Quantifying brain maturation in the preterm baby from EEG sleep analyses

<p>The preterm (premature) baby, born before term-age of 37 weeks Postmenstrual Age (PMA, the age since the last menstrual cycle of the mother) remains vulnerable and is admitted to the Neonatal Intensive Care Unit (NICU). Continual improvement of care in the NICU has limited their lifelong im...

Full description

Bibliographic Details
Main Author: Pillay, K
Other Authors: De Vos, M
Format: Thesis
Language:English
Published: 2018
Subjects:
_version_ 1797103374131265536
author Pillay, K
author2 De Vos, M
author_facet De Vos, M
Pillay, K
author_sort Pillay, K
collection OXFORD
description <p>The preterm (premature) baby, born before term-age of 37 weeks Postmenstrual Age (PMA, the age since the last menstrual cycle of the mother) remains vulnerable and is admitted to the Neonatal Intensive Care Unit (NICU). Continual improvement of care in the NICU has limited their lifelong impact. However, clinical interventions and other environmental stresses can facilitate delays in brain maturation resulting in abnormal neurodevelopmental outcomes (mental and motor disabilities) by school-age. This is not easily detected by existing methods in the NICU, though Electroencephalography (EEG) is emerging as a promising modality to capture such deviations through the maturation of sleep. Due to a shortage of trained clinicians and the infeasibility of continually labelling EEG, developing fully automated methods is crucial.</p> <p>Current methods are either not fully automated, do not consider the maturational effects across multiple sleep states, or have limited to no clinical validation on abnormal outcome data. Consequently, the aim of this research is to develop fully automated methods to quantify brain maturation from EEG sleep, through (i) robust automated sleep staging, (ii) tracking sleep-dependent developmental trajectories over PMA, (iii) assessing the quality of sleep-wake cycling with PMA, and (iv) validating these methods using both normal and abnormal outcome data.</p> <p>This thesis first presents a robust algorithm for detecting the Quiet Sleep (QS) and non-QS sleep states from EEG over a wide PMA range, with median sensitivity and specificity of 0.82 and 0.92, respectively. With this method, sleep states are then estimated from abnormal outcome data and a data-driven feature extraction applied to identify maturational ‘biomarkers’ and derive sleep-dependent trajectories over PMA. Developmental deviations are detected that identify abnormal outcome patients early.</p> <p>Probabilistic models are next developed to assess sleep-wake cycling by performing the first multi-state classification of sleep at term-age (with median sensitivity and specificity of 0.72 and 0.91, respectively). At this age, EEG differentiates into more complex states and the timing of this differentiation is also an important indicator of brain maturation. Finally, these models are expanded to novel, end-to- end solutions (employing Bayesian non-parametrics) that incorporate both age and sleep dependencies. These methods additionally classify severely delayed sleep-wake cycling behaviours, known as ‘dysmaturity’.</p>
first_indexed 2024-03-07T06:19:15Z
format Thesis
id oxford-uuid:f22a3412-7358-4ef3-8c10-289f27ad98b4
institution University of Oxford
language English
last_indexed 2024-03-07T06:19:15Z
publishDate 2018
record_format dspace
spelling oxford-uuid:f22a3412-7358-4ef3-8c10-289f27ad98b42022-03-27T12:01:27ZQuantifying brain maturation in the preterm baby from EEG sleep analysesThesishttp://purl.org/coar/resource_type/c_db06uuid:f22a3412-7358-4ef3-8c10-289f27ad98b4Biomedical signal processingBiomedical engineeringMachine learningEnglishORA Deposit2018Pillay, KDe Vos, MDe Vos, M<p>The preterm (premature) baby, born before term-age of 37 weeks Postmenstrual Age (PMA, the age since the last menstrual cycle of the mother) remains vulnerable and is admitted to the Neonatal Intensive Care Unit (NICU). Continual improvement of care in the NICU has limited their lifelong impact. However, clinical interventions and other environmental stresses can facilitate delays in brain maturation resulting in abnormal neurodevelopmental outcomes (mental and motor disabilities) by school-age. This is not easily detected by existing methods in the NICU, though Electroencephalography (EEG) is emerging as a promising modality to capture such deviations through the maturation of sleep. Due to a shortage of trained clinicians and the infeasibility of continually labelling EEG, developing fully automated methods is crucial.</p> <p>Current methods are either not fully automated, do not consider the maturational effects across multiple sleep states, or have limited to no clinical validation on abnormal outcome data. Consequently, the aim of this research is to develop fully automated methods to quantify brain maturation from EEG sleep, through (i) robust automated sleep staging, (ii) tracking sleep-dependent developmental trajectories over PMA, (iii) assessing the quality of sleep-wake cycling with PMA, and (iv) validating these methods using both normal and abnormal outcome data.</p> <p>This thesis first presents a robust algorithm for detecting the Quiet Sleep (QS) and non-QS sleep states from EEG over a wide PMA range, with median sensitivity and specificity of 0.82 and 0.92, respectively. With this method, sleep states are then estimated from abnormal outcome data and a data-driven feature extraction applied to identify maturational ‘biomarkers’ and derive sleep-dependent trajectories over PMA. Developmental deviations are detected that identify abnormal outcome patients early.</p> <p>Probabilistic models are next developed to assess sleep-wake cycling by performing the first multi-state classification of sleep at term-age (with median sensitivity and specificity of 0.72 and 0.91, respectively). At this age, EEG differentiates into more complex states and the timing of this differentiation is also an important indicator of brain maturation. Finally, these models are expanded to novel, end-to- end solutions (employing Bayesian non-parametrics) that incorporate both age and sleep dependencies. These methods additionally classify severely delayed sleep-wake cycling behaviours, known as ‘dysmaturity’.</p>
spellingShingle Biomedical signal processing
Biomedical engineering
Machine learning
Pillay, K
Quantifying brain maturation in the preterm baby from EEG sleep analyses
title Quantifying brain maturation in the preterm baby from EEG sleep analyses
title_full Quantifying brain maturation in the preterm baby from EEG sleep analyses
title_fullStr Quantifying brain maturation in the preterm baby from EEG sleep analyses
title_full_unstemmed Quantifying brain maturation in the preterm baby from EEG sleep analyses
title_short Quantifying brain maturation in the preterm baby from EEG sleep analyses
title_sort quantifying brain maturation in the preterm baby from eeg sleep analyses
topic Biomedical signal processing
Biomedical engineering
Machine learning
work_keys_str_mv AT pillayk quantifyingbrainmaturationinthepretermbabyfromeegsleepanalyses