Virtual Experiments Enable Exploring and Challenging Explanatory Mechanisms of Immune-Mediated P450 Down-Regulation
Authored by Brenden K Petersen, Glen E P Ropella, C Anthony Hunt
Date Published: 2016
DOI: 10.1371/journal.pone.0155855
Sponsors:
UCSF Discovery Fellowship
Platforms:
Java
MASON
Model Documentation:
Other Narrative
Flow charts
Mathematical description
Model Code URLs:
Model code not found
Abstract
Hepatic cytochrome P450 levels are down-regulated during inflammatory
disease states, which can cause changes in downstream drug metabolism
and hepatotoxicity. Long-term, we seek sufficient new insight into
P450-regulating mechanisms to correctly anticipate how an individual's
P450 expressions will respond when health and/or therapeutic
interventions change. To date, improving explanatory mechanistic insight
relies on knowledge gleaned from in vitro, in vivo, and clinical
experiments augmented by case reports. We are working to improve that
reality by developing means to undertake scientifically useful virtual
experiments. So doing requires translating an accepted theory of immune
system influence on P450 regulation into a computational model, and then
challenging the model via in silico experiments. We build upon two
existing agent-based models-an in silico hepatocyte culture and an in
silico liver-capable of exploring and challenging concrete mechanistic
hypotheses. We instantiate an in silico version of this hypothesis: in
response to lipopolysaccharide, Kupffer cells down-regulate hepatic P450
levels via inflammatory cytokines, thus leading to a reduction in
metabolic capacity. We achieve multiple in vitro and in vivo validation
targets gathered from five wet-lab experiments, including a
lipopolysaccharidecytokine dose-response curve, time-course P450
down-regulation, and changes in several different measures of drug
clearance spanning three drugs: acetaminophen, antipyrine, and
chlorzoxazone. Along the way to achieving validation targets, various
aspects of each model are falsified and subsequently refined. This
iterative process of falsification-refinement-validation leads to
biomimetic yet parsimonious mechanisms, which can provide explanatory
insight into how, where, and when various features are generated. We
argue that as models such as these are incrementally improved through
multiple rounds of mechanistic falsification and validation, we will
generate virtual systems that embody deeper credible, actionable, explanatory insight into immune system-drug metabolism interactions
within individuals.
Tags
Metabolism
Hepatotoxicity
Rat
In-vitro
Cytochromes p450
Inflammatory mediators
Hepatic disposition
Human hepatocytes
Drug disposition
Acetaminophen