Artificial intelligence for neurodegenerative experimental models

Author:

Marzi Sarah J.12ORCID,Schilder Brian M.12ORCID,Nott Alexi12ORCID,Frigerio Carlo Sala3ORCID,Willaime‐Morawek Sandrine4ORCID,Bucholc Magda5ORCID,Hanger Diane P.6ORCID,James Charlotte7ORCID,Lewis Patrick A.89ORCID,Lourida Ilianna7ORCID,Noble Wendy10ORCID,Rodriguez‐Algarra Francisco11ORCID,Sharif Jalil‐Ahmad12ORCID,Tsalenchuk Maria12,Winchester Laura M.12ORCID,Yaman Ümran3ORCID,Yao Zhi13,Ranson Janice M.7ORCID,Llewellyn David J.714,

Affiliation:

1. UK Dementia Research Institute Imperial College London London UK

2. Department of Brain Sciences Imperial College London London UK

3. UK Dementia Research Institute at UCL London UK

4. Faculty of Medicine University of Southampton Southampton UK

5. School of Computing Engineering & Intelligent Systems Ulster University Derry UK

6. Institute of Psychiatry Psychology and Neuroscience, King's College London London UK

7. University of Exeter Medical School Exeter UK

8. Royal Veterinary College London UK

9. Department of Neurodegenerative Disease UCL Queen Square Institute of Neurology London UK

10. Faculty of Health and Life Sciences University of Exeter Exeter UK

11. The Blizard Institute School of Medicine and Dentistry Queen Mary University of London London UK

12. Department of Psychiatry University of Oxford Oxford UK

13. LifeArc London UK

14. Alan Turing Institute London UK

Abstract

AbstractINTRODUCTIONExperimental models are essential tools in neurodegenerative disease research. However, the translation of insights and drugs discovered in model systems has proven immensely challenging, marred by high failure rates in human clinical trials.METHODSHere we review the application of artificial intelligence (AI) and machine learning (ML) in experimental medicine for dementia research.RESULTSConsidering the specific challenges of reproducibility and translation between other species or model systems and human biology in preclinical dementia research, we highlight best practices and resources that can be leveraged to quantify and evaluate translatability. We then evaluate how AI and ML approaches could be applied to enhance both cross‐model reproducibility and translation to human biology, while sustaining biological interpretability.DISCUSSIONAI and ML approaches in experimental medicine remain in their infancy. However, they have great potential to strengthen preclinical research and translation if based upon adequate, robust, and reproducible experimental data.Highlights There are increasing applications of AI in experimental medicine. We identified issues in reproducibility, cross‐species translation, and data curation in the field. Our review highlights data resources and AI approaches as solutions. Multi‐omics analysis with AI offers exciting future possibilities in drug discovery.

Funder

Medical Research Council

UK Dementia Research Institute

Alzheimer's Association

Economic and Social Research Council

Michael J. Fox Foundation for Parkinson's Research

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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