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既往健康状况与心外膜脂肪组织体积:COVID-19患者心肌损伤的潜在危险因素

Pre-existing Health Conditions and Epicardial Adipose Tissue Volume: Potential Risk Factors for Myocardial Injury in COVID-19 Patients.

作者信息

Wei Zhi-Yao, Qiao Rui, Chen Jian, Huang Ji, Wang Wen-Jun, Yu Hua, Xu Jing, Wu Hui, Wang Chao, Gu Chong-Huai, Li Hong-Jiang, Li Mi, Liu Cong, Yang Jun, Ding Hua-Ming, Lu Min-Jie, Yin Wei-Hua, Wang Yang, Li Kun-Wei, Shi Heng-Feng, Qian Hai-Yan, Yang Wei-Xian, Geng Yong-Jian

机构信息

State Key Laboratory of Cardiovascular Disease, Department of Cardiology, Center for Coronary Heart Disease, National Center for Cardiovascular Diseases of China, Fu Wai Hospital, Peking Union Medical College, Chinese Academy of Medical Sciences, Beijing, China.

Department of Cardiology, Anqing Hospital, Anhui Medical University, Anqing, China.

出版信息

Front Cardiovasc Med. 2021 Jan 11;7:585220. doi: 10.3389/fcvm.2020.585220. eCollection 2020.

Abstract

Myocardial injury is a life-threatening complication of coronavirus disease 2019 (COVID-19). Pre-existing health conditions and early morphological alterations may precipitate cardiac injury and dysfunction after contracting the virus. The current study aimed at assessing potential risk factors for COVID-19 cardiac complications in patients with pre-existing conditions and imaging predictors. The multi-center, retrospective cohort study consecutively enrolled 400 patients with lab-confirmed COVID-19 in six Chinese hospitals remote to the Wuhan epicenter. Patients were diagnosed with or without the complication of myocardial injury by history and cardiac biomarker Troponin I/T (TnI/T) elevation above the 99th percentile upper reference limit. The majority of COVID-19 patients with myocardial injury exhibited pre-existing health conditions, such as hypertension, diabetes, hypercholesterolemia, and coronary disease. They had increased levels of the inflammatory cytokine interleukin-6 and more in-hospital adverse events (admission to an intensive care unit, invasive mechanical ventilation, or death). Chest CT scan on admission demonstrated that COVID-19 patients with myocardial injury had higher epicardial adipose tissue volume ([EATV] 139.1 (83.8-195.9) vs. 92.6 (76.2-134.4) cm; = 0.036). The optimal EATV cut-off value (137.1 cm) served as a useful factor for assessing myocardial injury, which yielded sensitivity and specificity of 55.0% (95%CI, 32.0-76.2%) and 77.4% (95%CI, 71.6-82.3%) in adverse cardiac events, respectively. Multivariate logistic regression analysis showed that EATV over 137.1 cm was a strong independent predictor for myocardial injury in patients with COVID-19 [OR 3.058, (95%CI, 1.032-9.063); = 0.044]. Augmented EATV on admission chest CT scan, together with the pre-existing health conditions (hypertension, diabetes, and hyperlipidemia) and inflammatory cytokine production, is associated with increased myocardial injury and mortality in COVID-19 patients. Assessment of pre-existing conditions and chest CT scan EATV on admission may provide a threshold point potentially useful for predicting cardiovascular complications of COVID-19.

摘要

心肌损伤是2019冠状病毒病(COVID-19)的一种危及生命的并发症。既往存在的健康状况和早期形态学改变可能在感染病毒后促使心脏损伤和功能障碍。本研究旨在评估既往存在疾病患者发生COVID-19心脏并发症的潜在危险因素及影像学预测指标。这项多中心回顾性队列研究连续纳入了6家远离武汉疫情中心的中国医院的400例实验室确诊的COVID-19患者。根据病史以及心肌生物标志物肌钙蛋白I/T(TnI/T)升高超过第99百分位的参考上限,诊断患者是否患有心肌损伤并发症。大多数发生心肌损伤的COVID-19患者存在既往健康状况,如高血压、糖尿病、高胆固醇血症和冠心病。他们的炎症细胞因子白细胞介素-6水平升高,且院内不良事件(入住重症监护病房、有创机械通气或死亡)更多。入院时的胸部CT扫描显示,发生心肌损伤的COVID-19患者的心外膜脂肪组织体积更大([EATV] 139.1(83.8 - 195.9) vs. 92.6(76.2 - 134.4)cm;P = 0.036)。最佳EATV临界值(137.1 cm)是评估心肌损伤的一个有用因素,在不良心脏事件中其敏感性和特异性分别为55.0%(95%CI,32.0 - 76.2%)和77.4%(95%CI,71.6 - 82.3%)。多因素logistic回归分析显示,EATV超过137.1 cm是COVID-19患者发生心肌损伤的一个强有力的独立预测指标[比值比3.058,(95%CI,1.032 - 9.063);P = 0.044]。入院胸部CT扫描显示的EATV增大,连同既往存在的健康状况(高血压、糖尿病和高脂血症)以及炎症细胞因子产生,与COVID-19患者心肌损伤增加和死亡率升高相关。评估既往存在的健康状况和入院时胸部CT扫描的EATV可能为预测COVID-19的心血管并发症提供一个潜在有用的阈值点。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9c80/7829196/29c923ede6bd/fcvm-07-585220-g0001.jpg

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