Literature DB >> 27471222

Unsupervised detection and analysis of changes in everyday physical activity data.

Gina Sprint1, Diane J Cook2, Maureen Schmitter-Edgecombe3.   

Abstract

Sensor-based time series data can be utilized to monitor changes in human behavior as a person makes a significant lifestyle change, such as progress toward a fitness goal. Recently, wearable sensors have increased in popularity as people aspire to be more conscientious of their physical health. Automatically detecting and tracking behavior changes from wearable sensor-collected physical activity data can provide a valuable monitoring and motivating tool. In this paper, we formalize the problem of unsupervised physical activity change detection and address the problem with our Physical Activity Change Detection (PACD) approach. PACD is a framework that detects changes between time periods, determines significance of the detected changes, and analyzes the nature of the changes. We compare the abilities of three change detection algorithms from the literature and one proposed algorithm to capture different types of changes as part of PACD. We illustrate and evaluate PACD on synthetic data and using Fitbit data collected from older adults who participated in a health intervention study. Results indicate PACD detects several changes in both datasets. The proposed change algorithms and analysis methods are useful data mining techniques for unsupervised, window-based change detection with potential to track users' physical activity and motivate progress toward their health goals.
Copyright © 2016 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Change point detection; Data mining; Physical activity monitoring; Unsupervised learning; Wearable sensors

Mesh:

Year:  2016        PMID: 27471222     DOI: 10.1016/j.jbi.2016.07.020

Source DB:  PubMed          Journal:  J Biomed Inform        ISSN: 1532-0464            Impact factor:   6.317


  14 in total

1.  Detecting Smartwatch-based Behavior Change in Response to a Multi-domain Brain Health Intervention.

Authors:  Diane J Cook; Miranda Strickland; Maureen Schmitter-Edgecombe
Journal:  ACM Trans Comput Healthc       Date:  2022-04-07

2.  Patient Engagement Using New Technology to Improve Adherence to Positive Airway Pressure Therapy: A Retrospective Analysis.

Authors:  Atul Malhotra; Maureen E Crocker; Leslee Willes; Colleen Kelly; Sue Lynch; Adam V Benjafield
Journal:  Chest       Date:  2017-11-15       Impact factor: 9.410

3.  Smart Secure Homes: A Survey of Smart Home Technologies that Sense, Assess, and Respond to Security Threats.

Authors:  Jessamyn Dahmen; Diane J Cook; Xiaobo Wang; Wang Honglei
Journal:  J Reliab Intell Environ       Date:  2017-02-15

4.  A conceptual framework for clinicians working with artificial intelligence and health-assistive Smart Homes.

Authors:  Gordana Dermody; Roschelle Fritz
Journal:  Nurs Inq       Date:  2018-11-12       Impact factor: 2.393

5.  Evaluating the Performance of Sensor-based Bout Detection Algorithms: The Transition Pairing Method.

Authors:  Paul R Hibbing; Samuel R LaMunion; Haileab Hilafu; Scott E Crouter
Journal:  J Meas Phys Behav       Date:  2020-05-20

6.  Analyzing Sensor-Based Time Series Data to Track Changes in Physical Activity during Inpatient Rehabilitation.

Authors:  Gina Sprint; Diane Cook; Douglas Weeks; Jordana Dahmen; Alyssa La Fleur
Journal:  Sensors (Basel)       Date:  2017-09-27       Impact factor: 3.576

7.  Cloud-Based Behavioral Monitoring in Smart Homes.

Authors:  Niccolò Mora; Guido Matrella; Paolo Ciampolini
Journal:  Sensors (Basel)       Date:  2018-06-15       Impact factor: 3.576

8.  Windows Into Human Health Through Wearables Data Analytics.

Authors:  Daniel Witt; Ryan Kellogg; Michael Snyder; Jessilyn Dunn
Journal:  Curr Opin Biomed Eng       Date:  2019-01-28

9.  Behavioral Differences Between Subject Groups Identified Using Smart Homes and Change Point Detection.

Authors:  Gina Sprint; Diane J Cook; Roschelle Fritz
Journal:  IEEE J Biomed Health Inform       Date:  2021-02-08       Impact factor: 5.772

Review 10.  Representation Learning for Fine-Grained Change Detection.

Authors:  Niall O'Mahony; Sean Campbell; Lenka Krpalkova; Anderson Carvalho; Joseph Walsh; Daniel Riordan
Journal:  Sensors (Basel)       Date:  2021-06-30       Impact factor: 3.576

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