Machine learning algorithm approach to complete blood count can be used as early predictor of COVID-19 outcome.

IF 3.6 3区 医学 Q3 CELL BIOLOGY
Cecília Horta Ramalho-Pinto, Lucas Haniel de Araújo Ventura, Giovanna Caliman Camatta, Gabriela da Silveira-Nunes, Matheus de Souza Gomes, Hugo Itaru Sato, Murilo Soares Costa, Henrique Cerqueira Guimarães, Rafael Calvão Barbuto, Olindo Assis Martins Filho, Laurence Rodrigues do Amaral, Pedro Luiz Lima Bertarini, Santuza Maria Ribeiro Teixeira, Unaí Tupinambás, Andrea Teixeira Carvalho, Ana Maria Caetano Faria
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Abstract

Although the SARS-CoV-2 infection has established risk groups, identifying biomarkers for disease outcomes is still crucial to stratify patient risk and enhance clinical management. Optimal efficacy of COVID-19 antiviral medications relies on early administration within the initial five days of symptoms, assisting high-risk patients in avoiding hospitalization and improving survival chances. The complete blood count can be an efficient and affordable option to find biomarkers that predict the COVID-19 prognosis due to infection-induced alterations in various blood parameters. This study aimed to associate hematological parameters with different COVID-19 clinical forms and utilize them as disease outcome predictors. We performed a complete blood count in blood samples from 297 individuals with COVID-19 from Belo Horizonte, Brazil. Statistical analysis, as well as ROC Curves and machine learning Decision Tree algorithms were used to identify correlations, and their accuracy, between blood parameters and disease severity. In the initial four days of infection, traditional hematological COVID-19 alterations, such as lymphopenia, were not yet apparent. However, the monocyte percentage and granulocyte-to-lymphocyte ratio proved to be reliable predictors for hospitalization, even in cases where patients exhibited mild symptoms that later progressed to hospitalization. Thus, our findings demonstrate that COVID-19 patients with monocyte percentages lower than 7.7% and a granulocyte-to-lymphocyte ratio higher than 8.75 are assigned to the hospitalized group with a precision of 86%. This suggests that these variables can serve as important biomarkers in predicting disease outcomes and could be used to differentiate patients at hospital admission for managing therapeutic interventions, including early antiviral administration. Moreover, they are simple parameters that can be useful in minimally equipped health care units.

全血细胞计数的机器学习算法可作为 COVID-19 结果的早期预测指标。
尽管 SARS-CoV-2 感染已确定了风险组别,但确定疾病结局的生物标志物对患者风险分层和加强临床管理仍然至关重要。COVID-19 抗病毒药物的最佳疗效取决于在出现症状的最初五天内尽早用药,从而帮助高危患者避免住院治疗,提高生存机会。全血细胞计数是一种高效、经济的选择,可用于寻找预测 COVID-19 预后的生物标志物,因为感染会引起各种血液参数的改变。本研究旨在将血液学参数与不同的 COVID-19 临床表现联系起来,并将其作为疾病预后的预测指标。我们对巴西贝洛奥里藏特 297 名 COVID-19 患者的血液样本进行了全血细胞计数。我们使用统计分析、ROC 曲线和机器学习决策树算法来确定血液参数与疾病严重程度之间的相关性及其准确性。在感染的最初四天,传统的血液学 COVID-19 改变(如淋巴细胞减少症)尚不明显。但事实证明,单核细胞百分比和粒细胞与淋巴细胞比值是预测住院的可靠指标,即使患者表现出轻微症状,但后来发展为住院治疗。因此,我们的研究结果表明,单核细胞百分比低于 7.7%、粒细胞与淋巴细胞比值高于 8.75 的 COVID-19 患者被分配到住院组的精确度高达 86%。这表明,这些变量可以作为预测疾病结果的重要生物标志物,并可用于在患者入院时对其进行区分,以便采取治疗干预措施,包括早期服用抗病毒药物。此外,这些参数都很简单,在设备简陋的医疗单位也很有用。
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来源期刊
Journal of Leukocyte Biology
Journal of Leukocyte Biology 医学-免疫学
CiteScore
11.50
自引率
0.00%
发文量
358
审稿时长
2 months
期刊介绍: JLB is a peer-reviewed, academic journal published by the Society for Leukocyte Biology for its members and the community of immunobiologists. The journal publishes papers devoted to the exploration of the cellular and molecular biology of granulocytes, mononuclear phagocytes, lymphocytes, NK cells, and other cells involved in host physiology and defense/resistance against disease. Since all cells in the body can directly or indirectly contribute to the maintenance of the integrity of the organism and restoration of homeostasis through repair, JLB also considers articles involving epithelial, endothelial, fibroblastic, neural, and other somatic cell types participating in host defense. Studies covering pathophysiology, cell development, differentiation and trafficking; fundamental, translational and clinical immunology, inflammation, extracellular mediators and effector molecules; receptors, signal transduction and genes are considered relevant. Research articles and reviews that provide a novel understanding in any of these fields are given priority as well as technical advances related to leukocyte research methods.
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