论文标题
PINBALL-OCSVM,用于早期Covid-19诊断,后胸部X射线图像有限
Pinball-OCSVM for early-stage COVID-19 diagnosis with limited posteroanterior chest X-ray images
论文作者
论文摘要
2019年呼吸道冠状病毒疾病的感染(COVID-19)始于上呼吸道,随着病毒的生长,感染可以发展为肺部并发展为肺炎。 COVID-19诊断的常规方式是逆转录聚合酶链反应(RT-PCR),在早期阶段敏感较低。特别是如果患者无症状,这可能会进一步引起更严重的肺炎。在这种情况下,已经提出了几种深度学习模型,以使用公开可用的胸部X射线(CXR)图像数据集识别肺部感染,以早期诊断,更好的治疗和快速治愈。在这些数据集中,与其他类别(正常的,肺炎和结核病)相比,相比的共同-19阳性样品数量较少,这对深度学习模型的无偏学习提出了挑战。所有深度学习模型都选择了班级平衡技术来解决这个问题。但是,在任何医学诊断过程中都应避免这种情况。此外,深度学习模型也是饥饿的数据,需要大量的计算资源。因此,为了更快的诊断,这项研究提出了一种基于新型的弹球损失函数的单级支持向量机(PB-OCSVM),可以在有限的COVID-19阳性CXR样品的情况下起作用,该样本具有目标,以最大程度地提高学习效率并最大程度地减少虚假预测。将所提出的模型的性能与常规OCSVM和现有的深度学习模型进行了比较,实验结果证明,所提出的模型的表现优于最先进的方法。为了验证提出的模型的鲁棒性,还使用嘈杂的CXR图像和UCI基准数据集进行了实验。
The infection of respiratory coronavirus disease 2019 (COVID-19) starts with the upper respiratory tract and as the virus grows, the infection can progress to lungs and develop pneumonia. The conventional way of COVID-19 diagnosis is reverse transcription polymerase chain reaction (RT-PCR), which is less sensitive during early stages; especially if the patient is asymptomatic, which may further cause more severe pneumonia. In this context, several deep learning models have been proposed to identify pulmonary infections using publicly available chest X-ray (CXR) image datasets for early diagnosis, better treatment and quick cure. In these datasets, presence of less number of COVID-19 positive samples compared to other classes (normal, pneumonia and Tuberculosis) raises the challenge for unbiased learning of deep learning models. All deep learning models opted class balancing techniques to solve this issue; which however should be avoided in any medical diagnosis process. Moreover, the deep learning models are also data hungry and need massive computation resources. Therefore for quicker diagnosis, this research proposes a novel pinball loss function based one-class support vector machine (PB-OCSVM), that can work in presence of limited COVID-19 positive CXR samples with objectives to maximize the learning efficiency and to minimize the false predictions. The performance of the proposed model is compared with conventional OCSVM and existing deep learning models, and the experimental results prove that the proposed model outperformed over state-of-the-art methods. To validate the robustness of the proposed model, experiments are also performed with noisy CXR images and UCI benchmark datasets.