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COVID-19感染胸部CT筛查后偶发瘤的出现:一项多中心横断面研究。

Emergence of Incidentalomas Following Chest CT Screening for COVID-19 Infection: A Multicenter Cross-Sectional Study.

作者信息

Abunamous Nasser A, Takelah Akram, Abdilsalhen Mohamed, Alameeri Amel, Al Nokhatha Shamma

机构信息

Internal Medicine, Tawam Hospital, Al Ain, ARE.

Pulmonary, Tawam Hospital, Al Ain, ARE.

出版信息

Cureus. 2024 Oct 19;16(10):e71861. doi: 10.7759/cureus.71861. eCollection 2024 Oct.

Abstract

Background The COVID-19 pandemic has raised several questions about its potential long-term impacts. During the pandemic, computed tomography (CT) chest scans were frequently employed for the diagnosis of COVID-19 pneumonia. The increased utilization of CT scans as a diagnostic tool has facilitated the detection of subtle abnormalities that may not have been easily discernible previously. Aim The primary objective of the present study was to investigate the prevalence of non-COVID-19 lung incidental pathologies in chest CT scans performed to screen for COVID-19, with a focus on autoimmune conditions related to interstitial lung disease (ILD) following COVID-19 infection, as determined by positive chest CT results. Methods This retrospective observational study included all adult patients (aged ≥ 16 years) in Al Ain, a city in the United Arab Emirates, between June 2020 and June 2021. Patients who underwent high-resolution computed tomography (HRCT) or chest CT during this timeframe and exhibited lung pathologies beyond the typical changes associated with COVID-19 infection followed by at least one pulmonary consultation were eligible for inclusion while all typical COVID-19-related changes reported in lung pathologies were excluded from consideration in this study. The hospital's electronic medical system was used to obtain patient information and subsequent management approaches. Results Among a total of 3,000 CT scan reports, 318 individuals fit our inclusion criteria. Their mean age was 63 years, and 52% were female (n = 165). Of the patients, 12% (n = 38) were smokers and 17% (n = 54) were ex-smokers. A total of 231 (72.6%) of the patients exhibited incidental lung nodules while 87 (27.4%) displayed lung pathologies other than lung nodules, with 75 (23.6%) being diagnosed with pleural effusion, 63 (19.8%) with bronchiectasis, and 19 (5.9%) with emphysema. Furthermore, three patients (0.9%) had cavitary lung lesions and one was diagnosed with tuberculosis while two others were undergoing surveillance follow-up. Only one patient (0.3%) was identified with a lung mass, which was attributed to primary lung adenocarcinoma. The remaining eight patients (2.5%) had ILD findings (two had non-specific interstitial pneumonia, five had usual interstitial pneumonia, and one had hypersensitivity pneumonitis). All of the patients with ILD findings underwent investigations for autoimmune-related ILD; however, no cases of autoimmune-related conditions were identified during the subsequent follow-up. Conclusions This cross-sectional chest CT-based study provides insights into incidental lung abnormalities. A small percentage (10.6%) of the participants exhibited lung incidentalomas.

摘要

背景

新冠疫情引发了关于其潜在长期影响的诸多问题。在疫情期间,胸部计算机断层扫描(CT)常用于新冠病毒肺炎的诊断。CT扫描作为诊断工具的使用增加,有助于发现以前可能不易察觉的细微异常。

目的

本研究的主要目的是调查在为筛查新冠病毒而进行的胸部CT扫描中,非新冠病毒肺部偶然病变的患病率,重点关注新冠病毒感染后与间质性肺疾病(ILD)相关的自身免疫性疾病,由胸部CT阳性结果确定。

方法

这项回顾性观察研究纳入了2020年6月至2021年6月期间阿拉伯联合酋长国艾因市所有成年患者(年龄≥16岁)。在此期间接受高分辨率计算机断层扫描(HRCT)或胸部CT且肺部病变超出与新冠病毒感染相关的典型变化并至少接受过一次肺部会诊的患者符合纳入标准,而肺部病变中所有典型的新冠病毒相关变化均被排除在本研究考虑之外。利用医院的电子医疗系统获取患者信息及后续管理方法。

结果

在总共3000份CT扫描报告中,318人符合我们的纳入标准。他们的平均年龄为63岁,52%为女性(n = 165)。患者中,12%(n = 38)为吸烟者,17%(n = 54)为既往吸烟者。共有231名(72.6%)患者出现偶然肺结节,87名(27.4%)患者表现出除肺结节外的肺部病变,其中75名(23.6%)被诊断为胸腔积液,63名(19.8%)为支气管扩张,19名(5.9%)为肺气肿。此外,3名患者(0.9%)有肺空洞病变,1名被诊断为肺结核,另外2名正在接受监测随访。仅1名患者(0.3%)被发现有肺肿块,归因于原发性肺腺癌。其余8名患者(2.5%)有ILD表现(2名有非特异性间质性肺炎,5名有寻常型间质性肺炎,1名有过敏性肺炎)。所有有ILD表现的患者均接受了自身免疫性相关ILD的检查;然而,在随后的随访中未发现自身免疫性相关疾病病例。

结论

这项基于胸部CT的横断面研究提供了关于偶然肺部异常的见解。一小部分(10.6%)参与者出现了肺部偶然瘤。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4a5f/11572597/159a1e7b3823/cureus-0016-00000071861-i01.jpg

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