Design of medical database for medical decision support system in laboratory diagnosis of acute leukaemia

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Abstract

This article discusses aspects of the design and physical implementation of the medical database for the subsequent development of medical information system (hereinafter, MIS), capable of intellectually supporting the doctor in the laboratory diagnosis of acute leukemia. The database will allow you to store huge amounts of information on patient histories, laboratory studies and structure the data at the request of the doctor. Also, the main stages of database design are described in detail, taking into account the specifics of the selected subject area. The question of choosing the optimal database management system (hereinafter, DBMS) is highlighted.

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CITATION STYLE

APA

Nikitaev, V. G., Pronichev, A. N., Polyakov, E. V., & Kudryavtseva, I. O. (2019). Design of medical database for medical decision support system in laboratory diagnosis of acute leukaemia. In Journal of Physics: Conference Series (Vol. 1189). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/1189/1/012029

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