Abstract
<p>Background: A promoter is a DNA regulatory region typically found upstream of a gene that plays a significant role in gene transcription regulation. Due to their function in transcription initiation, sigma (&#963;) promoter sequences in bacterial genomes are important. &#963;70 is among the most notable sigma factors. Therefore, the precise recognition of the &#963;70 promoter is essential in bioinformatics. <p> Objective: Several methods for predicting &#963;70 promoters have been developed. However, the performance of these approaches needs to be enhanced. This study proposes a convolutional neural network (CNN) based model iProm70 to predict &#963;70 promoter sequences from a bacterial genome. <p> Methods: This CNN-based method employs a one-hot encoding scheme to identify promoters. The CNN model comprises three convolution layers, followed by max-pooling and a dropout layer. The architecture tool was trained and tested on a benchmark and an independent dataset. We used four assessment measures to determine the prediction performance. <p> Results: It achieved 96.10% accuracy, and the area under the receiver operating characteristic curve was 0.99. <p> Conclusion: According to the comparative results, iProm70 outperforms the current approaches for defining &#963;70 promoter. A publicly accessible online web server is created, and it is accessible at the website: http://nsclbio.jbnu.ac.kr/tools/Prom70-CNN/.</p>
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