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Clinical implementation of a neonatal seizure detection algorithmRobust neonatal EEG seizure detection through adaptive background modeling.EEG signal description with spectral-envelope-based speech recognition features for detection of neonatal seizures.Instantaneous measure of EEG channel importance for improved patient-adaptive neonatal seizure detection.Validation of an automated seizure detection algorithm for term neonates.In-depth performance analysis of an EEG based neonatal seizure detection algorithmBifidobacterium longum 1714 as a translational psychobiotic: modulation of stress, electrophysiology and neurocognition in healthy volunteers.Inclusion of temporal priors for automated neonatal EEG classification.Lost in translation? The potential psychobiotic Lactobacillus rhamnosus (JB-1) fails to modulate stress or cognitive performance in healthy male subjects.Detecting Neonatal Seizures With Computer Algorithms.EEG-based neonatal seizure detection with Support Vector Machines.Multimodal predictor of neurodevelopmental outcome in newborns with hypoxic-ischaemic encephalopathy.An automated system for grading EEG abnormality in term neonates with hypoxic-ischaemic encephalopathyToward a Personalized Real-Time Diagnosis in Neonatal Seizure DetectionPerformance assessment for EEG-based neonatal seizure detectorsAn SVM-based system and its performance for detection of seizures in neonates.Online EEG channel weighting for detection of seizures in the neonate.Grading hypoxic-ischemic encephalopathy severity in neonatal EEG using GMM supervectors and the support vector machine.Portable neonatal EEG monitoring and sonification on an Android device.Accurate Heart Rate Monitoring During Physical Exercises Using PPG.Exploring temporal information in neonatal seizures using a dynamic time warping based SVM kernel.Modelling interactions between blood pressure and brain activity in preterm neonates.Dynamic time warping based neonatal seizure detection system.Temporal evolution of seizure burden for automated neonatal EEG classification.Neonatal EEG audification for seizure detection.EEG in the healthy term newborn within 12 hours of birth.Estimation of heart rate from photoplethysmography during physical exercise using Wiener filtering and the phase vocoder.Assessing instantaneous energy in the EEG: a non-negative, frequency-weighted energy operator.Parallel artefact rejection for epileptiform activity detection in routine EEG.Classification of hypoxic-ischemic encephalopathy using long term heart rate variability based features.Detection of seizures in intracranial EEG: UPenn and Mayo Clinic's Seizure Detection Challenge.Assessment of quality of ECG for accurate estimation of Heart Rate Variability in newborns.Discriminative and generative classification techniques applied to automated neonatal seizure detection.Speech recognition features for EEG signal description in detection of neonatal seizures.Heart rate based automatic seizure detection in the newborn.Age-independent seizure detection.Automated detection of perturbed cardiac physiology during oral food allergen challenge in children.Coupling between mean blood pressure and EEG in preterm neonates is associated with reduced illness severity scores.Epilepsyecosystem.org: crowd-sourcing reproducible seizure prediction with long-term human intracranial EEGHeart Rate Variability during Periods of Low Blood Pressure as a Predictor of Short-Term Outcome in Preterms
P50
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P50
description
hulumtues
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onderzoeker
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հետազոտող
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name
Andriy Temko
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Andriy Temko
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Andriy Temko
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Andriy Temko
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Andriy Temko
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Andriy Temko
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Andrey Temko
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Andriy Temko
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Andriy Temko
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Andriy Temko
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P1053
A-8503-2015
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P2456
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P3829
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0000-0001-6548-0971