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Modelling brain development to detect white matter injury in term and preterm born neonates (CROSBI ID 273758)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

O'Muircheartaigh, Jonathan ; Robinson, Emma ; Pietsch, Maximillian ; Wolfers, Thomas ; Aljabar, Paul ; Cordero Grande, Lucilio ; Teixeira, Rui PAG ; Bozek, Jelena ; Schuh, Andreas ; Makropoulos, Antonios et al. Modelling brain development to detect white matter injury in term and preterm born neonates // Brain, 1 (2020), awz412, 13. doi: 10.1093/brain/awz412

Podaci o odgovornosti

O'Muircheartaigh, Jonathan ; Robinson, Emma ; Pietsch, Maximillian ; Wolfers, Thomas ; Aljabar, Paul ; Cordero Grande, Lucilio ; Teixeira, Rui PAG ; Bozek, Jelena ; Schuh, Andreas ; Makropoulos, Antonios ; Batalle, Dafnis ; Hutter, Jana ; Vecchiato, Katy ; Steinweg, Johannes K ; Fitzgibbon, Sean ; Hughes, Emer ; Price, Anthony ; Marquand, Andre ; Reuckert, Daniel ; Rutherford, Mary ; Hajnal, Jo ; Counsell, Serena J ; Edwards, David

engleski

Modelling brain development to detect white matter injury in term and preterm born neonates

Premature birth occurs during a period of rapid brain growth. In this context, interpreting clinical neuroimaging can be complicated by the typical changes in brain contrast, size and gyrification occurring in the background to any pathology. To model and describe this evolving background in brain shape and contrast, we used a Bayesian regression technique, Gaussian process regression, adapted to multiple correlated outputs. Using MRI, we simultaneously estimated brain tissue intensity on T1- and T2-weighted scans as well as local tissue shape in a large cohort of 408 neonates scanned cross-sectionally across the perinatal period. The resulting model provided a continuous estimate of brain shape and intensity, appropriate to age at scan, degree of prematurity and sex. Next, we investigated the clinical utility of this model to detect focal white matter injury. In individual neonates, we calculated deviations of a neonate’s observed MRI from that predicted by the model to detect punctate white matter lesions with very good accuracy (area under the curve > 0.95). To investigate longitudinal consistency of the model, we calculated model deviations in 46 neonates who were scanned on a second occasion. These infants’ voxelwise deviations from the model could be used to identify them from the other 408 images in 83% (T2-weighted) and 76% (T1-weighted) of cases, indicating an anatomical fingerprint. Our approach provides accurate estimates of non-linear changes in brain tissue intensity and shape with clear potential for radiological use.

neonatology ; imaging methodology ; brain development ; neuroanatomy ; neuropathology

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Podaci o izdanju

1

2020.

awz412

13

objavljeno

0006-8950

1460-2156

10.1093/brain/awz412

Povezanost rada

Elektrotehnika, Računarstvo, Temeljne medicinske znanosti

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