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Agent Based Models of the Acute Inflammatory Response: Update on Development and Future Directions Swarmfest 2004, Ann Arbor, MI May 11, 2004 Gary An, MD Department of Trauma Cook County Hospital Acute Inflammatory Response (AIR) Initial defense and repair mechanism Specialized cellular/molecular pathways Diffusely distributed/Tissue Nonspecific Activation is non-specific to insult Precedes Adaptive Immune response (self/non-self distinction=>Antibodies) Systemic Inflammatory Response Syndrome/Multiple Organ Failure (SIRS/MOF) Disease of the ICU => “Unexplored State” Pathologic state of Acute Immune Response (AIR) Physiologic manifestations result from endogenous mediators Hyperinflammation vs. Immunesuppression =>Temporal and Spatial Challenge of SIRS/MOF Gap between Pathophysiology and Diagnosis Gap between Mechanisms and Treatment Gap between Basic Science and Clinical Implementation Nonlinear Behavior => Complexity AIR as a Complex System Components Rules Locality Emergent Properties Unexpected Behavior Cells Cellular Programming Membranes/ Receptors Organ Physiology SIRS/MOF Applications of ABM to AIR/SIRS/MOF Base Global Model – Pathophysiology – Therapeutic Interventions Specific Disease Processes/Pathogens/Mechanism – Cutaneous and Inhalational Anthrax Basic Science Experiment Simulation – Epithelial Permeability Model ABM of Global Systemic Inflammation Endothelial/Blood interface Activation/Propagation of Inflammation Endothelial Cells and White Blood Cells Dynamics of Pathophysiology Proto-Testing Platform for Systemic Therapies Very Abstract! Current Model of Global Inflammation Cell types Cell Receptors and Functions Mediators Endothelial cells, neutrophils, monocytes, TH0, TH1, TH2, bacteria, white bl ood ce ll ge nerative cells L-selectin, E/P-selectin, CD-11/18, ICAM, TNFr, IL1r, adhesion, migration, respiratory burst, phagocytosis, apoptosis Endotoxi n, PA F, TNF, IL-1, IL-4, IL-8, IL-10, IL-12, IFNg, sTNFr, IL-1ra, GCSF Validation Strategies Agent Rules=>Transparency wrt code Behavior of Individual wrt global response to injury=>Individual Dynamics Behavior of Population wrt cytokine patterns=>Population Dynamics Behavior of Population wrt outcome to intervention=>Population Response Individual Response Dynamics Four possible dynamics: – Successful healing – “Phase II” or Immune-suppressed SIRS/MOF – “Phase I” or Hyper-inflammatory SIRS/MOF – Overwhelming insult/infection Function of degree of Initial Insult Population Dynamics: Cytokine Profiles Patterns of cytokine levels for a population at a specific IIN 7 days simulated time IIN generates 50% mortality N=100 Pattern Oriented/Qualitative (Very Large Range-not shown) Population Response: Simulating Anti-inflammatory Interventions Any mediator represented as a variable can be manipulated Modified based on published effects No other modifications of the ABM other than simulated intervention Results all generated prospectively List of In-Silico Experiments 3 day anti-TNF (Reinhart) 3 day rhIL-1ra (Opal) 7 day GCSF (Root) Smaller Clinical Trials 1 dose anti-CD18 (Rhee) Phase III Clinical Trials Animal Studies 3 day combination antiTNF and IL-1ra (Remick) Hypothet ical Multimodal Regimes anti-CD-18/anti-TNF/IL1ra GCSF/anti-TNF/IL-1ra ABM of Anthrax Infection Modification of Base Global Model Specific Characteristics of B. anthracis – Both Cutaneous and Inhalational Forms – Reproduce effects of Toxin-Component (Lethal Factor, Edema Factor and Protective Antigen) knockout species of B. anthracis Time of Death Distributions in All Modes Basic Science ABMs Basic Science Paradigm = Linear analysis Examine Component Sub-Systems Improve efficiency of Basic Science experiments Guide further investigation Modular Components of System-wide Model ABM of Epithelial Cell Permeability: Structure Based on model of Delude Epithelial cell culture => Grid of Epi Cell Agents Agent rules => Tight Junction (TJ) Formation TJ status determines permeability ABM of Epithelial Cell Permeability: Results Increased Permeability to NO/Proinflammatory cytokine mix Blocked with NO scavenger/iNOS inhibitor Matches Basic Science results Potential Modular Model Uses of ABM of the AIR Formalize Mental Models – Functional Repository of Basic Science Information – Modular – Community-dependent Drug Engineering – Identify targets for manipulation – Use to pre-test a planned treatment regimes => Multi-Modal regimes Uses of ABM of the AIR cont. Clinical Therapeutics Design – Patient Population Sub-stratification – Generate Cytokine Profiles => “Finer Grained” Theoretical Tool – Mathematical characterization of system to guide future therapies – “Cross Platform” Validation Future Development Multi-Tissue Model – Directional Flow – Coagulation – Multiple Organ Failure/Support Modular Model – Basic Science Models – Community/Web-based – “Functional Data-bank” Complex Systems Rules drive Local interactions between individual components Feedback loops =>non-linearity Interaction dynamics result in metastable structures=> Emergence Hierarchies of Emergent properties Non-intuitive, paradoxical behavior Agent Based Modeling (ABM) System of Components=>Agents Agent Rule systems=>Basic Science Populations of agents in virtual world Runs = agent actions/interactions=> Locality Multiple runs=Random Number Generators=> basic science experiments Stochastic and Deterministic Why use ABM to model AIR/SIRS/MOF? Lots of information about potential agents (cells and molecules) Process is driven by local interactions Dynamics may be too complex for topdown modeling Multiple possible levels of model validation Integration of Models => Total System Doing Science with ABM In-Silico Experiments => Virtual control and experimental populations – Apply standard statistical tools – Use Pattern Oriented Analysis Formalize mental model building/testing hypotheses Develop Theories Population Runs Random number generators are active=> Heterogeneity Multiple runs at a specific IIN generates a study “population” Generates a “mortality rate” for a particular IIN (Mortality at >80% Total Damage)=>“Control Population” Results of In-Silico Experiments in Sterile Mode (n=100) Model Run Mortality Chi Square Base 86% Antibiotics only 37% Abs/anti-TNF 39% Significant, p=.01 vs. No Abs NS Abs/rh-IL-1ra 41% NS Abs/anti-CD18 42% NS Abs/rhIL-1ra/anti38% TNF Abs/anti-CD18/rhIL- 45% 1ra/anti-TNF NS NS Results of In-Silico Experiments in Infectious Mode (n=100) Model Run Mortality Base 100% Antibiotics only 40% Abs/anti-TNF Abs/rhIL-1ra Abs/GCSF Abs/rhIL1ra/anti-TNF Abs/GCSF/rhIL -1ra/anti-TNF Chi-square 42% 39% 36% 37% Significant, p=.01 vs No Abs NS NS NS NS 38% NS End Oxy Deficit Distributions in All Modes What ABM is not! NOT a replacement of current techniques of scientific investigation. => “Software vs. Hardware” NOT a clinical tool to provide a prognosis or determine a treatment course for an individual patient* Translation, Synthesis and ABMs Requires data from Basic Science – “What we look for and find out.” Places it into Synthetic framework – “How do the pieces fit together.” Uses Multiple Hierarchies – “Little pieces make big pieces.” We Do This Already! – Mental Models => Software Engineering “Theories of SIRS/MOF” “Dynamic Equilibrium”=>Response is appropriate, degree is not Concept of “anatomic containment” and “physiologic containment” Identify “Amplifiers” of response Importance of all aspects of the response => “If a mediator does a lot of different stuff don’t mess with it.” Supplementation, not Blockade (WBCs smarter than ICU MDs) Summary of Key Points The Acute Inflammatory Response is a complex system that cannot be fully characterized using existing techniques. Agent Based Modeling is well suited to modeling the Inflammatory Response. ABM would be an useful adjunct to existing techniques of investigation.