A machine learning approach for semi-automatic assessment of IADL dependence in older adults with wearable sensors

被引:14
作者
Garcia-Moreno, Francisco M. [1 ]
Bermudez-Edo, Maria [1 ]
Rodriguez-Garcia, Estefania [2 ]
Manuel Perez-Marmol, Jose [2 ]
Luis Garrido, Jose [1 ]
Jose Rodriguez-Fortiz, Maria [1 ]
机构
[1] Univ Granada, Comp Sci Sch, Dept Software Engn, C Periodista Daniel Saucedo Aranda S-N, Granada 18014, Spain
[2] Univ Granada, Fac Hlth Sci, Dept Physiol, Av Ilustrac 60, Granada 18016, Spain
关键词
Dependence assessment; IADL; Older adults; Machine learning; Wearable sensors; E-health; Prediction; ACTIVITY RECOGNITION; INSTRUMENTAL ACTIVITIES; HEALTH-CARE; ACCELEROMETER; TECHNOLOGIES; BEHAVIOR; MOBILE; GAIT;
D O I
10.1016/j.ijmedinf.2021.104625
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Background and Objective: The assessment of dependence in older adults currently requires a manual collection of data taken from questionnaires. This process is time consuming for the clinicians and intrudes the daily life of the elderly. This paper aims to semi-automate the acquisition and analysis of health data to assess and predict the dependence in older adults while executing one instrumental activity of daily living (IADL). Methods: In a mobile-health (m-health) scenario, we analyze whether the acquisition of data through wearables during the performance of IADLs, and with the help of machine learning techniques could replace the traditional questionnaires to evaluate dependence. To that end, we collected data from wearables, while older adults do the shopping activity. A trial supervisor (TS) labelled the different shopping stages (SS) in the collected data. We performed data pre-processing techniques over those SS and analyzed them with three machine learning algorithms: k-Nearest Neighbors (k-NN), Random Forest (RF) and Support Vector Machines (SVM). Results: Our results confirm that it is possible to replace the traditional questionnaires with wearable data. In particular, the best learning algorithm we tried reported an accuracy of 97% in the assessment of dependence. We tuned the hyperparameters of this algorithm and used embedded feature selection technique to get the best performance with a subset of only 10 features out of the initial 85. This model considers only features extracted from four sensors of a single wearable: accelerometer, heart rate, electrodermal activity and temperature. Although these features are not observational, our current proposal is semi-automatic, because it needs a TS labelling the SS (with a smartphone application). In the future, this labelling process could be automatic as well. Conclusions: Our method can semi-automatically assess the dependence, without disturbing daily activities of elderly people. This method can save clinicians' time in the evaluation of dependence in older adults and reduce healthcare costs.
引用
收藏
页数:15
相关论文
共 69 条
[1]   Disability in instrumental activities of daily living among older adults: gender differences [J].
Alexandre, Tiago da Silva ;
Corona, Ligiana Pires ;
Nunes, Daniella Pires ;
Ferreira Santos, Jair Licio ;
de Oliveira Duarte, Yeda Aparecida ;
Lebrao, Maria Lucia .
REVISTA DE SAUDE PUBLICA, 2014, 48 (03) :378-389
[2]   Sensor Positioning for Activity Recognition Using Wearable Accelerometers [J].
Atallah, Louis ;
Lo, Benny ;
King, Rachel ;
Yang, Guang-Zhong .
IEEE TRANSACTIONS ON BIOMEDICAL CIRCUITS AND SYSTEMS, 2011, 5 (04) :320-329
[3]   Physical Human Activity Recognition Using Wearable Sensors [J].
Attal, Ferhat ;
Mohammed, Samer ;
Dedabrishvili, Mariam ;
Chamroukhi, Faicel ;
Oukhellou, Latifa ;
Amirat, Yacine .
SENSORS, 2015, 15 (12) :31314-31338
[4]   Analysing real world data streams with spatio-temporal correlations: Entropy vs. Pearson correlation [J].
Bermudez-Edo, Maria ;
Barnaghi, Payam ;
Moessner, Klaus .
AUTOMATION IN CONSTRUCTION, 2018, 88 :87-100
[5]   Self-Generated Strategic Behavior in an Ecological Shopping Task [J].
Bottari, Carolina ;
Shun, Priscilla Lam Wai ;
Le Dorze, Guylaine ;
Gosselin, Nadia ;
Dawson, Deirdre .
AMERICAN JOURNAL OF OCCUPATIONAL THERAPY, 2014, 68 (01) :67-76
[6]   A triaxial accelerometer and portable data processing unit for the assessment of daily physical activity [J].
Bouten, CVC ;
Koekkoek, KTM ;
Verduin, M ;
Kodde, R ;
Janssen, JD .
IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 1997, 44 (03) :136-147
[7]   Towards an application framework for context-aware m-health applications [J].
Broens, Tom ;
van Halteren, Aart ;
van Sinderen, Marten ;
Wac, Katarzyna .
INTERNATIONAL JOURNAL OF INTERNET PROTOCOL TECHNOLOGY, 2007, 2 (02) :109-116
[8]   The need to separate the wheat from the chaff in medical informatics Introducing a comprehensive checklist for the (self)-assessment of medical AI studies [J].
Cabitza, Federico ;
Campagner, Andrea .
INTERNATIONAL JOURNAL OF MEDICAL INFORMATICS, 2021, 153
[9]   Multimodal Assessment of Parkinson's Disease: A Deep Learning Approach [J].
Camilo Vasquez-Correa, Juan ;
Arias-Vergara, Tomas ;
Orozco-Arroyave, J. R. ;
Eskofier, Bjoern ;
Klucken, Jochen ;
Noeth, Elmar .
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2019, 23 (04) :1618-1630
[10]   SMOTE: Synthetic minority over-sampling technique [J].
Chawla, Nitesh V. ;
Bowyer, Kevin W. ;
Hall, Lawrence O. ;
Kegelmeyer, W. Philip .
2002, American Association for Artificial Intelligence (16)