The novel corona virus (Covid-19) has introduced significant challenges due to its rapid spreading nature through respiratory transmission. As a result, there is a huge demand for Artificial Intelligence (AI) based quick disease diagnosis methods as an alternative to high demand tests such as Polymerase Chain Reaction (PCR). Chest X-ray (CXR) Image analysis is such cost-effective radiography technique due to resource availability and quick screening. But, a sufficient and systematic data collection that is required by complex deep leaning (DL) models is more difficult and hence there are recent efforts that utilize transfer learning to address this issue. Still these transfer learnt models suffer from lack of generalization and increased bias to the training dataset resulting poor performance for unseen data. Limited correlation of the transferred features from the pre-trained model to a specific medical imaging domain like X-ray and overfitting on fewer data can be reasons for this circumstance. In this work, we propose a novel Graph Convolution Neural Network (GCN) that is capable of identifying bio-markers of Covid-19 pneumonia from CXR images and meta information about patients. The proposed method exploits important relational knowledge between data instances and their features using graph representation and applies convolution to learn the graph data which is not possible with conventional convolution on Euclidean domain. The results of extensive experiments of proposed model on binary (Covid vs normal) and three class (Covid, normal, other pneumonia) classification problems outperform different benchmark transfer learnt models, hence overcoming the aforementioned drawbacks.
翻译:新型冠状病毒(Covid-19)因其通过呼吸道传播的迅速传播性质而带来了重大挑战。因此,对人工智能(AI)基础快速疾病诊断方法的需求很大,这种快速诊断方法是聚合酶链反应(PCR)等高需求测试的替代方法。切斯特X射线(CXR)图像分析是这种具有成本效益的放射法技术,因为有资源可用和快速筛选。但是,由于复杂的深度倾斜(DL)模型要求的足够和系统的数据采集更为困难,因此,最近还努力利用转移学习学习来解决这一问题。然而,这些转移的模型缺乏普遍性,而且对培训数据集的偏向性加大了,从而导致不可见的数据的性能差。预培训模型的特性与特定医学成像X射线(CXRR)成型成型成型成型成型成型成型成型成型成型图(GCN)网络(CCN) 能够识别CXR图像中的C-19性肺炎分类生物标值以及病人的元信息。拟议的方法利用了常规模型模型的模型模型模型模型模型模型模型,在变换成型模型和变换式模型中的其他模型数据结果中,而没有进行重要的模型。