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        Building a Lung and Ovarian Cancer Data Warehouse

        Canan Eren Atay,Georgia Garani 대한의료정보학회 2020 Healthcare Informatics Research Vol.26 No.4

        Objectives: Despite the collection of vast amounts of data by the healthcare sector, effective decision-making in medicalpractice is still challenging. Data warehousing technology can be applied for the collection and management of clinical datafrom various sources to provide meaningful insights for physicians and administrators. Cancer data are extremely complicatedand massive; hence, a clinical data warehouse system can provide insights into prevention, diagnosis and treatmentprocesses through the use of online analytical processing tools for the analysis of multi-dimensional data at different granularitylevels. Methods: In this study, a clinical data warehouse was developed for lung cancer data, which were kindly providedby the United States National Cancer Institute. Lung and ovarian cancer data were imported in specific formats andcleaned to remove errors and redundancies. SQL server integration services (SSIS) were used for the extract-transform-load(ETL) process. Results: The design of the clinical data warehouse responds efficiently to all types of queries by adopting thefact constellation schema model. Various online analytical processing queries can be expressed using the proposed approach. Conclusions: This model succeeded in responding to complex queries, and the analysis of data is facilitated by using onlineanalytical processing cubes and viewing multilevel data details.

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