Bioinfo Chem

System biology and Infochemistry | Online ISSN 3071-4826
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REVIEWS   (Open Access)

Shamsuddin Sultan Khan 1*, Tufael 2

+ Author Affiliations

Bioinfo Chem 5 (1) 1-14 https://doi.org/10.25163/bioinformatics.5110724

Submitted: 14 April 2023 Revised: 10 June 2023  Accepted: 17 June 2023  Published: 19 June 2023 


Abstract

Multiscale modeling is increasingly shaping modern drug discovery by addressing the persistent gap between molecular mechanisms and clinical outcomes. Traditional drug discovery approaches often identify therapeutic effects without fully explaining them, contributing to limited clinical translation. In this context, multiscale modeling and systems pharmacology provide a framework for integrating molecular interactions, cellular signaling, tissue dynamics, and whole-body physiology into predictive models of drug action. This review synthesizes current advances in multiscale modeling across drug discovery, including molecular dynamics simulations, differential equation–based signaling models, agent-based simulations, and physiologically based pharmacokinetic (PBPK) modeling. These approaches enable prediction of drug efficacy, toxicity, and resistance by linking molecular-scale events to system-level responses. Emerging applications, such as virtual clinical trials and patient-specific simulations, further demonstrate the potential of multiscale modeling for precision pharmacology. Despite these advances, several challenges remain. Model accuracy depends on data availability, parameter estimation, and validation strategies, including iterative predict–learn–confirm cycles. Computational complexity and the balance between mechanistic detail and practical usability continue to limit broader implementation. Overall, multiscale modeling is shifting drug discovery from empirical approaches toward a predictive and mechanistic science. By integrating systems pharmacology with computational modeling, these frameworks offer new opportunities to improve clinical translation and advance precision medicine.

Keywords: Multiscale modeling; Systems pharmacology; Drug discovery; PBPK modeling; Precision medicine

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