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. Based on these premises, a simple method based on lung-pathology features for scoring disease severity from Chest X-rays is proposed here. As the primary contribution, this method shows to be correlated to patient severity in different stages of disease progression comparatively well when contrasted with other existing methods. An original approach for data selection 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 compromise as others in the literature. The fact that it is simpler and interpretable than other end-to-end, more complex models, also sets aside this work. As the data set is small, bias-inducing artifacts that could lead to overfitting are minimized through an image normalization and lung segmentation step at the learning phase. 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 expressive results show that although imaging alone is not sufficient for assessing severity as a whole, there is a strong correlation with the scoring system, termed as MAVIDH score, with patient outcome.
翻译:应用计算机愿景对COVID-19诊断进行COVID-19诊断是复杂而具有挑战性的,因为病人的分类错误会带来风险。可以说,COVID-19医学成像的主要价值在于病人的预测。辐射图像可以指导医生评估疾病的严重性,而同一病人在不同阶段的一系列图像可以帮助衡量疾病的发展。根据这些前提,在这里提议了一种基于肺病理特征的简单方法,从胸透透透透透透透透透透透透透透透透透透透透透透透透透透透透透透透透透透透透透透透透了解。 与其它现有方法相比,这一方法与疾病在不同阶段的患者严重程度相对上升的患者严重程度相关。还提出了一种最初的数据选择方法,让简单模型学习与严重程度有关的特征。这里提出的一系列竞争性业绩与基于特征的方法有关,而不是与文献中其他人的肺部参与或妥协有关。 与其它端透透透透透透透透透透透透、更复杂的模型,也与这项工作无关。 数据集的准确度分析结果虽然在正常变正标结果的第二个阶段中,但还显示的是,在正常变正标结果的排序中,也可以超越了另一个的排序。