1.Guidelines for Antibacterial Treatment of Carbapenem-Resistant Enterobacterales Infections
Se Yoon PARK ; Yae Jee BAEK ; Jung Ho KIM ; Hye SEONG ; Bongyoung KIM ; Yong Chan KIM ; Jin Gu YOON ; Namwoo HEO ; Song Mi MOON ; Young Ah KIM ; Joon Young SONG ; Jun Yong CHOI ; Yoon Soo PARK ; Korean Society for Antimicrobial Therapy
Infection and Chemotherapy 2024;56(3):308-328
This guideline aims to promote the prudent use of antibacterial agents for managing carbapenem-resistant Enterobacterales (CRE) infections in clinical practice in Korea. The general section encompasses recommendations for the management of common CRE infections and diagnostics, whereas each specific section is structured with key questions that are focused on antibacterial agents and disease-specific approaches. This guideline covers both currently available and upcoming antibacterial agents in Korea.
2.Feasibility of a deep learning artificial intelligence model for the diagnosis of pediatric ileocolic intussusception with grayscale ultrasonography
Se Woo KIM ; Jung-Eun CHEON ; Young Hun CHOI ; Jae-Yeon HWANG ; Su-Mi SHIN ; Yeon Jin CHO ; Seunghyun LEE ; Seul Bi LEE
Ultrasonography 2024;43(1):57-67
Purpose:
This study explored the feasibility of utilizing a deep learning artificial intelligence (AI) model to detect ileocolic intussusception on grayscale ultrasound images.
Methods:
This retrospective observational study incorporated ultrasound images of children who underwent emergency ultrasonography for suspected ileocolic intussusception. After excluding video clips, Doppler images, and annotated images, 40,765 images from two tertiary hospitals were included (positive-to-negative ratio: hospital A, 2,775:35,373; hospital B, 140:2,477). Images from hospital A were split into a training set, a tuning set, and an internal test set (ITS) at a ratio of 7:1.5:1.5. Images from hospital B comprised an external test set (ETS). For each image indicating intussusception, two radiologists provided a bounding box as the ground-truth label. If intussusception was suspected in the input image, the model generated a bounding box with a confidence score (0-1) at the estimated lesion location. Average precision (AP) was used to evaluate overall model performance. The performance of practical thresholds for the modelgenerated confidence score, as determined from the ITS, was verified using the ETS.
Results:
The AP values for the ITS and ETS were 0.952 and 0.936, respectively. Two confidence thresholds, CTopt and CTprecision, were set at 0.557 and 0.790, respectively. For the ETS, the perimage precision and recall were 95.7% and 80.0% with CTopt, and 98.4% and 44.3% with CTprecision. For per-patient diagnosis, the sensitivity and specificity were 100.0% and 97.1% with CTopt, and 100.0% and 99.0% with CTprecision. The average number of false positives per patient was 0.04 with CTopt and 0.01 for CTprecision.
Conclusion
The feasibility of using an AI model to diagnose ileocolic intussusception on ultrasonography was demonstrated. However, further study involving bias-free data is warranted for robust clinical validation.
3.Feasibility of a deep learning artificial intelligence model for the diagnosis of pediatric ileocolic intussusception with grayscale ultrasonography
Se Woo KIM ; Jung-Eun CHEON ; Young Hun CHOI ; Jae-Yeon HWANG ; Su-Mi SHIN ; Yeon Jin CHO ; Seunghyun LEE ; Seul Bi LEE
Ultrasonography 2024;43(1):57-67
Purpose:
This study explored the feasibility of utilizing a deep learning artificial intelligence (AI) model to detect ileocolic intussusception on grayscale ultrasound images.
Methods:
This retrospective observational study incorporated ultrasound images of children who underwent emergency ultrasonography for suspected ileocolic intussusception. After excluding video clips, Doppler images, and annotated images, 40,765 images from two tertiary hospitals were included (positive-to-negative ratio: hospital A, 2,775:35,373; hospital B, 140:2,477). Images from hospital A were split into a training set, a tuning set, and an internal test set (ITS) at a ratio of 7:1.5:1.5. Images from hospital B comprised an external test set (ETS). For each image indicating intussusception, two radiologists provided a bounding box as the ground-truth label. If intussusception was suspected in the input image, the model generated a bounding box with a confidence score (0-1) at the estimated lesion location. Average precision (AP) was used to evaluate overall model performance. The performance of practical thresholds for the modelgenerated confidence score, as determined from the ITS, was verified using the ETS.
Results:
The AP values for the ITS and ETS were 0.952 and 0.936, respectively. Two confidence thresholds, CTopt and CTprecision, were set at 0.557 and 0.790, respectively. For the ETS, the perimage precision and recall were 95.7% and 80.0% with CTopt, and 98.4% and 44.3% with CTprecision. For per-patient diagnosis, the sensitivity and specificity were 100.0% and 97.1% with CTopt, and 100.0% and 99.0% with CTprecision. The average number of false positives per patient was 0.04 with CTopt and 0.01 for CTprecision.
Conclusion
The feasibility of using an AI model to diagnose ileocolic intussusception on ultrasonography was demonstrated. However, further study involving bias-free data is warranted for robust clinical validation.
4.Feasibility of a deep learning artificial intelligence model for the diagnosis of pediatric ileocolic intussusception with grayscale ultrasonography
Se Woo KIM ; Jung-Eun CHEON ; Young Hun CHOI ; Jae-Yeon HWANG ; Su-Mi SHIN ; Yeon Jin CHO ; Seunghyun LEE ; Seul Bi LEE
Ultrasonography 2024;43(1):57-67
Purpose:
This study explored the feasibility of utilizing a deep learning artificial intelligence (AI) model to detect ileocolic intussusception on grayscale ultrasound images.
Methods:
This retrospective observational study incorporated ultrasound images of children who underwent emergency ultrasonography for suspected ileocolic intussusception. After excluding video clips, Doppler images, and annotated images, 40,765 images from two tertiary hospitals were included (positive-to-negative ratio: hospital A, 2,775:35,373; hospital B, 140:2,477). Images from hospital A were split into a training set, a tuning set, and an internal test set (ITS) at a ratio of 7:1.5:1.5. Images from hospital B comprised an external test set (ETS). For each image indicating intussusception, two radiologists provided a bounding box as the ground-truth label. If intussusception was suspected in the input image, the model generated a bounding box with a confidence score (0-1) at the estimated lesion location. Average precision (AP) was used to evaluate overall model performance. The performance of practical thresholds for the modelgenerated confidence score, as determined from the ITS, was verified using the ETS.
Results:
The AP values for the ITS and ETS were 0.952 and 0.936, respectively. Two confidence thresholds, CTopt and CTprecision, were set at 0.557 and 0.790, respectively. For the ETS, the perimage precision and recall were 95.7% and 80.0% with CTopt, and 98.4% and 44.3% with CTprecision. For per-patient diagnosis, the sensitivity and specificity were 100.0% and 97.1% with CTopt, and 100.0% and 99.0% with CTprecision. The average number of false positives per patient was 0.04 with CTopt and 0.01 for CTprecision.
Conclusion
The feasibility of using an AI model to diagnose ileocolic intussusception on ultrasonography was demonstrated. However, further study involving bias-free data is warranted for robust clinical validation.
5.Guidelines for Antibacterial Treatment of Carbapenem-Resistant Enterobacterales Infections
Se Yoon PARK ; Yae Jee BAEK ; Jung Ho KIM ; Hye SEONG ; Bongyoung KIM ; Yong Chan KIM ; Jin Gu YOON ; Namwoo HEO ; Song Mi MOON ; Young Ah KIM ; Joon Young SONG ; Jun Yong CHOI ; Yoon Soo PARK ; Korean Society for Antimicrobial Therapy
Infection and Chemotherapy 2024;56(3):308-328
This guideline aims to promote the prudent use of antibacterial agents for managing carbapenem-resistant Enterobacterales (CRE) infections in clinical practice in Korea. The general section encompasses recommendations for the management of common CRE infections and diagnostics, whereas each specific section is structured with key questions that are focused on antibacterial agents and disease-specific approaches. This guideline covers both currently available and upcoming antibacterial agents in Korea.
6.Feasibility of a deep learning artificial intelligence model for the diagnosis of pediatric ileocolic intussusception with grayscale ultrasonography
Se Woo KIM ; Jung-Eun CHEON ; Young Hun CHOI ; Jae-Yeon HWANG ; Su-Mi SHIN ; Yeon Jin CHO ; Seunghyun LEE ; Seul Bi LEE
Ultrasonography 2024;43(1):57-67
Purpose:
This study explored the feasibility of utilizing a deep learning artificial intelligence (AI) model to detect ileocolic intussusception on grayscale ultrasound images.
Methods:
This retrospective observational study incorporated ultrasound images of children who underwent emergency ultrasonography for suspected ileocolic intussusception. After excluding video clips, Doppler images, and annotated images, 40,765 images from two tertiary hospitals were included (positive-to-negative ratio: hospital A, 2,775:35,373; hospital B, 140:2,477). Images from hospital A were split into a training set, a tuning set, and an internal test set (ITS) at a ratio of 7:1.5:1.5. Images from hospital B comprised an external test set (ETS). For each image indicating intussusception, two radiologists provided a bounding box as the ground-truth label. If intussusception was suspected in the input image, the model generated a bounding box with a confidence score (0-1) at the estimated lesion location. Average precision (AP) was used to evaluate overall model performance. The performance of practical thresholds for the modelgenerated confidence score, as determined from the ITS, was verified using the ETS.
Results:
The AP values for the ITS and ETS were 0.952 and 0.936, respectively. Two confidence thresholds, CTopt and CTprecision, were set at 0.557 and 0.790, respectively. For the ETS, the perimage precision and recall were 95.7% and 80.0% with CTopt, and 98.4% and 44.3% with CTprecision. For per-patient diagnosis, the sensitivity and specificity were 100.0% and 97.1% with CTopt, and 100.0% and 99.0% with CTprecision. The average number of false positives per patient was 0.04 with CTopt and 0.01 for CTprecision.
Conclusion
The feasibility of using an AI model to diagnose ileocolic intussusception on ultrasonography was demonstrated. However, further study involving bias-free data is warranted for robust clinical validation.
7.Guidelines for Antibacterial Treatment of Carbapenem-Resistant Enterobacterales Infections
Se Yoon PARK ; Yae Jee BAEK ; Jung Ho KIM ; Hye SEONG ; Bongyoung KIM ; Yong Chan KIM ; Jin Gu YOON ; Namwoo HEO ; Song Mi MOON ; Young Ah KIM ; Joon Young SONG ; Jun Yong CHOI ; Yoon Soo PARK ; Korean Society for Antimicrobial Therapy
Infection and Chemotherapy 2024;56(3):308-328
This guideline aims to promote the prudent use of antibacterial agents for managing carbapenem-resistant Enterobacterales (CRE) infections in clinical practice in Korea. The general section encompasses recommendations for the management of common CRE infections and diagnostics, whereas each specific section is structured with key questions that are focused on antibacterial agents and disease-specific approaches. This guideline covers both currently available and upcoming antibacterial agents in Korea.
8.Feasibility of a deep learning artificial intelligence model for the diagnosis of pediatric ileocolic intussusception with grayscale ultrasonography
Se Woo KIM ; Jung-Eun CHEON ; Young Hun CHOI ; Jae-Yeon HWANG ; Su-Mi SHIN ; Yeon Jin CHO ; Seunghyun LEE ; Seul Bi LEE
Ultrasonography 2024;43(1):57-67
Purpose:
This study explored the feasibility of utilizing a deep learning artificial intelligence (AI) model to detect ileocolic intussusception on grayscale ultrasound images.
Methods:
This retrospective observational study incorporated ultrasound images of children who underwent emergency ultrasonography for suspected ileocolic intussusception. After excluding video clips, Doppler images, and annotated images, 40,765 images from two tertiary hospitals were included (positive-to-negative ratio: hospital A, 2,775:35,373; hospital B, 140:2,477). Images from hospital A were split into a training set, a tuning set, and an internal test set (ITS) at a ratio of 7:1.5:1.5. Images from hospital B comprised an external test set (ETS). For each image indicating intussusception, two radiologists provided a bounding box as the ground-truth label. If intussusception was suspected in the input image, the model generated a bounding box with a confidence score (0-1) at the estimated lesion location. Average precision (AP) was used to evaluate overall model performance. The performance of practical thresholds for the modelgenerated confidence score, as determined from the ITS, was verified using the ETS.
Results:
The AP values for the ITS and ETS were 0.952 and 0.936, respectively. Two confidence thresholds, CTopt and CTprecision, were set at 0.557 and 0.790, respectively. For the ETS, the perimage precision and recall were 95.7% and 80.0% with CTopt, and 98.4% and 44.3% with CTprecision. For per-patient diagnosis, the sensitivity and specificity were 100.0% and 97.1% with CTopt, and 100.0% and 99.0% with CTprecision. The average number of false positives per patient was 0.04 with CTopt and 0.01 for CTprecision.
Conclusion
The feasibility of using an AI model to diagnose ileocolic intussusception on ultrasonography was demonstrated. However, further study involving bias-free data is warranted for robust clinical validation.
9.Effects of nurse’s knowledge and self-efficacy on nursing performance in pediatric intravenous fluid management in South Korea: a descriptive study
Child Health Nursing Research 2024;30(4):288-297
Purpose:
This study aimed to identify the effects of nurse’s knowledge and self-efficacy on nursing performance in pediatric intravenous fluid management and provide the primary data necessary for the efficient intravenous injection management of hospitalized children.
Methods:
This study was a descriptive study design with 141 nurses who perform pediatric intravenous therapy care at eight hospitals in the S, C, D, and S regions. Data were collected from September 1, 2023, to September 30, 2023.
Results:
Nursing performance of pediatric intravenous injection management was significantly positively correlated with knowledge (r=.44, p<.001) and self-efficacy (r=.19, p=.022). Nurses’ knowledge (β=.42, p<.001) and self-efficacy (β=.22, p=.004) of pediatric intravenous injection management and care were identified as significant predictors of nursing performance thereof, with these two factors explaining 21.9% of the variance.
Conclusion
This study found that knowledge and self-efficacy of pediatric intravenous injection management are significant predictors of the practice of intravenous care among pediatric nurses. Therefore, considering these factors, education and intervention programs should be developed to enhance pediatric nurses' knowledge and self-efficacy regarding intravenous injection management.
10.Incidence of Clostridioides difficile Infections in Republic of Korea:A Prospective Study With Active Surveillance vs. National Data From Health Insurance Review & Assessment Service
Jieun KIM ; Rangmi MYUNG ; Bongyoung KIM ; Jinyeong KIM ; Tark KIM ; Mi Suk LEE ; Uh Jin KIM ; Dae Won PARK ; Yeon-Sook KIM ; Chang-Seop LEE ; Eu Suk KIM ; Sun Hee LEE ; Hyun-Ha CHANG ; Seung Soon LEE ; Se Yoon PARK ; Hee Jung CHOI ; Hye In KIM ; Young Eun HA ; Yu Mi WI ; Sungim CHOI ; So Youn SHIN ; Hyunjoo PAI
Journal of Korean Medical Science 2024;39(12):e118-
Background:
Since the emergence of hypervirulent strains of Clostridioides difficile, the incidence of C. difficile infections (CDI) has increased significantly.
Methods:
To assess the incidence of CDI in Korea, we conducted a prospective multicentre observational study from October 2020 to October 2021. Additionally, we calculated the incidence of CDI from mass data obtained from the Health Insurance Review and Assessment Service (HIRA) from 2008 to 2020.
Results:
In the prospective study with active surveillance, 30,212 patients had diarrhoea and 907 patients were diagnosed with CDI over 1,288,571 patient-days and 193,264 admissions in 18 participating hospitals during 3 months of study period; the CDI per 10,000 patientdays was 7.04 and the CDI per 1,000 admission was 4.69. The incidence of CDI was higher in general hospitals than in tertiary hospitals: 6.38 per 10,000 patient-days (range: 3.25–12.05) and 4.18 per 1,000 admissions (range: 1.92–8.59) in 11 tertiary hospitals, vs. 9.45 per 10,000 patient-days (range: 5.68–13.90) and 6.73 per 1,000 admissions (range: 3.18–15.85) in seven general hospitals. With regard to HIRA data, the incidence of CDI in all hospitals has been increasing over the 13-year-period: from 0.3 to 1.8 per 10,000 patient-days, 0.3 to 1.6 per 1,000 admissions, and 6.9 to 56.9 per 100,000 population, respectively.
Conclusion
The incidence of CDI in Korea has been gradually increasing, and its recent value is as high as that in the United State and Europe. CDI is underestimated, particularly in general hospitals in Korea.

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