Pixel-based analysis of pulmonary changes on CT lung images due to COVID-19 pneumonia

IF 1.1 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Elif Soya, Nur Ekenel, R. Savaş, T. Toprak, J. Bewes, Ozkan Doganay
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引用次数: 2

Abstract

Objectives: Computed tomography (CT) plays a complementary role in the diagnosis of the pneumonia-burden of COVID-19 disease. However, the low contrast of areas of inflammation on CT images, areas of infection are difficult to identify. The purpose of this study is to develop a post-image-processing method for quantitative analysis of COVID-19 pneumonia-related changes in CT attenuation values using a pixel-based analysis rather than more commonly used clustered focal pneumonia volumes. The COVID-19 pneumonia burden is determined by experienced radiologists in the clinic. Previous AI software was developed for the measurement of COVID-19 lesions based on the extraction of local pneumonia features. In this respect, changes in the pixel levels beyond the clusters may be overlooked by deep learning algorithms. The proposed technique focuses on the quantitative measurement of COVID-19 related pneumonia over the entire lung in pixel-by-pixel fashion rather than only clustered focal pneumonia volumes. Material and Methods: Fifty COVID-19 and 50 age-matched negative control patients were analyzed using the proposed technique and commercially available artificial intelligence (AI) software. The %pneumonia was calculated using the relative volume of parenchymal pixels within an empirically defined CT density range, excluding pulmonary airways, vessels, and fissures. One-way ANOVA analysis was used to investigate the statistical difference between lobar and whole lung %pneumonia in the negative control and COVID-19 cohorts. Results: The threshold of high-and-low CT attenuation values related to pneumonia caused by COVID-19 were found to be between ₋642.4 HU and 143 HU. The %pneumonia of the whole lung, left upper, and lower lobes were 8.1 ± 4.4%, 6.1 ± 4.5, and 11.3 ± 7.3% for the COVID-19 cohort, respectively, and statistically different (P < 0.01). Additionally, the pixel-based methods correlate well with existing AI methods and are approximately four times more sensitive to pneumonia particularly at the upper lobes compared with commercial software in COVID-19 patients (P < 0.01). Conclusion: Pixel-by-pixel analysis can accurately assess pneumonia in COVID-19 patients with CT. Pixel-based techniques produce more sensitive results than AI techniques. Using the proposed novel technique, %pneumonia could be quantitatively calculated not only in the clusters but also in the whole lung with an improved sensitivity by a factor of four compared to AI-based analysis. More significantly, pixel-by-pixel analysis was more sensitive to the upper lobe pneumonia, while AI-based analysis overlooked the upper lung pneumonia region. In the future, this technique can be used to investigate the efficiency of vaccines and drugs and post COVID-19 effects.
基于像素的COVID-19肺炎CT肺部图像肺部改变分析
目的:计算机断层扫描(CT)在COVID-19肺炎负担诊断中发挥补充作用。然而,CT图像上炎症区域对比度低,感染区域难以识别。本研究的目的是开发一种图像后处理方法,使用基于像素的分析来定量分析COVID-19肺炎相关CT衰减值的变化,而不是更常用的聚集性局灶性肺炎体积。COVID-19肺炎负担由临床经验丰富的放射科医生确定。以前的AI软件是基于局部肺炎特征的提取来测量COVID-19病变。在这方面,深度学习算法可能会忽略集群之外像素水平的变化。所提出的技术侧重于以逐像素的方式定量测量整个肺部的COVID-19相关肺炎,而不仅仅是聚集性局灶性肺炎体积。材料与方法:采用提出的技术和市售人工智能(AI)软件对50例COVID-19患者和50例年龄匹配的阴性对照患者进行分析。肺炎的百分比是根据经验定义的CT密度范围内的实质像素的相对体积计算的,不包括肺气道、血管和裂隙。采用单因素方差分析(One-way ANOVA)分析阴性对照组和COVID-19队列大叶性肺炎和全肺性肺炎的统计学差异。结果:与COVID-19肺炎相关的CT高低衰减值阈值在24.642.4 HU ~ 14.3hu之间。肺炎组全肺、左上肺叶、左下肺叶肺炎%分别为8.1±4.4%、6.1±4.5%、11.3±7.3%,差异有统计学意义(P < 0.01)。此外,基于像素的方法与现有的人工智能方法具有良好的相关性,并且与商业软件相比,对COVID-19患者的肺炎(特别是上肺叶)的敏感性约为四倍(P < 0.01)。结论:逐像素分析可准确评估COVID-19患者的肺炎。基于像素的技术比人工智能技术产生更敏感的结果。使用提出的新技术,不仅可以在群集中定量计算肺炎,而且可以在整个肺中定量计算,与基于人工智能的分析相比,灵敏度提高了四倍。更重要的是,逐像素分析对上肺肺炎更敏感,而基于人工智能的分析忽略了上肺肺炎区域。未来,该技术可用于研究疫苗和药物的效率以及COVID-19后的效果。
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来源期刊
Journal of Clinical Imaging Science
Journal of Clinical Imaging Science RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
2.00
自引率
0.00%
发文量
65
期刊介绍: The Journal of Clinical Imaging Science (JCIS) is an open access peer-reviewed journal committed to publishing high-quality articles in the field of Imaging Science. The journal aims to present Imaging Science and relevant clinical information in an understandable and useful format. The journal is owned and published by the Scientific Scholar. Audience Our audience includes Radiologists, Researchers, Clinicians, medical professionals and students. Review process JCIS has a highly rigorous peer-review process that makes sure that manuscripts are scientifically accurate, relevant, novel and important. Authors disclose all conflicts, affiliations and financial associations such that the published content is not biased.
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