1.Synthetic data production for biomedical research
Yun Gyeong LEE ; Mi-Sook KWAK ; Jeong Eun KIM ; Min Sun KIM ; Dong Un NO ; Hee Youl CHAI
Osong Public Health and Research Perspectives 2025;16(2):94-99
Synthetic data, generated using advanced artificial intelligence (AI) techniques, replicates the statistical properties of real-world datasets while excluding identifiable information.Although synthetic data does not consist of actual data points, it is derived from original datasets, thereby enabling analyses that yield results comparable to those obtained with real data. Synthetic datasets are evaluated based on their utility—a measure of how effectively they mirror real data for analytical purposes. This paper presents the generation of synthetic datasets through the Healthcare Big Data Showcase Project (2019–2023). The original dataset comprises comprehensive multi-omics data from 400 individuals, including cancer survivors, chronic disease patients, and healthy participants. Synthetic data facilitates efficient access and robust analyses, serving as a practical tool for research and education. It addresses privacy concerns, supports AI research, and provides a foundation for innovative applications across diverse fields, such as public health and precision medicine.
2.Synthetic data production for biomedical research
Yun Gyeong LEE ; Mi-Sook KWAK ; Jeong Eun KIM ; Min Sun KIM ; Dong Un NO ; Hee Youl CHAI
Osong Public Health and Research Perspectives 2025;16(2):94-99
Synthetic data, generated using advanced artificial intelligence (AI) techniques, replicates the statistical properties of real-world datasets while excluding identifiable information.Although synthetic data does not consist of actual data points, it is derived from original datasets, thereby enabling analyses that yield results comparable to those obtained with real data. Synthetic datasets are evaluated based on their utility—a measure of how effectively they mirror real data for analytical purposes. This paper presents the generation of synthetic datasets through the Healthcare Big Data Showcase Project (2019–2023). The original dataset comprises comprehensive multi-omics data from 400 individuals, including cancer survivors, chronic disease patients, and healthy participants. Synthetic data facilitates efficient access and robust analyses, serving as a practical tool for research and education. It addresses privacy concerns, supports AI research, and provides a foundation for innovative applications across diverse fields, such as public health and precision medicine.
3.Synthetic data production for biomedical research
Yun Gyeong LEE ; Mi-Sook KWAK ; Jeong Eun KIM ; Min Sun KIM ; Dong Un NO ; Hee Youl CHAI
Osong Public Health and Research Perspectives 2025;16(2):94-99
Synthetic data, generated using advanced artificial intelligence (AI) techniques, replicates the statistical properties of real-world datasets while excluding identifiable information.Although synthetic data does not consist of actual data points, it is derived from original datasets, thereby enabling analyses that yield results comparable to those obtained with real data. Synthetic datasets are evaluated based on their utility—a measure of how effectively they mirror real data for analytical purposes. This paper presents the generation of synthetic datasets through the Healthcare Big Data Showcase Project (2019–2023). The original dataset comprises comprehensive multi-omics data from 400 individuals, including cancer survivors, chronic disease patients, and healthy participants. Synthetic data facilitates efficient access and robust analyses, serving as a practical tool for research and education. It addresses privacy concerns, supports AI research, and provides a foundation for innovative applications across diverse fields, such as public health and precision medicine.
4.Influence of Perception of Patient Safety Culture, Job Stress, and Nursing Work Environment on Patient Safety Nursing Activities by Emergency Room Nurses
Eon Mi LEE ; Jeong Hyun CHO ; Seung Gyeong JANG
Journal of Korean Academy of Fundamental Nursing 2025;32(2):264-274
Purpose:
This study aimed to investigate the influence of perceptions of patient safety culture, job stress, and nursing work environment on patient safety nursing activities among emergency room nurses.
Methods:
This correlational study was conducted from June 5 to July 31, 2024, and targeted 114 emergency room nurses in Busan. A structured self-report questionnaire was used to collect data. Descriptive statistics, independent sample t-tests, one-way ANOVA, Pearson's correlation coefficients, and multiple regression analyses were employed for data analysis.
Results:
Patient safety nursing activities significantly differed by age (F=6.17, p=.001) and total clinical experience (F=8.89, p<.001) among the participants' general characteristics. Positive correlations were identified with perceptions of patient safety culture (r=.70, p<.001) and nursing work environment (r=.27, p=.003). Multiple regression analysis indicated that perception of patient safety culture (β=.72, p<.001) and total clinical experience (β=-.32, p=.011) were significant predictors, accounting for 50.5% (F=20.24, p<.001) of the variance.
Conclusion
The findings indicated that perceptions of patient safety culture and total clinical experience are critical factors to be considered when designing interventions to enhance patient safety nursing activities among emergency room nurses.
5.Influence of Perception of Patient Safety Culture, Job Stress, and Nursing Work Environment on Patient Safety Nursing Activities by Emergency Room Nurses
Eon Mi LEE ; Jeong Hyun CHO ; Seung Gyeong JANG
Journal of Korean Academy of Fundamental Nursing 2025;32(2):264-274
Purpose:
This study aimed to investigate the influence of perceptions of patient safety culture, job stress, and nursing work environment on patient safety nursing activities among emergency room nurses.
Methods:
This correlational study was conducted from June 5 to July 31, 2024, and targeted 114 emergency room nurses in Busan. A structured self-report questionnaire was used to collect data. Descriptive statistics, independent sample t-tests, one-way ANOVA, Pearson's correlation coefficients, and multiple regression analyses were employed for data analysis.
Results:
Patient safety nursing activities significantly differed by age (F=6.17, p=.001) and total clinical experience (F=8.89, p<.001) among the participants' general characteristics. Positive correlations were identified with perceptions of patient safety culture (r=.70, p<.001) and nursing work environment (r=.27, p=.003). Multiple regression analysis indicated that perception of patient safety culture (β=.72, p<.001) and total clinical experience (β=-.32, p=.011) were significant predictors, accounting for 50.5% (F=20.24, p<.001) of the variance.
Conclusion
The findings indicated that perceptions of patient safety culture and total clinical experience are critical factors to be considered when designing interventions to enhance patient safety nursing activities among emergency room nurses.
6.Synthetic data production for biomedical research
Yun Gyeong LEE ; Mi-Sook KWAK ; Jeong Eun KIM ; Min Sun KIM ; Dong Un NO ; Hee Youl CHAI
Osong Public Health and Research Perspectives 2025;16(2):94-99
Synthetic data, generated using advanced artificial intelligence (AI) techniques, replicates the statistical properties of real-world datasets while excluding identifiable information.Although synthetic data does not consist of actual data points, it is derived from original datasets, thereby enabling analyses that yield results comparable to those obtained with real data. Synthetic datasets are evaluated based on their utility—a measure of how effectively they mirror real data for analytical purposes. This paper presents the generation of synthetic datasets through the Healthcare Big Data Showcase Project (2019–2023). The original dataset comprises comprehensive multi-omics data from 400 individuals, including cancer survivors, chronic disease patients, and healthy participants. Synthetic data facilitates efficient access and robust analyses, serving as a practical tool for research and education. It addresses privacy concerns, supports AI research, and provides a foundation for innovative applications across diverse fields, such as public health and precision medicine.
7.Influence of Perception of Patient Safety Culture, Job Stress, and Nursing Work Environment on Patient Safety Nursing Activities by Emergency Room Nurses
Eon Mi LEE ; Jeong Hyun CHO ; Seung Gyeong JANG
Journal of Korean Academy of Fundamental Nursing 2025;32(2):264-274
Purpose:
This study aimed to investigate the influence of perceptions of patient safety culture, job stress, and nursing work environment on patient safety nursing activities among emergency room nurses.
Methods:
This correlational study was conducted from June 5 to July 31, 2024, and targeted 114 emergency room nurses in Busan. A structured self-report questionnaire was used to collect data. Descriptive statistics, independent sample t-tests, one-way ANOVA, Pearson's correlation coefficients, and multiple regression analyses were employed for data analysis.
Results:
Patient safety nursing activities significantly differed by age (F=6.17, p=.001) and total clinical experience (F=8.89, p<.001) among the participants' general characteristics. Positive correlations were identified with perceptions of patient safety culture (r=.70, p<.001) and nursing work environment (r=.27, p=.003). Multiple regression analysis indicated that perception of patient safety culture (β=.72, p<.001) and total clinical experience (β=-.32, p=.011) were significant predictors, accounting for 50.5% (F=20.24, p<.001) of the variance.
Conclusion
The findings indicated that perceptions of patient safety culture and total clinical experience are critical factors to be considered when designing interventions to enhance patient safety nursing activities among emergency room nurses.
8.Synthetic data production for biomedical research
Yun Gyeong LEE ; Mi-Sook KWAK ; Jeong Eun KIM ; Min Sun KIM ; Dong Un NO ; Hee Youl CHAI
Osong Public Health and Research Perspectives 2025;16(2):94-99
Synthetic data, generated using advanced artificial intelligence (AI) techniques, replicates the statistical properties of real-world datasets while excluding identifiable information.Although synthetic data does not consist of actual data points, it is derived from original datasets, thereby enabling analyses that yield results comparable to those obtained with real data. Synthetic datasets are evaluated based on their utility—a measure of how effectively they mirror real data for analytical purposes. This paper presents the generation of synthetic datasets through the Healthcare Big Data Showcase Project (2019–2023). The original dataset comprises comprehensive multi-omics data from 400 individuals, including cancer survivors, chronic disease patients, and healthy participants. Synthetic data facilitates efficient access and robust analyses, serving as a practical tool for research and education. It addresses privacy concerns, supports AI research, and provides a foundation for innovative applications across diverse fields, such as public health and precision medicine.
9.Preclinical Study on Biodistribution of Mesenchymal Stem Cells after Local Transplantation into the Brain
Narayan BASHYAL ; Min Gyeong KIM ; Jin-Hwa JUNG ; Rakshya ACHARYA ; Young Jun LEE ; Woo Sup HWANG ; Jung-Mi CHOI ; Da-Young CHANG ; Sung-Soo KIM ; Haeyoung SUH-KIM
International Journal of Stem Cells 2023;16(4):415-424
Therapeutic efficacy of mesenchymal stem cells (MSCs) is determined by biodistribution and engraftment in vivo.Compared to intravenous infusion, biodistribution of locally transplanted MSCs are partially understood. Here, we performed a pharmacokinetics (PK) study of MSCs after local transplantation. We grafted human MSCs into the brains of immune-compromised nude mice. Then we extracted genomic DNA from brains, lungs, and livers after transplantation over a month. Using quantitative polymerase chain reaction with human Alu-specific primers, we analyzed biodistribution of the transplanted cells. To evaluate the role of residual immune response in the brain, MSCs expressing a cytosine deaminase (MSCs/CD) were used to ablate resident immune cells at the injection site. The majority of the Alu signals mostly remained at the injection site and decreased over a week, finally becoming undetectable after one month. Negligible signals were transiently detected in the lung and liver during the first week. Suppression of Iba1-positive microglia in the vicinity of the injection site using MSCs/CD prolonged the presence of the Alu signals.After local transplantation in xenograft animal models, human MSCs remain predominantly near the injection site for limited time without disseminating to other organs. Transplantation of human MSCs can locally elicit an immune response in immune compromised animals, and suppressing resident immune cells can prolong the presence of transplanted cells. Our study provides valuable insights into the in vivo fate of locally transplanted stem cells and a local delivery is effective to achieve desired dosages for neurological diseases.
10.Association between Low Hand Grip Strength and Decreased Femoral Neck Bone Mineral Density in Korean Fishery Workers
Mi-Ji KIM ; Gyeong-Ye LEE ; Joo Hyun SUNG ; Seok Jin HONG ; Ki-Soo PARK
Journal of Agricultural Medicine & Community Health 2023;48(4):275-284
Objectives:
This study aimed to assess hand grip strength and femoral neck bone mineral density levels among Korean fishery workers and investigate their association.
Methods:
Hand grip strength and femoral neck bone mineral density were measured in a survey and health examination conducted in 2021 among fishery workers in a southern region of South Korea. Covariates including gender, age, education level, income level, smoking behavior, drinking behavior, family history of hip fractures, use of calcium and vitamin D supplements, hypertension, diabetes, regular exercise, and body mass index were investigated. Multiple regression analysis was employed to assess the association between hand grip strength and femoral neck bone mineral density.
Results:
Among 147 fishery workers, 8.16% exhibited low hand grip strength levels indicative of possible sarcopenia, and a significant association was found between low hand grip strength and decreased femoral neck bone mineral density (β = -89.14, 95% CI = -160.50, -17.78). Additionally, factors such as women gender, advanced age, family history of hip fractures, and a body mass index below 25 kg/m 2 were associated with decreased femoral neck bone mineral density. In the subgroup analysis by gender, a correlation between low hand grip strength and decreased femoral neck bone mineral density was observed only in men.
Conclusions
Further research is needed to explore various determinants and intervention strategies to prevent musculoskeletal disorders among fishery workers, ultimately enhancing their quality of life and well-being.

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