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Mapping the association between tau-PET and Aβ-amyloid-PET using deep learning

Gihan P. Ruwanpathirana, Robert Williams, Colin L. Masters, Christopher C. Rowe, Leigh A. Johnston, Catherine E. Davey

2022Scientific Reports11 citationsDOIOpen Access PDF

Abstract

Abstract In Alzheimer’s disease, the molecular pathogenesis of the extracellular Aβ-amyloid (Aβ) instigation of intracellular tau accumulation is poorly understood. We employed a high-resolution PET scanner, with low detection thresholds, to examine the Aβ-tau association using a convolutional neural network (CNN), and compared results to a standard voxel-wise linear analysis. The full range of Aβ Centiloid values was highly predicted by the tau topography using the CNN (training R 2 = 0.86, validation R 2 = 0.75, testing R 2 = 0.72). Linear models based on tau-SUVR identified widespread positive correlations between tau accumulation and Aβ burden throughout the brain. In contrast, CNN analysis identified focal clusters in the bilateral medial temporal lobes, frontal lobes, precuneus, postcentral gyrus and middle cingulate. At low Aβ levels, information from the middle cingulate, frontal lobe and precuneus regions was more predictive of Aβ burden, while at high Aβ levels, the medial temporal regions were more predictive of Aβ burden. The data-driven CNN approach revealed new associations between tau topography and Aβ burden.

Topics & Concepts

PrecuneusVoxelTemporal lobeNeurosciencePosterior cingulateConvolutional neural networkPostcentral gyrusVoxel-based morphometryAlzheimer's diseaseNuclear medicinePsychologyArtificial intelligencePathologyMedicineMagnetic resonance imagingCortex (anatomy)Computer scienceDiseaseRadiologyWhite matterFunctional magnetic resonance imagingEpilepsyDementia and Cognitive Impairment ResearchAlzheimer's disease research and treatmentsFunctional Brain Connectivity Studies
Mapping the association between tau-PET and Aβ-amyloid-PET using deep learning | Litcius