Harnessing the potential of machine learning and artificial intelligence for dementia research

Author:

Ranson Janice M.,Bucholc Magda,Lyall Donald,Newby Danielle,Winchester Laura,Oxtoby Neil P.,Veldsman Michele,Rittman Timothy,Marzi Sarah,Skene Nathan,Al Khleifat Ahmad,Foote Isabelle F.,Orgeta Vasiliki,Kormilitzin Andrey,Lourida Ilianna,Llewellyn David J.

Abstract

AbstractProgress in dementia research has been limited, with substantial gaps in our knowledge of targets for prevention, mechanisms for disease progression, and disease-modifying treatments. The growing availability of multimodal data sets opens possibilities for the application of machine learning and artificial intelligence (AI) to help answer key questions in the field. We provide an overview of the state of the science, highlighting current challenges and opportunities for utilisation of AI approaches to move the field forward in the areas of genetics, experimental medicine, drug discovery and trials optimisation, imaging, and prevention. Machine learning methods can enhance results of genetic studies, help determine biological effects and facilitate the identification of drug targets based on genetic and transcriptomic information. The use of unsupervised learning for understanding disease mechanisms for drug discovery is promising, while analysis of multimodal data sets to characterise and quantify disease severity and subtype are also beginning to contribute to optimisation of clinical trial recruitment. Data-driven experimental medicine is needed to analyse data across modalities and develop novel algorithms to translate insights from animal models to human disease biology. AI methods in neuroimaging outperform traditional approaches for diagnostic classification, and although challenges around validation and translation remain, there is optimism for their meaningful integration to clinical practice in the near future. AI-based models can also clarify our understanding of the causality and commonality of dementia risk factors, informing and improving risk prediction models along with the development of preventative interventions. The complexity and heterogeneity of dementia requires an alternative approach beyond traditional design and analytical approaches. Although not yet widely used in dementia research, machine learning and AI have the potential to unlock current challenges and advance precision dementia medicine.

Funder

Alzheimer’s Research UK

the Alan Turing Institute/Engineering and Physical Sciences Research Council

George Moore Endowment for Data Science at Ulster University

UKRI Future Leaders Fellowship

The Motor Neurone Disease Association (MNDA) Fellowship

ALS Association Milton Safenowitz Research Fellowship

George Henry Woolfe Legacy Fund

National Institute for Health Research (NIHR) Applied Research Collaboration (ARC) South West Peninsula

National Health and Medical Research Council

National Institute on Aging/National Institutes of Health

Publisher

Springer Science and Business Media LLC

Subject

Cognitive Neuroscience,Computer Science Applications,Neurology

Reference130 articles.

1. Alzheimer’s Association. What Is Dementia? https://www.alz.org/alzheimers-dementia/what-is-dementia. Accessed 16 Feb 2019.

2. Wightman DP, Jansen IE, Savage JE, et al. Largest GWAS (N=1,126,563) of Alzheimer’s Disease Implicates Microglia and Immune Cells. medRxiv 2020:2020.2011.2020.20235275.

3. Finucane HK, Bulik-Sullivan B, Gusev A et al (2015) Partitioning heritability by functional annotation using genome-wide association summary statistics. Nat Genet 47:1228–1235

4. de Leeuw CA, Mooij JM, Heskes T, Posthuma D (2015) MAGMA: Generalized Gene-Set Analysis of GWAS Data. PLoS Comput Biol 11:e1004219

5. Escott-Price V, Hardy J (2022) Genome-wide association studies for Alzheimer’s disease: bigger is not always better. Brain Commun 4:8

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