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Biological Sequence Classification: A Review on Data and General Methods

Chunyan Ao, Shihu Jiao, Yansu Wang, Liang Yu, Quan Zou

2022Research96 citationsDOIOpen Access PDF

Abstract

With the rapid development of biotechnology, the number of biological sequences has grown exponentially. The continuous expansion of biological sequence data promotes the application of machine learning in biological sequences to construct predictive models for mining biological sequence information. There are many branches of biological sequence classification research. In this review, we mainly focus on the function and modification classification of biological sequences based on machine learning. Sequence-based prediction and analysis are the basic tasks to understand the biological functions of DNA, RNA, proteins, and peptides. However, there are hundreds of classification models developed for biological sequences, and the quite varied specific methods seem dizzying at first glance. Here, we aim to establish a long-term support website (http://lab.malab.cn/~acy/BioseqData/home.html), which provides readers with detailed information on the classification method and download links to relevant datasets. We briefly introduce the steps to build an effective model framework for biological sequence data. In addition, a brief introduction to single-cell sequencing data analysis methods and applications in biology is also included. Finally, we discuss the current challenges and future perspectives of biological sequence classification research.

Topics & Concepts

Biological dataSequence (biology)Construct (python library)Computer scienceFunction (biology)Biological databaseSequence analysisArtificial intelligenceMachine learningComputational biologyBioinformaticsBiologyDNAEvolutionary biologyGeneticsProgramming languageGenomics and Phylogenetic StudiesMachine Learning in BioinformaticsRNA and protein synthesis mechanisms
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