Machine Learning Based Anxiety Detection in Older Adults using Wristband
Sensors and Context Feature
- URL: http://arxiv.org/abs/2106.03019v1
- Date: Sun, 6 Jun 2021 03:17:29 GMT
- Title: Machine Learning Based Anxiety Detection in Older Adults using Wristband
Sensors and Context Feature
- Authors: Rajdeep Kumar Nath and Himanshu Thapliyal
- Abstract summary: The proposed method for anxiety detection combines features from a single physiological signal with an experimental context-based feature.
This work demonstrates the practicality of the proposed anxiety detection method in facilitating long-term monitoring of anxiety in older adults using low-cost consumer devices.
- Score: 1.52292571922932
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper explores a novel method for anxiety detection in older adults
using simple wristband sensors such as Electrodermal Activity (EDA) and
Photoplethysmogram (PPG) and a context-based feature. The proposed method for
anxiety detection combines features from a single physiological signal with an
experimental context-based feature to improve the performance of the anxiety
detection model. The experimental data for this work is obtained from a
year-long experiment on 41 healthy older adults (26 females and 15 males) in
the age range 60-80 with mean age 73.36+-5.25 during a Trier Social Stress Test
(TSST) protocol. The anxiety level ground truth was obtained from State-Trait
Anxiety Inventory (STAI), which is regarded as the gold standard to measure
perceived anxiety. EDA and Blood Volume Pulse (BVP) signals were recorded using
a wrist-worn EDA and PPG sensor respectively. 47 features were computed from
EDA and BVP signal, out of which a final set of 24 significantly correlated
features were selected for analysis. The phases of the experimental study are
encoded as unique integers to generate the context feature vector. A
combination of features from a single sensor with the context feature vector is
used for training a machine learning model to distinguish between anxious and
not-anxious states. Results and analysis showed that the EDA and BVP machine
learning models that combined the context feature along with the physiological
features achieved 3.37% and 6.41% higher accuracy respectively than the models
that used only physiological features. Further, end-to-end processing of EDA
and BVP signals was simulated for real-time anxiety level detection. This work
demonstrates the practicality of the proposed anxiety detection method in
facilitating long-term monitoring of anxiety in older adults using low-cost
consumer devices.
Related papers
- Machine Learning to Detect Anxiety Disorders from Error-Related Negativity and EEG Signals [6.568471315961233]
This paper systematically reviews 54 research papers on using EEG and ERN markers for anxiety detection.
Our analysis highlights the wide usage of traditional machine learning, such as support vector machines and random forests.
Our analysis reveals that the development of a robust and generic anxiety prediction method still needs to address real-world challenges.
arXiv Detail & Related papers (2024-09-16T14:55:47Z) - Analyzing Participants' Engagement during Online Meetings Using Unsupervised Remote Photoplethysmography with Behavioral Features [50.82725748981231]
Engagement measurement finds application in healthcare, education, services.
Use of physiological and behavioral features is viable, but impracticality of traditional physiological measurement arises due to the need for contact sensors.
We demonstrate the feasibility of the unsupervised photoplethysmography (rmography) as an alternative for contact sensors.
arXiv Detail & Related papers (2024-04-05T20:39:16Z) - Investigating the Generalizability of Physiological Characteristics of Anxiety [3.4036712573981607]
We evaluate the generalizability of physiological features that have been shown to be correlated with anxiety and stress to high-arousal emotions.
This work is the first cross-corpus evaluation across stress and arousal from ECG and EDA signals, contributing new findings about the generalizability of stress detection.
arXiv Detail & Related papers (2024-01-23T16:49:54Z) - Undersampling and Cumulative Class Re-decision Methods to Improve
Detection of Agitation in People with Dementia [16.949993123698345]
Agitation is one of the most prevalent symptoms in people with dementia (PwD)
In a previous study, we collected multimodal wearable sensor data from 17 participants for 600 days and developed machine learning models for detecting agitation in one-minute windows.
In this paper, we first implemented different undersampling methods to eliminate the imbalance problem, and came to the conclusion that only 20% of normal behaviour data were adequate to train a competitive agitation detection model.
arXiv Detail & Related papers (2023-02-07T03:14:00Z) - Exploring linguistic feature and model combination for speech
recognition based automatic AD detection [61.91708957996086]
Speech based automatic AD screening systems provide a non-intrusive and more scalable alternative to other clinical screening techniques.
Scarcity of specialist data leads to uncertainty in both model selection and feature learning when developing such systems.
This paper investigates the use of feature and model combination approaches to improve the robustness of domain fine-tuning of BERT and Roberta pre-trained text encoders.
arXiv Detail & Related papers (2022-06-28T05:09:01Z) - Designing A Clinically Applicable Deep Recurrent Model to Identify
Neuropsychiatric Symptoms in People Living with Dementia Using In-Home
Monitoring Data [52.40058724040671]
Agitation is one of the neuropsychiatric symptoms with high prevalence in dementia.
Detecting agitation episodes can assist in providing People Living with Dementia (PLWD) with early and timely interventions.
This preliminary study presents a supervised learning model to analyse the risk of agitation in PLWD using in-home monitoring data.
arXiv Detail & Related papers (2021-10-19T11:45:01Z) - Bootstrapping Your Own Positive Sample: Contrastive Learning With
Electronic Health Record Data [62.29031007761901]
This paper proposes a novel contrastive regularized clinical classification model.
We introduce two unique positive sampling strategies specifically tailored for EHR data.
Our framework yields highly competitive experimental results in predicting the mortality risk on real-world COVID-19 EHR data.
arXiv Detail & Related papers (2021-04-07T06:02:04Z) - Using Convolutional Variational Autoencoders to Predict Post-Trauma
Health Outcomes from Actigraphy Data [4.668948267866486]
Depression and post-traumatic stress disorder (PTSD) are psychiatric conditions commonly associated with a traumatic event.
In this work, we used locomotor activity captured from 1113 individuals who wore a research grade smartwatch post-trauma.
A convolutional variational autoencoder (VAE) architecture was used for unsupervised feature extraction from actigraphy data.
arXiv Detail & Related papers (2020-11-14T22:48:12Z) - Anxiety Detection Leveraging Mobile Passive Sensing [53.11661460916551]
Anxiety disorders are the most common class of psychiatric problems affecting both children and adults.
Leveraging passive and unobtrusive data collection from smartphones could be a viable alternative to classical methods.
eWellness is an experimental mobile application designed to track a full-suite of sensor and user-log data off an individual's device in a continuous and passive manner.
arXiv Detail & Related papers (2020-08-09T20:22:52Z) - Detecting Parkinsonian Tremor from IMU Data Collected In-The-Wild using
Deep Multiple-Instance Learning [59.74684475991192]
Parkinson's Disease (PD) is a slowly evolving neuro-logical disease that affects about 1% of the population above 60 years old.
PD symptoms include tremor, rigidity and braykinesia.
We present a method for automatically identifying tremorous episodes related to PD, based on IMU signals captured via a smartphone device.
arXiv Detail & Related papers (2020-05-06T09:02:30Z)
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.