Easing Automatic Neurorehabilitation via Classification and Smoothness
Analysis
- URL: http://arxiv.org/abs/2212.14797v1
- Date: Fri, 9 Dec 2022 13:59:14 GMT
- Title: Easing Automatic Neurorehabilitation via Classification and Smoothness
Analysis
- Authors: Asma Bensalah, Alicia Forn\'es, Cristina Carmona-Duarte, and Josep
Llad\'os
- Abstract summary: We propose an automatic assessment pipeline that starts by recognizing patients' movements by means of a shallow deep learning architecture, then measuring the movement quality using jerk measure and related measures.
A particularity of this work is that the dataset used is clinically relevant, since it represents movements inspired from Fugl-Meyer a well common upper-limb clinical stroke assessment scale for stroke patients.
We show that it is possible to detect the contrast between healthy and patients movements in terms of smoothness, besides achieving conclusions about the patients' progress during the rehabilitation sessions that correspond to the clinicians' findings about each case.
- Score: 1.44744639843118
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Assessing the quality of movements for post-stroke patients during the
rehabilitation phase is vital given that there is no standard stroke
rehabilitation plan for all the patients. In fact, it depends basically on the
patient's functional independence and its progress along the rehabilitation
sessions. To tackle this challenge and make neurorehabilitation more agile, we
propose an automatic assessment pipeline that starts by recognizing patients'
movements by means of a shallow deep learning architecture, then measuring the
movement quality using jerk measure and related measures. A particularity of
this work is that the dataset used is clinically relevant, since it represents
movements inspired from Fugl-Meyer a well common upper-limb clinical stroke
assessment scale for stroke patients. We show that it is possible to detect the
contrast between healthy and patients movements in terms of smoothness, besides
achieving conclusions about the patients' progress during the rehabilitation
sessions that correspond to the clinicians' findings about each case.
Related papers
- Individualised recovery trajectories of patients with impeded mobility, using distance between probability distributions of learnt graphs [0.3604879434384176]
We provide a method for the learning of the recovery trajectory of an individual patient, as they undertake exercises as part of their physical therapy.
The difference between the Movement Recovery Scores attained by a patient, when undertaking a given exercise routine on successive instances, is given by a statistical distance/divergence.
arXiv Detail & Related papers (2024-10-29T12:13:00Z) - A Medical Low-Back Pain Physical Rehabilitation Dataset for Human Body Movement Analysis [0.6990493129893111]
This article addresses four challenges to address and propose a medical dataset of clinical patients carrying out low back-pain rehabilitation exercises.
The dataset includes 3D Kinect skeleton positions and orientations, RGB videos, 2D skeleton data, and medical annotations to assess the correctness, and error classification and localisation of body part and timespan.
arXiv Detail & Related papers (2024-06-29T19:50:06Z) - MR-STGN: Multi-Residual Spatio Temporal Graph Network Using Attention
Fusion for Patient Action Assessment [0.3626013617212666]
We propose an automated approach for patient action assessment using a Multi-Residual Spatio Temporal Graph Network (MR-STGN)
The MR-STGN is specifically designed to capture the dynamics of patient actions.
We evaluate our model on the UI-PRMD dataset demonstrating its performance in accurately predicting real-time patient action scores.
arXiv Detail & Related papers (2023-12-21T01:09:52Z) - Assessment and treatment of visuospatial neglect using active learning
with Gaussian processes regression [0.3262230127283452]
Visuospatial neglect is a disorder characterised by impaired awareness for visual stimuli located in regions of space and frames of reference.
We present an artificial intelligence solution designed to accurately assess a patient's visuospatial neglect in a three-dimensional setting.
arXiv Detail & Related papers (2023-09-29T09:18:32Z) - Mimetic Muscle Rehabilitation Analysis Using Clustering of Low
Dimensional 3D Kinect Data [1.53119329713143]
This paper discusses an unsupervised approach to rehabilitating patients who have temporary facial paralysis due to damage in mimetic muscles.
The work aims to make the rehabilitation process objective compared to the current subjective approach, such as House-Brackmann (HB) scale.
The study contains data set of 85 distinct patients with 120 measurements obtained using a Kinect stereo-vision camera.
arXiv Detail & Related papers (2023-02-15T09:45:27Z) - Heterogeneous Hidden Markov Models for Sleep Activity Recognition from
Multi-Source Passively Sensed Data [67.60224656603823]
Psychiatric patients' passive activity monitoring is crucial to detect behavioural shifts in real-time.
Sleep Activity Recognition constitutes a behavioural marker to portray patients' activity cycles.
Mobile passively sensed data captured from smartphones constitute an excellent alternative to profile patients' biorhythm.
arXiv Detail & Related papers (2022-11-08T17:29:40Z) - Disentangled Counterfactual Recurrent Networks for Treatment Effect
Inference over Time [71.30985926640659]
We introduce the Disentangled Counterfactual Recurrent Network (DCRN), a sequence-to-sequence architecture that estimates treatment outcomes over time.
With an architecture that is completely inspired by the causal structure of treatment influence over time, we advance forecast accuracy and disease understanding.
We demonstrate that DCRN outperforms current state-of-the-art methods in forecasting treatment responses, on both real and simulated data.
arXiv Detail & Related papers (2021-12-07T16:40:28Z) - One-shot action recognition towards novel assistive therapies [63.23654147345168]
This work is motivated by the automated analysis of medical therapies that involve action imitation games.
The presented approach incorporates a pre-processing step that standardizes heterogeneous motion data conditions.
We evaluate the approach on a real use-case of automated video analysis for therapy support with autistic people.
arXiv Detail & Related papers (2021-02-17T19:41:37Z) - Designing Personalized Interaction of a Socially Assistive Robot for
Stroke Rehabilitation Therapy [64.52563354823711]
The research of a socially assistive robot has a potential to augment and assist physical therapy sessions for patients with neurological and musculoskeletal problems.
This paper presents an interactive approach of a socially assistive robot that can dynamically select kinematic features of assessment on individual patient's exercises to predict the quality of motion.
arXiv Detail & Related papers (2020-07-13T16:12:05Z) - A Review of Computational Approaches for Evaluation of Rehabilitation
Exercises [58.720142291102135]
This paper reviews computational approaches for evaluating patient performance in rehabilitation programs using motion capture systems.
The reviewed computational methods for exercise evaluation are grouped into three main categories: discrete movement score, rule-based, and template-based approaches.
arXiv Detail & Related papers (2020-02-29T22:18:56Z) - Estimating Counterfactual Treatment Outcomes over Time Through
Adversarially Balanced Representations [114.16762407465427]
We introduce the Counterfactual Recurrent Network (CRN) to estimate treatment effects over time.
CRN uses domain adversarial training to build balancing representations of the patient history.
We show how our model achieves lower error in estimating counterfactuals and in choosing the correct treatment and timing of treatment.
arXiv Detail & Related papers (2020-02-10T20:47:36Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.