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1.
J Korean Acad Nurs ; 53(1): 55-68, 2023 Feb.
Article in Korean | MEDLINE | ID: covidwho-2308795

ABSTRACT

PURPOSE: The purpose of this study was to identify the main keywords, network properties, and main topics of news articles related to artificial intelligence technology in the field of nursing. METHODS: After collecting artificial intelligence-and nursing-related news articles published between January 1, 1991, and July 24, 2022, keywords were extracted via preprocessing. A total of 3,267 articles were searched, and 2,996 were used for the final analysis. Text network analysis and topic modeling were performed using NetMiner 4.4. RESULTS: As a result of analyzing the frequency of appearance, the keywords used most frequently were education, medical robot, telecom, dementia, and the older adults living alone. Keyword network analysis revealed the following results: a density of 0.002, an average degree of 8.79, and an average distance of 2.43; the central keywords identified were 'education,' 'medical robot,' and 'fourth industry.' Five topics were derived from news articles related to artificial intelligence and nursing: 'Artificial intelligence nursing research and development in the health and medical field,' 'Education using artificial intelligence for children and youth care,' 'Nursing robot for older adults care,' 'Community care policy and artificial intelligence,' and 'Smart care technology in an aging society.' CONCLUSION: The use of artificial intelligence may be helpful among the local community, older adult, children, and adolescents. In particular, health management using artificial intelligence is indispensable now that we are facing a super-aging society. In the future, studies on nursing intervention and development of nursing programs using artificial intelligence should be conducted.


Subject(s)
Artificial Intelligence , Nursing Research , Child , Humans , Aged , Adolescent
2.
International Journal of Mental Health Promotion ; 25(3):421-431, 2023.
Article in English | Scopus | ID: covidwho-2254991

ABSTRACT

Major media outlets have run many articles on the COVID-19 pandemic. Since the public suffers cognitive and emotional effects related to COVID-19 from such reports, we analyzed and reviewed the topics of news reports. We searched newspaper articles with the term ‘COVID-19' term in four Korean daily newspapers from January 20, 2020, when the first patient in Korea was found, to June 15, 2020. Topic modeling analysis was conducted through text mining using R. Five themes were found: "Changes in people's everyday life,” "Socio-economic shock,” "Trends in infection,” "Role of the government and business,” and "Increased psychological anxiety,” which all showed sharp increases in articles from mid-February to early March and then decreased. Despite the increased psychological anxiety people suffered from the COVID-19 pandemic, this topic showed the fewest articles. "Changes in people's everyday life” showed the most, focusing attention on stimulating lifestyle articles of general interest. Since the COVID-19 pandemic can lead to mental health problems due to severe changes and isolation in everyday life, a comprehensive response to the news focusing on the impact on the mental health of the population around the world should be made. © 2023, Tech Science Press. All rights reserved.

3.
JMIR Form Res ; 7: e45147, 2023 Mar 21.
Article in English | MEDLINE | ID: covidwho-2249186

ABSTRACT

BACKGROUND: More people are turning to internet pharmacies to purchase their prescription medicines. This kind of purchase is associated with serious risks, including the risk of buying fake medicines, which are widely available on the internet. This underresearched issue has been highlighted by many newspaper articles in the past few years. Newspapers can play an important role in shaping public perceptions of the risks associated with purchasing prescription medicines on the internet. Thus, it is important to understand how the news media present this issue. OBJECTIVE: This study aimed to explore newspaper coverage of the problem of purchasing fake prescription medicines on the internet. METHODS: Newspaper articles were retrieved from the ProQuest electronic database using search terms related to the topic of buying fake prescription medicines on the internet. The search was limited to articles published between April 2019 and March 2022 to retrieve relevant articles in this fast-developing field. Articles were included if they were published in English and focused on prescription medicines. Thematic analysis was employed to analyze the articles, and the Theory of Planned Behavior framework was used as a conceptual lens to develop the coding of themes. RESULTS: A total of 106 articles were included and analyzed using thematic analysis. We identified 4 superordinate themes that represent newspaper coverage of the topic of buying prescription medicines on the internet. These themes are (1) the risks of purchasing medicines on the internet (eg, health risks and product quality concerns, financial risks, lack of accountability, risk of purchasing stolen medicines), (2) benefits that entice consumers to make the purchase (eg, convenience and quick purchase, lower cost, privacy of the purchase), (3) social influencing factors of the purchase (influencers, health care providers), and (4) facilitators of the purchase (eg, medicines shortages, pandemic disease such as COVID-19, social media, search engines, accessibility, low risk perception). CONCLUSIONS: This theory-based study explored the news media coverage of the problem of fake prescription medicines being purchased on the internet by highlighting the complexity of personal beliefs and the range of external circumstances that could influence people to make these purchases. Further research is needed in this area to identify the factors that lead people to buy prescription medicines on the internet. Identifying these factors could enable the development of interventions to dissuade people from purchasing medicines from unsafe sources on the internet, thus protecting consumers from unsafe or illegal medicines.

4.
Journal of Korean Academic Society of Nursing Education ; 28(4):444-445, 2022.
Article in Korean | Scopus | ID: covidwho-2228722

ABSTRACT

Purpose: This study explored the meaning of the social perceptions of nurses in online news articles during the coronavirus disease 2019 (COVID-19) pandemic. Methods: A total of 339 nurse-related articles published in Korean online newspapers from January 1 to December 31, 2020, were extracted by entering various combinations of OR and AND with the four words "Corona,” "COVID,” "Nursing,” and "Nurse” as search keywords using BIGKinds, a news database provided by the Korea Press Foundation. The collected data were analyzed with a keyword network analysis and topic modeling using NetMiner 4. Results: The top keywords extracted from the nurse-related news articles were, in the following order, "metropolitan area,” "protective clothing,” "government,” "task,” and "admission.” Four topics representing keywords were identified: "encouragement for dedicated nurses,” "poor work environment,” "front-line nurses working with obligation during the COVID-19 pandemic,” and "nurses' efforts to prevent the spread of COVID-19.” Conclusion: The media's attention to the dedication of nurses, the shortage of nursing resources, and the need for government support is encouraging in that it forms the public opinion necessary to lead to substantial improvements in treating nurses. The nursing community should actively promote policy proposals to improve treatment toward nurses by utilizing the net function of the media and proactively seek and apply strategies to improve the image of nurses working in various fields. Copyright © 2022 The Korean Academic Society of Nursing Education.

5.
5th International Conference on Big Data and Education, ICBDE 2022 ; : 353-360, 2022.
Article in English | Scopus | ID: covidwho-2020387

ABSTRACT

The number of fake news created and shared has rapidly increased during the COVID-19 [9]. This paper analyzes the articles from the Irish Times using IBM Cognos Analytics. Its main goal is to find the trends of headline news through the years by different topics and relevant keywords. Almost 1.5 million headlines of the Irish Times from January 1st, 1996 to December 31st, 2019 were collected and analyzed. The contents of each headline were cleaned and matched with three different topics (War, Natural Disasters, and Irish Politics) based on keywords representative from each of these topics. We identified trends for each of the topics analyzed for the number of articles published throughout 1996 to 2019, and correlations with particular historical events. The results showed that the news section has been the most abundant in the Irish Times. In addition, results also have revealed the frequency of Politics keywords increase whenever election seasons approach, and the frequency of natural disasters keywords increase when natural disasters occur. This research can be implemented to see war, natural disasters, and the political side of Ireland and infer from its frequencies. There has been much research on the headlines of newspapers in general by country, and by specific topics like traffic accidents [7], or areas of sentiment analysis. This research is a part of sentiment analysis, more focused on The Irish Times' news headline opinion mining. © 2022 ACM.

6.
J Korean Acad Nurs ; 51(4): 442-453, 2021 Aug.
Article in Korean | MEDLINE | ID: covidwho-1403931

ABSTRACT

PURPOSE: This study was conducted to assess public awareness and policy challenges faced by practicing nurses. METHODS: After collecting nurse-related news articles published before and after 'the Thanks to You Challenge' campaign (between December 31, 2019, and July 15, 2020), keywords were extracted via preprocessing. A three-step method keyword analysis, latent Dirichlet allocation topic modeling, and keyword network analysis was used to examine the text and the structure of the selected news articles. RESULTS: Top 30 keywords with similar occurrences were collected before and after the campaign. The five dominant topics before the campaign were: pandemic, infection of medical staff, local transmission, medical resources, and return of overseas Koreans. After the campaign, the topics 'infection of medical staff' and 'return of overseas Koreans' disappeared, but 'the Thanks to You Challenge' emerged as a dominant topic. A keyword network analysis revealed that the word of nurse was linked with keywords like thanks and campaign, through the word of sacrifice. These words formed interrelated domains of 'the Thanks to You Challenge' topic. CONCLUSION: The findings of this study can provide useful information for understanding various issues and social perspectives on COVID-19 nursing. The major themes of news reports lagged behind the real problems faced by nurses in COVID-19 crisis. While the press tends to focus on heroism and whole society, issues and policies mutually beneficial to public and nursing need to be further explored and enhanced by nurses.


Subject(s)
COVID-19 , Newspapers as Topic/statistics & numerical data , Nurses/psychology , Social Network Analysis , Humans , Pandemics , SARS-CoV-2
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