Personalized Urination Activity Management Based on an Intelligent System Using a Wearable Device
Purpose In this study, a urinary management system was established to collect and analyze urinary time and interval data detected through patient-worn smart bands, and the results of the analysis were shown through a web-based visualization to enable monitoring and appropriate feedback for urologica...
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Korean Continence Society
2021-09-01
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doaj-1fbffd8230a04c3f90f9aa8baa3ca9b22021-10-06T07:07:01ZengKorean Continence SocietyInternational Neurourology Journal2093-47772093-69312021-09-0125322923510.5213/inj.2142276.138960Personalized Urination Activity Management Based on an Intelligent System Using a Wearable DeviceSung-Jong Eun0Jun Young Lee1Han Jung2Khae-Hawn Kim3 Digital Health Industry Team, National IT Industry Promotion Agency, Jincheon, Korea Digital Health Industry Team, National IT Industry Promotion Agency, Jincheon, Korea Department of Urology, Gachon University Gil Medical Center, Gachon University, Incheon, Korea Department of Urology, Chungnam National University Sejong Hospital, Chungnam National University College of Medicine, Sejong, KoreaPurpose In this study, a urinary management system was established to collect and analyze urinary time and interval data detected through patient-worn smart bands, and the results of the analysis were shown through a web-based visualization to enable monitoring and appropriate feedback for urological patients. Methods We designed a device that can recognize urination time and spacing based on patient-specific posture and consistent posture changes, and we built a urination patient management system based on this device. The order of body movements during urination was consistent in terms of time characteristics; therefore, sequential data were analyzed and urinary activity was recognized using repeated neural networks and long-term short-term memory systems. The results were implemented as a web (HTML5) service program, enabling visual support for clinical diagnostic assistance. Results Experiments were conducted to evaluate the performance of the proposed recognition techniques. The effectiveness of smart band monitoring urination was evaluated in 30 men (average age, 28.73 years; range, 26–34 years) without urination problems. The entire experiment lasted a total of 3 days. The final accuracy of the algorithm was calculated based on urological clinical guidelines. This experiment showed a high average accuracy of 95.8%, demonstrating the soundness of the proposed algorithm. Conclusions This urinary activity management system showed high accuracy and was applied in a clinical environment to characterize patients’ urinary patterns. As wearable devices are developed and generalized, algorithms capable of detecting certain sequential body motor patterns that reflect certain physiological behaviors can be a new methodology for studying human physiological behaviors. It is also thought that these systems will have a significant impact on diagnostic assistance for clinicians.http://www.einj.org/upload/pdf/inj-2142276-138.pdfurinary patienturination recognitionurination management systemmobile voiding chartlong short-term memoryrecurrent neural network |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Sung-Jong Eun Jun Young Lee Han Jung Khae-Hawn Kim |
spellingShingle |
Sung-Jong Eun Jun Young Lee Han Jung Khae-Hawn Kim Personalized Urination Activity Management Based on an Intelligent System Using a Wearable Device International Neurourology Journal urinary patient urination recognition urination management system mobile voiding chart long short-term memory recurrent neural network |
author_facet |
Sung-Jong Eun Jun Young Lee Han Jung Khae-Hawn Kim |
author_sort |
Sung-Jong Eun |
title |
Personalized Urination Activity Management Based on an Intelligent System Using a Wearable Device |
title_short |
Personalized Urination Activity Management Based on an Intelligent System Using a Wearable Device |
title_full |
Personalized Urination Activity Management Based on an Intelligent System Using a Wearable Device |
title_fullStr |
Personalized Urination Activity Management Based on an Intelligent System Using a Wearable Device |
title_full_unstemmed |
Personalized Urination Activity Management Based on an Intelligent System Using a Wearable Device |
title_sort |
personalized urination activity management based on an intelligent system using a wearable device |
publisher |
Korean Continence Society |
series |
International Neurourology Journal |
issn |
2093-4777 2093-6931 |
publishDate |
2021-09-01 |
description |
Purpose In this study, a urinary management system was established to collect and analyze urinary time and interval data detected through patient-worn smart bands, and the results of the analysis were shown through a web-based visualization to enable monitoring and appropriate feedback for urological patients. Methods We designed a device that can recognize urination time and spacing based on patient-specific posture and consistent posture changes, and we built a urination patient management system based on this device. The order of body movements during urination was consistent in terms of time characteristics; therefore, sequential data were analyzed and urinary activity was recognized using repeated neural networks and long-term short-term memory systems. The results were implemented as a web (HTML5) service program, enabling visual support for clinical diagnostic assistance. Results Experiments were conducted to evaluate the performance of the proposed recognition techniques. The effectiveness of smart band monitoring urination was evaluated in 30 men (average age, 28.73 years; range, 26–34 years) without urination problems. The entire experiment lasted a total of 3 days. The final accuracy of the algorithm was calculated based on urological clinical guidelines. This experiment showed a high average accuracy of 95.8%, demonstrating the soundness of the proposed algorithm. Conclusions This urinary activity management system showed high accuracy and was applied in a clinical environment to characterize patients’ urinary patterns. As wearable devices are developed and generalized, algorithms capable of detecting certain sequential body motor patterns that reflect certain physiological behaviors can be a new methodology for studying human physiological behaviors. It is also thought that these systems will have a significant impact on diagnostic assistance for clinicians. |
topic |
urinary patient urination recognition urination management system mobile voiding chart long short-term memory recurrent neural network |
url |
http://www.einj.org/upload/pdf/inj-2142276-138.pdf |
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