TY - JOUR
T1 - Resting state electroencephalographic brain activity in neonates can predict age and is indicative of neurodevelopmental outcome
AU - Ansari, Amir
AU - Pillay, Kirubin
AU - Arasteh, Emad
AU - Dereymaeker, Anneleen
AU - Mellado, Gabriela Schmidt
AU - Jansen, Katrien
AU - Winkler, Anderson M.
AU - Naulaers, Gunnar
AU - Bhatt, Aomesh
AU - Huffel, Sabine Van
AU - Hartley, Caroline
AU - Vos, Maarten De
AU - Slater, Rebeccah
AU - Baxter, Luke
N1 - Publisher Copyright:
© 2024 International Federation of Clinical Neurophysiology
PY - 2024/7
Y1 - 2024/7
N2 - Objective: Electroencephalography (EEG) can be used to estimate neonates’ biological brain age. Discrepancies between postmenstrual age and brain age, termed the brain age gap, can potentially quantify maturational deviation. Existing brain age EEG models are not well suited to clinical cot-side use for estimating neonates’ brain age gap due to their dependency on relatively large data and pre-processing requirements. Methods: We trained a deep learning model on resting state EEG data from preterm neonates with normal neurodevelopmental Bayley Scale of Infant and Toddler Development (BSID) outcomes, using substantially reduced data requirements. We subsequently tested this model in two independent datasets from two clinical sites. Results: In both test datasets, using only 20 min of resting-state EEG activity from a single channel, the model generated accurate age predictions: mean absolute error = 1.03 weeks (p-value = 0.0001) and 0.98 weeks (p-value = 0.0001). In one test dataset, where 9-month follow-up BSID outcomes were available, the average neonatal brain age gap in the severe abnormal outcome group was significantly larger than that of the normal outcome group: difference in mean brain age gap = 0.50 weeks (p-value = 0.04). Conclusions: These findings demonstrate that the deep learning model generalises to independent datasets from two clinical sites, and that the model's brain age gap magnitudes differ between neonates with normal and severe abnormal follow-up neurodevelopmental outcomes. Significance: The magnitude of neonates’ brain age gap, estimated using only 20 min of resting state EEG data from a single channel, can encode information of clinical neurodevelopmental value.
AB - Objective: Electroencephalography (EEG) can be used to estimate neonates’ biological brain age. Discrepancies between postmenstrual age and brain age, termed the brain age gap, can potentially quantify maturational deviation. Existing brain age EEG models are not well suited to clinical cot-side use for estimating neonates’ brain age gap due to their dependency on relatively large data and pre-processing requirements. Methods: We trained a deep learning model on resting state EEG data from preterm neonates with normal neurodevelopmental Bayley Scale of Infant and Toddler Development (BSID) outcomes, using substantially reduced data requirements. We subsequently tested this model in two independent datasets from two clinical sites. Results: In both test datasets, using only 20 min of resting-state EEG activity from a single channel, the model generated accurate age predictions: mean absolute error = 1.03 weeks (p-value = 0.0001) and 0.98 weeks (p-value = 0.0001). In one test dataset, where 9-month follow-up BSID outcomes were available, the average neonatal brain age gap in the severe abnormal outcome group was significantly larger than that of the normal outcome group: difference in mean brain age gap = 0.50 weeks (p-value = 0.04). Conclusions: These findings demonstrate that the deep learning model generalises to independent datasets from two clinical sites, and that the model's brain age gap magnitudes differ between neonates with normal and severe abnormal follow-up neurodevelopmental outcomes. Significance: The magnitude of neonates’ brain age gap, estimated using only 20 min of resting state EEG data from a single channel, can encode information of clinical neurodevelopmental value.
KW - Bayley Scale
KW - Brain age gap
KW - Convolutional neural network
KW - Deep learning
KW - Electroencephalography
KW - Infant
UR - http://www.scopus.com/inward/record.url?scp=85194056884&partnerID=8YFLogxK
U2 - 10.1016/j.clinph.2024.05.002
DO - 10.1016/j.clinph.2024.05.002
M3 - Article
C2 - 38797002
AN - SCOPUS:85194056884
SN - 1388-2457
VL - 163
SP - 226
EP - 235
JO - Clinical Neurophysiology
JF - Clinical Neurophysiology
ER -