Owais Muhammad, Yoon Hyo Sik, Mahmood Tahir, Haider Adnan, Sultan Haseeb, Park Kang Ryoung
Division of Electronics and Electrical Engineering, Dongguk University, 30 Pildong-ro 1-gil, Jung-gu, Seoul 04620, Republic of Korea.
Appl Soft Comput. 2021 Sep;108:107490. doi: 10.1016/j.asoc.2021.107490. Epub 2021 May 7.
Currently, the coronavirus disease 2019 (COVID19) pandemic has killed more than one million people worldwide. In the present outbreak, radiological imaging modalities such as computed tomography (CT) and X-rays are being used to diagnose this disease, particularly in the early stage. However, the assessment of radiographic images includes a subjective evaluation that is time-consuming and requires substantial clinical skills. Nevertheless, the recent evolution in artificial intelligence (AI) has further strengthened the ability of computer-aided diagnosis tools and supported medical professionals in making effective diagnostic decisions. Therefore, in this study, the strength of various AI algorithms was analyzed to diagnose COVID19 infection from large-scale radiographic datasets. Based on this analysis, a light-weighted deep network is proposed, which is the first ensemble design (based on MobileNet, ShuffleNet, and FCNet) in medical domain (particularly for COVID19 diagnosis) that encompasses the reduced number of trainable parameters (a total of 3.16 million parameters) and outperforms the various existing models. Moreover, the addition of a multilevel activation visualization layer in the proposed network further visualizes the lesion patterns as multilevel class activation maps (ML-CAMs) along with the diagnostic result (either COVID19 positive or negative). Such additional output as ML-CAMs provides a visual insight of the computer decision and may assist radiologists in validating it, particularly in uncertain situations Additionally, a novel hierarchical training procedure was adopted to perform the training of the proposed network. It proceeds the network training by the adaptive number of epochs based on the validation dataset rather than using the fixed number of epochs. The quantitative results show the better performance of the proposed training method over the conventional end-to-end training procedure. A large collection of CT-scan and X-ray datasets (based on six publicly available datasets) was used to evaluate the performance of the proposed model and other baseline methods. The experimental results of the proposed network exhibit a promising performance in terms of diagnostic decision. An average F1 score (F1) of 94.60% and 95.94% and area under the curve (AUC) of 97.50% and 97.99% are achieved for the CT-scan and X-ray datasets, respectively. Finally, the detailed comparative analysis reveals that the proposed model outperforms the various state-of-the-art methods in terms of both quantitative and computational performance.
目前,2019冠状病毒病(COVID-19)大流行已在全球造成超过100万人死亡。在当前疫情中,计算机断层扫描(CT)和X射线等放射成像方式被用于诊断这种疾病,尤其是在早期阶段。然而,对放射影像的评估包括主观评价,既耗时又需要扎实的临床技能。尽管如此,人工智能(AI)的最新发展进一步增强了计算机辅助诊断工具的能力,并支持医学专业人员做出有效的诊断决策。因此,在本研究中,分析了各种AI算法从大规模放射影像数据集中诊断COVID-19感染的能力。基于此分析,提出了一种轻量级深度网络,这是医学领域(特别是用于COVID-19诊断)的首个集成设计(基于MobileNet、ShuffleNet和FCNet),其可训练参数数量减少(总共316万个参数),并且优于各种现有模型。此外,在所提出的网络中添加多级激活可视化层,可将病变模式进一步可视化为多级类激活映射(ML-CAM)以及诊断结果(COVID-19阳性或阴性)。作为ML-CAM的此类额外输出提供了计算机决策的视觉洞察,并可能有助于放射科医生进行验证,特别是在不确定的情况下。此外,采用了一种新颖的分层训练程序来对所提出的网络进行训练。它基于验证数据集通过自适应轮次数量进行网络训练,而不是使用固定的轮次数量。定量结果表明,所提出的训练方法比传统的端到端训练程序具有更好的性能。使用大量CT扫描和X射线数据集(基于六个公开可用的数据集)来评估所提出模型和其他基线方法的性能。所提出网络的实验结果在诊断决策方面表现出良好的性能。CT扫描和X射线数据集的平均F1分数(F1)分别达到94.60%和95.94%,曲线下面积(AUC)分别达到97.50%和97.99%。最后,详细的对比分析表明,所提出的模型在定量和计算性能方面均优于各种最先进的方法。