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Novel coronavirus disease 2019: predicting prognosis with a computed tomography–based disease severity score and clinical laboratory data

机译:2019年新型冠状病毒疾病:预测基于计算机的断层摄影疾病严重程度和临床实验室数据的预后

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Introduction: Currently, there are known contributing factors but no comprehensive methods for predicting the?mortality risk or intensive care unit (ICU) admission in patients with novel coronavirus disease 2019 (COVID-19). Objectives: The?aim of this study was to explore risk factors for mortality and ICU admission in patients with COVID-19, using computed tomography (CT) combined with clinical laboratory data. Patients and methods: Patients with polymerase chain reaction–confirmed COVID-19 (n = 63) from university hospitals in Tehran, Iran, were included. All patients underwent CT examination. Subsequently, a?total CT score and the?number of involved lung lobes were calculated and compared against collected laboratory and clinical characteristics. Univariable and multivariable proportional hazard analyses were used to determine the?association among CT, laboratory and clinical data, ICU admission, and in-hospital death. Results: By univariable analysis, in-hospital mortality was higher in patients with lower oxygen saturation on admission (below 88%), higher CT scores, and a?higher number of lung lobes (more than 4) involved with a?diffuse parenchymal pattern. By multivariable analysis, in-hospital mortality was higher in those with oxygen saturation below 88% on admission and a?higher number of lung lobes involved with a?diffuse parenchymal pattern. The?risk of ICU admission was higher in patients with comorbidities (hypertension and ischemic heart disease), arterial oxygen saturation below 88%, and pericardial effusion. Conclusions: We can identify factors affecting in-hospital death and ICU admission in COVID-19. This can help clinicians to determine which patients are likely to require ICU admission and to inform strategic healthcare planning in critical conditions such as the?COVID-19 pandemic.
机译:介绍:目前,已知有贡献因素,但没有综合方法,用于预测新型冠状病毒疾病患者(Covid-19)的患者的死亡风险或重症监护单位(ICU)入院。目的:本研究的目的是探讨使用计算机断层扫描(CT)与临床实验室数据相结合的Covid-19患者死亡率和ICU入院的危险因素。包括患者及方法:包括伊朗德黑兰大学医院的聚合酶链式反应患者的Covid-19(n = 63)。所有患者都接受了CT检查。随后,A-Total CT得分,计算涉及的肺裂隙的数量,并与收集的实验室和临床特征进行比较。不可变量和多变量的比例危害分析用于确定CT,实验室和临床数据,ICU入学和医院死亡之间的关联。结果:通过单一的分析,呼吸氧饱和度较低的患者中,患患者的入院死亡率高(低于88%),较高的CT分数,伴随着α弥漫性实质图案的肺裂隙数量较多的肺裂隙(超过4) 。通过多变量分析,在入院的氧饱和度低于88%的氧饱和度下的疗养中的死亡率较高,伴有α弥漫性实质图案的肺裂隙率较高。患者(高血压和缺血性心脏病),动脉氧饱和度低于88%,患者的患者,ICU入院的风险较高。结论:我们可以识别影响Covid-19中医院死亡和ICU入境的因素。这可以帮助临床医生确定哪些患者可能需要ICU入学,并告知战略医疗保健规划,如危重条件(如何种危重条件),如?Covid-19大流行。

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