본문 바로가기 메뉴바로가기

Papers

Total Posts 301
181

[SCIE]Time series anomaly detection for gravitational?wave detectors based on the Hilbert?Huang transform

Jessica McIver,Young?Min Kim,김환선,손재주,오상훈,오정근 | Journal of the Korean Physical Society | 2021

We present a new event trigger generator based on the Hilbert?Huang transform, named EtaGen (Gen). It decomposes time-series data into several adaptive modes without imposing a priori bases on the data.

More

180

[SCIE]Respiratory sound classification for crackles, wheezes, and rhonchi in the clinical field using deep learning

Chaeuk Chung,GeonYoo,Sung Soo Jung,Yoonjoo Kim,이순주,하태영,현윤경 | Scientific Reports | 2021

Auscultation has been essential part of the physical examination; this is non-invasive, real-time, and very informative. Detection of abnormal respiratory sounds with a stethoscope is important in diagnosing respiratory diseases and providing first aid. However, accurate interpretation of respiratory sounds requires clinician’s considerable expertise, so trainees such as interns and residents sometimes misidentify respiratory sounds.

More

179

[SCIE]Body fat plays a important role in of bioimpedance spectros-copy-based dry weight measurement error for the patients with hemodialysis

Jin-Ah Shin,Dae-Eun Choi,Hae-Ri Kim,Hong-Jin Bae,Jae-Wan Jeon,Kang-Wook Lee,Ki-Ryang Na,Young-Rok Ham,현윤경 | Diagnostics | 2021

Accurate dry weight (DW) estimation is important for hemodialysis patients. Although bioimpedance spectroscopy (BIS) is commonly used to measure DW, the BIS-based DW frequently differs from the clinical DW. We analyzed the characteristics of patients whose BIS-based DWs were over- and underestimated. In this retrospective cohort study, we evaluated 1555 patients undergoing maintenance hemodialysis in Chungnam National University Hospital.

More

178

[SCIE]A Novel Approach To Dry Weight Adjustments For Dialysis Patients Using Machine Learning

Dae Eun Choi,Hae Ri Kim,Hong Jin Bae,Jae Wan Jeon,Kang Wook Lee,Ki Ryang Na,Young Rok Ham,현윤경 | PLOS One | 2021

Machine learning made it slightly easier to predict DWCP based on DWBIS under limited conditions and gave better insights into predicting DWCP. Malnutrition-related factors and ECW were important in reflecting the differences between DWBIS and DWCP.

More

177

[SCIE]Long-term transmission dynamics of tick-borne diseases involving seasonal variation and co-feeding transmission

JianHong Wu,나경아 | Journal of Biological Dynamics | 2021

Co-feeding is a mode of pathogen transmission for a wide range of tick-borne diseases where susceptible ticks can acquire infection from co-feeding with infected ticks on the same hosts. The significance of this transmission pathway is determined by the co-occurrence of ticks at different stages in the same season.

More

176

[SCIE]Diagnostic performance of a new convolutional neural network algorithm for detecting developmental dysplasia of the hip on Anteroposterior Radiographs

Gayoung Choi,Jae-Yeon Hwang,Jung-Eun Cheon,Se Woo Kim,Seul Bi Lee,Seunghyun Lee,Woo Sun Kim,Yeon Jin Cho,Young Hun Choi,Young Jin Ryu,박형석,전기완 | Korean Journal of Radiology | 2021

To evaluate the diagnostic performance of a deep learning algorithm for the automated detection of developmental dysplasia of the hip (DDH) on anteroposterior (AP) radiographs.

More

175

[SCIE]Subcritical Transmission in the Early Stage of COVID-19 in Korea

Jong-Hoon Kim,안치영,원용설,이효정 | International Journal of Environmental Research and Public Health | 2021

While the coronavirus disease 2019 (COVID-19) outbreak has been ongoing in Korea since January 2020, there were limited transmissions during the early stages of the outbreak. In the present study, we aimed to provide a statistical characterization of COVID-19 transmissions that led to this small outbreak.

More

174

[SCIE]Restoration of amyloid PET images obtained with short?time data using a generative adversarial networks framework

Do-young Kang,Hyun Jin Yoon,Ji Eun Jeong,Kook Cho,Young Jin Jeong,박형석,전기완 | Scientific Reports | 2021

Our purpose in this study is to evaluate the clinical feasibility of deep-learning techniques for F-18 florbetaben (FBB) positron emission tomography (PET) image reconstruction using data acquired in a short time.

More

173

[SCIE]Neutron star structure in Hoˇrava-Lifshitz gravity

Kyungmin Kim,박찬,손재주,오정근 | PHYSICAL REVIEW D | 2021

We present interesting aspects of neutron stars (NSs) from the standpoint of a modified theory of gravity called Hoˇrava-Lifshitz (HL) gravity. A deviation from general relativity (GR) in HL gravity can change typical features of the NS structure. In this study, we investigate the NS structure by deriving the Tolman-Oppenheimer-Volkoff equation in HL gravity. We find that a NS in HL gravity with a larger radius and heavier mass than a NS in GR remains stable without collapsing into a black hole.

More

172

[SCIE]Identifying geographic areas at risk of rubella epidemics in Japan using seroepidemiological data

Hiroshi Nishiura,Ryo Kinoshita,Taishi Kayanoa,이효정 | International Journal of Infectious Disease | 2021

Objective: Even with relatively high vaccination coverage, Japan experienced rubella epidemics in 2012?2014 and 2018?2019, which were fueled by untraced imported cases. We aimed to develop a risk map for rubella epidemics in Japan by geographic location via analysis of seroepidemiological data and accounting for the abundance of foreign visitors. Methods: Geographic age distribution and seroprevalence were used to compute the age- and sex-dependent next-generation matrix in each region. We computed the probability of a major epidemic using the assumed number of untraced imported rubella cases proportionally modeled to the number of foreign travelers. Results: Risks of a major epidemic were high in areas with capital cities, while areas with a greater fraction of older people yielded smaller effective reproduction numbers, a lower volume of foreign travelers, and thus a lower probability of a major epidemic.

More