| Literature DB >> 32734572 |
Meenakshi Srinivasan1, Annesha White2, Ayyappa Chaturvedula1, Valvanera Vozmediano3, Stephan Schmidt3, Leo Plouffe4, La'Marcus T Wingate5.
Abstract
Pharmacometrics is the science of quantifying the relationship between the pharmacokinetics and pharmacodynamics of drugs in combination with disease models and trial information to aid in drug development and dosing optimization for clinical practice. Considering the variability in the dose-concentration-effect relationship of drugs, an opportunity exists in linking pharmacokinetic and pharmacodynamic model-based estimates with pharmacoeconomic models. This link may provide early estimates of the cost effectiveness of drug therapies, thus informing late-stage drug development, pricing, and reimbursement decisions. Published case studies have demonstrated how integrated pharmacokinetic-pharmacodynamic-pharmacoeconomic models can complement traditional pharmacoeconomic analyses by identifying the impact of specific patient sub-groups, dose, dosing schedules, and adherence on the cost effectiveness of drugs, thus providing a mechanistic basis to predict the economic value of new drugs. Greater collaboration between the pharmacoeconomics and pharmacometrics community can enable methodological improvements in pharmacokinetic-pharmacodynamic-pharmacoeconomic models to support drug development.Entities:
Year: 2020 PMID: 32734572 PMCID: PMC7578131 DOI: 10.1007/s40273-020-00944-0
Source DB: PubMed Journal: Pharmacoeconomics ISSN: 1170-7690 Impact factor: 4.981
Definitions and tutorials papers of key terminology
| Term | Brief definition | Key tutorial papers |
|---|---|---|
| Pharmacometrics | The analytical science using mathematical models to quantify the relationship between drug exposure and response for safety and efficacy, patient characteristics, disease progression, and clinical outcomes to make inferences for optimal drug dosing during drug development and clinical practice | [ |
| Pharmacokinetic–pharmacodynamic modeling | Pharmacokinetic/pharmacodynamic modeling links the time course of drug absorption, distribution, metabolism and excretion (expressed as a concentration–time relationship), with the consequent drug response (expressed as the concentration–effect relationship) to describe and predict drug exposure and response | [ |
| Sheiner’s learn and confirm paradigm | The paradigm of clinical drug development where each phase is designed for distinct purposes, i.e., learning and confirming. Phase I involves learning about general pharmacokinetics and tolerability in healthy patients, whereas phase IIA confirms early efficacy in a limited population. This is followed by a decision node, when positive efficacy can provide evidence to justify accelerating development. Phase IIB then involves learning about variations in PK and PD in target populations while phase III confirms safety and efficacy in a large patient population. This paradigm uses the Bayesian view, wherein prior knowledge from each phase is updated with the availability of new information from subsequent phases of trials using appropriate modeling strategies | [ |
| Model-based drug development | The paradigm of drug development utilizing modeling and simulation of drug efficacy and safety, and associated uncertainty in these parameters across preclinical and clinical phases to inform decision making. The key components of model-based drug development include using PK/PD, disease models, meta-analysis of drug and competitor treatment effect sizes, trial execution models describing protocol deviations (e.g., dropout and non-compliance), statistical models describing treatment effect, and decision rules that describe the course of action (terminating or accelerating development) after trial completion | [ |
| Clinical trial simulations | Modeling disease progression, clinical pharmacology of drugs, patient covariates, and trial protocol deviations to enable efficient and cost-effective clinical trial design and implementation | [ |
| Model-based meta-analysis | Model-based meta-analysis is a quantitative tool that enables comparison of interventions, by aggregating efficacy and safety results from numerous clinical trials while accounting for between-study and between-study-arm variability. This approach utilizes non-linear mixed-effect models and allows characterization of dose–response relationships and the impact of covariates and study and dosing characteristics on patient outcome and efficacy | [ |
| Disease progression models | Mathematical representations of the time course of a disease status and progression. These models can be empirical (data-driven descriptions of disease process), semi-mechanistic (data driven, but incorporate some knowledge about [patho]physiological and pharmacological processes), or systems biology (incorporate [patho]physiological and pharmacological processes in molecular detail from integration of in vitro, ex vivo, in vivo, non-clinical, and clinical data) | [ |
PD pharmacodynamics, PK pharmacokinetics
Fig. 1Economic evaluations conducted alongside clinical trials provide estimates of cost-efficacy. Conventional pharmacoeconomic analysis of new drugs are usually performed at the end of phase 3 trials. At this stage, non-establishment of cost-effectiveness might delay the approval and marketing of drugs. Early cost-effectiveness analysis, informed by comparative effectiveness evidence generated from pharmacometric models conducted across the drug development pathway can be informed by the well-established MBDD framework. Drug models include the characterization of concentration-time-effect relationship. Disease progression models describe the relationship between time course of disease and disease-specific biomarkers. Trial model describes protocol-deviations such as medication non-adherence and special populations. These analyses can be used to 1) provide early estimates of cost-effectiveness to support strategic R&D decisions of pipeline drugs (e.g., early termination of uneconomic product, resource utilization) and pricing decisions (e.g., consideration of benefit in value-based pricing). Additionally, they can help model long-term outcomes from surrogate end-points, thus predicting formulations, dosing strategies and patient sub-groups that are likely to show cost-effectiveness, especially in scenarios where conducting clinical trials is not possible. 2) Design efficient and more informative phase 3 trials. 3) Assess the impact of real-world scenarios such as non-adherence, dose adaptation in response to toxicity or public health care utilization patterns and outcomes
Summary of linked pharmacokinetic-pharmacodynamic-pharmacoeconomic (PK–PD–PE) models published along with their applications
| First author (year) | Drug | Pharmacometrics and other models | PE model | General results | Applications |
|---|---|---|---|---|---|
| Hughes (2001) [ | Hypothetical drug for Alzheimer’s disease | Clinical trial (Monte Carlo) simulation using PK–PD models, covariate models, and error models | Decision-analytic model | Estimates of probability of treatment success from clinical trial (Monte Carlo) simulation used as inputs into economic models to obtain distribution of cost-effectiveness estimates | Designing a phase III trial, generating early estimates of cost effectiveness and identifying subgroups in which a drug may provide the most clinical and cost effectiveness |
Poland (2001) [ | Disguised HIV protease inhibitor | Adherence model, PK–PD model | Economic model summarized using net present value metric | Simulations showed sensitivity of formulations to adherence and cost effectiveness of different formulations in various patient sub-groups | Provided data towards development of formulations with suitable PK characteristics for sub-groups of patients |
| Pink (2012) [ | Rituximab | Population PK–PD model | Markov model | Simulation- and trial-based estimates showed acceptable concordance for cost effectiveness of rituximab | Informing future value-of-information analysis, pricing decisions, determine impact of protocol deviations (e.g., non-adherence), patient subgroups, dose, and dosing schedules on cost effectiveness |
| Pink (2014) [ | Warfarin, rivaroxaban, apixaban, and dabigatran | Population PK–PD model-based clinical trial simulation | Discrete-event simulation model | Apixaban and pharmacogenetics-guided warfarin were cost-effective alternatives to clinically dosed warfarin | Provided cost-effectiveness estimates of various complex dosing algorithms in the absence of comparative clinical trials |
| van Hasselt (2015) [ | Eribulin | Disease progression clinical outcome model, PK model, semi-physiological model for neutropenia, ECOG performance score model, covariate model for patient characteristics, dropout model, and dose adaptation model | Cost model, where total cost was a function of absolute cumulative dose received, cost per dose, duration of each adverse event, and cost of adverse event. ICERs calculated for each scenario | Cost effectiveness of various scenarios considering varying dosing regimens, disease progression, patient characteristics, comparators, and adverse event profiles were assessed | Proof-of-concept study provided a framework for integration of disease progression, clinical outcome, toxicities, quality of life, and cost effectiveness to compare various treatment protocols and patient subgroups during early stages of drug development |
| Slejko (2016) [ | Hypothetical anti-inflammatory drug for COPD | Model-based meta-analysis | Markov microsimulation model | Impact of hypothetical drug on COPD exacerbations, costs, and QALYs in a patient cohort with varying disease characteristics | Demonstrated the synergistic aspects of MBMA and PE modeling to predict the effect of a drug on patient outcomes and cost effectiveness, which can be used during early-stage PE evaluation of drugs |
| Kamal (2017) and Wu (2018) [ | Oseltamivir | Population PK–PD model, susceptible, exposed, infected, and recovered model | Decision tree | Cost effectiveness of oseltamivir in different dosing regimens and transmissibility scenarios | Provides a proof-of-concept using an interdisciplinary framework to estimate the cost utility of an antiviral drug under various pandemic scenarios by linking PK–PD, epidemiological, and economic models during early drug development and allows for conduct of threshold analysis on drug pricing |
Hill-McManus (2018) [ | Lesinurad, allopurinol, and febuxostat | PK–PD model | Markov state-transition model | Impact of non-adherence on cost effectiveness of lesinurad and optimal value-based price was estimated | This model enabled studying how the economic value of new drug treatments depends on pharmacology and adherence to therapy |
| Hill-McManus (2019) [ | Febuxostat and hypothetical xanthine oxidase inhibitor analogs | PK–PD model, adherence data using Medication Event Monitoring System | Markov state-transition model | Estimation of impact of increased potency or reduced clearance (drug being more forgiving to missed doses) and its relationship with reimbursement price were quantified | This model provided a structured approach for assessing the value of drugs with desired properties (e.g., more forgiving to missed doses) in early development by providing estimates of pricing options for reimbursement. Allows for justification of their progression through the development process |
| Wang (2020) [ | Dabigatran | PK–PD model | Markov microsimulation model | Cost effectiveness of various generics, dabigatran having different systemic exposures, was compared with brand therapy. Generics with high systemic exposure were not cost effective compared with brand references owing to a greater number of bleeding events | The impact of variations in pharmacokinetics-pharmacodynamics into the cost effectiveness of generic drugs with complex pharmacological properties (i.e., with narrow therapeutic indices) was evaluated, which can be informative for regulatory bodies |
COPD chronic obstructive pulmonary disease, ECOG Eastern Cooperative Oncology Group, HIV human immunodeficiency virus, ICERs incremental cost-effectiveness ratios, MBMA model-based meta-analysis, QALYs quality-adjusted life-years
| In addition to the current approach of generating and synthesizing evidence for estimating cost effectiveness, expanding the scope of pharmacoeconomic models by incorporating pharmacometric modeling and simulation-derived estimates for safety, efficacy, and effectiveness can provide value in drug development and clinical practice as shown in the published literature. |
| An opportunity exists for greater collaboration between clinical pharmacologists, pharmacoeconomists, and health outcomes researchers by leveraging the close alignment in their respective modeling methodologies to answer questions regarding cost-effectiveness and reimbursement decisions. |