Developing Database Systems for Coronary Artery's Patients Hajar Hospital in Shahr-e-Kord 2017

Document Type : Original Article

Authors

1 Department of Health Information Management, Faculty of Paramedicine, Tehran University of Medical Sciences, Tehran, Iran

2 Computer School, Shahrekord University, Shahrekord, Iran

3 Department of Health Information Technology, Khalkhal University of Medical Sciences, Khalkhal, Iran

Abstract

Purpose:
The data is a foundation for decision-making in health care and must be organized in databases. Database has a vital role in application of intelligent systems such as data mining and data warehousing in healthcare area. Given the importance of coronary heart disease, this study executes design and implementation of database for coronary heart disease.
Methods:
This study was an applied-developed one to design of coronary heart disease database to organize data and implement it in the Microsoft SQL. After the identification and characterization of the requirements, the database system designs and explains its architecture. To implement the system interface, the Visual Studio and C # programming language were used. Finally, the system was evaluated.
Results:
After recording the 350 data files in the database, according to statements made to the program, different queries were requested from the system. The proposed system in this study captured the risk factors affecting the incidence of coronary artery disease as an input and facilitate applied statistics and provided necessary processing on the data.
Conclusion:
The designed database in this study can help to store, access, retrieve and compare patient information, and ultimately leads to timely diagnosis and treatment of the disease. Furthermore, the designed database is to meet the needs of users.

Keywords

Main Subjects


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