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      Kwang Soo Jang

      Kwang Soo Jang

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      Department of Information System, Hanyang University, Seoul 04763, Korea. | Department of Information System, Hanyang University; Seoul 04763, Korea;, shpark@tnic.co.kr, ...

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      Kwang Soo Jang:Expert Impact

      Concepts for whichKwang Soo Janghas direct influence:Usage data,Sud suc,Suc sud,Smartphone usage,Internet gaming disorder,Smartphone users,Smartphone usage data,Adr signals.

      Kwang Soo Jang:KOL impact

      Concepts related to the work of other authors for whichfor which Kwang Soo Jang has influence:Excessive smartphone,Motion recognition,Human ux,Cognitive manufacturing,Internet gaming disorder,Mining process,Medical wban.

      KOL Resume for Kwang Soo Jang

      Year
      2016

      Department of Information System, Hanyang University, Seoul 04763, Korea.

      2015

      Graduate School of Information System, The Hanyang University of Korea, Seoul, Republic of Korea

      2013

      Graduate School of Information System, Hanyang University, Haengdang 1-dong, Seongdong-gu, 133-791, Seoul, South Korea

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      Sample of concepts for which Kwang Soo Jang is among the top experts in the world.
      Concept World rank
      sud suc #15
      suc sud #15
      smartphone usage data #71
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      Prominent publications by Kwang Soo Jang

      KOL-Index: 3047

      As interest in the use of electronic medical record data for clinical research has increased, the protection of personal health information has become increasingly important. The Privacy Rule, established by the Health Insurance Portability and Accountability Act in 1996, proposed the concept of Protected Health Information (PHI) to restrict the use of personal health information from clinical settings. Because researchers and patients are not familiar with PHI despite its importance, ...

      Known for Data Clinical
      KOL-Index: 2371

      Background: Smartphone overdependence is a type of mental disorder that requires continuous treatment for cure and prevention. A smartphone overdependence management system that is based on scientific evidence is required. This study proposes the design, development and implementation of a smartphone overdependence management system for self-control of smart devices. Methods: The system architecture of the Smartphone Overdependence Management System (SOMS) primarily consists of four ...

      Known for Smart Devices | Usage Data | Sud Suc | Participants Classified | Application App
      KOL-Index: 968

      Abstract

      An adverse drug reaction (ADR) surveillance system integrated with various electronic medical record (EMR) systems has been suggested as an effective way to collect more data and analyze ADRs earlier than the spontaneous reporting of ADRs. Because Korean hospitals have heterogeneous EMR databases, a common data model (CDM) should first be defined to develop the multi-center EMR-based drug surveillance system. We investigated the data models from two prominent drug safety ...

      Known for Drug Reaction | Spontaneous Reporting | Signal Detection | Medical Outcomes
      KOL-Index: 714

      The drug safety monitoring based on EMR system is able to collect more objective pharmacovigilance data and analyze adverse drug reaction (ADR) earlier than spontaneous ADR reporting. This study developed the Korea ADR common data model (K-ADR CDM) for early detection of adverse drug reaction which is feasible for Korean EMR systems. To do that, we analyzed previously studied data model from two prominent drug safety surveillance researches: Mini-Sentinel data model and Observational ...

      Known for Pharmacovigilance Data | Signal Detection | Drug Safety | Partnership Omop | Medical Outcomes

      Key People For Usage Data

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      #5
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      web usage mining markov models chemical compounds
      #6
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      data mining frequent patterns outlier detection

      Department of Information System, Hanyang University, Seoul 04763, Korea. | Department of Information System, Hanyang University; Seoul 04763, Korea;, shpark@tnic.co.kr, (S.-H.P.);, jks8605@nate.com, (K.-S.J.);, indev@tnic.co.kr, (B.-J.P.);, ooklee@h

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