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Improved amyloid burden quantification with nonspecific estimates using deep learning.

Haohui LiuYing-Hwey NaiFrancis SaridinTomotaka TanakaJim O'DohertySaima HilalBibek GyanwaliChristopher Li Hsian ChenEdward G RobinsAnthonin Reilhac
Published in: European journal of nuclear medicine and molecular imaging (2021)
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.
Keyphrases
  • deep learning
  • pet imaging
  • artificial intelligence
  • convolutional neural network
  • machine learning
  • big data
  • electronic health record
  • positron emission tomography
  • cognitive decline
  • dengue virus
  • zika virus