Litcius/Paper detail

Representation learning applications in biological sequence analysis

Hitoshi Iuchi, Taro Matsutani, Keisuke Yamada, Natsuki Iwano, Shunsuke Sumi, Shion Hosoda, Shitao Zhao, Tsukasa Fukunaga, Michiaki Hamada

2021Computational and Structural Biotechnology Journal91 citationsDOIOpen Access PDF

Abstract

Although remarkable advances have been reported in high-throughput sequencing, the ability to aptly analyze a substantial amount of rapidly generated biological (DNA/RNA/protein) sequencing data remains a critical hurdle. To tackle this issue, the application of natural language processing (NLP) to biological sequence analysis has received increased attention. In this method, biological sequences are regarded as sentences while the single nucleic acids/amino acids or k-mers in these sequences represent the words. Embedding is an essential step in NLP, which performs the conversion of these words into vectors. Specifically, representation learning is an approach used for this transformation process, which can be applied to biological sequences. Vectorized biological sequences can then be applied for function and structure estimation, or as input for other probabilistic models. Considering the importance and growing trend for the application of representation learning to biological research, in the present study, we have reviewed the existing knowledge in representation learning for biological sequence analysis.

Topics & Concepts

Biological dataComputer scienceRepresentation (politics)Sequence (biology)Biological databaseArtificial intelligenceDNA sequencingProcess (computing)EmbeddingSequence analysisMachine learningFunction (biology)Computational biologyNatural language processingBiologyBioinformaticsDNAGeneticsPoliticsOperating systemPolitical scienceLawMachine Learning in BioinformaticsRNA and protein synthesis mechanismsGenomics and Phylogenetic Studies