e., direct calculation of the similarity of fingerprint sets), here we introduce novel symmetric similarity indices for analogous calculations on sets of character sequences with more than two (t) possible items (e.g. DNA/RNA sequences with t = 4, or protein sequences with t = 20). The features of these new indices are studied in detail with analysis of variance (ANOVA), and demonstrated with three case studies of protein/DNA sequences with varying degrees of similarity (or evolutionary proximity). The Python code for the extended many-item similarity indices is publicly available at: https://github.com/ramirandaq/tn_Comparisons.

Topics & Concepts

Python (programming language)Pairwise comparisonSimilarity (geometry)Computer scienceComputational biologyCluster analysisSet (abstract data type)Data miningMathematicsBiologyArtificial intelligenceOperating systemProgramming languageImage (mathematics)Bioinformatics and Genomic NetworksComputational Drug Discovery MethodsMachine Learning in Bioinformatics