| Literature DB >> 34090480 |
Dominik Hartl1,2, Valeria de Luca3, Anna Kostikova3, Jason Laramie4, Scott Kennedy4, Enrico Ferrero3, Richard Siegel3, Martin Fink3, Sohail Ahmed5, John Millholland6, Alexander Schuhmacher7, Markus Hinder3, Luca Piali8, Adrian Roth8.
Abstract
In the era of precision medicine, digital technologies and artificial intelligence, drug discovery and development face unprecedented opportunities for product and business model innovation, fundamentally changing the traditional approach of how drugs are discovered, developed and marketed. Critical to this transformation is the adoption of new technologies in the drug development process, catalyzing the transition from serendipity-driven to data-driven medicine. This paradigm shift comes with a need for both translation and precision, leading to a modern Translational Precision Medicine approach to drug discovery and development. Key components of Translational Precision Medicine are multi-omics profiling, digital biomarkers, model-based data integration, artificial intelligence, biomarker-guided trial designs and patient-centric companion diagnostics. In this review, we summarize and critically discuss the potential and challenges of Translational Precision Medicine from a cross-industry perspective.Entities:
Keywords: Artificial intelligence; Biomarkers; Companion diagnostics; Digital biomarkers; Drug development; Modeling; Multi-omics; Pharmaceutical industry; Precision medicine; Translational medicine
Year: 2021 PMID: 34090480 PMCID: PMC8179706 DOI: 10.1186/s12967-021-02910-6
Source DB: PubMed Journal: J Transl Med ISSN: 1479-5876 Impact factor: 5.531
Fig. 1Interface position of Translational Precision Medicine in bridging translational medicine (early development) and precision medicine (late development). Disease models, multi-omics and molecular biomarkers are used to define disease endotypes. Real-world evidence, multi-omics, biomarkers (digital and molecular) and companion diagnostics are instrumental for the implementation of precision medicine. Model-based data integration, biomarker-guided trial designs and artificial intelligence are key data-driven tools for the integration of mechanism-centric translational medicine and patient-centric precision medicine
Fig. 2Flow of clinical trials (interventional or non-interventional) integrating multi-omics approaches to identify disease endotypes, which enables biomarker-guided trials designs (adaptive or non-adaptive) and paves the way towards precision medicine approaches (tailoring treatments for personalised healthcare)