Methodology for illness detection by data analysis techniques

Liubchenko Vira V., Komleva Nataliia O., Zinovatna Svitlana L., Briggs Jim
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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 prototypeincludes 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 accommodatequestionnaire 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.
用数据分析技术检测疾病的方法学
该研究旨在开发信息技术,通过分析测量数据来识别有问题的健康状况。文献综述强调了医学诊断的各种方法,包括基于患者数据预测不良后果风险的统计和机器学习模型。发达的信息技术侧重于数据分类和充分性,确保收集客观和相关的数据。该技术包括专家定义的分析规则,帮助产生患者诊断候选。该信息系统由数据源、数据存储、诊断模块和数据接收器四个部分组成。设计了全面的数据存储结构,有效地存储和管理与诊断和参数相关的数据。规则集生成块原型包括获取参数和将算法转化为编程函数。案例研究的重点是使用国际公认的问卷评估创伤后应激障碍的诊断工具。之所以选择Telegram bot作为数据源,是因为它具有匿名性、灵活性和自动数据收集能力。数据库结构的设计是为了适应问卷的修改和持续的数据收集。实施的分析系统根据个人的反应有效地对他们的状态进行分类。总的来说,这项研究显示了信息技术和拟议的信息系统在提供有效和用户友好的健康诊断、协助及时的医疗干预和改善人口福祉方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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