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基于个体特征纳入免疫反应相关指标的 COVID-19 患者结局预测列线图。

A nomogram prediction of outcome in patients with COVID-19 based on individual characteristics incorporating immune response-related indicators.

机构信息

Center for Big Data Research in Health and Medicine, The First Affiliated Hospital of Shandong First Medical University, Jinan, China.

Shandong Qianfoshan Hospital, Cheeloo College of Medicine, Shandong University, Jinan, China.

出版信息

J Med Virol. 2022 Jan;94(1):131-140. doi: 10.1002/jmv.27275. Epub 2021 Aug 27.

Abstract

INTRODUCTION

The coronavirus disease 2019 (COVID-19) has quickly become a global threat to public health, and it is difficult to predict severe patients and their prognosis. Here, we intended developing effective models for the late identification of patients at disease progression and outcome.

METHODS

A total of 197 patients were included with a 20-day median follow-up time. We first developed a nomogram for disease severity discrimination, then created a prognostic nomogram for severe patients.

RESULTS

In total, 40.6% of patients were severe and 59.4% were non-severe. The multivariate logistic analysis indicated that IgG, neutrophil-to-lymphocyte ratio (NLR), lactate dehydrogenase, platelet, albumin, and blood urea nitrogen were significant factors associated with the severity of COVID-19. Using immune response phenotyping based on NLR and IgG level, the logistic model showed patients with the NLR IgG phenotype are most likely to have severe disease, especially compared to those with the NLR IgG phenotype. The C-indices of the two discriminative nomograms were 0.86 and 0.87, respectively, which indicated sufficient discriminative power. As for predicting clinical outcomes for severe patients, IgG, NLR, age, lactate dehydrogenase, platelet, monocytes, and procalcitonin were significant predictors. The prognosis of severe patients with the NLR IgG phenotype was significantly worse than the NLR IgG group. The two prognostic nomograms also showed good performance in estimating the risk of progression.

CONCLUSIONS

The present nomogram models are useful to identify COVID-19 patients with disease progression based on individual characteristics and immune response-related indicators. Patients at high risk for severe illness and poor outcomes from COVID-19 should be managed with intensive supportive care and appropriate therapeutic strategies.

摘要

简介

2019 年冠状病毒病(COVID-19)迅速成为全球公共卫生的威胁,难以预测重症患者及其预后。在这里,我们旨在开发有效的模型,以便在疾病进展和结局时对患者进行晚期识别。

方法

共纳入 197 例患者,中位随访时间为 20 天。我们首先开发了一种疾病严重程度鉴别模型,然后为重症患者创建了预后鉴别模型。

结果

共有 40.6%的患者为重症,59.4%为非重症。多变量逻辑分析表明,IgG、中性粒细胞与淋巴细胞比值(NLR)、乳酸脱氢酶、血小板、白蛋白和血尿素氮是与 COVID-19 严重程度相关的显著因素。使用基于 NLR 和 IgG 水平的免疫反应表型,逻辑模型显示 NLR IgG 表型的患者最有可能患有重症疾病,特别是与 NLR IgG 表型相比。两个鉴别性预测模型的 C 指数分别为 0.86 和 0.87,表明具有足够的鉴别能力。对于预测重症患者的临床结局,IgG、NLR、年龄、乳酸脱氢酶、血小板、单核细胞和降钙素原是显著的预测因素。NLR IgG 表型的重症患者预后明显差于 NLR IgG 组。两个预后预测模型在估计进展风险方面也表现出良好的性能。

结论

本研究中的预测模型基于个体特征和免疫反应相关指标,有助于识别 COVID-19 患者的疾病进展。对于 COVID-19 重症患者和预后不良的患者,应进行强化支持性护理和适当的治疗策略。

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