Ponomarenko Ihor
candidate of economic sciences, associate professor of Economic Marketing and Communication Design Department Kyiv National University of Technologies and Design
0000-0003-3532-8332
igor_chip@ukr.net
Lubkovska Oleksandra
graduate student of Obstetrics, Gynaecology and Fetal Medicine Department National Medical Academy of Post-Graduate Education Named After P.L. Shupik
ORCID iD: 0000-0002-4522-0723
alexsunny24@ukr.net
The subject of the research is the approach to the possibility of using data science methods in the field of health care for integrated data processing and analysis in order to optimize economic and specialized processes
The purpose of writing this article is to address issues related to the specifics of the use of Data Science methods in the field of health care on the basis of comprehensive information obtained from various sources.
Methodology. The research methodology is system-structural and comparative analyzes (to study the application of BI-systems in the process of working with large data sets); monograph (the study of various software solutions in the market of business intelligence); economic analysis (when assessing the possibility of using business intelligence systems to strengthen the competitive position of companies). The scientific novelty the main sources of data on key processes in the medical field. Examples of innovative methods of collecting information in the field of health care, which are becoming widespread in the context of digitalization, are presented. The main sources of data in the field of health care used in Data Science are revealed. The specifics of the application of machine learning methods in the field of health care in the conditions of increasing competition between market participants and increasing demand for relevant products from the population arepresented.
Conclusions. The intensification of the integration of Data Science in the medical field is due to the increase of digitized data (statistics, textual informa- tion, visualizations, etc.). Through the use of machine learning methods, doctors and other health professionals have new opportunities to improve the efficiency of the health care system as a whole.
Key words: Data science, efficiency, information, machine learning, medicine, Python, healthcare.
References
- Data Sources for Health Care Quality Measures. Accesses at: https://www.ahrq.gov/talkingquality/measures/understand/index.html
- Text Analytics & NLP in Healthcare: Applications & Use Cases. Accesses at: https://www.lexalytics.com/lexablog/text-analytics-nlp-healthcare-applications
- Mathematical Issues in Data Science and Applications for Health care. Accesses at: ttps://medium.com/@alirezakarimi80/mathematical-issues-in-data- science-and-applications-for-health-care-90d6d2ea3f35
- 10 Machine Learning Methods that Every Data Scientist Should Know Accesses at: https://towardsdatascience.com/10-machine-learning-methods-that- every-data-scientist-should-know-3cc96e0eeee9
- How to Choose a Machine Learning Technique. Accesses at: https://serokell. io/blog/how-to-choose-ml-technique
- Revolution in Health Care: How Will Data Science Impact Doctor–Patient Relationships? Accesses at: tps://www.frontiersin.org/articles/10.3389/ fpubh.2018.00099/full
- Data Science in Healthcare: How It Improves Care. Accesses at: https:// www.springboard.com/blog/data-science-in-healthcare/
- How data science is building value in healthcare. Accesses at: https:// validic.com/how-data-science-is-building-value-in-healthcare/
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