| Literature DB >> 28506868 |
Gabriel Helmlinger1, Nidal Al-Huniti2, Sergey Aksenov2, Kirill Peskov3, Karen M Hallow4, Lulu Chu2, David Boulton5, Ulf Eriksson6, Bengt Hamrén6, Craig Lambert7, Eric Masson2, Helen Tomkinson7, Donald Stanski5.
Abstract
Modeling & simulation (M&S) methodologies are established quantitative tools, which have proven to be useful in supporting the research, development (R&D), regulatory approval, and marketing of novel therapeutics. Applications of M&S help design efficient studies and interpret their results in context of all available data and knowledge to enable effective decision-making during the R&D process. In this mini-review, we focus on two sets of modeling approaches: population-based models, which are well-established within the pharmaceutical industry today, and fall under the discipline of clinical pharmacometrics (PMX); and systems dynamics models, which encompass a range of models of (patho-)physiology amenable to pharmacological intervention, of signaling pathways in biology, and of substance distribution in the body (today known as physiologically-based pharmacokinetic models) - which today may be collectively referred to as quantitative systems pharmacology models (QSP). We next describe the convergence - or rather selected integration - of PMX and QSP approaches into 'middle-out' drug-disease models, which retain selected mechanistic aspects, while remaining parsimonious, fit-for-purpose, and able to address variability and the testing of covariates. We further propose development opportunities for drug-disease systems models, to increase their utility and applicability throughout the preclinical and clinical spectrum of pharmaceutical R&D.Entities:
Keywords: Disease modeling; Model-informed drug discovery and development; Pharmacokinetics and pharmacodynamics; Pharmacometrics; Quantitative systems pharmacology
Mesh:
Year: 2017 PMID: 28506868 DOI: 10.1016/j.ejps.2017.05.028
Source DB: PubMed Journal: Eur J Pharm Sci ISSN: 0928-0987 Impact factor: 4.384