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Screening for Alzheimer’s disease in the community using an AI-driven screening platform: design of the PREDICTOM study
0
Zitationen
54
Autoren
2026
Jahr
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.
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Autoren
- Anna‐Katharine Brem
- Zunera Khan
- Jonas Radermacher
- Kostas Georgiadis
- Ioulietta Lazarou
- Margarita Grammatikopoulou
- Ellie Pickering
- Johanna Gracia Mitterreiter
- Jon Arild Aakre
- Nicholas J. Ashton
- Miguel Baquero
- María Beser-Robles
- Claire Braboszcz
- S. Brandt
- James Brown
- Federica Cacciamani
- Sarah Campill
- Christopher Collins
- Pushkar Deshpande
- Ana Diaz
- Stanley Durrleman
- Sebastiaan Engelborghs
- Laura FERRÉ-GONZÁLEZ
- Giovani B. Frisoni
- Martha Therese Gjestsen
- Dianne Gove
- Lee Honigberg
- Bin Huang
- Anett Hudák
- Sandeep Kaushik
- Tamás Letoha
- Gaby Marquardt
- Augusto J. Mendes
- Matthias Müllenborn
- Lucas Paletta
- Nuno Pedrosa de Barros
- Martin Pszeida
- Audun Osland Vik-Mo
- Hossein Rostamipour
- Robert Perneczky
- Boris-Stephan Rauchmann
- Silvia Russegger
- Timo Schirmer
- Amied Shadmaan
- Ana Beatriz Solana
- Aureli Soria-Frisch
- Paulina Tegethoff
- Annemie Ribbens
- Sara De Witte
- Mark van der Giezen
- Spiros Nikolopoulos
- Anne Corbett
- Holger Fröhlich
- Dag Aarsland
Institutionen
- Hologic (Germany)(DE)
- King's College London(GB)
- Fraunhofer Institute for Algorithms and Scientific Computing(DE)
- Information Technologies Institute(GR)
- University of Exeter(GB)
- Siemens (Germany)(DE)
- Siemens Healthineers (Germany)(DE)
- Stavanger University Hospital(NO)
- Banner Health(US)
- Banner Sun Health Research Institute(US)
- Instituto de Investigación Sanitaria La Fe(ES)
- Starlab Barcelona SLU (Spain)(ES)
- GN Store Nord (Denmark)(DK)
- Ipswich Hospital(GB)
- Université Paris Sciences et Lettres(FR)
- École Normale Supérieure - PSL(FR)
- Assistance Publique – Hôpitaux de Paris(FR)
- Institut Mondor de Recherche Biomédicale(FR)
- Alzheimer Europe(LU)
- Centre National de la Recherche Scientifique(FR)
- Inserm(FR)
- Sorbonne Université(FR)
- Institut de Myologie(FR)
- Universitair Ziekenhuis Brussel(BE)
- University of Geneva(CH)
- University Hospital of Geneva(CH)
- Geneva College(US)
- Structural Analytics (United States)(US)
- Computer Aids for Chemical Engineering(US)
- General Electric (Spain)(ES)
- Novo Nordisk (Denmark)(DK)
- Joanneum Research(AT)
- Icometrix (Belgium)(BE)
- Munich Cluster for Systems Neurology(DE)
- Ludwig-Maximilians-Universität München(DE)
- LMU Klinikum(DE)
- Wellcome Centre for Human Neuroimaging(GB)
- Maudsley Hospital(GB)
- University of Stavanger(NO)
- Bonn Aachen International Center for Information Technology(DE)