2024
DOI: 10.2196/50518
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Agendas on Nursing in South Korea Media: Natural Language Processing and Network Analysis of News From 2005 to 2022

Daemin Park,
Dasom Kim,
Ah-hyun Park

Abstract: Background In recent years, Korean society has increasingly recognized the importance of nurses in the context of population aging and infectious disease control. However, nurses still face difficulties with regard to policy activities that are aimed at improving the nursing workforce structure and working environment. Media coverage plays an important role in public awareness of a particular issue and can be an important strategy in policy activities. Objective … Show more

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“…AI-driven tools have effectively reduced hospital-acquired pressure ulcer rates and intensive care unit stays [ 16 ]. Additionally, recent studies in South Korea used machine learning–based analytical methods and natural language processing to accurately predict adverse drug reactions [ 17 ], pressure injury staging [ 18 ], and improve hospital data management capabilities [ 19 ]. Japan’s focus on advanced health care analytics is evident through the works of Nakatani et al [ 20 ] and Kawashima et al [ 21 ], which leveraged natural language processing and machine learning to predict hospital inpatient falls (area under the receiver operating characteristic curve of 0.834) and needs of cancer patients in palliative care, respectively.…”
Section: Applications Of Ai In Nursingmentioning
confidence: 99%
“…AI-driven tools have effectively reduced hospital-acquired pressure ulcer rates and intensive care unit stays [ 16 ]. Additionally, recent studies in South Korea used machine learning–based analytical methods and natural language processing to accurately predict adverse drug reactions [ 17 ], pressure injury staging [ 18 ], and improve hospital data management capabilities [ 19 ]. Japan’s focus on advanced health care analytics is evident through the works of Nakatani et al [ 20 ] and Kawashima et al [ 21 ], which leveraged natural language processing and machine learning to predict hospital inpatient falls (area under the receiver operating characteristic curve of 0.834) and needs of cancer patients in palliative care, respectively.…”
Section: Applications Of Ai In Nursingmentioning
confidence: 99%