巴西南部某城市COVID-19住院患者的机器学习和共病网络分析

Q2 Health Professions
Hemanoel Passarelli-Araujo , Hisrael Passarelli-Araujo , Mariana R. Urbano , Rodrigo R. Pescim
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引用次数: 4

摘要

COVID-19大流行期间产生的大量数据需要先进的工具,以便以更高的准确性长期预测与COVID-19死亡率相关的风险因素。机器学习(ML)方法直接解决了这一问题,是指导公共卫生干预的重要工具。在这里,我们使用ML来调查人口统计学和临床变量对COVID-19死亡率的重要性。我们还分析了共病网络是如何根据年龄组构建的。我们对2021年1月至2022年2月在严重急性呼吸道感染数据库(SIVEP-Gripe)中登记的巴西巴拉那州隆德里纳住院患者的COVID-19死亡率进行了回顾性研究。我们测试了四种机器学习模型来预测COVID-19的结果:逻辑回归、支持向量机、随机森林和XGBoost。我们还构建了一个共病网络来研究共病对COVID-19死亡率的影响。本研究纳入8358例住院患者,其中2792例(33.40%)死亡。XGBoost模型取得了优异的性能(ROC-AUC = 0.90)。排列法和SHAP值都强调了年龄、呼吸支持状态和重症监护病房入住作为预测COVID-19结局的关键特征的重要性。老年死亡患者的共病网络比年轻患者更密集。此外,心脏病和糖尿病的共同发生可能是预测COVID-19死亡率的最重要组合,无论年龄和性别如何。这项工作提出了机器学习和共病网络分析的有价值的结合,以预测COVID-19的结果。关于这一主题的可靠证据对于指导大流行后应对和协助COVID-19护理规划和提供至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning and comorbidity network analysis for hospitalized patients with COVID-19 in a city in Southern Brazil

Machine learning and comorbidity network analysis for hospitalized patients with COVID-19 in a city in Southern Brazil

Machine learning and comorbidity network analysis for hospitalized patients with COVID-19 in a city in Southern Brazil

Machine learning and comorbidity network analysis for hospitalized patients with COVID-19 in a city in Southern Brazil

The large amount of data generated during the COVID-19 pandemic requires advanced tools for the long-term prediction of risk factors associated with COVID-19 mortality with higher accuracy. Machine learning (ML) methods directly address this topic and are essential tools to guide public health interventions. Here, we used ML to investigate the importance of demographic and clinical variables on COVID-19 mortality. We also analyzed how comorbidity networks are structured according to age groups. We conducted a retrospective study of COVID-19 mortality with hospitalized patients from Londrina, Parana, Brazil, registered in the database for severe acute respiratory infections (SIVEP-Gripe), from January 2021 to February 2022. We tested four ML models to predict the COVID-19 outcome: Logistic Regression, Support Vector Machine, Random Forest, and XGBoost. We also constructed a comorbidity network to investigate the impact of co-occurring comorbidities on COVID-19 mortality. Our study comprised 8358 hospitalized patients, of whom 2792 (33.40%) died. The XGBoost model achieved excellent performance (ROC-AUC = 0.90). Both permutation method and SHAP values highlighted the importance of age, ventilatory support status, and intensive care unit admission as key features in predicting COVID-19 outcomes. The comorbidity networks for old deceased patients are denser than those for young patients. In addition, the co-occurrence of heart disease and diabetes may be the most important combination to predict COVID-19 mortality, regardless of age and sex. This work presents a valuable combination of machine learning and comorbidity network analysis to predict COVID-19 outcomes. Reliable evidence on this topic is crucial for guiding the post-pandemic response and assisting in COVID-19 care planning and provision.

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来源期刊
Smart Health
Smart Health Computer Science-Computer Science Applications
CiteScore
6.50
自引率
0.00%
发文量
81
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