2021
DOI: 10.1101/2021.12.06.471406
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Through-plane super-resolution with autoencoders in diffusion magnetic resonance imaging of the developing human brain

Abstract: Fetal brain diffusion magnetic resonance images are often acquired with a lower through-plane than in-plane resolution. This anisotropy is often overcome by classical upsampling methods such as linear or cubic interpolation. In this work, we employ an unsupervised learning algorithm using an autoencoder neural network to enhance the through-plane resolution by leveraging a large amount of data. Our framework, which can also be used for slice outliers replacement, overperformed conventional interpolations quant… Show more

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