2024
DOI: 10.1021/acs.jcim.3c02017
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MLDSPP: Bacterial Promoter Prediction Tool Using DNA Structural Properties with Machine Learning and Explainable AI

Subhojit Paul,
Kaushika Olymon,
Gustavo Sganzerla Martinez
et al.

Abstract: Bacterial promoters play a crucial role in gene expression by serving as docking sites for the transcription initiation machinery. However, accurately identifying promoter regions in bacterial genomes remains a challenge due to their diverse architecture and variations. In this study, we propose MLDSPP (Machine Learning and Duplex Stability based Promoter prediction in Prokaryotes), a machine learning-based promoter prediction tool, to comprehensively screen bacterial promoter regions in 12 diverse genomes. We… Show more

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“…Revealing of the molecular mechanism remains a key focus of ML-based bioinformatic studies with many interesting papers in this collection. Paul et al collectively applied both XGBoost and Shapley values to offer an effective prediction of bacterial promoter with enhanced interpretability. Xin et al employed a domain-based attention mechanism to identify DNA N4-methylcytosine sites.…”
mentioning
confidence: 99%
“…Revealing of the molecular mechanism remains a key focus of ML-based bioinformatic studies with many interesting papers in this collection. Paul et al collectively applied both XGBoost and Shapley values to offer an effective prediction of bacterial promoter with enhanced interpretability. Xin et al employed a domain-based attention mechanism to identify DNA N4-methylcytosine sites.…”
mentioning
confidence: 99%