Protective responses against M. tuberculosis (Mtb) in humans are poorly understood, especially those that would prevent establishment of infection or progression to disease. There is still no efficacious vaccine against Mtb, although ~30 vaccines are in various stages of testing and clinical trials. New treatment and prevention strategies are desperately needed to make a major impact on transmission, morbidity and mortality of TB. The host-pathogen interactions occurring during Mtb infection are complex and span across scales, from bacterial and cellular to organ to an entire host. To address this complex disease we need comprehensive and integrative tools to generate testable hypotheses about what characterizes an effective immune response to Mtb infection. Understanding the immune response to Mtb requires a systems biology approach, particularly a computational tool that can integrate large amounts and different types of data regarding specific aspects of the host-pathogen interaction in TB. This project represents an integrated strategy between computational and experimental approaches to tackle this challenging problem. The pathologic hallmark of Mtb infection is a granuloma, a collection of host cells (e.g. macrophages and T cells) that organize in an attempt to contain or eliminate the infection. Within a single host, several granulomas form in response to initial infection, and these granulomas are heterogeneous with variable trajectories, complicating the study of this infection. T cells play a central role in protection against TB, as best exemplified by the dramatic susceptibility of HIV+ humans to TB, even in the early stages of HIV infection. However, T cells come in many functional sub-types. De-convoluting the combination of T cell phenotypes and function that are most efficacious in clearing infection is a herculean task, one that requires a systems biology approach, marrying relevant experimental models and multi-scale and multi-compartment computational models. In the proposed work, we incorporate new data into a next-generation multi-scale and multi-compartment (lung-blood-lymph) computational model that has a host-scale readout. We pair with human and NHP studies both outlined herein and in ongoing separately funded studies to calibrate and validate the models and use them as a testing ground for model predictions in an iterative fashion in 3 key aims: (1) Characterize experimentally the heterogeneity, specificity, and localization of T cells and their function in granulomas and lymph nodes early post-Mtb infection in NHPs and use these data to parameterize, refine and validate our next-generation computational model adding important mechanisms that are currently lacking. (2) Identify mechanisms that balance pro and anti-inflammatory signals in granulomas and distinguish hypotheses regarding host and bacterial factors that limit granuloma T-cell function. (3) Identify early adaptive responses that prevent establishment of infection or disease using virtual clinical trials. Our established collaboration over 15 years will serve well the aims of this interdisciplinary proposal.

Public Health Relevance

Tuberculosis is still the leading cause of death due to infectious disease in the world today. Major strides are needed in clarifying what type of immunity is protective and prevents disease. This work pairs experimental with computational modeling to determine the role of T cells in the lymph nodes and lungs in TB and will predict what perturbations could lead to prevention of infection or disease.

Agency
National Institute of Health (NIH)
Institute
National Institute of Allergy and Infectious Diseases (NIAID)
Type
Research Project (R01)
Project #
5R01AI123093-03
Application #
9412799
Study Section
Modeling and Analysis of Biological Systems Study Section (MABS)
Program Officer
Lacourciere, Karen A
Project Start
2016-02-15
Project End
2021-01-31
Budget Start
2018-02-01
Budget End
2019-01-31
Support Year
3
Fiscal Year
2018
Total Cost
Indirect Cost
Name
University of Michigan Ann Arbor
Department
Microbiology/Immun/Virology
Type
Schools of Medicine
DUNS #
073133571
City
Ann Arbor
State
MI
Country
United States
Zip Code
48109
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Maiello, Pauline; DiFazio, Robert M; Cadena, Anthony M et al. (2018) Rhesus Macaques Are More Susceptible to Progressive Tuberculosis than Cynomolgus Macaques: a Quantitative Comparison. Infect Immun 86:
Cicchese, Joseph M; Evans, Stephanie; Hult, Caitlin et al. (2018) Dynamic balance of pro- and anti-inflammatory signals controls disease and limits pathology. Immunol Rev 285:147-167
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Joslyn, Louis R; Pienaar, Elsje; DiFazio, Robert M et al. (2018) Integrating Non-human Primate, Human, and Mathematical Studies to Determine the Influence of BCG Timing on H56 Vaccine Outcomes. Front Microbiol 9:1734
Pienaar, Elsje; Linderman, Jennifer J; Kirschner, Denise E (2018) Emergence and selection of isoniazid and rifampin resistance in tuberculosis granulomas. PLoS One 13:e0196322
Warsinske, Hayley C; DiFazio, Robert M; Linderman, Jennifer J et al. (2017) Identifying mechanisms driving formation of granuloma-associated fibrosis during Mycobacterium tuberculosis infection. J Theor Biol 429:1-17
Cadena, Anthony M; Fortune, Sarah M; Flynn, JoAnne L (2017) Heterogeneity in tuberculosis. Nat Rev Immunol 17:691-702
Cicchese, Joseph M; Pienaar, Elsje; Kirschner, Denise E et al. (2017) Applying optimization algorithms to tuberculosis antibiotic treatment regimens. Cell Mol Bioeng 10:523-535
Kirschner, Denise; Pienaar, Elsje; Marino, Simeone et al. (2017) A review of computational and mathematical modeling contributions to our understanding of Mycobacterium tuberculosis within-host infection and treatment. Curr Opin Syst Biol 3:170-185

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