Latent tuberculosis and computational biology: A less-talked affair.

Dipanka Tanu Sarmah, Rubi Parveen, Jayendrajyoti Kundu,Samrat Chatterjee

Progress in biophysics and molecular biology(2023)

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摘要
Tuberculosis (TB) is a pervasive and devastating air-borne disease caused by the organisms belonging to the Mycobacterium tuberculosis (Mtb) complex. Currently, it is the global leader in infectious disease-related death in adults. The proclivity of TB to enter the latent state has become a significant impediment to the global effort to eradicate TB. Despite decades of research, latent tuberculosis (LTB) mechanisms remain poorly understood, making it difficult to develop efficient treatment methods. In this review, we seek to shed light on the current understanding of the mechanism of LTB, with an accentuation on the insights gained through computational biology. We have outlined various well-established computational biology components, such as omics, network-based techniques, mathematical modelling, artificial intelligence, and molecular docking, to disclose the crucial facets of LTB. Additionally, we highlighted important tools and software that may be used to conduct a variety of systems biology assessments. Finally, we conclude the article by addressing the possible future directions in this field, which might help a better understanding of LTB progression.
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关键词
Computational systems biology,Genome-scale metabolic models,Latent tuberculosis,Machine-learning,Mathematical modelling,Network analysis
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