Adedigba Adeyinka P, Adeshina Steve A, Aina Oluwatomisin E, Aibinu Abiodun M
Department of Mechatronics Engineering, Federal University of Technology, Minna, Nigeria.
Department of Computer Engineering, Nile University of Nigeria, Abuja, Nigeria.
Intell Based Med. 2021;5:100034. doi: 10.1016/j.ibmed.2021.100034. Epub 2021 Apr 21.
The first and most critical response to curbing the spread of the novel coronavirus disease (COVID-19) is to deploy effective techniques to test potentially infected patients, isolate them and commence immediate treatment. However, several test kits currently in use are slow and in a shortage of supply. This paper presents techniques for diagnosing COVID-19 from chest X-ray (CXR) and address problems associated with training deep models with less voluminous datasets and class imbalance as obtained in most available CXR datasets on COVID-19. We used the discriminative fine-tuning approach, which dynamically assigns different learning rates to each layer of the network. The learning rate is set using the cyclical learning rate policy that changes per iteration. This flexibility ensured rapid convergence and avoided being stuck in saddle point plateau. In addition, we addressed the high computational demand of deep models by implementing our algorithm using the memory- and computational-efficient mixed-precision training. Despite the availability of scanty datasets, our model achieved high performance and generalisation. A Validation accuracy of 96.83%, sensitivity and specificity of 96.26% and 95.54% were obtained, respectively. When tested on an entirely new dataset, the model achieves 97% accuracy without further training. Lastly, we presented a visual interpretation of the model's output to prove that the model can aid radiologists in rapidly screening for the symptoms of COVID-19.
遏制新型冠状病毒病(COVID-19)传播的首要且最关键的应对措施是部署有效的技术来检测潜在感染患者,隔离他们并立即开始治疗。然而,目前正在使用的几种检测试剂盒速度缓慢且供应短缺。本文介绍了从胸部X光(CXR)诊断COVID-19的技术,并解决了在大多数可用的COVID-19 CXR数据集中出现的使用较少大量数据集训练深度模型以及类别不平衡相关的问题。我们使用了判别式微调方法,该方法为网络的每一层动态分配不同的学习率。学习率使用每次迭代都会变化的周期性学习率策略来设置。这种灵活性确保了快速收敛并避免陷入鞍点平台。此外,我们通过使用内存和计算效率高的混合精度训练来实现算法,从而解决了深度模型的高计算需求问题。尽管可用数据集稀少,但我们的模型仍取得了高性能和泛化能力。分别获得了96.83%的验证准确率、96.26%的灵敏度和95.54%的特异性。在一个全新的数据集上进行测试时,该模型无需进一步训练即可达到97%的准确率。最后,我们展示了模型输出的可视化解释,以证明该模型可以帮助放射科医生快速筛查COVID-19的症状。