Graph neural networks are effective and useful tools for problems that may be represented using graphs. The De Bruijn graph is a directed graph used to express overlaps between sequences of symbols in DNA sequence representation. In this paper, we present a method for sequence categorization using a De Bruijn sequence representation and a Convolutional Graph Neural Network (GCNN). We tested the methodology on a classification problem involving the 16S gene sequences. An analysis conducted on a dataset of 3000 16S sequences demonstrates results in comparison to state-of-the-art. The dataset utilized in the research and the source code can be accessed at https://github.com/Calder10/Bacteria-Taxonomic-Classification-using-GNN.
Amato, D., Calderaro, S., Lo Bosco, G., Rizzo, R., Vella, F. (2024). Bacteria Taxonomic Classification using Graph Neural Networks. In Iglesias Martínez JA, R. Dutta Baruah, D. Kangin, P.V. De Campos Souza (a cura di), IEEE International Conference on Evolving and Adaptive Intelligent Systems 2024 IEEE EAIS 2024. IEEE [10.1109/eais58494.2024.10569104].
Bacteria Taxonomic Classification using Graph Neural Networks
Amato, Domenico;Calderaro, Salvatore;Lo Bosco, Giosue;Rizzo, Riccardo;Vella, Filippo
2024-06-26
Abstract
Graph neural networks are effective and useful tools for problems that may be represented using graphs. The De Bruijn graph is a directed graph used to express overlaps between sequences of symbols in DNA sequence representation. In this paper, we present a method for sequence categorization using a De Bruijn sequence representation and a Convolutional Graph Neural Network (GCNN). We tested the methodology on a classification problem involving the 16S gene sequences. An analysis conducted on a dataset of 3000 16S sequences demonstrates results in comparison to state-of-the-art. The dataset utilized in the research and the source code can be accessed at https://github.com/Calder10/Bacteria-Taxonomic-Classification-using-GNN.File | Dimensione | Formato | |
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