Towards a more informative representation of the fetal-neonatal brain connectome using Variational Autoencoder
Recent advances in functional magnetic resonance imaging (fMRI) have helped elucidate previously inaccessible trajectories of early-life prenatal and neonatal brain development. To date, the interpretation of fetal-neonatal fMRI data has relied on linear analytic models, akin to adult neuroimaging d...
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Zusammenfassung: | Recent advances in functional magnetic resonance imaging (fMRI) have
helped elucidate previously inaccessible trajectories of early-life
prenatal and neonatal brain development. To date, the interpretation of
fetal-neonatal fMRI data has relied on linear analytic models, akin to
adult neuroimaging data. However, unlike the adult brain, the fetal and
newborn brain develops extraordinarily rapidly, far outpacing any other
brain development period across the lifespan. Consequently, conventional
linear computational models may not adequately capture these accelerated
and complex neurodevelopmental trajectories during this critical period of
brain development along the prenatal-neonatal continuum. To obtain a
nuanced understanding of fetal-neonatal brain development, including
non-linear growth, for the first time, we developed quantitative,
systems-wide representations of brain activity in a large sample
(>500) of fetuses, preterm, and full-term neonates using an
unsupervised deep generative model called Variational Autoencoder (VAE), a
model previously shown to be superior to linear models in representing
complex resting state data in healthy adults. Here, we demonstrated that
non-linear brain features, i.e., latent variables, derived with the VAE
pretrained on rsfMRI of human adults, carried important individual neural
signatures, leading to improved representation of prenatal-neonatal brain
maturational patterns and more accurate and stable age prediction in the
neonate cohort compared to linear models. Using the VAE decoder, we also
revealed distinct functional brain networks spanning the sensory and
default mode networks. Using the VAE, we are able to reliably capture and
quantify complex, non-linear fetal-neonatal functional neural
connectivity. This will lay the critical foundation for detailed mapping
of healthy and aberrant functional brain signatures that have their
origins in fetal life. |
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DOI: | 10.5061/dryad.cvdncjt6n |