Methodology for illness detection by data analysis techniques

Authors

DOI:

https://doi.org/10.15276/aait.06.2023.19

Keywords:

Health Monitoring, data analysis, diagnostics, information technology, analytical system, Telegram bot

Abstract

The research aims to develop information technology for identifying problematic health conditions by analyzing measurement data. The literature review highlights various approaches to medical diagnostics, including statistical and machine-learning models that predict the risk of adverse outcomes based on patient data. Developed information technology focuses on data classification and sufficiency, ensuring objective and relevant data is collected. The technology involves expert-defined rules for analysis, aiding in generating patient diagnosis candidates. The proposed information system comprises four components: data source, data storage, diagnosis module, and data sink. A comprehensive data storage structure is designed to store and manage data related to diagnoses and parameters efficiently. The rule set generation block prototype includes obtaining parameters and transforming algorithms into programming functions. A case study focuses on a diagnostic tool for assessing PTSD using an internationally recognized questionnaire. Telegram bot is selected as the data source due to its anonymity, flexibility, and automated data collection capabilities. The database structure is designed to accommodate questionnaire modifications and continue data collection. The implemented analytical system effectively categorizes individuals' states based on their responses. Overall, the research demonstrates the potential of information technology and the proposed information system to provide effective and user-friendly health diagnostics, aiding in timely medical interventions and improving population well-being.

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Author Biographies

Vira V. Liubchenko, Odessa Polytechnic National University, 1, Shevchenko Ave. Odessa, 65044, Ukraine; Lecturer, Fakultät Life Sciences, Hochschule für Angewandte Wissenschaften Hamburg, Ulmenliet 20. Hamburg, 21033, Germany

Doctor of Engineering Sciences, Professor of the Department of Software Engineering

Scopus Author ID: 56667638800

Nataliia O. Komleva, Odessa Polytechnic National University, 1, Shevchenko Ave. Odessa, 65044, Ukraine

PhD, Head of the Department of Software Engineering
Scopus Author ID: 57191858904

Svitlana L. Zinovatna, Odessa Polytechnic National University, 1, Shevchenko Ave. Odessa, 65044, Ukraine

PhD, Associate Professor of the Department of Software Engineering
Scopus Author ID: 57219779480

Jim Briggs, University of Portsmouth, Portsmouth, PO1 3HE. United Kingdom

Professor of Informatics, Centre for Healthcare Modelling and Informatics 

Scopus Author ID: 7201863846

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Published

2023-09-30

How to Cite

[1]
Liubchenko V.V.., Komleva N.O., Zinovatna S.L.., Briggs J.. “Methodology for illness detection by data analysis techniques”. Applied Aspects of Information Technology. 2023; Vol. 6, No. 3: 273–285. DOI:https://doi.org/10.15276/aait.06.2023.19.