2021
DOI: 10.3389/fnins.2021.653213
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Longitudinal Prediction of Infant MR Images With Multi-Contrast Perceptual Adversarial Learning

Abstract: The infant brain undergoes a remarkable period of neural development that is crucial for the development of cognitive and behavioral capacities (Hasegawa et al., 2018). Longitudinal magnetic resonance imaging (MRI) is able to characterize the developmental trajectories and is critical in neuroimaging studies of early brain development. However, missing data at different time points is an unavoidable occurrence in longitudinal studies owing to participant attrition and scan failure. Compared to dropping incompl… Show more

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Cited by 7 publications
(3 citation statements)
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References 55 publications
(65 reference statements)
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“…GP-GAN uses stacked GANs to predict tumor growth from longitudinal MRI [105]. MPGAN makes longitudinal Prediction of Infant MRI With Multi-Contrast Perceptual Adversarial Learning [106]. In LD-GAN [107], the authors predict disease progression images with missing MRI in the input.…”
Section: Applicationsmentioning
confidence: 99%
“…GP-GAN uses stacked GANs to predict tumor growth from longitudinal MRI [105]. MPGAN makes longitudinal Prediction of Infant MRI With Multi-Contrast Perceptual Adversarial Learning [106]. In LD-GAN [107], the authors predict disease progression images with missing MRI in the input.…”
Section: Applicationsmentioning
confidence: 99%
“…sMRI is faster and contains infant-specific procedures, such as BCP ( Howell et al, 2019 ; Gao K. et al, 2021 ). Deep generative algorithms were first utilized to predict ASD in infants using longitudinal data by Peng and others ( Peng et al, 2021 ). Hazlett et al (2017) developed a three-stage SAE model to diagnose infants with autism before the onset of behavioral signs.…”
Section: Highlighted Researchmentioning
confidence: 99%
“…Two previous studies employed similar network architectures for the prediction of longitudinal brain changes. Peng et al 8 predicted brain changes on MRI in infants using a generative adversarial network, where the generator, i.e., the part of the network that predicted the images, was based on a supervised convolutional neural network (CNN). In the only currently published approach for the longitudinal prediction of [ 18 F]-FDG PET, Choi et al 9 implemented an unsupervised conditional variational autoencoder, which generated realistic follow-up data in a small sample (n = 26) of cognitively normal (CN) subjects based on baseline data and age information.…”
Section: Introductionmentioning
confidence: 99%