scholarly journals Cognitive Training and Stress Detection in MCI Frail Older People Through Wearable Sensors and Machine Learning

IEEE Access ◽  
2020 ◽  
Vol 8 ◽  
pp. 65573-65590 ◽  
Author(s):  
Franca Delmastro ◽  
Flavio Di Martino ◽  
Cristina Dolciotti
Author(s):  
Prerna Garg ◽  
Jayasankar Santhosh ◽  
Andreas Dengel ◽  
Shoya Ishimaru

Electronics ◽  
2021 ◽  
Vol 10 (13) ◽  
pp. 1550
Author(s):  
Alexandros Liapis ◽  
Evanthia Faliagka ◽  
Christos P. Antonopoulos ◽  
Georgios Keramidas ◽  
Nikolaos Voros

Physiological measurements have been widely used by researchers and practitioners in order to address the stress detection challenge. So far, various datasets for stress detection have been recorded and are available to the research community for testing and benchmarking. The majority of the stress-related available datasets have been recorded while users were exposed to intense stressors, such as songs, movie clips, major hardware/software failures, image datasets, and gaming scenarios. However, it remains an open research question if such datasets can be used for creating models that will effectively detect stress in different contexts. This paper investigates the performance of the publicly available physiological dataset named WESAD (wearable stress and affect detection) in the context of user experience (UX) evaluation. More specifically, electrodermal activity (EDA) and skin temperature (ST) signals from WESAD were used in order to train three traditional machine learning classifiers and a simple feed forward deep learning artificial neural network combining continues variables and entity embeddings. Regarding the binary classification problem (stress vs. no stress), high accuracy (up to 97.4%), for both training approaches (deep-learning, machine learning), was achieved. Regarding the stress detection effectiveness of the created models in another context, such as user experience (UX) evaluation, the results were quite impressive. More specifically, the deep-learning model achieved a rather high agreement when a user-annotated dataset was used for validation.


2020 ◽  
Vol 4 (Supplement_1) ◽  
pp. 235-235
Author(s):  
Wytske Meekes ◽  
C J Leemrijse ◽  
J C Korevaar ◽  
L A M van de Goor

Abstract Falls are an important health threat among frail older people. Physicians are often the first to contact for health issues and can be seen as designated professionals to provide fall prevention. However, it is unknown what they exactly do and why regarding fall prevention. This study aims to describe what physicians in the Netherlands do during daily practice in regards to fall prevention. About 65 physicians (34 practices) located throughout the Netherlands were followed up for 12 months. When a physician entered specific ICPC-codes related to frailty and falls in the Hospital Information System, the physician received a pop-up asking if the patient is frail. If so, the physician subsequently completed a questionnaire. The physicians completed 1396 questionnaires. More than half (n=726) of the patients had experienced a fall in the previous year and/or had a fear of falling (FOF) and 37% of these patients received fall prevention. Physicians did not know of 20% of the patients if they had experienced a fall and of 29% of the patients if they had a FOF. The three most often treated underlying causes were mobility problems, FOF and cardiovascular risk factors. The results show that physicians are not always aware of a patient’s fall history and/or FOF and that only part of these patients receives fall prevention. Hence, it might be important to develop and implement strategies for systematic fall risk screening and fall prevention provision in the primary care setting to reduce falls among frail older people.


Author(s):  
Xianda Chen ◽  
Yifei Xiao ◽  
Yeming Tang ◽  
Julio Fernandez-Mendoza ◽  
Guohong Cao

Sleep apnea is a sleep disorder in which breathing is briefly and repeatedly interrupted. Polysomnography (PSG) is the standard clinical test for diagnosing sleep apnea. However, it is expensive and time-consuming which requires hospital visits, specialized wearable sensors, professional installations, and long waiting lists. To address this problem, we design a smartwatch-based system called ApneaDetector, which exploits the built-in sensors in smartwatches to detect sleep apnea. Through a clinical study, we identify features of sleep apnea captured by smartwatch, which can be leveraged by machine learning techniques for sleep apnea detection. However, there are many technical challenges such as how to extract various special patterns from the noisy and multi-axis sensing data. To address these challenges, we propose signal denoising and data calibration techniques to process the noisy data while preserving the peaks and troughs which reflect the possible apnea events. We identify the characteristics of sleep apnea such as signal spikes which can be captured by smartwatch, and propose methods to extract proper features to train machine learning models for apnea detection. Through extensive experimental evaluations, we demonstrate that our system can detect apnea events with high precision (0.9674), recall (0.9625), and F1-score (0.9649).


Sign in / Sign up

Export Citation Format

Share Document