1.The research for the utilization of mechanical chest compression device for emergency medical center in Korea: a survey-based study
Heesu PARK ; Gil Joon SUH ; Taegyun KIM ; Hayoung KIM ; Ju Won KIM ; Myeongjae CHOI ; Gaonsorae WANG
Journal of the Korean Society of Emergency Medicine 2023;34(6):467-486
Objective:
During the coronavirus disease 2019 (COVID-19) pandemic, the use of mechanical chest compression (meCC) devices for cardiopulmonary resuscitation (CPR) in emergency departments might have increased. However, there are few reports yet of such an increase in use. This study aimed to assess the current status of meCC device utilization in emergency medical institutions nationwide through a survey.
Methods:
This cross-sectional study conducted a survey from August 20, 2022 to September 29, 2022, using emails and text messages to target 287 out of a total of 409 emergency medical institutions nationwide for which contact information was obtained.
Results:
Of the 287 emergency medical institutions, 127 responded (44.2% response rate). Of these, 74 (58.3%) reported using meCC devices. The utilization rates were highest in the regional emergency medical center, followed by local emergency medical centers and local emergency medical agencies (93.3% vs. 67.3% vs. 27.1%, respectively; P<0.001). The most common reason for device purchases was to reduce rescuer fatigue and ensure high-quality CPR. The second reason was personnel shortages, while the regional emergency medical center gave a higher priority to the protection of medical staff from COVID-19. The meCC device group reported significantly higher cases of CPR (100 or more cases per year) compared to the non-meCC device group (64.9% vs. 24.6%; P<0.001) although no difference was shown in the total number of medical staff participated in CPR between the groups. Also, 90.5% of the meCC group expressed satisfaction with using the device.
Conclusion
More than 50% of emergency medical institutions used meCC devices in CPR, citing reasons such as reducing rescuer fatigue and ensuring high-quality CPR.
2.Lobeglitazone: A Novel Thiazolidinedione for the Management of Type 2 Diabetes Mellitus
Jaehyun BAE ; Taegyun PARK ; Hyeyoung KIM ; Minyoung LEE ; Bong-Soo CHA
Diabetes & Metabolism Journal 2021;45(3):326-336
Type 2 diabetes mellitus (T2DM) is characterized by insulin resistance and β-cell dysfunction. Among available oral antidiabetic agents, only the thiazolidinediones (TZDs) primarily target insulin resistance. TZDs improve insulin sensitivity by activating peroxisome proliferator-activated receptor γ. Rosiglitazone and pioglitazone have been used widely for T2DM treatment due to their potent glycemic efficacy and low risk of hypoglycemia. However, their use has decreased because of side effects and safety issues, such as cardiovascular concerns and bladder cancer. Lobeglitazone (Chong Kun Dang Pharmaceutical Corporation), a novel TZD, was developed to meet the demands for an effective and safe TZD. Lobeglitazone shows similar glycemic efficacy to pioglitazone, with a lower effective dose, and favorable safety results. It also showed pleiotropic effects in preclinical and clinical studies. In this article, we summarize the pharmacologic, pharmacokinetic, and clinical characteristics of lobeglitazone.
3.Prediction of Neurological Outcomes in Out-of-hospital Cardiac Arrest Survivors Immediately after Return of Spontaneous Circulation: Ensemble Technique with Four Machine Learning Models
Ji Han HEO ; Taegyun KIM ; Jonghwan SHIN ; Gil Joon SUH ; Joonghee KIM ; Yoon Sun JUNG ; Seung Min PARK ; Sungwan KIM ;
Journal of Korean Medical Science 2021;36(28):e187-
Background:
We performed this study to establish a prediction model for 1-year neurological outcomes in out-of-hospital cardiac arrest (OHCA) patients who achieved return of spontaneous circulation (ROSC) immediately after ROSC using machine learning methods.
Methods:
We performed a retrospective analysis of an OHCA survivor registry. Patients aged ≥ 18 years were included. Study participants who had registered between March 31, 2013 and December 31, 2018 were divided into a develop dataset (80% of total) and an internal validation dataset (20% of total), and those who had registered between January 1, 2019 and December 31, 2019 were assigned to an external validation dataset. Four machine learning methods, including random forest, support vector machine, ElasticNet and extreme gradient boost, were implemented to establish prediction models with the develop dataset, and the ensemble technique was used to build the final prediction model. The prediction performance of the model in the internal validation and the external validation dataset was described with accuracy, area under the receiver-operating characteristic curve, area under the precision-recall curve, sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV). Futhermore, we established multivariable logistic regression models with the develop set and compared prediction performance with the ensemble models. The primary outcome was an unfavorable 1-year neurological outcome.
Results:
A total of 1,207 patients were included in the study. Among them, 631, 139, and 153were assigned to the develop, the internal validation and the external validation datasets, respectively. Prediction performance metrics for the ensemble prediction model in the internal validation dataset were as follows: accuracy, 0.9620 (95% confidence interval [CI],0.9352–0.9889); area under receiver-operator characteristics curve, 0.9800 (95% CI, 0.9612– 0.9988); area under precision-recall curve, 0.9950 (95% CI, 0.9860–1.0000); sensitivity, 0.9594 (95% CI, 0.9245–0.9943); specificity, 0.9714 (95% CI, 0.9162–1.0000); PPV, 0.9916 (95% CI, 0.9752–1.0000); NPV, 0.8718 (95% CI, 0.7669–0.9767). Prediction performance metrics for the model in the external validation dataset were as follows: accuracy, 0.8509 (95% CI, 0.7825–0.9192); area under receiver-operator characteristics curve, 0.9301 (95% CI, 0.8845–0.9756); area under precision-recall curve, 0.9476 (95% CI, 0.9087–0.9867); sensitivity, 0.9595 (95% CI, 0.9145–1.0000); specificity, 0.6500 (95% CI, 0.5022–0.7978); PPV, 0.8353 (95% CI, 0.7564–0.9142); NPV, 0.8966 (95% CI, 0.7857–1.0000). All the prediction metrics were higher in the ensemble models, except NPVs in both the internal and the external validation datasets.
Conclusion
We established an ensemble prediction model for prediction of unfavorable 1-year neurological outcomes in OHCA survivors using four machine learning methods. The prediction performance of the ensemble model was higher than the multivariable logistic regression model, while its performance was slightly decreased in the external validation dataset.
4.Lobeglitazone: A Novel Thiazolidinedione for the Management of Type 2 Diabetes Mellitus
Jaehyun BAE ; Taegyun PARK ; Hyeyoung KIM ; Minyoung LEE ; Bong-Soo CHA
Diabetes & Metabolism Journal 2021;45(3):326-336
Type 2 diabetes mellitus (T2DM) is characterized by insulin resistance and β-cell dysfunction. Among available oral antidiabetic agents, only the thiazolidinediones (TZDs) primarily target insulin resistance. TZDs improve insulin sensitivity by activating peroxisome proliferator-activated receptor γ. Rosiglitazone and pioglitazone have been used widely for T2DM treatment due to their potent glycemic efficacy and low risk of hypoglycemia. However, their use has decreased because of side effects and safety issues, such as cardiovascular concerns and bladder cancer. Lobeglitazone (Chong Kun Dang Pharmaceutical Corporation), a novel TZD, was developed to meet the demands for an effective and safe TZD. Lobeglitazone shows similar glycemic efficacy to pioglitazone, with a lower effective dose, and favorable safety results. It also showed pleiotropic effects in preclinical and clinical studies. In this article, we summarize the pharmacologic, pharmacokinetic, and clinical characteristics of lobeglitazone.
5.Prediction of Neurological Outcomes in Out-of-hospital Cardiac Arrest Survivors Immediately after Return of Spontaneous Circulation: Ensemble Technique with Four Machine Learning Models
Ji Han HEO ; Taegyun KIM ; Jonghwan SHIN ; Gil Joon SUH ; Joonghee KIM ; Yoon Sun JUNG ; Seung Min PARK ; Sungwan KIM ;
Journal of Korean Medical Science 2021;36(28):e187-
Background:
We performed this study to establish a prediction model for 1-year neurological outcomes in out-of-hospital cardiac arrest (OHCA) patients who achieved return of spontaneous circulation (ROSC) immediately after ROSC using machine learning methods.
Methods:
We performed a retrospective analysis of an OHCA survivor registry. Patients aged ≥ 18 years were included. Study participants who had registered between March 31, 2013 and December 31, 2018 were divided into a develop dataset (80% of total) and an internal validation dataset (20% of total), and those who had registered between January 1, 2019 and December 31, 2019 were assigned to an external validation dataset. Four machine learning methods, including random forest, support vector machine, ElasticNet and extreme gradient boost, were implemented to establish prediction models with the develop dataset, and the ensemble technique was used to build the final prediction model. The prediction performance of the model in the internal validation and the external validation dataset was described with accuracy, area under the receiver-operating characteristic curve, area under the precision-recall curve, sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV). Futhermore, we established multivariable logistic regression models with the develop set and compared prediction performance with the ensemble models. The primary outcome was an unfavorable 1-year neurological outcome.
Results:
A total of 1,207 patients were included in the study. Among them, 631, 139, and 153were assigned to the develop, the internal validation and the external validation datasets, respectively. Prediction performance metrics for the ensemble prediction model in the internal validation dataset were as follows: accuracy, 0.9620 (95% confidence interval [CI],0.9352–0.9889); area under receiver-operator characteristics curve, 0.9800 (95% CI, 0.9612– 0.9988); area under precision-recall curve, 0.9950 (95% CI, 0.9860–1.0000); sensitivity, 0.9594 (95% CI, 0.9245–0.9943); specificity, 0.9714 (95% CI, 0.9162–1.0000); PPV, 0.9916 (95% CI, 0.9752–1.0000); NPV, 0.8718 (95% CI, 0.7669–0.9767). Prediction performance metrics for the model in the external validation dataset were as follows: accuracy, 0.8509 (95% CI, 0.7825–0.9192); area under receiver-operator characteristics curve, 0.9301 (95% CI, 0.8845–0.9756); area under precision-recall curve, 0.9476 (95% CI, 0.9087–0.9867); sensitivity, 0.9595 (95% CI, 0.9145–1.0000); specificity, 0.6500 (95% CI, 0.5022–0.7978); PPV, 0.8353 (95% CI, 0.7564–0.9142); NPV, 0.8966 (95% CI, 0.7857–1.0000). All the prediction metrics were higher in the ensemble models, except NPVs in both the internal and the external validation datasets.
Conclusion
We established an ensemble prediction model for prediction of unfavorable 1-year neurological outcomes in OHCA survivors using four machine learning methods. The prediction performance of the ensemble model was higher than the multivariable logistic regression model, while its performance was slightly decreased in the external validation dataset.
6.Copeptin with high-sensitivity troponin at presentation is not inferior to serial troponin measurements for ruling out acute myocardial infarction
Kyung Su KIM ; Gil Joon SUH ; Sang Hoon SONG ; Yoon Sun JUNG ; Taegyun KIM ; So Mi SHIN ; Min Woo KANG ; Min Sung LEE
Clinical and Experimental Emergency Medicine 2020;7(1):35-42
Objective:
We aimed to compare the multi-marker strategy (copeptin and high-sensitivity cardiac troponin I [hs-cTnI]) with serial hs-cTnI measurements to rule out acute myocardial infarction (AMI) in patients with chest pain.
Methods:
This prospective observational study was performed in a single emergency department. To test the non-inferiority margin of 4% in terms of negative predictive value (NPV) between the multi-marker strategy (0 hour) and serial hs-cTnI measurements (0 and 2 hours), 262 participants were required. Samples for copeptin and hs-cTnI assays were collected at presentation (0 hour) and after 2 hours. The measured biomarkers were considered abnormal when hs-cTnI was >26.2 ng/L and when copeptin was >10 pmol/L.
Results:
AMI was diagnosed in 28 patients (10.7%). The NPV of the multi-marker strategy was 100% (160/160; 95% confidence interval [CI], 97.7% to 100%), which was not inferior to that of serial hs-cTnI measurements (201/201; 100%; 95% CI, 98.2% to 100%). The sensitivity, specificity, and positive predictive value of the multi-marker strategy were 100% (95% CI, 87.7% to 100%), 68.1% (95% CI, 61.7% to 74.0%), and 27.2% (95% CI, 18.9% to 36.8%), respectively. The sensitivity, specificity, and positive predictive value of serial hs-cTnI measurements were 100% (95% CI, 87.7% to 100%), 85.5% (95% CI, 80.4% to 89.8%), and 45.2% (95% CI, 32.5% to 58.3%), respectively.
Conclusion
The multi-marker strategy (copeptin and hs-cTnI measurement) was not inferior to serial hs-cTnI measurements in terms of NPV for AMI diagnosis, with a sensitivity and NPV of 100%. Copeptin may help in the early rule-out of AMI in patients with chest pain.
7.Treatment Outcomes and Response Pattern of Ustekinumab in Korean Patients with Psoriasis: A Retrospective Single-center Study
Jongwook OH ; TaeGyun KIM ; Min Geol LEE
Korean Journal of Dermatology 2019;57(8):441-447
BACKGROUND: Psoriasis is a chronic immune-mediated inflammatory skin disease affecting 2~3% of the worldwide population. Ustekinumab, an IL-12/23p40 inhibitor, is a biologic reported to be effective and safe in treating psoriasis. However, there are limited data on the treatment outcomes of ustekinumab in patients with psoriasis in Korea. OBJECTIVE: To evaluate the treatment outcomes and response pattern of ustekinumab in patients with psoriasis in Korea. METHODS: This was a retrospective single-center study. Eighty-four patients with psoriasis treated with ustekinumab were analyzed. Each patient's medical records, psoriasis area and severity index (PASI) score, and body surface area were reviewed at baseline and up to week 52. RESULTS: A total of 84 patients were included (male:female=1.8:1). The mean age was 44.5 years. At week 16, 86.7% achieved PASI75, 59.0% achieved PASI90, and 20.5% achieved PASI100. By week 16, 84.8% of subjects had attained PASI75 for the head region, whereas 79.0% had attained it for the lower extremities, indicating a relatively slower treatment response of psoriatic lesions on the lower extremities. Four patients discontinued treatment due to lack of effect. No severe adverse events occurred during the follow-up period. CONCLUSION: Ustekinumab demonstrated highly effective and safe treatment profiles in Korean psoriatic patients, consistent with the previous reports from mainly Western countries. Psoriasis severity and treatment responsiveness may vary with body region.
Body Regions
;
Body Surface Area
;
Follow-Up Studies
;
Head
;
Humans
;
Korea
;
Lower Extremity
;
Medical Records
;
Psoriasis
;
Retrospective Studies
;
Skin Diseases
;
Ustekinumab
8.Clinical Validation of Non-Invasive Prenatal Testing for Fetal Common Aneuploidies in 1,055 Korean Pregnant Women: a Single Center Experience
Da Eun LEE ; Hyunjin KIM ; Jungsun PARK ; Taegyun YUN ; Dong Yoon PARK ; Minhyoung KIM ; Hyun Mee RYU
Journal of Korean Medical Science 2019;34(24):e172-
BACKGROUND: Non-invasive prenatal testing (NIPT) using cell-free fetal DNA from maternal plasma for fetal aneuploidy identification is expanding worldwide. The objective of this study was to evaluate the clinical utility of NIPT for the detection of trisomies 21, 18, and 13 of high-risk fetus in a large Korean population. METHODS: This study was performed retrospectively, using stored maternal plasma from 1,055 pregnant women with singleton pregnancies who underwent invasive prenatal diagnosis because of a high-risk indication for chromosomal abnormalities. The NIPT results were confirmed by karyotype analysis. RESULTS: Among 1,055 cases, 108 cases of fetal aneuploidy, including trisomy 21 (n = 57), trisomy 18 (n = 42), and trisomy 13 (n = 9), were identified by NIPT. In this study, NIPT showed 100% sensitivity and 99.9% specificity for trisomy 21, and 92.9% sensitivity and 100% specificity for trisomy 18, and 100% sensitivity and 99.9% specificity for trisomy 13. The overall positive predictive value (PPV) was 98.1%. PPVs for trisomies 21, 18, and 13 ranged from 90.0% to 100%. CONCLUSION: This study demonstrates that our NIPT technology is reliable and accurate when applied to maternal DNA samples collected from pregnant women. Further large prospective studies are needed to adequately assess the performance of NIPT.
Aneuploidy
;
Chromosome Aberrations
;
DNA
;
Down Syndrome
;
Female
;
Fetus
;
High-Throughput Nucleotide Sequencing
;
Humans
;
Karyotype
;
Plasma
;
Pregnancy
;
Pregnant Women
;
Prenatal Diagnosis
;
Prospective Studies
;
Retrospective Studies
;
Sensitivity and Specificity
;
Trisomy
9.Association between the simultaneous decrease in the levels of soluble vascular cell adhesion molecule-1 and S100 protein and good neurological outcomes in cardiac arrest survivors.
Min Jung KIM ; Taegyun KIM ; Gil Joon SUH ; Woon Yong KWON ; Kyung Su KIM ; Yoon Sun JUNG ; Jung In KO ; So Mi SHIN ; A Reum LEE
Clinical and Experimental Emergency Medicine 2018;5(4):211-218
OBJECTIVE: This study aimed to determine whether simultaneous decreases in the serum levels of cell adhesion molecules (intracellular cell adhesion molecule-1 [ICAM-1], vascular cell adhesion molecule-1 [VCAM-1], and E-selectin) and S100 proteins within the first 24 hours after the return of spontaneous circulation were associated with good neurological outcomes in cardiac arrest survivors. METHODS: This retrospective observational study was based on prospectively collected data from a single emergency intensive care unit (ICU). Twenty-nine out-of-hospital cardiac arrest survivors who were admitted to the ICU for post-resuscitation care were enrolled. Blood samples were collected at 0 and 24 hours after ICU admission. According to the 6-month cerebral performance category (CPC) scale, the patients were divided into good (CPC 1 and 2, n=12) and poor (CPC 3 to 5, n=17) outcome groups. RESULTS: No difference was observed between the two groups in terms of the serum levels of ICAM-1, VCAM-1, E-selectin, and S100 at 0 and 24 hours. A simultaneous decrease in the serum levels of VCAM-1 and S100 as well as E-selectin and S100 was associated with good neurological outcomes. When other variables were adjusted, a simultaneous decrease in the serum levels of VCAM-1 and S100 was independently associated with good neurological outcomes (odds ratio, 9.285; 95% confidence interval, 1.073 to 80.318; P=0.043). CONCLUSION: A simultaneous decrease in the serum levels of soluble VCAM-1 and S100 within the first 24 hours after the return of spontaneous circulation was associated with a good neurological outcome in out-of-hospital cardiac arrest survivors.
Blood-Brain Barrier
;
Cardiopulmonary Resuscitation
;
Cell Adhesion
;
Cell Adhesion Molecules
;
E-Selectin
;
Emergencies
;
Endothelium
;
Heart Arrest*
;
Humans
;
Intensive Care Units
;
Intercellular Adhesion Molecule-1
;
Observational Study
;
Out-of-Hospital Cardiac Arrest
;
Prospective Studies
;
Retrospective Studies
;
S100 Proteins
;
Survivors*
;
Vascular Cell Adhesion Molecule-1*
10.Admission levels of high-density lipoprotein and apolipoprotein A-1 are associated with the neurologic outcome in patients with out-of-hospital cardiac arrest.
Yong Soo SON ; Kyung Su KIM ; Gil Joon SUH ; Woon Yong KWON ; Min Ji PARK ; Jung In KO ; Taegyun KIM
Clinical and Experimental Emergency Medicine 2017;4(4):232-237
OBJECTIVE: To investigate whether serum levels of high-density lipoprotein (HDL) and apolipoprotein A-1 (ApoA1), after the return of spontaneous circulation, can predict the neurologic outcome in patients with out-of-hospital cardiac arrest (OHCA). METHODS: This was a retrospective observational study conducted in a single tertiary hospital intensive care unit. All adult OHCA survivors with admission lipid profiles were enrolled from March 2013 to December 2015. Good neurologic outcome was defined as discharge cerebral performance categories 1 and 2. RESULTS: Among 59 patients enrolled, 13 (22.0%) had a good neurologic outcome. Serum levels of HDL (56.7 vs. 40 mg/dL) and ApoA1 (117 vs. 91.6 mg/dL) were significantly higher in patients with a good outcome. Areas under the HDL and ApoA1 receiver operating curves to predict good outcomes were 0.799 and 0.759, respectively. The proportion of good outcome was significantly higher in patients in higher tertiles of HDL and ApoA1 (test for trend, both P=0.003). HDL (P=0.018) was an independent predictor in the multivariate logistic regression model. CONCLUSION: Admission levels of HDL and ApoA1 are associated with neurologic outcome in patients with OHCA. Prognostic and potential therapeutic values of HDL and ApoA1 merit further evaluation in the post-cardiac arrest state, as in other systemic inflammatory conditions such as sepsis.
Adult
;
Apolipoprotein A-I*
;
Apolipoproteins*
;
Cholesterol, HDL
;
Heart Arrest
;
Humans
;
Intensive Care Units
;
Lipoproteins*
;
Logistic Models
;
Observational Study
;
Out-of-Hospital Cardiac Arrest*
;
Prognosis
;
Retrospective Studies
;
Sepsis
;
Survivors
;
Tertiary Care Centers

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