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Advancing Tau-PET quantification in Alzheimer's disease with machine learning: introducing THETA, a novel tau summary measure.

Authors :
Gebre RK
Rial AM
Raghavan S
Wiste HJ
Johnson Sparrman KL
Heeman F
Costoya-Sánchez A
Schwarz CG
Spychalla AJ
Lowe VJ
Graff-Radford J
Knopman DS
Petersen RC
Schöll M
Jack CR Jr
Vemuri P
Source :
Research square [Res Sq] 2023 Oct 18. Date of Electronic Publication: 2023 Oct 18.
Publication Year :
2023

Abstract

Alzheimer's disease (AD) exhibits spatially heterogeneous 3R/4R tau pathology distributions across participants, making it a challenge to quantify extent of tau deposition. Utilizing Tau-PET from three independent cohorts, we trained and validated a machine learning model to identify visually positive Tau-PET scans from regional SUVR values and developed a novel summary measure, THETA, that accounts for heterogeneity in tau deposition. The model for identification of tau positivity achieved a balanced test accuracy of 95% and accuracy of ≥87% on the validation datasets. THETA captured heterogeneity of tau deposition, had better association with clinical measures, and corresponded better with visual assessments in comparison with the temporal meta-region-of-interest Tau-PET quantification methods. Our novel approach aids in identification of positive Tau-PET scans and provides a quantitative summary measure, THETA, that effectively captures the heterogeneous tau deposition seen in AD. The application of THETA for quantifying Tau-PET in AD exhibits great potential.

Details

Language :
English
ISSN :
2693-5015
Database :
MEDLINE
Journal :
Research square
Accession number :
37886506
Full Text :
https://doi.org/10.21203/rs.3.rs-3290598/v1