Literature DB >> 33572116

Measuring Activities of Daily Living in Stroke Patients with Motion Machine Learning Algorithms: A Pilot Study.

Pin-Wei Chen1,2, Nathan A Baune1,2, Igor Zwir3,4, Jiayu Wang3, Victoria Swamidass1, Alex W K Wong3,5,6.   

Abstract

Measuring activities of daily living (ADLs) using wearable technologies may offer higher precision and granularity than the current clinical assessments for patients after stroke. This study aimed to develop and determine the accuracy of detecting different ADLs using machine-learning (ML) algorithms and wearable sensors. Eleven post-stroke patients participated in this pilot study at an ADL Simulation Lab across two study visits. We collected blocks of repeated activity ("atomic" activity) performance data to train our ML algorithms during one visit. We evaluated our ML algorithms using independent semi-naturalistic activity data collected at a separate session. We tested Decision Tree, Random Forest, Support Vector Machine (SVM), and eXtreme Gradient Boosting (XGBoost) for model development. XGBoost was the best classification model. We achieved 82% accuracy based on ten ADL tasks. With a model including seven tasks, accuracy improved to 90%. ADL tasks included chopping food, vacuuming, sweeping, spreading jam or butter, folding laundry, eating, brushing teeth, taking off/putting on a shirt, wiping a cupboard, and buttoning a shirt. Results provide preliminary evidence that ADL functioning can be predicted with adequate accuracy using wearable sensors and ML. The use of external validation (independent training and testing data sets) and semi-naturalistic testing data is a major strength of the study and a step closer to the long-term goal of ADL monitoring in real-world settings. Further investigation is needed to improve the ADL prediction accuracy, increase the number of tasks monitored, and test the model outside of a laboratory setting.

Entities:  

Keywords:  activities of daily living; machine learning; rehabilitation; remote sensing technology; stroke; telemedicine; wearable electronic devices

Mesh:

Year:  2021        PMID: 33572116      PMCID: PMC7915561          DOI: 10.3390/ijerph18041634

Source DB:  PubMed          Journal:  Int J Environ Res Public Health        ISSN: 1660-4601            Impact factor:   3.390


  23 in total

1.  Wireless Sensor Networks Intrusion Detection Based on SMOTE and the Random Forest Algorithm.

Authors:  Xiaopeng Tan; Shaojing Su; Zhiping Huang; Xiaojun Guo; Zhen Zuo; Xiaoyong Sun; Longqing Li
Journal:  Sensors (Basel)       Date:  2019-01-08       Impact factor: 3.576

Review 2.  Mobile Devices and Health.

Authors:  Ida Sim
Journal:  N Engl J Med       Date:  2019-09-05       Impact factor: 91.245

Review 3.  Review of accelerometry for determining daily activity among elderly patients.

Authors:  Vivian H Cheung; Len Gray; Mohanraj Karunanithi
Journal:  Arch Phys Med Rehabil       Date:  2011-06       Impact factor: 3.966

4.  Physical activity in the United States measured by accelerometer.

Authors:  Richard P Troiano; David Berrigan; Kevin W Dodd; Louise C Mâsse; Timothy Tilert; Margaret McDowell
Journal:  Med Sci Sports Exerc       Date:  2008-01       Impact factor: 5.411

5.  A Model-Based Machine Learning Approach to Probing Autonomic Regulation From Nonstationary Vital-Sign Time Series.

Authors:  Li-Wei H Lehman; Roger G Mark; Shamim Nemati
Journal:  IEEE J Biomed Health Inform       Date:  2016-12-07       Impact factor: 5.772

6.  Patient-proxy response comparability on measures of patient health and functional status.

Authors:  J Magaziner; E M Simonsick; T M Kashner; J R Hebel
Journal:  J Clin Epidemiol       Date:  1988       Impact factor: 6.437

7.  Real-world affected upper limb activity in chronic stroke: an examination of potential modifying factors.

Authors:  Ryan R Bailey; Rebecca L Birkenmeier; Catherine E Lang
Journal:  Top Stroke Rehabil       Date:  2015-01-21       Impact factor: 2.177

8.  Feature selection for wearable smartphone-based human activity recognition with able bodied, elderly, and stroke patients.

Authors:  Nicole A Capela; Edward D Lemaire; Natalie Baddour
Journal:  PLoS One       Date:  2015-04-17       Impact factor: 3.240

9.  Predicting diabetes mellitus using SMOTE and ensemble machine learning approach: The Henry Ford ExercIse Testing (FIT) project.

Authors:  Manal Alghamdi; Mouaz Al-Mallah; Steven Keteyian; Clinton Brawner; Jonathan Ehrman; Sherif Sakr
Journal:  PLoS One       Date:  2017-07-24       Impact factor: 3.240

10.  Patient outcomes up to 15 years after stroke: survival, disability, quality of life, cognition and mental health.

Authors:  Siobhan L Crichton; Benjamin D Bray; Christopher McKevitt; Anthony G Rudd; Charles D A Wolfe
Journal:  J Neurol Neurosurg Psychiatry       Date:  2016-07-22       Impact factor: 10.154

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  2 in total

Review 1.  Measured and Perceived Effects of Upper Limb Home-Based Exergaming Interventions on Activity after Stroke: A Systematic Review and Meta-Analysis.

Authors:  Axelle Gelineau; Anaick Perrochon; Louise Robin; Jean-Christophe Daviet; Stéphane Mandigout
Journal:  Int J Environ Res Public Health       Date:  2022-07-26       Impact factor: 4.614

2.  Visualization-Driven Time-Series Extraction from Wearable Systems Can Facilitate Differentiation of Passive ADL Characteristics among Stroke and Healthy Older Adults.

Authors:  Joby John; Rahul Soangra
Journal:  Sensors (Basel)       Date:  2022-01-13       Impact factor: 3.576

  2 in total

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