DOI QR코드

DOI QR Code

A Research on Automatic Data Extract Method of Pulse Descriptions Using the List of Pulse Terminology - Based on 『Euijongsonik』 -

맥상용어목록을 이용한 맥상표현 자동추출방법 연구 -『의종손익』을 중심으로-

  • Keum, Yujeong (Dept. of Medical Classics and History, College of Korean Medicine, Daegu Haany University) ;
  • Lee, Byungwook (Dept. of Medical Classics and History, College of Korean Medicine, Dongguk University) ;
  • Eom, Dongmyung (Dept. of Medical Classics, College of Korean Medicine, Wonkwang University) ;
  • Song, Jichung (Dept. of Medical Classics and History, College of Korean Medicine, Daegu Haany University)
  • 금유정 (대구한의대학교 한의과대학 원전의사학교실) ;
  • 이병욱 (동국대학교 한의과대학 원전의사학교실) ;
  • 엄동명 (원광대학교 한의과대학 원전학교실) ;
  • 송지청 (대구한의대학교 한의과대학 원전의사학교실)
  • Received : 2020.10.19
  • Accepted : 2020.11.09
  • Published : 2020.11.25

Abstract

Objectives : Pulse descriptions in Korean Medical texts are comprised of combinations of pulse terminology, where various combinations of pulse terminology are used to describe disease symptoms. For Korean Medical doctors and professionals, however, it is impossible to identify the entirety of pulse description combinations, and their understanding is mostly limited to those learned from classical texts studied individually. Methods :This research was carried out by using Access of Microsoft Office 365 in Windows 10 of Microsoft. Pulse descriptions were extracted from the text, 『Euijongsonik』. In the final stages, the automatically extracted list of pulse descriptions was refined through [excluded terminology of pulse description]. Results : The PC environment of this research was Intel Core i7-1065G7 CPU 1.30GHz, with 8GB of RAM and a Windows 10 64bit operation system. Out of 6,115 verses 6,497 descriptions were primarily extracted, and after a refinement process, the final list contained 5,507 pulse descriptions. Conclusions : Based on the assumption that classical texts are available in data form to be processed by programs, current research methodology demonstrated that it was more efficient in regards to time and man power to create a pulse description database compared to when the researcher manually created one.

Keywords

References

  1. 박병선, 김은하, 이선아, 이병욱. 방제학에 기재된 방제효능과 본초 구성을 기반으로 도출된 효능의 비교 연구. 대한한의학원전학회지 21(1). 2008.
  2. 김정훈, 이병욱. DB를 활용한 方劑의 類方分析 방법 설계. 대한한의학원전학회지21(1). 2008.
  3. 김현호, 홍효신, 유제혁, 권오민, 차웅석. 객체 지향형 처방데이터베이스의 구축과 처방 검색 프로그램의 설계 및 개발. 한국한의학연구원논문집17(2). 2011.
  4. 김기욱, 김태열, 이병욱. 본초 목록을 이용한 방제의 본초 구성 자동 추출 방법. 대한한의학원전학회지 27(3). 2014. https://doi.org/10.14369/skmc.2014.27.3.155
  5. 김종현, 배효진, 김창업, 이충열, 신상원. 텍스트마이닝(Text mining)을 활용한 한의학 원전연구의 가능성 모색. 대한한의학원전학회지. 31(4). 2018. https://doi.org/10.14369/jkmc.2018.31.4.027
  6. 한의학고전DB: https://mediclassics.kr/2020년 10월 16일 검색