Principles and objectives of information and analytical support for prenatal care

Authors

  • Оксана Юріївна Мулеса Uzhgorod national university, Narodna 3, Uzhgorod, Ukraine, 88000, Ukraine
  • Віталій Євгенович Снитюк Taras Shevchenko National University of Kyiv Str. Lomonosov 81, Kyiv, Ukraine, 03022, Ukraine https://orcid.org/0000-0002-9954-8767
  • Святослав Омелянович Герзанич Uzhgorod national university Grybojedov st., 20B, Uzhgorod, Ukraine, 88000, Ukraine

DOI:

https://doi.org/10.15587/1729-4061.2015.42823

Keywords:

information technologies (IT), system approach, prenatal care, prognosis, clustering, identification, fuzziness

Abstract

IT-based prenatal care and outpatient counseling of pregnant women are aimed at more effective medical decisions and, therefore, a lower risk of medical errors and their consequences. A system analysis of contemporary clinical examination of pregnant women signals of lack of adequate valid information and analytical support for the medical sector. The technological models of hospitals and research institutions as well as the role of scientists in solving the problems of reproductive health require revision and normative regulation.

The study has proved that the system of clinical examination and counseling of pregnant women has a complex structure; it is a multi-stage long process of interrelated decisions. We have decomposed the process into separate objectives and classified the latter. In general, all the relevant objectives may be classified as follows: objectives of classifying and clustering the objects, objective of structural and parametric identification of unknown dependencies, objectives of prognosis, and objectives of pre-processing the data and identifying informative features. We have provided the above stated objectives with correspondent mathematical models and analyzed the possibility of applying familiar methods. It is proved that objectives using subjective conclusions as input data should exploit an apparatus of the theory of fuzzy sets as well as relevant fuzzy models and methods of their solution. 

Author Biographies

Оксана Юріївна Мулеса, Uzhgorod national university, Narodna 3, Uzhgorod, Ukraine, 88000

Candidate of Technical Science, Associate Professor

Department of cybernetics and applied mathematics

Віталій Євгенович Снитюк, Taras Shevchenko National University of Kyiv Str. Lomonosov 81, Kyiv, Ukraine, 03022

Professor, Doctor of technical sciences, head of the department

The department of intellectual information systems 

Святослав Омелянович Герзанич, Uzhgorod national university Grybojedov st., 20B, Uzhgorod, Ukraine, 88000

Doctor of medical sciences, Professor

The department of obstetrics and gynecology

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Published

2015-06-29

How to Cite

Мулеса, О. Ю., Снитюк, В. Є., & Герзанич, С. О. (2015). Principles and objectives of information and analytical support for prenatal care. Eastern-European Journal of Enterprise Technologies, 3(2(75), 29–35. https://doi.org/10.15587/1729-4061.2015.42823