Skopljanac Ivan, Pavicic Ivelja Mirela, Budimir Mrsic Danijela, Barcot Ognjen, Jelicic Irena, Domjanovic Josipa, Dolic Kresimir
Department of Pulmology, University Hospital of Split, 21000 Split, Croatia.
School of Medicine, University of Split, 21000 Split, Croatia.
Life (Basel). 2022 May 15;12(5):735. doi: 10.3390/life12050735.
COVID-19 prediction models mostly consist of combined clinical features, laboratory parameters, and, less often, chest X-ray (CXR) findings. Our main goal was to propose a prediction model involving imaging methods, specifically ultrasound. This was a single-center, retrospective cohort observational study of patients admitted to the University Hospital Split from November 2020 to May 2021. Imaging protocols were based on the assessment of 14 lung zones for both lung ultrasound (LUS) and computed tomography (CT), correlated to a CXR score assessing 6 lung zones. Prediction models for the necessity of mechanical ventilation (MV) or a lethal outcome were developed by combining imaging, biometric, and biochemical parameters. A total of 255 patients with COVID-19 pneumonia were included in the study. Four independent predictors were added to the regression model for the necessity of MV: LUS score, day of the illness, leukocyte count, and cardiovascular disease (χ2 = 29.16, p < 0.001). The model accurately classified 89.9% of cases. For the lethal outcome, only two independent predictors contributed to the regression model: LUS score and patient’s age (χ2 = 48.56, p < 0.001, 93.2% correctly classified). The predictive model identified four key parameters at patient admission which could predict an adverse outcome.
新型冠状病毒肺炎(COVID-19)预测模型大多由临床特征、实验室参数组合而成,较少涉及胸部X线(CXR)检查结果。我们的主要目标是提出一种涉及成像方法,特别是超声的预测模型。这是一项对2020年11月至2021年5月期间入住斯普利特大学医院的患者进行的单中心回顾性队列观察研究。成像方案基于对14个肺区进行肺超声(LUS)和计算机断层扫描(CT)评估,并与评估6个肺区的CXR评分相关。通过结合成像、生物特征和生化参数,建立了机械通气(MV)必要性或致死结局的预测模型。共有255例COVID-19肺炎患者纳入研究。MV必要性回归模型中加入了4个独立预测因素:LUS评分、病程、白细胞计数和心血管疾病(χ2 = 29.16,p < 0.001)。该模型对89.9%的病例进行了准确分类。对于致死结局,回归模型中只有2个独立预测因素:LUS评分和患者年龄(χ2 = 48.56,p < 0.001,正确分类率为93.2%)。该预测模型确定了患者入院时的4个关键参数,可预测不良结局。