利用常规血液检测和机器学习确定 COVID-19 疾病严重程度的预后标记。

IF 1.1 4区 综合性期刊 Q3 MULTIDISCIPLINARY SCIENCES Anais da Academia Brasileira de Ciencias Pub Date : 2024-06-24 eCollection Date: 2024-01-01 DOI:10.1590/0001-376520242023089
Tayná E Lima, Matheus V F Ferraz, Carlos A A Brito, Pamella B Ximenes, Carolline A Mariz, Cynthia Braga, Gabriel L Wallau, Isabelle F T Viana, Roberto D Lins
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引用次数: 0

摘要

确定与 COVID-19 疾病严重程度相关的风险因素的需求仍然十分迫切。患者的护理和资源分配可能会有所不同,其定义基于当前的疾病严重程度分类。这种分类基于对临床参数和常规血液化验的分析,而这些参数和化验在全球范围内并不统一。一些实验室检查结果的改变与 COVID-19 的严重程度有关,但这些数据相互矛盾,部分原因是不同研究采用的方法不同。本研究旨在利用机器学习(ML)构建并验证疾病严重程度预测模型。研究纳入了巴西一家医院收治的 72 名通过 RT-PCR 和/或 ELISA 诊断为 COVID-19 的患者,这些患者的疾病严重程度各不相同。他们的电子病历和每日血液化验结果被用来开发一个预测疾病严重程度的多重回归模型。利用上述数据集,五个实验室生物标记物的组合被确定为 COVID-19 严重疾病的准确预测因子,其 ROC-AUC 为 0.80 ± 0.13。这些生物标志物包括凝血酶原活动度、铁蛋白、血清铁、ATTP 和单核细胞。应用所设计的 ML 模型可能有助于临床决策和护理的合理化。
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Determination of prognostic markers for COVID-19 disease severity using routine blood tests and machine learning.

The need for the identification of risk factors associated to COVID-19 disease severity remains urgent. Patients' care and resource allocation can be potentially different and are defined based on the current classification of disease severity. This classification is based on the analysis of clinical parameters and routine blood tests, which are not standardized across the globe. Some laboratory test alterations have been associated to COVID-19 severity, although these data are conflicting partly due to the different methodologies used across different studies. This study aimed to construct and validate a disease severity prediction model using machine learning (ML). Seventy-two patients admitted to a Brazilian hospital and diagnosed with COVID-19 through RT-PCR and/or ELISA, and with varying degrees of disease severity, were included in the study. Their electronic medical records and the results from daily blood tests were used to develop a ML model to predict disease severity. Using the above data set, a combination of five laboratorial biomarkers was identified as accurate predictors of COVID-19 severe disease with a ROC-AUC of 0.80 ​±​ 0.13. Those biomarkers included prothrombin activity, ferritin, serum iron, ATTP and monocytes. The application of the devised ML model may help rationalize clinical decision and care.

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来源期刊
Anais da Academia Brasileira de Ciencias
Anais da Academia Brasileira de Ciencias 综合性期刊-综合性期刊
CiteScore
2.20
自引率
0.00%
发文量
347
审稿时长
1 months
期刊介绍: The Brazilian Academy of Sciences (BAS) publishes its journal, Annals of the Brazilian Academy of Sciences (AABC, in its Brazilianportuguese acronym ), every 3 months, being the oldest journal in Brazil with conkinuous distribukion, daking back to 1929. This scienkihic journal aims to publish the advances in scienkihic research from both Brazilian and foreigner scienkists, who work in the main research centers in the whole world, always looking for excellence. Essenkially a mulkidisciplinary journal, the AABC cover, with both reviews and original researches, the diverse areas represented in the Academy, such as Biology, Physics, Biomedical Sciences, Chemistry, Agrarian Sciences, Engineering, Mathemakics, Social, Health and Earth Sciences.
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