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PGBTR: A powerful and general method for inferring bacterial transcriptional regulatory networks
by
Ma, Bin-Guang
, Gu, Wei-Cheng
in
Bioinformatics
2024
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PGBTR: A powerful and general method for inferring bacterial transcriptional regulatory networks
by
Ma, Bin-Guang
, Gu, Wei-Cheng
in
Bioinformatics
2024
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PGBTR: A powerful and general method for inferring bacterial transcriptional regulatory networks
Paper
PGBTR: A powerful and general method for inferring bacterial transcriptional regulatory networks
2024
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Overview
Predicting bacterial transcriptional regulatory networks (TRNs) through computational methods is a core challenge in systems biology, and there is still a long way to go. Here we propose a powerful, general, and stable computational framework called PGBTR, which employs Convolutional Neural Networks (CNN) to predict bacterial transcriptional regulatory relationships from gene expression data and genomic information. PGBTR consists of two main components: the input generation step PDGD and the deep learning model CNNBTR. On the real Escherichia coli and Bacillus subtilis datasets, PGBTR outperforms other advanced supervised and unsupervised learning methods in terms of AUROC, AUPR, and F1-score. Moreover, PGBTR exhibits greater stability in identifying real transcriptional regulatory interactions compared to existing methods. PGBTR provides a new software tool for bacterial TRNs inference, and its core ideas can be further extended to other molecular network inference tasks and other biological problems using gene expression data.
Publisher
Cold Spring Harbor Laboratory
Subject
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