2023
DOI: 10.1101/2023.01.24.525361
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Brain age as an estimator of neurodevelopmental outcome: A deep learning approach for neonatal cot-side monitoring

Abstract: The preterm neonate can experience stressors that affect the rate of brain maturation and lead to long-term neurodevelopmental deficits. However, some neonates who are born early follow normal developmental trajectories. Extraction of data from electroencephalography (EEG) signals can be used to calculate the neonate's brain age which can be compared to their true age. Discrepancies between true age and brain age (the brain age delta) can then be used to quantify maturational deviation, which has been shown to… Show more

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Cited by 3 publications
(8 citation statements)
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“…A wide range of brain age models has been developed to trace the brain development of premature infants, encompassing structural connectivity (Brown et al, 2017;Kawahara et al, 2017), morphological (Liu et al, 2021) and electrophysiological data. For the latter, brain age models have previously been constructed in preterm infants using resting state EEGrecorded brain activity (Ansari et al, 2023;Lavanga et al, 2018;O'Toole et al, 2016;Pillay et al, 2020;Stevenson et al, 2017). Although the MAE achieved by our model is not as accurate as some resting state models (e.g., MAEs of approximately 1 week were achieved by Ansari et al (2023) and Liu et al (2021)), compared to these existing brain age models, our model has the advantage that it was constructed using electrophysiological responses of approximately 10 visual and 10 tactile stimuli from every recording.…”
Section: Discussionmentioning
confidence: 97%
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“…A wide range of brain age models has been developed to trace the brain development of premature infants, encompassing structural connectivity (Brown et al, 2017;Kawahara et al, 2017), morphological (Liu et al, 2021) and electrophysiological data. For the latter, brain age models have previously been constructed in preterm infants using resting state EEGrecorded brain activity (Ansari et al, 2023;Lavanga et al, 2018;O'Toole et al, 2016;Pillay et al, 2020;Stevenson et al, 2017). Although the MAE achieved by our model is not as accurate as some resting state models (e.g., MAEs of approximately 1 week were achieved by Ansari et al (2023) and Liu et al (2021)), compared to these existing brain age models, our model has the advantage that it was constructed using electrophysiological responses of approximately 10 visual and 10 tactile stimuli from every recording.…”
Section: Discussionmentioning
confidence: 97%
“…Machine learning approaches can be used to accurately predict the post-menstrual age (PMA) of preterm infants from EEG (Ansari et al, 2023;Lavanga et al, 2018;O'Toole et al, 2016;Pillay et al, 2020;Stevenson et al, 2017), diffusion magnetic resonance imaging (MRI) (Brown et al, 2017;Kawahara et al, 2017) and structural MRI (Liu et al, 2021). These models may facilitate the early identification of infants with abnormal neurodevelopment, reducing the need for visual inspection of the EEG/MRI, which is subjective, requires trained clinical staff, and is time-consuming.…”
Section: Introductionmentioning
confidence: 99%
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“…Finally, the relationship between the amount of detected artefacts in an EEG segment and the error made by a FBA estimation model was investigated to show the relevance of the proposed automated artefact detection method. To this end, a deep shared multi-scale inception network model was applied to the EEG recordings to estimate the FBA [30,31]. This FBA model provides one estimate of FBA for every 30 s of multi-channel EEG data.…”
Section: Methodsmentioning
confidence: 99%
“…A bandpass filter of 0-30 Hz was applied. To apply artifact correction (similar to approach in [35]) on the data, each recording was divided into 5-minute epochs. Data points that deviated from the epoch mean by more than 250 μV were discarded and replaced by linear interpolation, unless more than 7000 of such samples (10% of epoch length) were rejected.…”
Section: Pre-processing Eegmentioning
confidence: 99%