Please use this identifier to cite or link to this item: https://doi.org/10.1007/s00259-020-05131-z
Title: Improved amyloid burden quantification with nonspecific estimates using deep learning
Authors: Liu, Haohui 
Nai, Ying-Hwey 
Saridin, Francis 
Tanaka, Tomotaka 
O' Doherty, Jim
Hilal, Saima 
Gyanwali, Bibek 
Chen, Christopher P 
Robins, Edward G 
Reilhac, Anthonin 
Keywords: Science & Technology
Life Sciences & Biomedicine
Radiology, Nuclear Medicine & Medical Imaging
Alzheimer's disease
Amyloid
Positron emission tomography (PET)
Quantification
Deep learning
Nonspecific uptake
COGNITIVE IMPAIRMENT
BRAIN
SEGMENTATION
PERFORMANCE
DISEASE
Issue Date: 7-Jan-2021
Publisher: SPRINGER
Citation: Liu, Haohui, Nai, Ying-Hwey, Saridin, Francis, Tanaka, Tomotaka, O' Doherty, Jim, Hilal, Saima, Gyanwali, Bibek, Chen, Christopher P, Robins, Edward G, Reilhac, Anthonin (2021-01-07). Improved amyloid burden quantification with nonspecific estimates using deep learning. EUROPEAN JOURNAL OF NUCLEAR MEDICINE AND MOLECULAR IMAGING 48 (6) : 1842-1853. ScholarBank@NUS Repository. https://doi.org/10.1007/s00259-020-05131-z
Abstract: Purpose: Standardized uptake value ratio (SUVr) used to quantify amyloid-β burden from amyloid-PET scans can be biased by variations in the tracer’s nonspecific (NS) binding caused by the presence of cerebrovascular disease (CeVD). In this work, we propose a novel amyloid-PET quantification approach that harnesses the intermodal image translation capability of convolutional networks to remove this undesirable source of variability. Methods: Paired MR and PET images exhibiting very low specific uptake were selected from a Singaporean amyloid-PET study involving 172 participants with different severities of CeVD. Two convolutional neural networks (CNN), ScaleNet and HighRes3DNet, and one conditional generative adversarial network (cGAN) were trained to map structural MR to NS PET images. NS estimates generated for all subjects using the most promising network were then subtracted from SUVr images to determine specific amyloid load only (SAβL). Associations of SAβL with various cognitive and functional test scores were then computed and compared to results using conventional SUVr. Results: Multimodal ScaleNet outperformed other networks in predicting the NS content in cortical gray matter with a mean relative error below 2%. Compared to SUVr, SAβL showed increased association with cognitive and functional test scores by up to 67%. Conclusion: Removing the undesirable NS uptake from the amyloid load measurement is possible using deep learning and substantially improves its accuracy. This novel analysis approach opens a new window of opportunity for improved data modeling in Alzheimer’s disease and for other neurodegenerative diseases that utilize PET imaging.
Source Title: EUROPEAN JOURNAL OF NUCLEAR MEDICINE AND MOLECULAR IMAGING
URI: https://scholarbank.nus.edu.sg/handle/10635/218776
ISSN: 1619-7070
1619-7089
DOI: 10.1007/s00259-020-05131-z
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