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Neonatal Morphometric Similarity Networks Predict Atypical Brain Development Associated with Preterm Birth

Authors :
James P. Boardman
Mark E. Bastin
Gemma Sullivan
Gillian J. Lamb
Michael J. Thrippleton
David Q. Stoye
Manuel Blesa
Alan J. Quigley
Paola Galdi
Source :
Connectomics in NeuroImaging ISBN: 9783030007546, CNI@MICCAI
Publication Year :
2018
Publisher :
Springer International Publishing, 2018.

Abstract

Morphometric similarity networks (MSNs) have been recently proposed as a novel, robust, and biologically plausible approach to generate structural connectomes from neuroimaging data. In this work, we apply this method to multi-centre neonatal data (postmenstrual age range: 37–45 weeks) to predict brain dysmaturation in preterm infants. To achieve this goal, we combined different imaging sequences (diffusion and structural MRI) to extract a set of metrics from cortical and subcortical brain regions (e.g. regional volumes, diffusion tensor metrics, neurite orientation dispersion and density imaging features) which were used to construct a similarity network. A regression model was then trained to predict postmenstrual age at the time of scanning from inter-regional connections. Finally, to quantify brain maturation, the Relative Brain Network Maturation Index (RBNMI) was computed as the difference between predicted and actual age. The model predicted chronological age with a mean absolute error of 0.88 (±0.63) weeks, and it consistently predicted preterm infants to have a lower RBNMI than term infants. We conclude that MSNs derived from multimodal imaging predict chronological brain development accurately, and provide a data-driven approach for defining cerebral dysmaturation associated with preterm birth.

Details

ISBN :
978-3-030-00754-6
ISBNs :
9783030007546
Database :
OpenAIRE
Journal :
Connectomics in NeuroImaging ISBN: 9783030007546, CNI@MICCAI
Accession number :
edsair.doi...........a87db427e20119819eeef5b244794cf8
Full Text :
https://doi.org/10.1007/978-3-030-00755-3_6