September 9, 2016
Journal Article

Multiscale Modeling in the Clinic: Drug Design and Development

Abstract

A wide range of length and time scales are relevant to pharmacology, especially in drug development, drug design and drug delivery. Therefore, multi-scale computational modeling and simulation methods and paradigms that advance the linkage of phenomena occurring at these multiple scales have become increasingly important. Multi-scale approaches present in silico opportunities to advance laboratory research to bedside clinical applications in pharmaceuticals research. This is achievable through the capability of modeling to reveal phenomena occurring across multiple spatial and temporal scales, which are not otherwise readily accessible to experimentation. The resultant models, when validated, are capable of making testable predictions to guide drug design and delivery. In this review we describe the goals, methods, and opportunities of multi-scale modeling in drug design and development. We demonstrate the impact of multiple scales of modeling in this field. We indicate the common mathematical techniques employed for multi-scale modeling approaches used in pharmacology and present several examples illustrating the current state-of-the-art regarding drug development for: Excitable Systems (Heart); Cancer (Metastasis and Differentiation); Cancer (Angiogenesis and Drug Targeting); Metabolic Disorders; and Inflammation and Sepsis. We conclude with a focus on barriers to successful clinical translation of drug development, drug design and drug delivery multi-scale models.

Revised: January 23, 2017 | Published: September 9, 2016

Citation

Clancy C.E., G. An, W.R. Cannon, Y. Liu, E.E. May, P. Ortoleva, and A. Popel, et al. 2016. Multiscale Modeling in the Clinic: Drug Design and Development. Annals of Biomedical Engineering 44, no. 9:2591-2610. PNNL-SA-114540. doi:10.1007/s10439-016-1563-0