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7th International Workshop on Clinical Pharmacology of Tuberculosis Drugs Sept. 5, 2014 Critical Path to TB Drug Regimens Klaus Romero MD MS FCP The Challenge- New Regimens Needed • Emphasis on combination study approaches rather than development of single agents needed • Increasingly “fragile” TB drug development pipeline with the continued divestment of companies in the Antiinfective space • Develop and validate models and methods that can accelerate the drug development process, derisk programs and decrease risk of failure CPTR Mission & Purpose Accelerate the development of new, safe, and highly effective regimens for TB by enabling early testing of drug combinations. The Charter Has Expanded Accelerate the development of a regulatory approvable in vitro diagnostic assay for rapid drug susceptibility testing of TB to facilitate drug development and rational use of new drug regimens. AND…….. Develop a suite of modeling and simulation tools to de-risk &accelerate TB drug and drug regimen development. Additionally, continue to build the evidence base to evaluate predictivity of HFS-TB for clinical outcomes. Current TB Regimen Development Risk of Late Stage Attrition PRECLINICAL Varied models approached currently applied PHASE I-IIa Safety PKPD Dose-Ranging PK 14-Day EBA (Whole Blood Assay?) Dosing POC-human Two-Month Combination CONFIRMATORY Randomized PROOF OF Controlled COMBINATION Trial Efficacy EFFICACY PHASE III BIG GAP Which models best inform critical decisions? Compound Selection / Regimen Evaluation PHASE IIb Reliability of Predictions Uncertain Early Indication of Efficacy of Individual Drugs and Limited Data on Combinations Dose Selection / Regimen Evaluation Critical Path Drug Development Decisions CPTR Annual Workshop © 2013 Bill & Melinda Gates Foundation | Gold Standard for Confirmation of Efficacy (Durable Cure) CPTR Regulatory Science Consortium Regulatory Science Consortium Research Resources Group Role in Enabling & Accelerating the Drug Development Process: Drug Identify tools/methods that can bring the most value Development Reach scientific consensus by sharing expertise, information, data Coalition • • • Collaborate with regulators on DDT development & use • Proceed with regulatory qualification when appropriate Regulatory Path: Novel Drug Development Tools Actionable Drug Development Tool Potential Drug Development Tool or Biomarker C-Path/CPTR Regulatory Teams Supporting Data & Evidence Scattered Across Multiple sources Integrated Database TB Data Standard Regulatory-endorsed Tool or BM: Context of Use Supporting Evidence Available Data Sources CPTR Modeling and Simulation Work Group Six projects covering a spectrum of drug-development stages: Systems Pharmacology Modeling Hollow-Fiber System platform for Mtb PhysiologicallyBased Pharmacokinetic Modeling Population Pharmacokinetic/ Pharmacodynamic Modeling Liquid Culture Empirical Modeling Risk Stratification Modeling for druginduced cardiac arrhythmias Future State TB Regimen Development Increase Confidence & Decrease Risk PRECLINICAL PHASE I-IIa HFS-TB: biologic rationale/strain/dose response/compound selection Murine models/ Balbc. CoU- Safety PKPD Dose-Ranging PK 14-Day EBA Randomized Controlled Trial Efficacy Dosing POC-human CONFIRMATORY PROOF OF COMBINATION EFFICACY BIG GAP PBPK Modeling Quantitative Assessment of Liquid Culture Biomarker Evidence base PopPKPD Modeling Population PKPD Lesionbased Kramnick CoUgenerate data Accurate PKPD Translation PHASE III PHASE IIb Drug-Disease-Trial Model Systems Pharmacology/ Mechanism Based Models Penultimate Clinical Trial Simulation Tool Accurate IVIVE Extrapolation Early Indication of Efficacy of Individual Drugs and Data on Combinations Dose Selection / Regimen Evaluation Critical Path Drug Development Decisions CPTR Annual Workshop © 2013 Bill & Melinda Gates Foundation | Increase Reliability of Predictions for Dose Selection and Efficacy Outcomes TPP: 3mo Regimen 9 HFS-TB Model HFS-TB Predicted vs. Clinic Observed Outcomes Positive Qualification Opinion issued by EMA!!!! PBPK: Model structure Left lung Right lung Low lobe Middle lobe Top lobe Low lobe Lower airway Upper airway Top lobe Alveoli Mass Blood Pulmonary Blood Reservoir Venous Blood Arterial Blood Model Implemented on SIMCYP Platform Adipose Brain 2 2 1.5 1.5 Bone 1 0.5 0.5 0 0 0.5 10 20 Time [hr] 30 0 Heart 12 10 30 6 4 8 6 4 0 10 20 Time [hr] 0 30 2 1.5 30 0.5 2 20 0 10 20 Time [hr] 15 0 30 10 20 Time [hr] 5 12 2.5 3 2 10 20 Time [hr] 30 0 Conc [mg/L] Conc [mg/L] Conc [mg/L] 10 8 6 4 1 0 10 20 Time [hr] 30 0 10 20 Time [hr] 0 10 20 Time [hr] 0 30 0 30 30 Lung 2 2 1.5 1 0 10 20 Time [hr] 2.5 1.5 1 0.5 0.5 2 0 0 Artery 5 4 4 2 Spleen 3 30 6 4 0 30 10 20 Time [hr] Pancreas 2 0 0 8 6 14 0 0 30 8 Skin 1 10 20 Time [hr] Muscle 6 2 0 10 5 Port Vein 3 6 4 6 4 8 1 10 2 2 10 25 Conc [mg/L] 8 10 20 Time [hr] 2.5 Liver 35 0 0 Kidney 12 Conc [mg/L] Conc [mg/L] 30 14 10 Conc [mg/L] 10 20 Time [hr] 12 Conc [mg/L] 0 3 0 Conc [mg/L] 0 14 Conc [mg/L] 1 1 Conc [mg/L] 1.5 Conc [mg/L] 2 Conc [mg/L] Conc [mg/L] 2.5 Gut 3.5 Conc [mg/L] Plasma 3 0 10 20 Time [hr] 30 0 0 10 20 Time [hr] 30 Population PK/PD Modeling GOAL: Develop population PK-PD (POPPK-PD) model for TB. Explore PK-PD data where therapeutic drug monitoring was practiced in clinical setting. Develop a POPPK understanding for 1st line drugs in patients with active disease Develop a POPPK understanding for 2nd line drugs in patients with active disease Develop a comprehensive POPPK-PD model for relevant endpoints for efficacy and safety Liquid Culture / Empirical Modeling GOAL 1 GOAL 2 GOAL 3 Develop a quantitative model of TTP trajectory (EBA and Phase II studies) Develop a quantitative model linking TTP trajectory (Goal 1) to long term relapse with REMox Develop a model to derive TTP data from CFU data (“TTP/CFU” model). Link grouped trajectories of TTP incorporating treatment duration will be constructed (“TTP-duration” model) Graphic Conceptualization Clinically-relevant Outcome (Goal 2) 1-P of durable cure TTP model (Goal 1) Time (weeks) TTP trajectory parameters drive survival mode Diacon AH, Dawson R, von Groote-Bidlingmaier F, Symons G, Venter A, Donald PR, van Niekerk C, Everitt D, Winter H, Becker P, Mendel CM, Spigelman MK. 14-day bactericidal activity of PA-824, bedaquiline, pyrazinamide, and moxifloxacin combinations: a randomised trial. Lancet. 2012;380(9846):986-93. Systems Pharmacology / Mechanistic Modeling GOAL: To develop an integrated model to simulate new and improved drug therapy alternatives for pulmonary TB infection • New drugs and drug combinations • Different dose, schedule, and duration • Population-specific therapies • Insights to adherence and bacterial resistance • Impact due to granuloma dynamics • Framework for accelerated hypothesis development and concept exploration • Complement and enhance other TB models, e.g., animal models, population epidemiology • Focus clinical trials likely to yield best results Systems Pharmacology / Mechanistic Modeling Risk Stratification Modeling Drug-Induced Cardiac Arrhythmias GOAL: Develop quantitative clinical trial simulation tools to identify risk predictors for TdP in “real world” patients CYP variants IKr+IKs effects Impaired repolarization reserve Electrolyte effects Genetic susceptibility Further Integration Towards a Clinical Trial Simulation Tool Integration of Efforts #2 (towards a CTS): Bridging the Gap in the Prediction of Clinical Outcomes Current status Initial infection Drug treatment Bacterial proliferation Physiological Response ? Clinical outcome CFU, TTP Diagnosis, time, disease status Useful biomarkers play a useful role: Is pathogen load enough? Currently only 1 common clinical biomarker (CFU sputum count) can be related to a model variable (bacterial load) CFU data alone appear not informative enough to characterize all clinically relevant disease trajectories for CTS Accuracy and precision of model parameter values not clear No sensitivity analysis or parameter correlation available. Are there any additional clinical biomarker(s) to guide model selection & development process ? Addition of Appropriate Marker Describing Important Parts of the Disease Process Future prospects Initial infection Drug treatment Additional biomarker Immune status & response Bacterial proliferation Clinical outcome Granulomas & lesions CFU, TTP Additional biomarker Diagnosis, time, disease status Recommendation Based on Current State of Experience Currently available systems biology models have no clinical connection. To arrive at clinically relevant PK-PD models for TB: Consider appropriate parts of the system biology models and simplifying them by 'lumping' states Consider options for remapping and rescaling of ‘General infectious proliferation model’ to Mtb • Including influence of pop. PK-PD variability on outcome Connect to multiple clinical biomarkers, responding on various time scales to inform model • Review databases for available clinical trial data • Optimize designs of upcoming trials • Model-based quantitative validation of clinical biomarkers • Predictive simulation of different disease trajectories (‘bifurcation’) • Use clinical results to determine population distribution of parameters 7th International Workshop on Clinical Pharmacology of Tuberculosis Drugs Sept. 5, 2014 Thank you!