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Resonant recognition model as a preprocessing technique for RNA classification

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Resumo(s)

The development of high throughput sequencing technologies, such as RNA-Seq, has enabled the generation of large volumes of biological data. Thus, it is necessary to develop computational methods to interpret this massive volume of data and contribute to knowledge discovery. RNA sequences are products of the transcription of genomic DNA sequences and represent the gene expression process that organisms use to synthesize protein or RNA molecules. These RNA sequences can be compared between organisms of the same or different species to demonstrate similar functional proteins. There are several classes of RNA sequences (mRNA, rRNA, tRNA, ncRNA, etc.), with different biological functions. The correct identification of each class of RNA sequences is important because of the huge volume of unlabelled data available. In this context, this study proposes an approach based on the Resonant Recognition Model (RRM) for feature extraction and classification regarding the ncRNA and mRNA classes. To assess the proposed approach, it was adopted the dataset from the PLEK method. Despite the reduction of the input data size achieved using the RRM model, the results show high accuracy for primary protein sequences translated from RNA sequences, signaling the potential of the proposed approach to classify RNA.

Descrição

Palavras-chave

RNA DNA Amino Acid RRM RNAs Classification Feature Extraction Bioinformatics Pattern Recognition

Contexto Educativo

Citação

Souza, Felipe Bueno de; Pimenta-Zanon, Matheus; Henriques, Dora; Pinto, M. Alice; Balsa, Carlos; Rufino, José; Fabrício Martins Lopes (2025). Resonant recognition model as a preprocessing technique for RNA classification. In ARTIIS 2024 International Workshops. 2348:1, p. 3-17. ISSN 1865-0929. DOI: 10.1007/978-3-031-83435-6_1

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Editora

Springer Nature Switzerland

Licença CC

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