Data di Pubblicazione:
2018
Abstract:
Background:
An open challenge in translational bioinformatics is the analysis of sequenced metagenomes from
various environmental samples. Of course, several studies demonstrated the 16S ribosomal RNA could be considered
as a barcode for bacteria classification at the genus level, but till now it is hard to identify the correct composition of
metagenomic data from RNA-seq short-read data. 16S short-read data are generated using two next generation
sequencing technologies, i.e. whole genome shotgun (WGS) and amplicon (AMP); typically, the former is filtered to
obtain short-reads belonging to a 16S shotgun (SG), whereas the latter take into account only some specific 16S
hypervariable regions. The above mentioned two sequencing technologies, SG and AMP, are used alternatively, for
this reason in this work we propose a deep learning approach for taxonomic classification of metagenomic data, that
can be employed for both of them.
Results:
To test the proposed pipeline, we simulated both SG and AMP short-reads, from 1000 16S full-length
sequences. Then, we adopted a k-mer representation to map sequences as vectors into a numerical space. Finally, we
trained two different deep learning architecture, i.e., convolutional neural network (CNN) and deep belief network
(DBN), obtaining a trained model for each taxon. We tested our proposed methodology to find the best parameters
configuration, and we compared our results against the classification performances provided by a reference classifier
for bacteria identification, known as RDP classifier. We outperformed the RDP classifier at each taxonomic level with
both architectures. For instance, at the genus level, both CNN and DBN reached 91.3% of accuracy with AMP
short-reads, whereas RDP classifier obtained 83.8% with the same data.
Conclusions:
In this work, we proposed a 16S short-read sequences classification technique based on k-mer
representation and deep learning architecture, in which each taxon (from phylum to genus) generates a classification
model. Experimental results confirm the proposed pipeline as a valid approach for classifying bacteria sequences; for
this reason, our approach could be integrated into the most common tools for metagenomic analysis. According to
obtained results, it can be successfully used for classifying both SG and AMP data.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Metagenomic; Classification; CNN; DBN; k-mer representation; Amplicon; Shotgun
Elenco autori:
Gaglio, Salvatore; LA PAGLIA, Laura; Renda, Giovanni; Rizzo, Riccardo; Urso, Alfonso; Fiannaca, Antonino; LA ROSA, Massimo
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