Global Network Organization of the Fetal Functional Connectome.
Josepheen De Asis-CruzNicole AndersenKushal KapseDhineshvikram KhrisnamurthyJessica QuistorffCatherine LopezGilbert VezinaCatherine LimperopoulosPublished in: Cerebral cortex (New York, N.Y. : 1991) (2022)
Recent advances in brain imaging have enabled non-invasive in vivo assessment of the fetal brain. Characterizing brain development in healthy fetuses provides baseline measures for identifying deviations in brain function in high-risk clinical groups. We examined 110 resting state MRI data sets from fetuses at 19 to 40 weeks' gestation. Using graph-theoretic techniques, we characterized global organizational features of the fetal functional connectome and their prenatal trajectories. Topological features related to network integration (i.e., global efficiency) and segregation (i.e., clustering) were assessed. Fetal networks exhibited small-world topology, showing high clustering and short average path length relative to reference networks. Likewise, fetal networks' quantitative small world indices met criteria for small-worldness (σ > 1, ω = [-0.5 0.5]). Along with this, fetal networks demonstrated global and local efficiency, economy, and modularity. A right-tailed degree distribution, suggesting the presence of central areas that are more highly connected to other regions, was also observed. Metrics, however, were not static during gestation; measures associated with segregation-local efficiency and modularity-decreased with advancing gestational age. Altogether, these suggest that the neural circuitry underpinning the brain's ability to segregate and integrate information exists as early as the late 2nd trimester of pregnancy and reorganizes during the prenatal period. Significance statement. Mounting evidence for the fetal origins of some neurodevelopmental disorders underscores the importance of identifying features of healthy fetal brain functional development. Alterations in prenatal brain connectomics may serve as early markers for identifying fetal-onset neurodevelopmental disorders, which in turn provide improved surveillance of at-risk fetuses and support the initiation of early interventions.
Keyphrases
- resting state
- functional connectivity
- gestational age
- white matter
- preterm birth
- birth weight
- pregnant women
- cerebral ischemia
- healthcare
- public health
- machine learning
- magnetic resonance imaging
- mass spectrometry
- depressive symptoms
- magnetic resonance
- multiple sclerosis
- congenital heart disease
- weight loss
- photodynamic therapy
- electronic health record
- deep learning
- subarachnoid hemorrhage
- drug induced
- convolutional neural network