An analysis of radiomics features in lung lesions in COVID-19

A. Gann, E. Abadi, Jocelyn Hoye, T. Sauer, W. Paul Segars, H. Chalian, E. Samei
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Abstract

Radiomic features extracted from CT imaging can be used to quantitively assess COVID-19. The objective of this work was to extract and analyze radiomics features in RT-PRC confirmed COVID-19 cases to identify relevant characteristics for COVID-19 diagnosis, prognosis, and treatment. We measured 29 morphology and second-order statistical-based radiomics features from 310 lung lesions extracted from 48 chest CT cases. Features were evaluated according to their coefficient of variation (CV). We calculated the CV for each feature under two statistical conditions: one with all lesions weighted equally and one with all cases weighted equally. In analyzing the patient data, there were 6.46 lesions-per-case and for 81.25% of cases, the lesions presented with bilateral lung involvement. For all radiomic features examined except ‘energy’, the CV was higher in the lesion distribution than the case distribution. The CV for morphological features were larger than second-order in both distributions, 181% and 85% versus 50% and 42%, respectively. The most variable features were ‘surface area’, ‘ellipsoid volume’, ‘ellipsoid surface area’, ‘volume’, and ‘approximate volume’, which deviated from the mean 173-255% in the lesion distribution and 119-176% in the case distribution. The features with the lowest CV were ‘homogeneity’, ‘discrete compactness’, ‘texture entropy’, ‘sum average’, and ‘elongation’, which deviated less than 31% by case and less than 25% by lesion. Future work will investigate integrating this data with similar studies and other diagnostic and prognostic criterion enhancing the role of CT in detecting and managing COVID-19.
新冠肺炎肺部病变放射组学特征分析
从CT影像中提取的放射学特征可用于定量评估COVID-19。本研究的目的是提取和分析RT-PRC确诊COVID-19病例的放射组学特征,以确定COVID-19诊断、预后和治疗的相关特征。我们测量了48例胸部CT病例中提取的310个肺部病变的29个形态学和基于二阶统计的放射组学特征。根据变异系数(CV)对特征进行评价。我们在两种统计条件下计算每个特征的CV:一种是所有病变加权相等,另一种是所有病例加权相等。在分析患者资料时,每例有6.46个病变,其中81.25%的病例表现为双侧肺受累。对于除“能量”外的所有放射学特征,病变分布的CV高于病例分布。在两个分布中,形态特征的变异系数分别为181%和85%,高于50%和42%。变异最大的特征是“表面积”、“椭球体积”、“椭球表面积”、“体积”和“近似体积”,病变分布偏离平均值173 ~ 255%,病例分布偏离平均值119 ~ 176%。CV最低的特征是“均匀性”、“离散致密性”、“纹理熵”、“和平均”和“伸长率”,不同病例的CV偏差小于31%,不同病变的CV偏差小于25%。未来的工作将探讨将这些数据与类似研究以及其他诊断和预后标准相结合,以增强CT在检测和管理COVID-19中的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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