Artificial intelligence for dementia drug discovery and trials optimization

Author:

Doherty Thomas12,Yao Zhi3,Khleifat Ahmad A.l.4,Tantiangco Hanz5,Tamburin Stefano6,Albertyn Chris7,Thakur Lokendra8910,Llewellyn David J.1112,Oxtoby Neil P.13,Lourida Ilianna11,Ranson Janice M.11,Duce James A.14,

Affiliation:

1. Eisai Europe Ltd Hatfield UK

2. University of Westminster London UK

3. LifeArc Stevenage UK

4. Institute of Psychiatry Psychology & Neuroscience Department of Basic and Clinical Neuroscience King's College London London UK

5. Information School University of Sheffield Sheffield UK

6. University of Verona Department of Neurosciences Biomedicine & Movement Sciences Verona Italy

7. Department of Old Age Psychiatry Institute of Psychiatry Psychology and Neuroscience King's College London London UK

8. Division of Genetics and Genomics Boston Children's Hospital Harvard Medical School Boston Massachusetts USA

9. Broad Institute of MIT and Harvard Cambridge Massachusetts USA

10. Department of Neurology Massachusetts General Hospital Harvard Medical School Boston Massachusetts USA

11. University of Exeter Medical School Exeter UK

12. Alan Turing Institute London UK

13. UCL Centre for Medical Image Computing Department of Computer Science University College London London UK

14. The ALBORADA Drug Discovery Institute University of Cambridge Cambridge Biomedical Campus Cambridge UK

Abstract

AbstractDrug discovery and clinical trial design for dementia have historically been challenging. In part these challenges have arisen from patient heterogeneity, length of disease course, and the tractability of a target for the brain. Applying big data analytics and machine learning tools for drug discovery and utilizing them to inform successful clinical trial design has the potential to accelerate progress. Opportunities arise at multiple stages in the therapy pipeline and the growing availability of large medical data sets opens possibilities for big data analyses to answer key questions in clinical and therapeutic challenges. However, before this goal is reached, several challenges need to be overcome and only a multi‐disciplinary approach can promote data‐driven decision‐making to its full potential. Herein we review the current state of machine learning applications to clinical trial design and drug discovery, while presenting opportunities and recommendations that can break down the barriers to implementation.

Funder

National Health and Medical Research Council

Publisher

Wiley

Subject

Psychiatry and Mental health,Cellular and Molecular Neuroscience,Geriatrics and Gerontology,Neurology (clinical),Developmental Neuroscience,Health Policy,Epidemiology

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