Al-Zyoud Walid, Erekat Dana, Saraiji Rama
Department of Biomedical Engineering, School of Applied Medical Sciences, German Jordanian University, 11180 Amman Jordan.
Heliyon. 2023 Mar 10;9(3):e14453. doi: 10.1016/j.heliyon.2023.e14453. eCollection 2023 Mar.
COVID-19 is a severe acute respiratory syndrome that has caused a major ongoing pandemic worldwide. Imaging systems such as conventional chest X-ray (CXR) and computed tomography (CT) were proven essential for patients due to the lack of information about the complications that could result from this disease. In this study, the aim was to develop and evaluate a method for automatic diagnosis of COVID-19 using binary segmentation of chest X-ray images. The study used frontal chest X-ray images of 27 infected and 19 uninfected individuals from Kaggle COVID-19 Radiography Database, and applied binary segmentation and quartering in MATLAB to analyze the images. The binary images of the lung were split into four quarters; Q1 = right upper quarter, Q2 = left upper quarter, Q3 = right lower, and Q4 = left lower. The results showed that COVID-19 patients had a higher percentage of attenuation in the lower lobes of the lungs (p-value < 0.00001) compared to healthy individuals, which is likely due to ground-glass opacities and consolidations caused by the infection. The ratios of white pixels in the four quarters of the X-ray images were calculated, and it was found that the left lower quarter had the highest number of white pixels but without a statistical significance compared to right lower quarter (p-value = 0.102792). This supports the theory that COVID-19 primarily affects the lower and lateral fields of the lungs, and suggests that the virus is accumulated mostly in the lower left quarter of the lungs. Overall, this study contributes to the understanding of the impact of COVID-19 on the respiratory system and can help in the development of accurate diagnostic methods.
新冠病毒病(COVID-19)是一种严重的急性呼吸综合征,已在全球范围内引发了一场持续的大流行。由于缺乏关于这种疾病可能导致的并发症的信息,传统胸部X线(CXR)和计算机断层扫描(CT)等成像系统被证明对患者至关重要。在本研究中,目的是开发和评估一种利用胸部X线图像的二值分割自动诊断COVID-19的方法。该研究使用了来自Kaggle COVID-19放射影像数据库的27名感染者和19名未感染者的胸部正位X线图像,并在MATLAB中应用二值分割和四分法来分析图像。肺部的二值图像被分成四个象限;Q1 = 右上象限,Q2 = 左上象限,Q3 = 右下象限,Q4 = 左下象限。结果显示,与健康个体相比,COVID-19患者肺部下叶的衰减百分比更高(p值<0.00001),这可能是由于感染导致的磨玻璃影和实变。计算了X线图像四个象限中白色像素的比例,发现左下象限的白色像素数量最多,但与右下象限相比无统计学意义(p值 = 0.102792)。这支持了COVID-19主要影响肺部下叶和外侧区域的理论,并表明病毒大多聚集在肺部的左下象限。总体而言,本研究有助于理解COVID-19对呼吸系统的影响,并有助于开发准确的诊断方法。