Unai
Ayala Fernández
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Universidad de Mondragón/Mondragon Unibertsitatea
Mondragón, EspañaPublications in collaboration with researchers from Universidad de Mondragón/Mondragon Unibertsitatea (14)
2024
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Association of retinal neurodegeneration with the progression of cognitive decline in Parkinson’s disease
npj Parkinson's Disease, Vol. 10, Núm. 1
2023
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Retinal thickness as a biomarker of cognitive impairment in manifest Huntington’s disease
Journal of Neurology, Vol. 270, Núm. 8, pp. 3821-3829
2022
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Spatial characterization of the effect of age and sex on macular layer thicknesses and foveal pit morphology
PLoS ONE, Vol. 17, Núm. 12 December
2021
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Clinical long-term nocturnal sleeping disturbances and excessive daytime sleepiness in Parkinson's disease
PLoS ONE, Vol. 16, Núm. 12 December
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Foveal Remodeling of Retinal Microvasculature in Parkinson’s Disease
Frontiers in Neuroscience, Vol. 15
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Foveal pit morphology characterization: A quantitative analysis of the key methodological steps
Entropy, Vol. 23, Núm. 6
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Retinal Thickness Predicts the Risk of Cognitive Decline in Parkinson Disease
Annals of Neurology, Vol. 89, Núm. 1, pp. 165-176
2020
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FlexRQC: Model for a flexible robot-driven quality control station
Procedia Manufacturing
2019
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A Machine Learning Shock Decision Algorithm for Use During Piston-Driven Chest Compressions
IEEE Transactions on Biomedical Engineering, Vol. 66, Núm. 6, pp. 1752-1760
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A Multistage Algorithm for ECG Rhythm Analysis during Piston-Driven Mechanical Chest Compressions
IEEE Transactions on Biomedical Engineering, Vol. 66, Núm. 1, pp. 263-272
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Mixed convolutional and long short-term memory network for the detection of lethal ventricular arrhythmia
PLoS ONE, Vol. 14, Núm. 5
2018
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An Accurate Shock Advise Algorithm for Use during Piston-Driven Chest Compressions
Computing in Cardiology
2017
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Removing piston-driven mechanical chest compression artefacts from the ECG
Computing in Cardiology
2016
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Machine learning techniques for the detection of shockable rhythms in automated external defibrillators
PLoS ONE, Vol. 11, Núm. 7