Easy-to-treat and difficult-to-treat radiological phenotypes in coronavirus disease 2019 pneumonia: A single-center experience

S. Patil, U. Dhumal, D. Patil, Abhijit Acharya
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Abstract

INTRODUCTION: Radiological phenotypes are observable radiological patterns or characteristics. Robust data are available regarding the role of high-resolution computed tomography (HRCT) in coronavirus disease 2019 (COVID-19) pneumonia. We evaluated the role of radiological phenotyping in assessing severity and predicting the response to therapy, as well as its association with outcomes in COVID-19 pneumonia. METHODS: This prospective observational study included 3000 COVID-19 reverse transcription polymerase chain reaction-confirmed cases with lung involvement who underwent thoracic HRCT on hospital admission and were categorized as mild, moderate, or severe according to lung segment bilateral involvement (mild 1–7, moderate 8–15, and severe 16–25). Follow-up thoracic CT imaging was also conducted 6 months after hospital discharge. Response to treatment phenotypes was categorized as “easy to treat” or “difficult to treat” based on the response and interventions required in indoor settings, including ventilatory support. Age, gender, comorbidities, laboratory parameters, the use of bilevel-positive airway pressure/noninvasive ventilation, and outcomes (with or without lung fibrosis) were key observations. The Chi-square test was used for statistical analysis. RESULTS: Easy-to-treat and difficult-to-treat radiological response phenotypes were observed in 20% and 80% of the cases, respectively. There were significant associations between the radiological phenotypes and the duration of illness at hospital admission. The duration of illness (<7 days, 7–14 days, and >14 days) could predict the radiological phenotype (P < 0.00001). Laboratory parameters at hospital admission (C-reactive protein, interleukin-6, ferritin, lactate dehydrogenase, and D-dimer) were significantly associated with the radiological phenotypes (P < 0.00001), as were interventions required in indoor units (P < 0.00001). The HRCT severity score at admission was significantly correlated with the radiological phenotype (P < 0.00001). Post-COVID lung fibrosis or sequelae were also significantly associated with the radiological phenotype (P < 0.00001). CONCLUSION: Easy-to-treat and difficult-to-treat phenotypic differentiation had a crucial role during the initial assessment of COVID-19 cases on hospitalization and was used for planning targeted intervention treatments in intensive care units. In addition, phenotypic differentiation had an important role in analyzing the radiological sequelae and predicting final treatment outcomes.
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2019冠状病毒病肺炎易治疗和难治疗的放射学表型:单中心体验
放射学表型是可观察到的放射学模式或特征。关于高分辨率计算机断层扫描(HRCT)在2019冠状病毒病(COVID-19)肺炎中的作用,已有可靠数据。我们评估了放射学表型在评估严重程度和预测治疗反应中的作用,以及它与COVID-19肺炎结局的关联。方法:这项前瞻性观察性研究纳入了3000例经COVID-19逆转录聚合酶链反应确诊的肺部受累病例,这些患者在入院时接受了胸部HRCT检查,并根据肺段双侧受累程度(轻度1-7、中度8-15、重度16-25)分为轻度、中度或重度。出院后6个月随访胸部CT成像。根据反应和室内环境(包括通气支持)所需的干预措施,对治疗表型的反应被分类为“容易治疗”或“难以治疗”。年龄、性别、合并症、实验室参数、双水平气道正压通气/无创通气的使用和结果(有无肺纤维化)是主要观察因素。采用卡方检验进行统计分析。结果:易治疗和难治疗的放射反应表型分别占20%和80%。放射学表型与入院时疾病持续时间之间存在显著关联。病程(14天)可预测放射学表型(P < 0.00001)。入院时的实验室参数(c反应蛋白、白细胞介素-6、铁蛋白、乳酸脱氢酶和d -二聚体)与放射学表型显著相关(P < 0.00001),室内病房所需的干预措施也与放射学表型显著相关(P < 0.00001)。入院时HRCT严重程度评分与放射学表型显著相关(P < 0.00001)。肺炎后肺纤维化或后遗症也与放射学表型显著相关(P < 0.00001)。结论:易治难治的表型分化在COVID-19患者住院初期评估中发挥着至关重要的作用,可用于规划重症监护病房有针对性的干预治疗。此外,表型分化在分析放射学后遗症和预测最终治疗结果方面具有重要作用。
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