Lizancos Vidal Plácido, de Moura Joaquim, Novo Jorge, Ortega Marcos
Centro de investigación CITIC, Universidade da Coruña, Campus de Elviña, s/n, 15071 A Coruña, Spain.
Grupo VARPA, Instituto de Investigación Biomédica de A Coruña (INIBIC), Universidade da Coruña, Xubias de Arriba, 84, 15006 A Coruña, Spain.
Expert Syst Appl. 2021 Jul 1;173:114677. doi: 10.1016/j.eswa.2021.114677. Epub 2021 Feb 12.
One of the main challenges in times of sanitary emergency is to quickly develop computer aided diagnosis systems with a limited number of available samples due to the novelty, complexity of the case and the urgency of its implementation. This is the case during the current pandemic of COVID-19. This pathogen primarily infects the respiratory system of the afflicted, resulting in pneumonia and in a severe case of acute respiratory distress syndrome. This results in the formation of different pathological structures in the lungs that can be detected by the use of chest X-rays. Due to the overload of the health services, portable X-ray devices are recommended during the pandemic, preventing the spread of the disease. However, these devices entail different complications (such as capture quality) that, together with the subjectivity of the clinician, make the diagnostic process more difficult and suggest the necessity for computer-aided diagnosis methodologies despite the scarcity of samples available to do so. To solve this problem, we propose a methodology that allows to adapt the knowledge from a well-known domain with a high number of samples to a new domain with a significantly reduced number and greater complexity. We took advantage of a pre-trained segmentation model from brain magnetic resonance imaging of a unrelated pathology and performed two stages of knowledge transfer to obtain a robust system able to segment lung regions from portable X-ray devices despite the scarcity of samples and lesser quality. This way, our methodology obtained a satisfactory accuracy of for patients with COVID-19, for normal patients and for patients with pulmonary diseases with similar characteristics as COVID-19 (such as pneumonia) but not genuine COVID-19.
在卫生紧急情况期间,主要挑战之一是由于病例的新颖性、复杂性及其实施的紧迫性,要在可用样本数量有限的情况下快速开发计算机辅助诊断系统。当前的新冠疫情就是这种情况。这种病原体主要感染患者的呼吸系统,导致肺炎,严重时会引发急性呼吸窘迫综合征。这会在肺部形成不同的病理结构,可通过胸部X光检测到。由于医疗服务负担过重,疫情期间建议使用便携式X光设备,以防止疾病传播。然而,这些设备存在不同的并发症(如采集质量),再加上临床医生的主观性,使得诊断过程更加困难,这表明尽管可用样本稀缺,但仍有必要采用计算机辅助诊断方法。为了解决这个问题,我们提出了一种方法,该方法能够将来自样本数量众多的知名领域的知识应用于样本数量显著减少且复杂性更高的新领域。我们利用了一个来自与研究病理无关的脑磁共振成像的预训练分割模型,并进行了两个阶段的知识转移,以获得一个强大的系统,该系统能够在样本稀缺和质量较低的情况下,从便携式X光设备中分割出肺部区域。通过这种方式,我们的方法在新冠患者中获得了令人满意的准确率,正常患者的准确率为 ,具有与新冠类似特征(如肺炎)但并非真正新冠的肺部疾病患者的准确率为 。