Authors
Zhenyu Zhang, Ping Yu, Hui Chen Chang, Sim Kim Lau, Cui Tao, Ning Wang, Mengyang Yin, Chao Deng
Publication date
2020
Journal
Alzheimer's & Dementia: Translational Research & Clinical Interventions
Volume
6
Issue
1
Pages
e12061
Description
Introduction
A large volume of clinical care data has been generated for managing agitation in dementia. However, the valuable information in these data has not been used effectively to generate insights for improving the quality of care. Application of artificial intelligence technologies offers us enormous opportunities to reuse these data. For health data science to achieve this, this study focuses on using ontology to coding clinical knowledge for non‐pharmacological treatment of agitation in a machine‐readable format.
Methods
The resultant ontology—Dementia‐Related Agitation Non‐Pharmacological Treatment Ontology (DRANPTO)—was developed using a method adopted from the NeOn methodology.
Results
DRANPTO consisted of 569 concepts and 48 object properties. It meets the standards for biomedical ontology.
Discussion
DRANPTO is the first comprehensive semantic representation of non …
Total citations
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Scholar articles
Z Zhang, P Yu, HC Chang, SK Lau, C Tao, N Wang… - Alzheimer's & Dementia: Translational Research & …, 2020