Detailed Information on Publication Record
2014
Automatic Identification of Solid-Phase Medication Intake Using Wireless Wearable Accelerometers
WANG, Rui, Zdeňka SITOVÁ, Xiaoqing JIA, Xiang HE, Tobi ABRAMSON et. al.Basic information
Original name
Automatic Identification of Solid-Phase Medication Intake Using Wireless Wearable Accelerometers
Authors
WANG, Rui (156 China), Zdeňka SITOVÁ (203 Czech Republic, guarantor, belonging to the institution), Xiaoqing JIA (156 China), Xiang HE (156 China), Tobi ABRAMSON (840 United States of America), Paolo GASTI (840 United States of America), Kiran S. BALAGANI (840 United States of America) and Aydin FARAJIDAVAR (840 United States of America)
Edition
New York, 36th Annual International IEEE Engineering in Medicine and Biology Society Conference (EMBS), 2014, p. 4168-4171, 4 pp. 2014
Publisher
IEEE
Other information
Language
English
Type of outcome
Stať ve sborníku
Field of Study
10201 Computer sciences, information science, bioinformatics
Country of publisher
United States of America
Confidentiality degree
není předmětem státního či obchodního tajemství
Publication form
printed version "print"
References:
RIV identification code
RIV/00216224:14330/14:00076289
Organization unit
Faculty of Informatics
ISBN
978-1-4244-7929-0
ISSN
UT WoS
000350044704041
Keywords in English
ADHERENCE; DRUG
Tags
Změněno: 27/8/2019 11:50, RNDr. Pavel Šmerk, Ph.D.
Abstract
V originále
We have proposed a novel solution to a fundamental problem encountered in implementing non-ingestion based medical adherence monitoring systems, namely, how to reliably identify pill medication intake. We show how wireless wearable devices with tri-axial accelerometer can be used to detect and classify hand gestures of users during solid-phase medication intake. Two devices were worn on the wrists of each user. Users were asked to perform two activities in the way that is natural and most comfortable to them: (1) taking empty gelatin capsules with water, and (2) drinking water and wiping mouth. 25 users participated in this study. The signals obtained from the devices were filtered and the patterns were identified using dynamic time warping algorithm. Using hand gesture signals, we achieved 84.17 percent true positive rate and 13.33 percent false alarm rate, thus demonstrating that the hand gestures could be used to effectively identify pill taking activity.