论文标题

Mavidh分数:使用胸部X射线病理学特征的Covid-19严重程度评分

MAVIDH Score: A COVID-19 Severity Scoring using Chest X-Ray Pathology Features

论文作者

Gomes, Douglas P. S., Horry, Michael J., Ulhaq, Anwaar, Paul, Manoranjan, Chakraborty, Subrata, Saha, Manash, Debnath, Tanmoy, Rahaman, D. M. Motiur

论文摘要

鉴于患者错误分类的风险,计算机视觉在COVID-19诊断中的应用是复杂且具有挑战性的。可以说,COVID-19的医学成像的主要价值在于患者预后。放射学图像可以指导医生评估疾病的严重程度,而在不同阶段,来自同一患者的一系列图像可以帮助衡量疾病的进展。因此,此处提出了一种基于肺X射线评分疾病严重程度的可解释特征的简单方法。作为主要贡献,与其他现有更复杂的方法相比,这种方法与疾病进展的不同阶段的患者严重程度与竞争成果息息相关。还提出了一种原始的数据选择方法,从而使简单的模型可以学习与严重性相关的功能。假设此处介绍的由此产生的竞争性能与基于特征的方法有关,而不是依赖于文献中其他人的肺参与或不透明度。第二个贡献来自对结果的验证,概念化为疾病不同阶段的患者组的评分。除了对独立数据集执行此类验证外,还将结果与文献中其他提出的评分方法进行了比较。结果表明,评分系统(Mavidh)与患者结局之间存在显着相关性,这可能有助于医师对COVID-19患者的疾病进展和疾病进展。

The application of computer vision for COVID-19 diagnosis is complex and challenging, given the risks associated with patient misclassifications. Arguably, the primary value of medical imaging for COVID-19 lies rather on patient prognosis. Radiological images can guide physicians assessing the severity of the disease, and a series of images from the same patient at different stages can help to gauge disease progression. Hence, a simple method based on lung-pathology interpretable features for scoring disease severity from Chest X-rays is proposed here. As the primary contribution, this method correlates well to patient severity in different stages of disease progression with competitive results compared to other existing, more complex methods. An original data selection approach is also proposed, allowing the simple model to learn the severity-related features. It is hypothesized that the resulting competitive performance presented here is related to the method being feature-based rather than reliant on lung involvement or opacity as others in the literature. A second contribution comes from the validation of the results, conceptualized as the scoring of patients groups from different stages of the disease. Besides performing such validation on an independent data set, the results were also compared with other proposed scoring methods in the literature. The results show that there is a significant correlation between the scoring system (MAVIDH) and patient outcome, which could potentially help physicians rating and following disease progression in COVID-19 patients.

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