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  4. Screening for Alzheimer’s disease in the community using an AI-driven screening platform: design of the PREDICTOM study
 
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2026
Journal Article
Title

Screening for Alzheimer’s disease in the community using an AI-driven screening platform: design of the PREDICTOM study

Abstract
Background: Recent developments in physiological, imaging and digital biomarkers combined with the approval of new disease-modifying drugs against Alzheimer’s disease (AD) and diagnostic blood tests provide an opportunity to shift the first diagnostic steps to the home-setting. While these novel biomarkers enable scalable screening and earlier detection and treatment of AD, they require an evaluation of their accuracy, feasibility, and safety in primary care and the community setting.
Objectives: The aim of PREDICTOM is to develop and test the accuracy of an artificial intelligence (AI) driven screening platform for the risk assessment and early detection of AD to extend the clinical pathway to home-based screening using established and novel biomarkers.
Design/setting: PREDICTOM is a European (Norway, UK, Belgium, France, Switzerland, Germany, Spain) observational, prospective cohort study using a cloud-based platform that stores a digitalised journey for each participant and provides a collection of artificial-intelligence (AI) algorithms and tools for risk assessment and early diagnosis and prognosis.
Participants: Cohort 1 consists of 4000 adults aged 50 years or older at risk of developing AD. Cohort 2 consists of 615 participants selected from Cohort 1 based on estimates indicating high ( N = 415) or low ( N = 200) risk of AD. Data from existing cohorts will guide the analytic strategy of the study.
Measurements: Cohort 1 will undergo home-based assessments (Level 1), Cohort 2 will undergo in-clinic assessments (Levels 2 and 3). Level 1 includes at-home screening, collecting digital and physiological data (questionnaires, cognition, hearing, eye-tracking) and biofluids (capillary blood via finger-stick and saliva) for biomarker analysis. Level 2 comprises a more complex biomarker collection, most of which can be completed in primary care, including EEG, MRI, venous blood, microbiome from stool, cognition, hearing, and eye-tracking. Level 3 includes a diagnostic evaluation to confirm or rule out AD pathology using established biomarkers (cerebrospinal fluid, or amyloid PET).
Conclusions: PREDICTOM will develop AI-driven algorithms for the early detection of AD using biomarkers that can be collected at home or in the community care setting, and evaluate their integration into a well-defined and comprehensive clinical pathway.
Author(s)
Brem, Anna-Katharine
King's College London
Khan, Zunera
King's College London
Radermacher, Jonas  
Fraunhofer-Institut für Algorithmen und Wissenschaftliches Rechnen SCAI  
Georgiadis, Kostas
Centre for Research and Technology-Hellas
Lazarou, Ioulietta
Centre for Research and Technology-Hellas
Grammatikopoulou, Margarita
Centre for Research and Technology-Hellas
Pickering, Ellie
University of Exeter
Mitterreiter, Johanna
Siemens Healthineers AG
Aakre, Jon Arild
Stavanger Universitetssjukehus
Ashton, Nicholas J.
Sahlgrenska Akademin
Baquero, Miguel
Instituto de Investigación Sanitaria La Fe
Beser-Robles, Maria
Instituto de Investigación Sanitaria La Fe
Braboszcz, Claire
Starlab Barcelona
Brandt, Sigurd
GN Group
Brown, James
MUHDO HEALTH LTD
Cacciamani, Federica
Qairnel SAS
Campill, Sarah
Alzheimer Europe a.s.b.l.
Collins, Christopher
MUHDO HEALTH LTD
Deshpande, Pushkar
GN Group
Diaz-Ponce, Ana Maria
Alzheimer Europe a.s.b.l.
Durrleman, Stanley
Qairnel SAS
Engelborghs, Sebastiaan
Universitair Ziekenhuis Brussel
Ferré-González, Laura
Instituto de Investigación Sanitaria La Fe
Frisoni, Giovani B.
Université de Genève
Gjestsen, Martha Therese
Stavanger Universitetssjukehus
Gove, Dianne
Alzheimer Europe a.s.b.l.
Honigberg, Lee A.
ALZpath Inc.
Huang, Bin
BrainCheck Inc.
Hudak, Anett
Pharmacoidea Ltd.
Kaushik, Sandeep
GE Healthcare, Germany
Letoha, Tamás
Pharmacoidea Ltd.
Marquardt, Gaby
Siemens Healthineers AG
Mendes, Augusto J.
Université de Genève
Müllenborn, Matthias
Novo Nordisk A/S
Paletta, Lucas
Joanneum Research Forschungsgesellschaft mbH
de Barros, Nuno Pedrosa
Icometrix NV
Pszeida, Martin
Joanneum Research Forschungsgesellschaft mbH
Vik-Mo, Audun Osland
Stavanger Universitetssjukehus
Rostamipour, Hossein
King's College London
Perneczky, Robert G.
Klinikum der Universität München
Rauchmann, Boris Stephan
Klinikum der Universität München
Russegger, Silvia
Joanneum Research Forschungsgesellschaft mbH
Schirmer, Timo
GE Healthcare, Germany
Shadmaan, Amied
GE Healthcare UK
Solana, Ana Beatriz
GE Healthcare, Germany
Soria-Frisch, Aureli
Starlab Barcelona
Tegethoff, Paulina
Klinikum der Universität München
Ribbens, Annemie
Icometrix NV
de Witte, Sara
Universitair Ziekenhuis Brussel
Giezen, Mark van der
Stavanger Universitetssjukehus
Nikolopoulos, Spiros N.
Centre for Research and Technology-Hellas
Corbett, Anne
University of Exeter
Fröhlich, Holger  
Fraunhofer-Institut für Algorithmen und Wissenschaftliches Rechnen SCAI  
Aarsland, Dag
King's College London
Journal
The journal of prevention of Alzheimer's disease  
Open Access
File(s)
Download (2.94 MB)
Rights
CC BY 4.0: Creative Commons Attribution
DOI
10.1016/j.tjpad.2026.100545
10.24406/publica-8286
Additional link
Full text
Language
English
Fraunhofer-Institut für Algorithmen und Wissenschaftliches Rechnen SCAI  
Keyword(s)
  • Alzheimer’s disease

  • Artificial intelligence

  • Biomarker

  • Early detection

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