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19 results on '"D'Addio, G."'

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1. Machine learning to predict mortality after rehabilitation among patients with severe stroke.

2. The impact of ankle-foot orthosis on walking features of drop foot patients

4. A Machine Learning Approach to Predict the Rehabilitation Outcome in Convalescent COVID-19 Patients

5. Unsupervised Machine Learning to Identify Convalescent COVID-19 Phenotypes

6. Bidimensional and Tridimensional Poincaré Maps in Cardiology: A Multiclass Machine Learning Study

7. Feasibility of Tree-based Machine Learning algorithms fed with surface electromyographic features to discriminate risk classes according to NIOSH

8. Extracting Features from Poincaré Plots to Distinguish Congestive Heart Failure Patients According to NYHA Classes

9. Gait analysis to quantitatively classify Ataxia and Parkinson's disease patients: a pilot study using tree-based Machine Learning algorithms.

10. Detecting Parkinson's disease through an upper limb reaching task and a machine learning approach.

11. Distinguishing Stroke patients with and without Unilateral Spatial Neglect by means of Clinical Features: a Tree-based Machine Learning Approach

12. Influence of the Backpack on School Children’s Gait: A Statistical and Machine Learning Approach

13. Machine learning to predict mortality after rehabilitation among patients with severe stroke

14. Classifying patients affected by Parkinson's disease into freezers or non-freezers through machine learning

15. Feasibility of Machine Learning applied to Poincaré Plot Analysis on Patients with CHF

16. Efficacy of machine learning in predicting the kind of delivery by cardiotocography

17. Machine learning can detect the presence of Mild cognitive impairment in patients affected by Parkinson's Disease

18. Feasibility of Machine Learning in Predicting Features Related to Congenital Nystagmus

19. Machine Learning applied on Poincaré Analyisis to discriminate different cardiac issues

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