Covid19PreditoR: Klinik Verilere ve Rutin Testlere Dayalı Olarak Covid-19 Teşhisi İçin Makine Öğrenimi Modelleri Geliştirmeye Yarayan Web Tabanlı Arayüz

Volkan Kapucu, Sultan Turhan, Metin Pıçakçıefe, Eralp Doğu
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Abstract

ABSTRACT Objective: The Covid-19 outbreak has become the primary health problem of many countries due to health related, social, economic and individual effects. In addition to the development of outbreak prediction models, the examination of risk factors of the disease and the development of models for diagnosis are of high importance. This study introduces the Covid19PredictoR interface, a workflow where machine learning approaches are used for diagnosing Covid-19 based on clinical data such as routine laboratory test results, risk factors, information on co-existing health conditions. Materials and Methods: Covid19PredictoR interface is an open source web based interface on R/Shiny (https://biodatalab.shinyapps.io/Covid19PredictoR/). Logistic regression, C5.0, decision tree, random forest and XGBoost models can be developed within the framework. These models can also be used for predictive purposes. Descriptive statistics, data pre-processing and model tuning steps are additionally provided during model development. Results: Einsteindata4u dataset was analyzed with the Covid19PredictoR interface. With this example, the complete operation of the interface and the demonstration of all steps of the workflow have been shown. High performance machine learning models were developed for the dataset and the best models were used for prediction. Analysis and visualization of features (age, admission data and laboratory tests) were carried out for the case per model. Conclusion: The use of machine learning algorithms to evaluate Covid-19 disease in terms of related risk factors is rapidly increasing. The application of these algorithms on various platforms creates application difficulties, repeatability and reproducibility problems. The proposed pipeline, which has been transformed into a standard workflow with the interface, offers a user-friendly structure that healthcare professionals with various background can easily use and report.
摘要目的:新型冠状病毒肺炎疫情已成为许多国家的首要卫生问题,其影响涉及健康、社会、经济和个人。除了开发爆发预测模型外,检查疾病的危险因素和开发诊断模型也非常重要。本研究介绍了Covid19PredictoR界面,这是一个工作流程,其中机器学习方法用于根据临床数据(如常规实验室检测结果、风险因素、共存健康状况信息)诊断Covid-19。材料和方法:Covid19PredictoR界面是一个基于R/Shiny (https://biodatalab.shinyapps.io/Covid19PredictoR/)的开源web界面。逻辑回归、C5.0、决策树、随机森林和XGBoost模型可以在框架内开发。这些模型也可以用于预测目的。在模型开发过程中,还提供了描述性统计、数据预处理和模型调优步骤。结果:使用Covid19PredictoR界面对insteindata4u数据集进行分析。通过这个例子,展示了界面的完整操作和工作流的所有步骤的演示。为数据集开发了高性能机器学习模型,并使用最佳模型进行预测。对每个模型的病例进行特征分析和可视化(年龄、入院数据和实验室测试)。结论:利用机器学习算法评估Covid-19疾病相关危险因素的情况正在迅速增加。这些算法在各种平台上的应用产生了应用困难、可重复性和再现性问题。建议的管道已转换为带有接口的标准工作流,提供了一个用户友好的结构,具有不同背景的医疗保健专业人员可以轻松使用和报告。
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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