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与长新冠相关的生物学因素及 SARS-CoV-2 刺突蛋白变异株的比较分析:泰国的一项回顾性研究。

Biological factors associated with long COVID and comparative analysis of SARS-CoV-2 spike protein variants: a retrospective study in Thailand.

机构信息

Graduate Program in Medical Technology, Faculty of Allied Health Sciences, Thammasat University, Rangsit Campus, Pathum Thani Province, Thailand.

Department of Immunology, Maharat Nakhon Ratchasima Hospital, Mueang, Nakhon Ratchasima, Thailand.

出版信息

PeerJ. 2024 Aug 19;12:e17898. doi: 10.7717/peerj.17898. eCollection 2024.

Abstract

BACKGROUND

Post-acute COVID-19 syndrome (long COVID) refers to the persistence of COVID-19 symptoms or exceptional symptoms following recovery. Even without conferring fatality, it represents a significant global public health burden. Despite many reports on long COVID, the prevalence and data on associated biological factors remain unclear and limited. This research aimed to determine the prevalence of long COVID during the two distinct epidemic periods in Thailand, due to the Delta and Omicron variants of SARS-CoV-2, and to investigate the biological factors associated with long COVID. In addition, the spike protein amino acid sequences of the Delta and Omicron variants were compared to determine the frequency of mutations and their potential biological implications.

METHODS

A retrospective cross-sectional study was established to recruit confirmed COVID-19 participants at Maharat Nakhon Ratchasima Hospital who had recovered for at least three months and were infected between June 2021 and August 2022. The demographic data and long COVID experience were collected via telephone interview. The biological factors were analyzed through binary logistic regression. The datasets of the SARS-CoV-2 spike protein amino acid sequence of the Delta and Omicron variants in Thailand were retrieved from GIDSAID to determine mutation frequencies and to identify possible roles of the mutations based on published data.

RESULTS

Data was collected from a total of 247 participants comprising 106 and 141 participants of the Delta and Omicron epidemic periods, respectively. Apart from the COVID-19 severity and health status, the baseline participant data of the two time periods were remarkably similar. The prevalence of long COVID observed in the Omicron period was higher than in the Delta period (74.5% . 66.0%). The biological factors associated with long COVID were epidemic variant, age, treatment with symptomatic medicines, and vaccination status. When the spike protein sequence data of the two variants were compared, it was observed that the Omicron variant exhibited a greater quantity of amino acid changes in its receptor-binding domain (RBD) and receptor-binding motif (RBM). The critical changes of the Omicron variant within these regions had a significant function in enhancing virus transmissibility and host immune response resistance.

CONCLUSION

This study revealed informative data associated with long COVID in Thailand. More attention should be given to long COVID caused by unique virus variants and other biological factors to prepare a healthcare management strategy for COVID-19 patients after recovery.

摘要

背景

新冠病毒感染后综合征(长新冠)是指在新冠病毒感染康复后持续存在的新冠病毒症状或异常症状。即使没有导致死亡,它也是一个重大的全球公共卫生负担。尽管有许多关于长新冠的报告,但长新冠的患病率和相关生物学因素的数据仍不清楚且有限。本研究旨在确定在泰国由于 SARS-CoV-2 的德尔塔和奥密克戎变体而出现的两个不同流行期的长新冠患病率,并调查与长新冠相关的生物学因素。此外,还比较了德尔塔和奥密克戎变体的刺突蛋白氨基酸序列,以确定突变的频率及其潜在的生物学意义。

方法

本研究建立了一项回顾性横断面研究,以招募玛哈叻那空叻差是玛医院的确诊新冠病毒感染康复至少三个月的参与者,感染时间在 2021 年 6 月至 2022 年 8 月之间。通过电话访谈收集人口统计学数据和长新冠体验。通过二项逻辑回归分析生物学因素。从 GIDSAID 中检索泰国 SARS-CoV-2 刺突蛋白氨基酸序列的德尔塔和奥密克戎变体数据集,以确定突变频率,并根据已发表的数据确定突变的可能作用。

结果

共收集了 247 名参与者的数据,其中德尔塔流行期和奥密克戎流行期各有 106 名和 141 名参与者。除了新冠病毒严重程度和健康状况外,两个时期的基线参与者数据非常相似。奥密克戎流行期观察到的长新冠患病率高于德尔塔流行期(74.5%比 66.0%)。与长新冠相关的生物学因素包括流行变异株、年龄、对症药物治疗和疫苗接种状况。当比较两种变体的刺突蛋白序列数据时,观察到奥密克戎变体在其受体结合域(RBD)和受体结合基序(RBM)中表现出更多的氨基酸变化。这些区域内奥密克戎变体的关键变化在增强病毒传播力和宿主免疫反应抗性方面具有重要作用。

结论

本研究揭示了与泰国长新冠相关的有价值数据。应更加关注由独特病毒变体和其他生物学因素引起的长新冠,为新冠病毒康复患者的医疗保健管理策略做好准备。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e5f3/11340629/226e1af76b01/peerj-12-17898-g001.jpg

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