1.Expression of nitric oxide synthase isoforms in the porcine ovary during follicular development.
Heechul KIM ; Changjong MOON ; Meejung AHN ; Yongduk LEE ; Hwanglyong KIM ; Seungjoon KIM ; Taeyoung HA ; Youngheun JEE ; Taekyun SHIN
Journal of Veterinary Science 2005;6(2):97-101
The expression of nitric oxide synthase (NOS) isoforms in the ovaries of pigs was examined to study the involvement of nitric oxide, a product of NOS activity, in the function of the ovary. Western blot analysis detected three types of NOS in the ovary, including constitutive neuronal NOS (nNOS), endothelial NOS (eNOS) and inducible NOS (iNOS); eNOS immunoreactivity was more intense compared with that of iNOS or nNOS. Immunohistochemical studies demonstrated the presence of nNOS and eNOS in the surface epithelium, stroma, oocytes, thecal cells, and endothelial cells of blood vessels. Positive immunoreactions for nNOS and iNOS were detected in the granulosa cells from multilaminar and antral follicles, but not in those of unilaminar follicles. iNOS was detected in the surface epithelium, oocytes, and theca of multilaminar and antral follicles. Taking all of the findings into consideration, the observed differential expression of the three NOS isoforms in the ovary suggests a role for nitric oxide in modulating reproduction in pigs.
Animals
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Blotting, Western/veterinary
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Female
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Immunohistochemistry/veterinary
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Nerve Tissue Proteins/*biosynthesis
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Nitric Oxide/metabolism
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Nitric Oxide Synthase/*biosynthesis
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Nitric Oxide Synthase Type I
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Nitric Oxide Synthase Type II
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Nitric Oxide Synthase Type III
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Ovarian Follicle/*enzymology/growth&development
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Swine/*physiology
2.Knee Synovitis Mimicking a Septic Arthritis.
Jeong Eun PARK ; Hyun Sik KIM ; Jae Ho SEONG ; Sung Sam HA ; Seoung Wan NAM ; Hyang Sun LEE ; Jae Seok KIM ; Jae Won YANG ; Taeyoung KANG
Journal of Rheumatic Diseases 2015;22(1):39-44
Synovitis is the inflammation of the synovial membrane with unknown etiology which occurs in association with auto-immune inflammatory arthritis, mainly in rheumatoid arthritis. Synovitis manifesting as rapidly progressing monoarticular or pauciarticualr symptoms could make early diagnosis difficult, thus it could be misdiagnosed as other forms of arthritic diseases. We experienced a rare case of knee joint synovitis which initially manifested as mimicking a septic arthritis. A 58-year-old-male patient underwent renovascular embolization due to retroperitoneal hemorrhage which was developed after renal biopsy. Suddenly, the patient's left knee joint became swollen rapidly with redness and tenderness. Moreover, his right knee also became inflamed. Surgical irrigation and intravenous antibiotics had never worked on his knee joint inflammation, however administration of intermediate dose of steroid could decrease inflammatory signs dramatically. Synovitis in a large joint could be mistaken as a septic arthritis, delaying the right diagnosis. Thus, we report this case with literature review.
Anti-Bacterial Agents
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Arthritis
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Arthritis, Infectious*
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Arthritis, Rheumatoid
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Biopsy
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Diagnosis
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Early Diagnosis
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Hemorrhage
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Humans
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Inflammation
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Joints
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Knee Joint
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Knee*
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Synovial Membrane
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Synovitis*
3.Evolution of the Stethoscope: Advances with the Adoption of Machine Learning and Development of Wearable Devices
Yoonjoo KIM ; YunKyong HYON ; Seong‑Dae WOO ; Sunju LEE ; Song-I LEE ; Taeyoung HA ; Chaeuk CHUNG
Tuberculosis and Respiratory Diseases 2023;86(4):251-263
The stethoscope has long been used for the examination of patients, but the importance of auscultation has declined due to its several limitations and the development of other diagnostic tools. However, auscultation is still recognized as a primary diagnostic device because it is non-invasive and provides valuable information in real-time. To supplement the limitations of existing stethoscopes, digital stethoscopes with machine learning (ML) algorithms have been developed. Thus, now we can record and share respiratory sounds and artificial intelligence (AI)-assisted auscultation using ML algorithms distinguishes the type of sounds. Recently, the demands for remote care and non-face-to-face treatment diseases requiring isolation such as coronavirus disease 2019 (COVID-19) infection increased. To address these problems, wireless and wearable stethoscopes are being developed with the advances in battery technology and integrated sensors. This review provides the history of the stethoscope and classification of respiratory sounds, describes ML algorithms, and introduces new auscultation methods based on AI-assisted analysis and wireless or wearable stethoscopes.
4.Machine Learning Approaches for the Prediction of Prostate Cancer according to Age and the Prostate-Specific Antigen Level
Jaegeun LEE ; Seung Woo YANG ; Seunghee LEE ; Yun Kyong HYON ; Jinbum KIM ; Long JIN ; Ji Yong LEE ; Jong Mok PARK ; Taeyoung HA ; Ju Hyun SHIN ; Jae Sung LIM ; Yong Gil NA ; Ki Hak SONG
Korean Journal of Urological Oncology 2019;17(2):110-117
PURPOSE: The aim of this study was to evaluate the applicability of machine learning methods that combine data on age and prostate-specific antigen (PSA) levels for predicting prostate cancer. MATERIALS AND METHODS: We analyzed 943 patients who underwent transrectal ultrasonography (TRUS)-guided prostate biopsy at Chungnam National University Hospital between 2014 and 2018 because of elevated PSA levels and/or abnormal digital rectal examination and/or TRUS findings. We retrospectively reviewed the patients’ medical records, analyzed the prediction rate of prostate cancer, and identified 20 feature importances that could be compared with biopsy results using 5 different algorithms, viz., logistic regression (LR), support vector machine, random forest (RF), extreme gradient boosting, and light gradient boosting machine. RESULTS: Overall, the cancer detection rate was 41.8%. In patients younger than 75 years and with a PSA level less than 20 ng/mL, the best prediction model for prostate cancer detection was RF among the machine learning methods based on LR analysis. The PSA density was the highest scored feature importances in the same patient group. CONCLUSIONS: These results suggest that the prediction rate of prostate cancer using machine learning methods not inferior to that using LR and that these methods may increase the detection rate for prostate cancer and reduce unnecessary prostate biopsy, as they take into consideration feature importances affecting the prediction rate for prostate cancer.
Biopsy
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Chungcheongnam-do
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Digital Rectal Examination
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Forests
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Humans
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Logistic Models
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Machine Learning
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Medical Records
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Prostate
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Prostate-Specific Antigen
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Prostatic Neoplasms
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Retrospective Studies
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Support Vector Machine
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Ultrasonography
5.Detecting mpox infection in the early epidemic: an epidemiologic investigation of the third and fourth cases in Korea
Taeyoung KIM ; Eonjoo PARK ; Jun Suk EUN ; Eun-young LEE ; Ji Won MUN ; Yunsang CHOI ; Shinyoung LEE ; Hansol YEOM ; Eunkyoung KIM ; Jongmu KIM ; Jihyun CHOI ; Jinho HA ; Sookkyung PARK
Epidemiology and Health 2023;45(1):e2023040-
OBJECTIVES:
As few mpox cases have been reported in Korea, we aimed to identify the characteristics of mpox infection by describing our epidemiologic investigation of a woman patient (index patient, the third case in Korea) and a physician who was infected by a needlestick injury (the fourth case).
METHODS:
We conducted contact tracing and exposure risk evaluation through interviews with these 2 patients and their physicians and contacts, as well as field investigations at each facility visited by the patients during their symptomatic periods. We then classified contacts into 3 levels according to their exposure risk and managed them to minimize further transmission by recommending quarantine and vaccination for post-exposure prophylaxis and monitoring their symptoms.
RESULTS:
The index patient had sexual contact with a man foreigner during a trip to Dubai, which was considered the probable route of transmission. In total, 27 healthcare-associated contacts across 7 healthcare facilities and 9 community contacts were identified. These contacts were classified into high (7 contacts), medium (9 contacts), and low (20 contacts) exposure risk groups. One high-risk contact was identified as a secondary patient: a physician who was injured while collecting specimens from the index patient.
CONCLUSIONS
The index patient visited several medical facilities due to progressive symptoms prior to isolation. Although the 2022 mpox epidemic mainly affected young men, especially men who have sex with men, physicians should also consider mpox transmission in the general population for the timely detection of mpox-infected patients.