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Chaos game representation and its applications in bioinformatics

Hannah F. Löchel, Dominik Heider

2021Computational and Structural Biotechnology Journal94 citationsDOIOpen Access PDF

Abstract

Chaos game representation (CGR), a milestone in graphical bioinformatics, has become a powerful tool regarding alignment-free sequence comparison and feature encoding for machine learning. The algorithm maps a sequence to 2-dimensional space, while an extension of the CGR, the so-called frequency matrix representation (FCGR), transforms sequences of different lengths into equal-sized images or matrices. The CGR is a generalized Markov chain and includes various properties, which allow a unique representation of a sequence. Therefore, it has a broad spectrum of applications in bioinformatics, such as sequence comparison and phylogenetic analysis and as an encoding of sequences for machine learning. This review introduces the construction of CGRs and FCGRs, their applications on DNA and proteins, and gives an overview of recent applications and progress in bioinformatics.

Topics & Concepts

Computer scienceRepresentation (politics)Sequence (biology)Alignment-free sequence analysisMultiple sequence alignmentMarkov chainBioinformaticsSequence analysisSequence alignmentTheoretical computer scienceFeature (linguistics)Computational biologyArtificial intelligenceMachine learningBiologyPeptide sequenceGeneticsDNAPolitical sciencePhilosophyLawLinguisticsGenePoliticsFractal and DNA sequence analysisMachine Learning in BioinformaticsGenomics and Phylogenetic Studies
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