Back to Search Start Over

Geometric Deep Learning for Post-Menstrual Age Prediction based on the Neonatal White Matter Cortical Surface

Authors :
Vosylius, Vitalis
Wang, Andy
Waters, Cemlyn
Zakharov, Alexey
Ward, Francis
Folgoc, Loic Le
Cupitt, John
Makropoulos, Antonios
Schuh, Andreas
Rueckert, Daniel
Alansary, Amir
Vosylius, Vitalis
Wang, Andy
Waters, Cemlyn
Zakharov, Alexey
Ward, Francis
Folgoc, Loic Le
Cupitt, John
Makropoulos, Antonios
Schuh, Andreas
Rueckert, Daniel
Alansary, Amir
Publication Year :
2020

Abstract

Accurate estimation of the age in neonates is essential for measuring neurodevelopmental, medical, and growth outcomes. In this paper, we propose a novel approach to predict the post-menstrual age (PA) at scan, using techniques from geometric deep learning, based on the neonatal white matter cortical surface. We utilize and compare multiple specialized neural network architectures that predict the age using different geometric representations of the cortical surface; we compare MeshCNN, Pointnet++, GraphCNN, and a volumetric benchmark. The dataset is part of the Developing Human Connectome Project (dHCP), and is a cohort of healthy and premature neonates. We evaluate our approach on 650 subjects (727scans) with PA ranging from 27 to 45 weeks. Our results show accurate prediction of the estimated PA, with mean error less than one week.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1228426931
Document Type :
Electronic Resource