Otago Exercises Monitoring for Older Adults by a Single IMU and
Hierarchical Machine Learning Models
- URL: http://arxiv.org/abs/2310.03512v2
- Date: Mon, 5 Feb 2024 12:28:41 GMT
- Title: Otago Exercises Monitoring for Older Adults by a Single IMU and
Hierarchical Machine Learning Models
- Authors: Meng Shang, Lenore Dedeyne, Jolan Dupont, Laura Vercauteren, Nadjia
Amini, Laurence Lapauw, Evelien Gielen, Sabine Verschueren, Carolina Varon,
Walter De Raedt, and Bart Vanrumste
- Abstract summary: The objective of this study is to build an unobtrusive and accurate system to monitor Otago Exercise Program (OEP) for older adults.
Data was collected from older adults wearing a single waist-mounted Inertial Measurement Unit (IMU)
A hierarchical system is proposed with two stages: 1) using a deep learning model to recognize whether the patients are performing OEP or activities of daily life (ADLs) using a 10-minute sliding window; 2) based on stage 1, using a 6-second sliding window to recognize the OEP sub-classes performed.
- Score: 1.0663633381202409
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Otago Exercise Program (OEP) is a rehabilitation program for older adults to
improve frailty, sarcopenia, and balance. Accurate monitoring of patient
involvement in OEP is challenging, as self-reports (diaries) are often
unreliable. With the development of wearable sensors, Human Activity
Recognition (HAR) systems using wearable sensors have revolutionized
healthcare. However, their usage for OEP still shows limited performance. The
objective of this study is to build an unobtrusive and accurate system to
monitor OEP for older adults. Data was collected from older adults wearing a
single waist-mounted Inertial Measurement Unit (IMU). Two datasets were
collected, one in a laboratory setting, and one at the homes of the patients. A
hierarchical system is proposed with two stages: 1) using a deep learning model
to recognize whether the patients are performing OEP or activities of daily
life (ADLs) using a 10-minute sliding window; 2) based on stage 1, using a
6-second sliding window to recognize the OEP sub-classes performed. The results
showed that in stage 1, OEP could be recognized with window-wise f1-scores over
0.95 and Intersection-over-Union (IoU) f1-scores over 0.85 for both datasets.
In stage 2, for the home scenario, four activities could be recognized with
f1-scores over 0.8: ankle plantarflexors, abdominal muscles, knee bends, and
sit-to-stand. The results showed the potential of monitoring the compliance of
OEP using a single IMU in daily life. Also, some OEP sub-classes are possible
to be recognized for further analysis.
Related papers
- Predicting Length of Stay in Neurological ICU Patients Using Classical Machine Learning and Neural Network Models: A Benchmark Study on MIMIC-IV [49.1574468325115]
This study explores multiple ML approaches for predicting LOS in ICU specifically for the patients with neurological diseases based on the MIMIC-IV dataset.<n>The evaluated models include classic ML algorithms (K-Nearest Neighbors, Random Forest, XGBoost and CatBoost) and Neural Networks (LSTM, BERT and Temporal Fusion Transformer)
arXiv Detail & Related papers (2025-05-23T14:06:42Z) - MobileNetV2: A lightweight classification model for home-based sleep apnea screening [3.463585190363689]
This study proposes a novel lightweight neural network model leveraging features extracted from electrocardiogram (ECG) and respiratory signals for early OSA screening.
ECG signals are used to generate feature spectrograms to predict sleep stages, while respiratory signals are employed to detect sleep-related breathing abnormalities.
By integrating these predictions, the method calculates the apnea-hypopnea index (AHI) with enhanced accuracy, facilitating precise OSA diagnosis.
arXiv Detail & Related papers (2024-12-28T01:37:25Z) - Validation of a new, minimally-invasive, software smartphone device to predict sleep apnea and its severity: transversal study [3.798946451618375]
Obstructive sleep apnea (OSA) is frequent and responsible for cardiovascular complications and excessive daytime sleepiness.
Alternative methods using smartphone sensors could be useful to increase diagnosis.
This article shows that manual scoring of smartphone-based signals is possible and accurate compared to PSG-based scorings.
arXiv Detail & Related papers (2024-06-20T14:36:15Z) - A Masked Semi-Supervised Learning Approach for Otago Micro Labels Recognition [1.0663633381202409]
Otago Exercise Program serves as a vital rehabilitation initiative for older adults, aiming to enhance their strength and balance, and consequently prevent falls.
Existing Human Activity Recognition systems focus on the duration of macro activities.
This study presents a novel semi-supervised machine learning approach aimed at bridging this gap in recognizing the micro activities of OEP.
arXiv Detail & Related papers (2024-05-21T12:00:01Z) - DS-MS-TCN: Otago Exercises Recognition with a Dual-Scale Multi-Stage
Temporal Convolutional Network [1.0981016767527207]
The Otago Exercise Program (OEP) represents a crucial rehabilitation initiative tailored for older adults, aimed at enhancing balance and strength.
Previous efforts utilizing wearable sensors for OEP recognition have exhibited limitations in terms of accuracy and robustness.
This study addresses these limitations by employing a single waist-mounted Inertial Measurement Unit (IMU) to recognize OEP exercises among community-dwelling older adults in their daily lives.
arXiv Detail & Related papers (2024-02-05T11:25:45Z) - A Federated Learning Framework for Stenosis Detection [70.27581181445329]
This study explores the use of Federated Learning (FL) for stenosis detection in coronary angiography images (CA)
Two heterogeneous datasets from two institutions were considered: dataset 1 includes 1219 images from 200 patients, which we acquired at the Ospedale Riuniti of Ancona (Italy)
dataset 2 includes 7492 sequential images from 90 patients from a previous study available in the literature.
arXiv Detail & Related papers (2023-10-30T11:13:40Z) - Self-supervised contrastive learning of echocardiogram videos enables
label-efficient cardiac disease diagnosis [48.64462717254158]
We developed a self-supervised contrastive learning approach, EchoCLR, to catered to echocardiogram videos.
When fine-tuned on small portions of labeled data, EchoCLR pretraining significantly improved classification performance for left ventricular hypertrophy (LVH) and aortic stenosis (AS)
EchoCLR is unique in its ability to learn representations of medical videos and demonstrates that SSL can enable label-efficient disease classification from small, labeled datasets.
arXiv Detail & Related papers (2022-07-23T19:17:26Z) - Building Brains: Subvolume Recombination for Data Augmentation in Large
Vessel Occlusion Detection [56.67577446132946]
A large training data set is required for a standard deep learning-based model to learn this strategy from data.
We propose an augmentation method that generates artificial training samples by recombining vessel tree segmentations of the hemispheres from different patients.
In line with the augmentation scheme, we use a 3D-DenseNet fed with task-specific input, fostering a side-by-side comparison between the hemispheres.
arXiv Detail & Related papers (2022-05-05T10:31:57Z) - Osteoporosis Prescreening using Panoramic Radiographs through a Deep
Convolutional Neural Network with Attention Mechanism [65.70943212672023]
Deep convolutional neural network (CNN) with an attention module can detect osteoporosis on panoramic radiographs.
dataset of 70 panoramic radiographs (PRs) from 70 different subjects of age between 49 to 60 was used.
arXiv Detail & Related papers (2021-10-19T00:03:57Z) - Machine Learning-based Classification of Active Walking Tasks in Older
Adults using fNIRS [2.0953361712358025]
Cortical control of gait, specifically in the pre-frontal cortex as measured by functional near infrared spectroscopy (fNIRS), has shown to be moderated by age, gender, cognitive status, and various age-related disease conditions.
We develop classification models using machine learning methods to classify active walking tasks in older adults based on fNIRS signals.
arXiv Detail & Related papers (2021-02-08T03:44:24Z) - MSED: a multi-modal sleep event detection model for clinical sleep
analysis [62.997667081978825]
We designed a single deep neural network architecture to jointly detect sleep events in a polysomnogram.
The performance of the model was quantified by F1, precision, and recall scores, and by correlating index values to clinical values.
arXiv Detail & Related papers (2021-01-07T13:08:44Z) - A Machine Learning Early Warning System: Multicenter Validation in
Brazilian Hospitals [4.659599449441919]
Early recognition of clinical deterioration is one of the main steps for reducing inpatient morbidity and mortality.
Since hospital wards are given less attention compared to the Intensive Care Unit, ICU, we hypothesized that when a platform is connected to a stream of EHR, there would be a drastic improvement in dangerous situations awareness.
With the application of machine learning, the system is capable to consider all patient's history and through the use of high-performing predictive models, an intelligent early warning system is enabled.
arXiv Detail & Related papers (2020-06-09T21:21:38Z) - 1-D Convlutional Neural Networks for the Analysis of Pupil Size
Variations in Scotopic Conditions [79.71065005161566]
1-D convolutional neural network models are trained for classification of short-range sequences.
Model provides prediction with high average accuracy on a hold out test set.
arXiv Detail & Related papers (2020-02-06T17:25:37Z)
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.