High resolution computed tomography guided anatomico-pathological scoring system for stratifying and prognosticating pulmonary manifestations of COVID-19

Dhaval Dalal, Ankush Govindwar, Gaurav Gangwani, Medha Panchal, Vijaykumar Gawali
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Abstract

Computed Tomography (CT) chest plays a critical role in early identification & stratification of disease burden and prognostication of COVID-19 disease. We compared in-house created CT based scoring system based on ground glass opacities (G-Score), consolidation (C- Score), and atelectasis A-score (i.e. GCA score) with contemporary CT severity scores & validated it against world health organization (WHO) COVID-19 disease severity scale. Patients confirmed with real time polymerase chain reaction confirmed COVID-19 infections that underwent CT chest investigations as a part of standard of care were recruited. A compound GCA score based on the lung involvement was developed and validated. Five-hundred patients of which 249 had mild, 220 with moderate, and 31 with severe COVID-19 disease were recruited.Most involved segments were superior (65%), lateral basal (56%) and posterior basal segments (64%) of right lower lobe and anteromedial (62%) and posterior basal segments (57%) of left lower lobe.Patchy non-confluent peripheral ground-glass opacities with apicobasal gradient is the most common finding (47%) in mild cases. Bilateral lower lobes were most commonly involved (72%).In moderate cases ground-glass opacities with consolidation is the predominant finding (82%).In severe cases ground-glass opacity, consolidation as well as linear platelike atelectasis and reticular opacities may represent with apicobasal gradient (80%).HRCT Chest has certainly come up as a versatile aid for our war against COVID -19. Firstly it helps to diagnose the pulmonary involvement of the disease and when complimented with a good scoring system furthermore it stratifies the disease burden.
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高分辨率计算机断层扫描引导的解剖病理评分系统对COVID-19肺部表现进行分层和预测
胸部计算机断层扫描(CT)在疾病负担的早期识别和分层以及COVID-19疾病的预后中起着关键作用。我们将内部创建的基于CT的评分系统(基于磨玻璃混浊(G-Score)、实变(C- Score)和肺不张a评分(即GCA评分)与当代CT严重程度评分进行比较,并将其与世界卫生组织(WHO) COVID-19疾病严重程度量表进行验证。招募了实时聚合酶链反应确诊的COVID-19感染患者,这些患者接受了CT胸部检查,作为标准护理的一部分。开发并验证了基于肺部受累的复合GCA评分。招募500例患者,其中轻度249例,中度220例,重度31例。大多数受累节段为右下叶上节段(65%)、外侧基段(56%)和后基段(64%),左下叶前内侧节段(62%)和后基段(57%)。轻度病例中最常见的表现是斑片状非融合性周围磨玻璃混浊伴尖基底梯度(47%)。双侧下叶最常受累(72%)。中度病例主要表现为磨玻璃混浊伴实变(82%)。严重者磨玻璃样混浊、实变、线状板状肺不张和网状混浊可表现为尖基底梯度(80%)。HRCT胸部无疑是我们对抗COVID -19战争的多功能援助。首先,它有助于诊断疾病的肺部累及,当辅以良好的评分系统时,它进一步分层疾病负担。
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