Browsing Ikerketa-Artikuluak by Author "af04daf155264e931f1ffd0f390dccbd"
Now showing items 1-7 of 7
-
Aging Modulates the Resting Brain after a Memory Task: A Validation Study from Multivariate Models
Artola, Garazi; Isusquiza Garcia, Erik; Errarte, Ane; Barrenechea, Maitane; Alberdi Aramendi, Ane (MDPI AG, 2019)Recent work has demonstrated that aging modulates the resting brain. However, the study of these modulations after cognitive practice, resulting from a memory task, has been scarce. This work aims at examining age-related ... -
Comparative assessment of synthetic time series generation approaches in healthcare: leveraging patient metadata for accurate data synthesis
Isasa Reinoso, Imanol; Alberdi Aramendi, Ane (Springer Nature, 2024)Background Synthetic data is an emerging approach for addressing legal and regulatory concerns in biomedical research that deals with personal and clinical data, whether as a single tool or through its combination with ... -
Incorporation of Synthetic Data Generation Techniques within a Controlled Data Processing Workflow in the Health and Wellbeing Domain
Alberdi Aramendi, Ane; Larrea Lizartza, Xabat (MDPI, 2022)To date, the use of synthetic data generation techniques in the health and wellbeing domain has been mainly limited to research activities. Although several open source and commercial packages have been released, they have ... -
Spatial characterization of the effect of age and sex on macular layer thicknesses and foveal pit morphology
Romero-Bascones, David; Ayala, Unai; Alberdi Aramendi, Ane; Erramuzpe Aliaga, Asier; Barrenechea, Maitane (PLoS, 2022)Characterizing the effect of age and sex on macular retinal layer thicknesses and foveal pit morphology is crucial to differentiating between natural and disease-related changes. We applied advanced image analysis techniques ... -
Synthetic Subject Generation with Coupled Coherent Time Series Data †
Larrea Lizartza, Xabat; Alberdi Aramendi, Ane (MDPI, 2022)A large amount of health and well-being data is collected daily, but little of it reaches its research potential because personal data privacy needs to be protected as an individual’s right, as reflected in the data ... -
Synthetic Tabular Data Evaluation in the Health Domain Covering Resemblance, Utility, and Privacy Dimensions
Alberdi Aramendi, Ane (Thieme, 2023)Background. Synthetic tabular data generation is a potentially valuable technology with great promise for data augmentation and privacy preservation. However, prior to adoption, an empirical assessment of generated synthetic ... -
Validation of Random Forest Machine Learning Models to Predict Dementia-Related Neuropsychiatric Symptoms in Real-World Data
Cernuda, Carlos; Ezpeleta, Enaitz; Alberdi Aramendi, Ane (IOS Press, 2020)Background: Neuropsychiatric symptoms (NPS) are the leading cause of the social burden of dementia but their role is underestimated. Objective: The objective of the study was to validate predictive models to separately ...