Dante Trabassi

Pubblicazioni

Titolo Pubblicato in Anno
Local Dynamic Stability of Trunk During Gait is Responsive to Rehabilitation in Subjects with Primary Degenerative Cerebellar Ataxia THE CEREBELLUM 2024
Optimizing Rare Disease Gait Classification through Data Balancing and Generative AI: Insights from Hereditary Cerebellar Ataxia SENSORS 2024
The role of stroke-induced immunosuppression as a predictor of functional outcome in the neurorehabilitation setting SCIENTIFIC REPORTS 2024
Differences in Trunk Acceleration-Derived Gait Indexes in Stroke Subjects with and without Stroke-Induced Immunosuppression SENSORS 2024
Mixed Reality-Based Smart Occupational Therapy Personalized Protocol for Cerebellar Ataxic Patients BRAIN SCIENCES 2024
Local dynamic stability of trunk during gait can detect dynamic imbalance in subjects with episodic migraine SENSORS 2024
Multiscale Entropy Algorithms to Analyze Complexity and Variability of Trunk Accelerations Time Series in Subjects with Parkinson’s Disease SENSORS 2023
Unsupervised machine learning strategy and Shapley Additive Explanation to distinguish gait abnormalities through IMU-based gait analysis in movement disorders. GAIT & POSTURE 2023
Immediate effects of trunk rotator stretching exercise on gait parameters in subjects with Parkinson’s disease: a randomized clinical trial GAIT & POSTURE 2023
Identification of gait unbalance and fallers among subjects with cerebellar ataxia by a set of trunk acceleration-derived indices of gait CEREBELLUM 2022
Machine Learning Approach to Support the Detection of Parkinson's Disease in {IMU}-Based Gait Analysis SENSORS 2022
Harmonic ratio is the most responsive trunk-acceleration derived gait index to rehabilitation in people with Parkinson's disease at moderate disease stages GAIT & POSTURE 2022
Ability of a set of trunk inertial indexes of gait to identify gait instability and recurrent fallers in parkinson’s disease SENSORS 2021

ERC

  • LS5
  • PE8_4

Keywords

gait analysis
data science
machine learning
neurodegenerative disorder

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