论文标题
通过结合双重经验模式分解和CLAHE,在评估COVID-19患者时,胸部X射线的晚期对比度增强(PACE)的管道
Pipeline for Advanced Contrast Enhancement (PACE) of chest X-ray in evaluating COVID-19 patients by combining bidimensional empirical mode decomposition and CLAHE
论文作者
论文摘要
Covid-19是一种新的肺部疾病,由于全球范围内大量病例,它正在驱动医院压力。肺部成像可以在监测健康状况方面发挥关键作用。非对比度胸部计算机断层扫描(CT)已用于此目的,主要在中国,取得了巨大的成功。但是,这种方法不能主要用于高风险和成本,在某些国家也不能大量使用,因为该工具不能广泛使用。另外,胸部X射线虽然不如CT-SCAN敏感,但可以提供有关疾病期间肺部参与进化的重要信息,但对于验证患者对治疗的反应非常重要。在这里,我们展示了如何通过名为pace的非线性后加工工具来提高胸部X射线的灵敏度,并将适当快速和适应性的双维经验模式分解和对比度结合在一起,有限的自适应直方图均衡(Clahe)。结果表明,图像对比度的增强是通过三个广泛使用的指标证实的:(i)对比度改进指数,(ii)熵和(iii)增强的量度。这一改进导致了两位放射科医生确定的更多肺部病变的可检测性,这些肺部病变分别评估了图像,并由CT扫描确认。根据我们的发现,此方法被证明是一种灵活有效的医疗图像增强方法,可以用作医学图像理解和分析的后处理步骤。
COVID-19 is a new pulmonary disease which is driving stress to the hospitals due to the large number of cases worldwide. Imaging of lungs can play a key role in monitoring of the healthy status. Non-contrast chest computed tomography (CT) has been used for this purpose, mainly in China, with a significant success. However, this approach cannot be used massively mainly for both high risk and cost and in some countries also because this tool is not extensively available. Alternatively, chest X-ray, although less sensitive than CT-scan, can provide important information about the evolution of pulmonary involvement during the disease, this aspect is very important to verify the response of a patient to treatments. Here, we show how to improve the sensitivity of chest X-ray via a nonlinear post processing tool, named PACE, combining properly fast and adaptive bidimensional empirical mode decomposition and contrast limited adaptive histogram equalization (CLAHE). The results show an enhancement of the image contrast as confirmed by three widely used metrics: (i) contrast improvement index, (ii) entropy, and (iii) measure of enhancement. This improvement gives rise to a detectability of more lung lesions as identified by two radiologists, which evaluate the images separately, and confirmed by CT-scans. Based on our findings this method is proved as a flexible and effective way for medical image enhancement and can be used as a post-processing step for medical image understanding and analysis.