Decision-tree and ensemble-based mortality risk models for hospitalized patients with COVID-19

Yaroslav Vyklyuk, S. Levytska, D. Nevinskyi, K. Hazdiuk, M. Škoda, Stanislav Andrushko, Maryna Palii
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Abstract

The work is devoted to studying SARS-CoV-2-associated pneumonia and the investigating of the main indicators that lead to the patients’ mortality. Using the good-known parameters that are routinely embraced in clinical practice, we obtained new functional dependencies based on an accessible and understandable decision tree and ML ensemble of classifiers models that would allow the physician to determine the prognosis in a few minutes and, accordingly, to understand the need for treatment adjustment, transfer of the patient to the emergency department. The accuracy of the resulting ensemble of models fitted on actual hospital patient data was in the range of 0.88–0.91 for different metrics. Creating a data collection system with further training of classifiers will dynamically increase the forecast’s accuracy and automate the doctor’s decision-making process.
基于决策树和集合的COVID-19住院患者死亡率风险模型
致力于研究sars - cov -2相关性肺炎,并调查导致患者死亡的主要指标。使用临床实践中常用的众所周知的参数,我们基于易于理解的决策树和分类器模型的ML集成获得了新的功能依赖关系,这将使医生能够在几分钟内确定预后,并相应地了解治疗调整的需要,将患者转移到急诊科。根据实际医院患者数据拟合的模型整体的准确性在不同指标的0.88-0.91范围内。创建一个数据收集系统,进一步训练分类器,将动态地提高预测的准确性,并使医生的决策过程自动化。
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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