• 제목/요약/키워드: bio big data

검색결과 79건 처리시간 0.024초

A Needs Analysis of Educational Content for Overseas Job Applicants in the Digital Bio-health Industry

  • Soobok Lee;Wootaek Lim
    • 한국전문물리치료학회지
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    • 제30권3호
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    • pp.230-236
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    • 2023
  • Background: The globalization of the healthcare industry and the increasing demand for skilled professionals in the global healthcare industry have opened up opportunities for specialized biotech healthcare professionals to seek overseas employment and career advancement. Objects: This study aimed to develop educational content essential for the overseas employment of digital bio-health professionals. Methods: A survey was conducted among 196 participants. Google Forms (Google) were utilized to create and administer the survey, employing purposive sampling, a non-probability sampling method. Data analysis was performed using IBM SPSS 25.0 (IBM Co.), including Cronbach's α and independent sample t-tests to assess significant differences. Results: About half of college students are interested in overseas employment and international careers, while the other half had not. The most common reason for wanting to work or go overseas was "foreign experience will be useful for future activities in Korea." Students who had experience taking courses from the Bio-health Convergence Open Sharing University preferred overseas programs more than those who did not have that experience. In terms of the degree of desire for overseas education courses provided by universities, contents related to human health were the highest, followed by bio-health big data. Conclusion: Many students wanted to work and go overseas if there is sufficient support from the university. The findings in this study suggest that universities are necessary to play an important role in supporting students' aspirations to work or go overseas by providing language education, education and training programs, information on overseas jobs, and mentoring programs.

Introduction of the Korea BioData Station (K-BDS) for sharing biological data

  • Byungwook Lee;Seungwoo Hwang;Pan-Gyu Kim;Gunwhan Ko;Kiwon Jang;Sangok Kim;Jong-Hwan Kim;Jongbum Jeon;Hyerin Kim;Jaeeun Jung;Byoung-Ha Yoon;Iksu Byeon;Insu Jang;Wangho Song;Jinhyuk Choi;Seon-Young Kim
    • Genomics & Informatics
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    • 제21권1호
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    • pp.12.1-12.8
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    • 2023
  • A wave of new technologies has created opportunities for the cost-effective generation of high-throughput profiles of biological systems, foreshadowing a "data-driven science" era. The large variety of data available from biological research is also a rich resource that can be used for innovative endeavors. However, we are facing considerable challenges in big data deposition, integration, and translation due to the complexity of biological data and its production at unprecedented exponential rates. To address these problems, in 2020, the Korean government officially announced a national strategy to collect and manage the biological data produced through national R&D fund allocations and provide the collected data to researchers. To this end, the Korea Bioinformation Center (KOBIC) developed a new biological data repository, the Korea BioData Station (K-BDS), for sharing data from individual researchers and research programs to create a data-driven biological study environment. The K-BDS is dedicated to providing free open access to a suite of featured data resources in support of worldwide activities in both academia and industry.

온실의 기간난방부하 산정을 위한 난방적산온도 비교분석 (Comparative Analysis of Accumulated Temperature for Seasonal Heating Load Calculation in Greenhouses)

  • 남상운;신현호;서동욱
    • 생물환경조절학회지
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    • 제23권3호
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    • pp.192-198
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    • 2014
  • To establish the design criteria for seasonal heating load calculation in greenhouses, standard weather data are required. However, they are being provided only at seven regions in Korea. So, instead of using standard weather data, in order to find the method to build design weather data for seasonal heating load calculation, heating degree-hour and heating degree-day were analyzed and compared by methods of fundamental equation, Mihara's equation and modified Mihara's equation using normal and thirty years from 1981 to 2010 hourly weather data provided by KMA and standard weather data provided by KSES. Average heating degree-hours calculated by fundamental equation using thirty years hourly weather data showed a good agreement with them using standard weather data. The 24 times of heating degree-day showed relatively big differences with heating degree-hour at the low setting temperature. Therefore, the heating degree-hour was considered more appropriate method to estimate the seasonal heating load. And to conclude, in regions which are not available standard weather data, we suggest that design weather data should be analyzed using thirty years hourly weather data. Average of heating degree-hours derived from every year hourly weather data during the whole period can be established as environmental design standards, and also minimum and maximum of them can be used as reference data for energy estimation.

딥러닝을 이용한 병징에 최적화된 딸기 병충해 검출 기법 (Strawberry Pests and Diseases Detection Technique Optimized for Symptoms Using Deep Learning Algorithm)

  • 최영우;김나은;볼라파우델;김현태
    • 생물환경조절학회지
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    • 제31권3호
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    • pp.255-260
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    • 2022
  • 본 논문은 딥러닝 알고리즘을 이용하여 딸기 영상 데이터의 병충해 존재 여부를 자동으로 검출할 수 있는 서비스 모델을 제안한다. 또한 병징에 특화된 분할 이미지 데이터 세트를 제안하여 딥러닝 모델의 병충해 검출 성능을 향상한다. 딥러닝 모델은 CNN 기반 YOLO를 선정하여 기존의 R-CNN 기반 모델의 느린 학습속도와 추론속도를 개선하였다. 병충해 검출 모델을 학습하기 위해 일반적인 데이터 세트와 제안하는 분할 이미지 데이터 세트를 구축하였다. 딥러닝 모델이 일반적인 학습 데이터 세트를 학습했을 때 병충해 검출률은 81.35%이며 병충해 검출 신뢰도는 73.35%이다. 반면 딥러닝 모델이 분할 이미지 학습 데이터 세트를 학습했을 때 병충해 검출률은 91.93%이며 병충해 검출 신뢰도는 83.41%이다. 따라서 분할 이미지 데이터를 학습한 딥러닝 모델의 성능이 우수하다는 것을 증명할 수 있었다.

In-memory data grid 기술을 활용한 택시 애플리케이션 성능 향상 기법 연구 (Enhancing the performance of taxi application based on in-memory data grid technology)

  • 최치환;김진혁;박민규;권가은;정승현;프란코 나자레노;조완섭
    • Journal of the Korean Data and Information Science Society
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    • 제26권5호
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    • pp.1035-1045
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    • 2015
  • 최근 빅데이터 분야에서 데이터를 메모리에 적재 후 빠르게 처리하는 인메모리 컴퓨팅 기술이 새롭게 부각되고 있다. 인메모리 컴퓨팅 기술은 과거 대용량 메모리와 다중 프로세서를 탑재한 고성능서버에 적용 가능하였지만, 점차 일반 컴퓨터를 초고속 네트워크로 연결하여 분산 병렬처리가 가능한 구조로 변화하고 있다. 본 논문은 In-memory data grid (IMDG) 기술을 택시 애플리케이션에 접목하여 기존의 데이터베이스의 변경 없이 성능을 향상시키는 기법을 제안한다. IMDG 기술을 적용한 경우 기존의 데이터베이스 기반의 웹서비스에 비해 처리속도와 처리량이 평균 6~9배정도 증가하며, 또한 부하량에 따른 처리량 변화의 폭이 매우 작음을 확인 하였다.

Medical Image Analysis Using Artificial Intelligence

  • Yoon, Hyun Jin;Jeong, Young Jin;Kang, Hyun;Jeong, Ji Eun;Kang, Do-Young
    • 한국의학물리학회지:의학물리
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    • 제30권2호
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    • pp.49-58
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    • 2019
  • Purpose: Automated analytical systems have begun to emerge as a database system that enables the scanning of medical images to be performed on computers and the construction of big data. Deep-learning artificial intelligence (AI) architectures have been developed and applied to medical images, making high-precision diagnosis possible. Materials and Methods: For diagnosis, the medical images need to be labeled and standardized. After pre-processing the data and entering them into the deep-learning architecture, the final diagnosis results can be obtained quickly and accurately. To solve the problem of overfitting because of an insufficient amount of labeled data, data augmentation is performed through rotation, using left and right flips to artificially increase the amount of data. Because various deep-learning architectures have been developed and publicized over the past few years, the results of the diagnosis can be obtained by entering a medical image. Results: Classification and regression are performed by a supervised machine-learning method and clustering and generation are performed by an unsupervised machine-learning method. When the convolutional neural network (CNN) method is applied to the deep-learning layer, feature extraction can be used to classify diseases very efficiently and thus to diagnose various diseases. Conclusions: AI, using a deep-learning architecture, has expertise in medical image analysis of the nerves, retina, lungs, digital pathology, breast, heart, abdomen, and musculo-skeletal system.

웨어러블 장치를 이용한 건설사고 예방 시스템 개발 기초 연구 (Basic Study on Safety Accident Prevention System Development Using Wearable Device)

  • 류한국;강진우
    • 한국건축시공학회:학술대회논문집
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    • 한국건축시공학회 2018년도 추계 학술논문 발표대회
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    • pp.55-56
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    • 2018
  • In order to reduce the risk of accidents, we proposed a construction safety management system combined with wearable device and LoRa (Low-Range Wireless Network) communication method to apply the usefulness of Internet (IoT) technology which means "everything connected". to construction safety management Management system. The proposed wearable safety device is a device that relays information exchange between wearable safety device and safety management server by LoRa wireless communication method. The safety management server can store workers bio-data and perform big data analysis. If a risk factor is determined from the analysis result, a warning is sent to the wearable safety device and the manager's application. The goal of this system is to prevent construction workers from entering the dangerous area that is not suitable for work, and to prevent safety accidents caused by human cause by detecting abnormal condition during work.

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Volatility for High Frequency Time Series Toward fGARCH(1,1) as a Functional Model

  • Hwang, Sun Young;Yoon, Jae Eun
    • Quantitative Bio-Science
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    • 제37권2호
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    • pp.73-79
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    • 2018
  • As high frequency (HF, for short) time series is now prevalent in the presence of real time big data, volatility computations based on traditional ARCH/GARCH models need to be further developed to suit the high frequency characteristics. This article reviews realized volatilities (RV) and multivariate GARCH (MGARCH) to deal with high frequency volatility computations. As a (functional) infinite dimensional models, the fARCH and fGARCH are introduced to accommodate ultra high frequency (UHF) volatilities. The fARCH and fGARCH models are developed in the recent literature by Hormann et al. [1] and Aue et al. [2], respectively, and our discussions are mainly based on these two key articles. Real data applications to domestic UHF financial time series are illustrated.

보건의료데이터 활용을 위한 국내 법률검토 및 의료분쟁에 대한 조정 제도 고찰 (The Study on the Review of Domestic Laws for Utilizing Health and Medical Data and of Mediation for Medical Disputes)

  • 변승혁
    • 한국중재학회지:중재연구
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    • 제31권2호
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    • pp.119-135
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    • 2021
  • South Korea has the most advanced technology in the Fourth Industrial Revolution era because of its high-speed Internet commercialization. However, the industry is shrinking due to its various regulations in building and its utilization of personal information as big data. Currently, South Korea's personal data utilization business is in its early stages. In the era of the 4th Industrial Revolution, it is difficult for startups to use data. There are various causes here. Above all, legal regulations to protect personal information are emphasized. This study confirms that transactions of personal medical records through My Data can be made. Moreover, it confirms that there is a need for a mediating role between stakeholders. This study lacks statistical access in the process of performing stakeholder roles. However, personal medical records will be traded safely in the future, and new subjects will enter the market. Furthermore, the domestic bio-industry will develop. Through this study, various problems were derived in establishing Medical MyData in Korea. Moreover, it looks forward to continuing various studies in the health care sector in the future.

유전자 발현량 데이터 증대를 위한 Conditional VAE 기반 생성 모델 (Conditional Variational Autoencoder-based Generative Model for Gene Expression Data Augmentation)

  • 봉현수;오민식
    • 방송공학회논문지
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    • 제28권3호
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    • pp.275-284
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    • 2023
  • 유전자 발현 데이터는 질병의 예후 예측, 약물 반응성 예측 등 질병에 대한 이해와 정밀 의료 실현을 위한 연구들에 활용될 수 있지만 충분한 양의 데이터를 수집하는 데 많은 비용적 문제가 있다. 본 논문에서는 Conditional VAE에 기반한 유전자 발현 데이터 생성 모델을 제안하였다. 이전 연구인 WGAN-GP기반의 유전자 발현 생성 모델과 정형 데이터 생성 모델인 CTGAN, TVAE와 비교하여 본 논문의 Conditional VAE기반 모델이 생물학적, 통계학적으로 더 유의미한 합성 데이터를 생성할 수 있음을 보였다.