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GraphPart: homology partitioning for biological sequence analysis

Felix Teufel, Magnús Halldór Gíslason, José Juan Almagro Armenteros, Alexander Rosenberg Johansen, Ole Winther, Henrik Nielsen

2023NAR Genomics and Bioinformatics39 citationsDOIOpen Access PDF

Abstract

When splitting biological sequence data for the development and testing of predictive models, it is necessary to avoid too-closely related pairs of sequences ending up in different partitions. If this is ignored, performance of prediction methods will tend to be overestimated. Several algorithms have been proposed for homology reduction, where sequences are removed until no too-closely related pairs remain. We present GraphPart, an algorithm for homology partitioning that divides the data such that closely related sequences always end up in the same partition, while keeping as many sequences as possible in the dataset. Evaluation of GraphPart on Protein, DNA and RNA datasets shows that it is capable of retaining a larger number of sequences per dataset, while providing homology separation on a par with reduction approaches.

Topics & Concepts

Homology (biology)Computational biologyComputer sciencePartition (number theory)Persistent homologySequence homologySequence analysisSequence (biology)BiologyAlgorithmMathematicsDNABase sequenceGeneticsCombinatoricsGeneGenomics and Phylogenetic StudiesMachine Learning in BioinformaticsRNA and protein synthesis mechanisms
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