TY - JOUR
T1 - Agent-based model indicates chemoattractant signaling caused by Mycobacterium avium biofilms in the lung airway increases bacterial loads by spatially diverting macrophages
AU - Weathered, Catherine
AU - Pennington, Kelly
AU - Escalante, Patricio
AU - Pienaar, Elsje
N1 - Funding Information:
This research was supported by a grant from the CHEST Foundation in partnership with Insmed Incorporated (E.P. and P.E.); and the Frederick N. Andrews Fellowship (C·W.). This paper's contents are solely the responsibility of the authors and do not necessarily represent the official views of the CHEST Foundation, Mayo Clinic, or any other organization.
Funding Information:
This research was supported by a grant from the CHEST Foundation in partnership with Insmed Incorporated (E.P. and P.E.); and the Frederick N. Andrews Fellowship (C·W.). This paper's contents are solely the responsibility of the authors and do not necessarily represent the official views of the CHEST Foundation, Mayo Clinic, or any other organization.
Publisher Copyright:
© 2023 Elsevier Ltd
PY - 2023/1
Y1 - 2023/1
N2 - Incidence and prevalence of MAC infections are increasing globally, and reinfection is common. Thus, MAC infections present a significant public health challenge. We quantify the impact of MAC biofilms and repeated exposure on infection progression using a computational model of MAC infection in lung airways. MAC biofilms aid epithelial cell invasion, cause premature macrophage apoptosis, and limit antibiotic efficacy. In this computational work we develop an agent-based model that incorporates the interactions between bacteria, biofilm, and immune cells. In this computational model, we perform virtual knockouts to quantify the effects of the biofilm sources (deposited with bacteria vs. formed in the airway), and their impacts on macrophages (inducing apoptosis and slowing phagocytosis). We also quantify the effects of repeated bacterial exposures to assess their impact on infection progression. Our simulations show that chemoattractants released by biofilm-induced apoptosis bias macrophage chemotaxis towards pockets of infected and apoptosed macrophages. This bias results in fewer macrophages finding extracellular bacteria, allowing the extracellular planktonic bacteria to replicate freely. These spatial macrophage trends are further exacerbated with repeated deposition of bacteria. Our model indicates that interventions to abrogate macrophages’ apoptotic responses to bacterial biofilms and/or reduce frequency of patient exposure to bacteria will lower bacterial load, and likely overall risk of infection.
AB - Incidence and prevalence of MAC infections are increasing globally, and reinfection is common. Thus, MAC infections present a significant public health challenge. We quantify the impact of MAC biofilms and repeated exposure on infection progression using a computational model of MAC infection in lung airways. MAC biofilms aid epithelial cell invasion, cause premature macrophage apoptosis, and limit antibiotic efficacy. In this computational work we develop an agent-based model that incorporates the interactions between bacteria, biofilm, and immune cells. In this computational model, we perform virtual knockouts to quantify the effects of the biofilm sources (deposited with bacteria vs. formed in the airway), and their impacts on macrophages (inducing apoptosis and slowing phagocytosis). We also quantify the effects of repeated bacterial exposures to assess their impact on infection progression. Our simulations show that chemoattractants released by biofilm-induced apoptosis bias macrophage chemotaxis towards pockets of infected and apoptosed macrophages. This bias results in fewer macrophages finding extracellular bacteria, allowing the extracellular planktonic bacteria to replicate freely. These spatial macrophage trends are further exacerbated with repeated deposition of bacteria. Our model indicates that interventions to abrogate macrophages’ apoptotic responses to bacterial biofilms and/or reduce frequency of patient exposure to bacteria will lower bacterial load, and likely overall risk of infection.
KW - Agent-based model
KW - Biofilm
KW - Nontuberculous mycobacteria
KW - Spatial heterogeneity
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U2 - 10.1016/j.tube.2022.102300
DO - 10.1016/j.tube.2022.102300
M3 - Letter
C2 - 36621288
AN - SCOPUS:85145709146
SN - 1472-9792
VL - 138
JO - Bulletin of the International Union Against Tuberculosis and Lung Disease
JF - Bulletin of the International Union Against Tuberculosis and Lung Disease
M1 - 102300
ER -