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Early prediction of disease progression in COVID-19 pneumonia patients with chest CT and clinical characteristics

机译:Covid-19肺炎胸部CT患者疾病进展的早期预测及临床特征

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The outbreak of coronavirus disease 2019 (COVID-19) has rapidly spread to become a worldwide emergency. Early identification of patients at risk of progression may facilitate more individually aligned treatment plans and optimized utilization of medical resource. Here we conducted a multicenter retrospective study involving patients with moderate COVID-19 pneumonia to investigate the utility of chest computed tomography (CT) and clinical characteristics to risk-stratify the patients. Our results show that CT severity score is associated with inflammatory levels and that older age, higher neutrophil-to-lymphocyte ratio (NLR), and CT severity score on admission are independent risk factors for short-term progression. The nomogram based on these risk factors shows good calibration and discrimination in the derivation and validation cohorts. These findings have implications for predicting the progression risk of COVID-19 pneumonia patients at the time of admission. CT examination may help risk-stratification and guide the timing of admission. Early identification of COVID-19 patients at risk of progression may facilitate more individually aligned treatment plans. Here the authors develop an online nomogram incorporating CT severity score and clinical characteristics for early predicting the disease progression risk among COVID-19 pneumonia patients.
机译:2019年冠状病毒疾病爆发(Covid-19)迅速蔓延到成为全球的紧急情况。患者的早期鉴定患者的进展风险可能会促进更为单独对齐的治疗计划和医疗资源的优化利用。在这里,我们进行了一种涉及中度Covid-19肺炎患者的多中心回顾性研究,以研究胸部计算断层扫描(CT)的效用和临床特征,以风险 - 分层患者。我们的研究结果表明,CT严重性评分与炎症水平有关,年龄较大的年龄较高,中性粒细胞对淋巴细胞比(NLR)和CT严重程度评分是短期进展的独立风险因素。基于这些风险因素的墨迹图显示出衍生和验证队列中的良好校准和歧视。这些发现对预测在入院时预测Covid-19肺炎患者的进展风险。 CT检查可能有助于风险分层并指导入院的时间。早期鉴定进展风险的Covid-19患者可能有助于更为单独对齐的治疗计划。在这里,作者开发了一种在线载体,其掺入CT严重性评分和早期预测Covid-19肺炎患者中疾病进展风险的临床特征。

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