A virtual host model of Mycobacterium tuberculosis infection identifies early immune events as predictive of infection outcomes
•We present HostSim, a multiscale virtual host model of Mtb infection.•We create a virtual human population that exhibits a spectrum of clinical outcomes.•Early events may be predictive of clinical outcomes hundreds of days later.•Simulations suggest that biomarkers of TB progression may be transien...
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Veröffentlicht in: | Journal of theoretical biology 2022-04, Vol.539 (C), p.111042-111042, Article 111042 |
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Sprache: | eng |
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Zusammenfassung: | •We present HostSim, a multiscale virtual host model of Mtb infection.•We create a virtual human population that exhibits a spectrum of clinical outcomes.•Early events may be predictive of clinical outcomes hundreds of days later.•Simulations suggest that biomarkers of TB progression may be transient.
Tuberculosis (TB), caused by infection with Mycobacterium tuberculosis (Mtb), is one of the world’s deadliest infectious diseases and remains a significant global health burden. TB disease and pathology can present clinically across a spectrum of outcomes, ranging from total sterilization of infection to active disease. Much remains unknown about the biology that drives an individual towards various clinical outcomes as it is challenging to experimentally address specific mechanisms driving clinical outcomes. Furthermore, it is unknown whether numbers of immune cells in the blood accurately reflect ongoing events during infection within human lungs. Herein, we utilize a systems biology approach by developing a whole-host model of the immune response to Mtb across multiple physiologic and time scales. This model, called HostSim, tracks events at the cellular, granuloma, organ, and host scale and represents the first whole-host, multi-scale model of the immune response following Mtb infection. We show that this model can capture various aspects of human and non-human primate TB disease and predict that biomarkers in the blood may only faithfully represent events in the lung at early time points after infection. We posit that HostSim, as a first step toward personalized digital twins in TB research, offers a powerful computational tool that can be used in concert with experimental approaches to understand and predict events about various aspects of TB disease and therapeutics. |
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ISSN: | 0022-5193 1095-8541 |
DOI: | 10.1016/j.jtbi.2022.111042 |