| Literature DB >> 25023946 |
Gesham Magombedze1, David Dowdy2, Nicola Mulder3.
Abstract
Latent tuberculosis is a clinical syndrome that occurs after an individual has been exposed to the Mycobacterium tuberculosis (Mtb) Bacillus, the infection has been established and an immune response has been generated to control the pathogen and force it into a quiescent state. Mtb can exit this quiescent state where it is unresponsive to treatment and elusive to the immune response, and enter a rapid replicating state, hence causing infection reactivation. It remains a gray area to understand how the pathogen causes a persistent infection and it is unclear whether the organism will be in a slow replicating state or a dormant non-replicating state. The ability of the pathogen to adapt to changing host immune response mechanisms, in which it is exposed to hypoxia, low pH, nitric oxide (NO), nutrient starvation, and several other anti-microbial effectors, is associated with a high metabolic plasticity that enables it to metabolize under these different conditions. Adaptive gene regulatory mechanisms are thought to coordinate how the pathogen changes their metabolic pathways through mechanisms that sense changes in oxygen tension and other stress factors, hence stimulating the pathogen to make necessary adjustments to ensure survival. Here, we review studies that give insights into latency/dormancy regulatory mechanisms that enable infection persistence and pathogen adaptation to different stress conditions. We highlight what mathematical and computational models can do and what they should do to enhance our current understanding of TB latency.Entities:
Keywords: Mycobacterium tuberculosis; latency and dormancy regulation; latency models; mathematical and computational modeling
Year: 2013 PMID: 25023946 PMCID: PMC4090907 DOI: 10.3389/fbioe.2013.00004
Source DB: PubMed Journal: Front Bioeng Biotechnol ISSN: 2296-4185
LTBI mathematical and computational models.
| LTBI mathematical and computational models ( | Advantages | Disadvantages |
|---|---|---|
| Lung and lymph node models | Simplify complicated biological systems that are difficult to study experimentally in the lab | Results are dependent of model parameters and available data Complex to analyze |
| Use computer simulation | ||
| Help to design new experiments and derive new hypotheses | ||
| Not expensive and flexible | ||
| Granuloma models | Not expensive and flexible | Models the granuloma as an isolated structure |
| Can be used to understand unknown mechanisms of the granuloma with computer simulations | Results are dependent on model assumptions and available data | |
| Signaling and gene regulatory models | Can predict gene regulatory mechanisms in Mtb latency/dormancy adaptation | Depends on available data and the modeling approach used |
| Easy to simulated with a computer | Difficult to develop and analyze | |
| Multi-scale models | Link different scales: organs, tissues, cells, and molecules | Difficult to develop, analyze, and simulate |
| Model latency in a more realistic way | They are complicated | |
| Computational methods (models) | Ability to analyze data from different kinds of experiments | Computationally intensive |
| Offer a platform to integrate data and mathematical models | Depends on available data | |
| Predictive tools for identifying vaccine and drug candidates | Involves a combination of different sophisticated mathematical, statistical, and programing techniques |
Latency/dormancy .
| Latency/dormancy model | Advantages | Disadvantages |
|---|---|---|
| Wayne model ( | Can simulate different Mtb bacteria physiological dormant states | Uses a single stress factor (hypoxia) |
| Inexpensive and easy to carry out | Does not reflect what truly happens | |
| Easy for expressed genes profiling | Slow simulation of dormancy | |
| Rapid anaerobic model ( | Inexpensive and easy to carry out | Uses a single stress factor (hypoxia) |
| Rapid simulation of Mtb dormant state | Difficult to correlate with | |
| Easy for expressed genes profiling | ||
| Multi-stress model ( | Easily achieve the stationary and non-replicating phases of Mtb | Difficult to correlate with |
| Not expensive and easy to carry out | ||
| Easy for expressed genes profiling | ||
| Cornell model ( | Inexpensive and easy to handle | Latency development does not compare well to human LTBI |
| Availability of genetic variant strains | ||
| Large number of immunological tools and reagents | ||
| Can simulate latency/dormancy | ||
| Guinea pig/rabbit model ( | Easy to handle | Limited availability of reagents |
| Show necrosis and granuloma structure similar to humans | Lack of true latency which resembles human LTBI | |
| Non-human primate model ( | Similar immunological and infection pathology with humans | Expensive |
| Develop LTBI similar to humans | Require trained personnel (veterinary scientists) to handle | |
| Availability of reagents | Ethical issues |
Mtb DosR-regulon genes.
| Rv number | Gene name | Protein function (probable) | Rv number | Gene name | Protein function (probable) |
|---|---|---|---|---|---|
| Rv0079 | HP | Rv2028c | Universal stress protein | ||
| Rv0080 | CHP | Rv2029c | Phosphofructokinase | ||
| Rv0081 | Transcriptional factor | Rv2030c | CHP | ||
| Rv0082 | Oxidoreductase | Rv2031c | Heat shock protein | ||
| Rv0083 | Oxidoreductase | Rv2032 | CHP | ||
| Rv0569 | CHP | Rv2623 | Universal stress protein | ||
| Rv0570 | Ribonucleotide red. | Rv2624c | Universal stress protein | ||
| Rv0571c | CHP | Rv2625c | Leucine rich protein | ||
| Rv0572c | HP | Rv2626c | Hypoxic response protein | ||
| Rv0574c | CHP | Rv2627c | CHP | ||
| MT0639 | HP | Rv2628 | HP | ||
| Rv1733c | Transmembrane protein | Rv2629 | CHP | ||
| Rv1734c | CHP | Rv2630 | HP | ||
| Rv1736c | Nitrate reductase | Rv2631 | CHP | ||
| Rv1737c | Nitrite transporter | Rv2830c | Antitoxin VapB22 | ||
| Rv1738 | CHP | Rv3126c | HP | ||
| Rv1812c | Dehydrogenase | Rv3127 | CHP | ||
| Rv1813c | CHP | Rv3128c | CHP | ||
| Rv1996 | Universal stress protein | Rv3129 | CHP | ||
| Rv1997 | Cation trans. ATPase | Rv3130c | Triacylglycerol synthase | ||
| Rv2003c | CHP | Rv3131 | CHP | ||
| Rv2004c | HP | Rv3132c | Sensor hist. Kinase | ||
| Rv2005c | Universal stress protein | Rv3133c | Two-comp. resp. reg. | ||
| Rv2006 | Trehalose phosphatize | Rv3134c | Universal stress protein | ||
| Rv2007c | Ferredoxin | Rv3841 | Bacterioferritin | ||
| Rv2027c | Sensor hist. kinase |
A list of dosR-regulon genes. dosT is part of the dosR-regulon but it is not up-regulated in response to many conditions tested to date. HP, hypothetical protein; CHP, conserved hypothetical protein.