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JACIII Vol.16 No.1 pp. 38-41
doi: 10.20965/jaciii.2012.p0038
(2012)

Paper:

System Replacement to a New HIS and Data Warehouse

Masayuki Honda and Takehiro Matsumoto

Department of Medical Informatics, Nagasaki University Hospital, 1-7-1 Sakamoto, Nagasaki 852-8501, Japan

Received:
July 1, 2011
Accepted:
October 12, 2011
Published:
January 20, 2012
Keywords:
HIS, EMR, data warehouse
Abstract
Large-scale hospital information systems (HIS) generally consist of (i) online transaction processing (OLTP) and (ii) online analytical processing (OLAP) systems. Electronic medical records (EMR) are a major OLTP element. The data warehouse (DWH) assumes many important OLAP roles and maintains an institution’s medical care at a high level by providing EMR with the best practice cases available. This article focuses mainly on why OLTP and OLAP are needed and what roles the DWH plays, which means that the DWH has its own utilities and supplementary merits. The background of this discussion is closely related to the HIS at Nagasaki University Hospital introduced before the DWH is discussed.
Cite this article as:
M. Honda and T. Matsumoto, “System Replacement to a New HIS and Data Warehouse,” J. Adv. Comput. Intell. Intell. Inform., Vol.16 No.1, pp. 38-41, 2012.
Data files:
References
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