Mathematical modeling of ventilator-induced lung inflammation.
Sarah MinucciRebecca L HeiseMichael S ValentineFranck J Kamga GninzekoAngela M ReynoldsPublished in: bioRxiv : the preprint server for biology (2020)
Respiratory infections, such as the novel coronavirus (SARS-COV-2) and other lung injuries, damage the pulmonary epithelium. In the most severe cases this leads to acute respiratory distress syndrome (ARDS). Due to respiratory failure associated with ARDS, the clinical intervention is the use of mechanical ventilation. Despite the benefits of mechanical ventilators, prolonged or misuse of these ventilators may lead to ventilation-associated/ventilation-induced lung injury (VILI). Damage caused to epithelial cells within the alveoli can lead to various types of complications and increased mortality rates. A key component of the immune response is recruitment of macrophages, immune cells that differentiate into phenotypes with unique pro- and/or anti-inflammatory roles based on the surrounding environment. An imbalance in pro- and anti-inflammatory responses can have deleterious effects on the individual's health. To gain a greater understanding of the mechanisms of the immune response to VILI and post-ventilation outcomes, we develop a mathematical model of interactions between the immune system and site of damage while accounting for macrophage polarization. Through Latin hypercube sampling we generate a virtual cohort of patients with biologically feasible dynamics. We use a variety of methods to analyze the results, including a random forest decision tree algorithm and parameter sensitivity with eFAST. Analysis shows that parameters and properties of transients related to epithelial repair and M1 activation and de-activation best predicted outcome. Using this new information, we hypothesize inter-ventions and use these treatment strategies to modulate damage in select virtual cases.
Keyphrases
- mechanical ventilation
- acute respiratory distress syndrome
- respiratory failure
- extracorporeal membrane oxygenation
- oxidative stress
- anti inflammatory
- diabetic rats
- intensive care unit
- sars cov
- immune response
- high glucose
- drug induced
- healthcare
- randomized controlled trial
- machine learning
- risk factors
- chronic pain
- health information
- mental health
- deep learning
- early onset
- climate change
- cardiovascular disease
- pulmonary hypertension
- coronary artery disease
- coronavirus disease
- respiratory syndrome coronavirus
- weight loss
- cardiovascular events
- health promotion