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Artificial intelligence for biomarker discovery in Alzheimer's disease and dementia.

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Peer-reviewed

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Abstract

With the increase in large multimodal cohorts and high-throughput technologies, the potential for discovering novel biomarkers is no longer limited by data set size. Artificial intelligence (AI) and machine learning approaches have been developed to detect novel biomarkers and interactions in complex data sets. We discuss exemplar uses and evaluate current applications and limitations of AI to discover novel biomarkers. Remaining challenges include a lack of diversity in the data sets available, the sheer complexity of investigating interactions, the invasiveness and cost of some biomarkers, and poor reporting in some studies. Overcoming these challenges will involve collecting data from underrepresented populations, developing more powerful AI approaches, validating the use of noninvasive biomarkers, and adhering to reporting guidelines. By harnessing rich multimodal data through AI approaches and international collaborative innovation, we are well positioned to identify clinically useful biomarkers that are accurate, generalizable, unbiased, and acceptable in clinical practice. HIGHLIGHTS: Artificial intelligence and machine learning approaches may accelerate dementia biomarker discovery. Remaining challenges include data set suitability due to size and bias in cohort selection. Multimodal data, diverse data sets, improved machine learning approaches, real-world validation, and interdisciplinary collaboration are required.

Description

Funder: Alzheimer’s Research UK; doi: http://dx.doi.org/10.13039/501100002283


Funder: ARUK Junior Fellowship


Funder: Fonds de recherche du Québec Santé—Chercheur boursiers Junior 1


Funder: Fonds de soutien à la recherche pour les neurosciences du vieillissement


Funder: ALS Association Milton Safenowitz Research Fellowship


Funder: The NIHR Maudsley Biomedical Research Centre


Funder: OPTOS Plc and Hoffman La‐Roche


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


Funder: National Health and Medical Research Council; doi: http://dx.doi.org/10.13039/501100000925


Funder: ARUK Senior Fellowship

Journal Title

Alzheimers Dement

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Journal ISSN

1552-5260
1552-5279

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Publisher

Wiley

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Except where otherwised noted, this item's license is described as Attribution 4.0 International
Sponsorship
British Heart Foundation (RE/18/1/34212)
Medical Research Council (MR/X005674/1)
This paper was the product of a DEMON Network state of the science symposium entitled “Harnessing Data Science and AI in Dementia Research” funded by Alzheimer’s Research UK. LW is supported by an ARUK Junior Fellowship. ELH is supported by the Cambridge British Heart Foundation Centre of Research Excellence (RE/18/1/34212). AB is supported by Fonds de recherche du Québec Santé – Chercheur boursiers Junior 1 and the Fonds de soutien à la recherche pour les neurosciences du vieillissement from the Fondation Courtois. AAK is funded by ALS Association Milton Safenowitz Research Fellowship, The Motor Neurone Disease Association (MNDA) Fellowship (Al Khleifat/Oct21/975-799) and The NIHR Maudsley Biomedical Research Centre. ILe receives unrestricted research funding from OPTOS Plc and Hoffman La-Roche and a grant from Medical Research Council (MR/N029941/1) and Alzheimer’s Society UK (Grant No: 6245). JMR and DJL are supported by Alzheimer’s Research UK and the Alan Turing Institute/Engineering and Physical Sciences Research Council (EP/N510129/1). DJL also receives funding from the Medical Research Council (MR/X005674/1), National Institute for Health Research (NIHR) Applied Research Collaboration South West Peninsula, National Health and Medical Research Council (NHMRC), and National Institute on Aging/National Institutes of Health (RF1AG055654). PP is supported by an ARUK Senior Fellowship.