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Improving Patient Safety by Utilizing Intelligence Informatics of Nursing Healthcare System Google Scholar

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Medicine Group
NeurooncologyGeneticsRheumatologyForestryCardiologyOncology

Volume3-Issue7
Dates: Received: 2022-07-28 | Accepted: 2022-07-30 | Published: 2022-07-31
Pages: 846-847

Abstract

Based on Changhua Christian Hospital dataset, it shows the completeness of the chart recordings of the nursing end reached 79%; it might greatly affect clinical patient care. In accordance with global shortage of nursing manpower and contemporary technology, it is essential to formulate a health care system that can cater to both nursing peroneal as well as improving first line quality of care.

FullText HTML FullText PDF DOI: 10.37871/jbres1522


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Copyright

© 2022 Mei-Chu C, et al. Distributed under Creative Commons CC-BY 4.0

How to cite this article

Mei-Chu C, Mei-Wen W, Sing-Jyun L, Hsiu-Mei H, Shu-Chen C. Improving Patient Safety by Utilizing Intelligence Informatics of Nursing Healthcare System. J Biomed Res Environ Sci. 2022 July 31; 3(7): 846-847. doi: 10.37871/jbres1522, Article ID: JBRES1522, Available at: https://www.jelsciences.com/articles/jbres1522.pdf


Subject area(s)

Neurooncology
Genetics
Rheumatology
Forestry
Cardiology
Oncology

References


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