The Borrowing Medical Records System : A Case Study of Medical Information System

Juthamat Boonkleang, Pantakarn Supapong, Vittayasak Rujivorakul
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引用次数: 0

Abstract

This research is an application of information technology to efficiently manage the educational information of the School of Dentistry. Dental students must study medical history in teaching dentistry, although the systematic shelving of documents requires greater flexibility in retrieving and searching for patient cases to be studied. The researchers developed a workflow system to increase the efficiency of document borrowing in the form of a web application. to reduce the process of searching for borrowing documents, reduce the waiting time for documents to be borrowed, and shorten the time to summarize all borrowing information, including adding a user-generated hashtag feature to make it easier to find documents by category and context. By using the system to replace the original process, the total time in every process can be reduced from 180–350 minutes to only 8–40 minutes, equivalent to 241 minutes of reduced wasted time.
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病历借阅系统:以医疗信息系统为例
本研究是应用信息技术对牙科学院教学信息进行有效管理的一种研究。牙科专业的学生在牙科教学中必须学习医学史,尽管系统化的文献整理需要更大的灵活性来检索和搜索要研究的病例。研究人员开发了一个工作流系统,以web应用程序的形式提高文档借用的效率。减少查找借阅文档的过程,减少借阅文档的等待时间,缩短对所有借阅信息进行汇总的时间,包括增加用户生成的hashtag功能,便于按类别和上下文查找文档。通过使用该系统取代原有工艺,每道工序的总时间可从180-350分钟减少到仅8-40分钟,相当于减少了241分钟的浪费时间。
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来源期刊
Transactions on Electrical Engineering, Electronics, and Communications
Transactions on Electrical Engineering, Electronics, and Communications Engineering-Electrical and Electronic Engineering
CiteScore
1.60
自引率
0.00%
发文量
45
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