De-risking clinical trial failure through mechanistic simulation

Author:

Brown Liam V12ORCID,Wagg Jonathan3,Darley Rachel4,van Hateren Andy4,Elliott Tim5,Gaffney Eamonn A1,Coles Mark C2

Affiliation:

1. Wolfson Centre for Mathematical Biology, Mathematical Institute, University of Oxford , Oxford , UK

2. Kennedy Institute of Rheumatology, University of Oxford , Oxford , UK

3. Pharmaceutical Sciences–Clinical Pharmacology, Roche Innovation Center Basel , Basel , Switzerland

4. Centre for Cancer Immunology, Institute for Life Sciences, University of Southampton , Southampton , UK

5. Centre for Immuno-oncology, Nuffield Department of Medicine, University of Oxford , Oxford , UK

Abstract

AbstractDrug development typically comprises a combination of pre-clinical experimentation, clinical trials, and statistical data-driven analyses. Therapeutic failure in late-stage clinical development costs the pharmaceutical industry billions of USD per year. Clinical trial simulation represents a key derisking strategy and combining them with mechanistic models allows one to test hypotheses for mechanisms of failure and to improve trial designs. This is illustrated with a T-cell activation model, used to simulate the clinical trials of IMA901, a short-peptide cancer vaccine. Simulation results were consistent with observed outcomes and predicted that responses are limited by peptide off-rates, peptide competition for dendritic cell (DC) binding, and DC migration times. These insights were used to hypothesise alternate trial designs predicted to improve efficacy outcomes. This framework illustrates how mechanistic models can complement clinical, experimental, and data-driven studies to understand, test, and improve trial designs, and how results may differ between humans and mice.

Funder

Clarendon Scholarship

Engineering and Physical Sciences Research Council

CRUK Programme

Hoffman-La Roche and the Oxford-Bristol Myers Squibb (Celgene) Alliance

Linacre College

Publisher

Oxford University Press (OUP)

Subject

General Medicine

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