Islam Md Nazmul, Alam Md Golam Rabiul, Apon Tasnim Sakib, Uddin Md Zia, Allheeib Nasser, Menshawi Alaa, Hassan Mohammad Mehedi
Department of Computer Science and Engineering, BRAC University, Dhaka 1212, Bangladesh.
Software and Service Innovation, SINTEF Digital, 0373 Oslo, Norway.
Healthcare (Basel). 2023 Jan 31;11(3):410. doi: 10.3390/healthcare11030410.
The coronavirus epidemic has spread to virtually every country on the globe, inflicting enormous health, financial, and emotional devastation, as well as the collapse of healthcare systems in some countries. Any automated COVID detection system that allows for fast detection of the COVID-19 infection might be highly beneficial to the healthcare service and people around the world. Molecular or antigen testing along with radiology X-ray imaging is now utilized in clinics to diagnose COVID-19. Nonetheless, due to a spike in coronavirus and hospital doctors' overwhelming workload, developing an AI-based auto-COVID detection system with high accuracy has become imperative. On X-ray images, the diagnosis of COVID-19, non-COVID-19 non-COVID viral pneumonia, and other lung opacity can be challenging. This research utilized artificial intelligence (AI) to deliver high-accuracy automated COVID-19 detection from normal chest X-ray images. Further, this study extended to differentiate COVID-19 from normal, lung opacity and non-COVID viral pneumonia images. We have employed three distinct pre-trained models that are Xception, VGG19, and ResNet50 on a benchmark dataset of 21,165 X-ray images. Initially, we formulated the COVID-19 detection problem as a binary classification problem to classify COVID-19 from normal X-ray images and gained 97.5%, 97.5%, and 93.3% accuracy for Xception, VGG19, and ResNet50 respectively. Later we focused on developing an efficient model for multi-class classification and gained an accuracy of 75% for ResNet50, 92% for VGG19, and finally 93% for Xception. Although Xception and VGG19's performances were identical, Xception proved to be more efficient with its higher precision, recall, and f-1 scores. Finally, we have employed Explainable AI on each of our utilized model which adds interpretability to our study. Furthermore, we have conducted a comprehensive comparison of the model's explanations and the study revealed that Xception is more precise in indicating the actual features that are responsible for a model's predictions.This addition of explainable AI will benefit the medical professionals greatly as they will get to visualize how a model makes its prediction and won't have to trust our developed machine-learning models blindly.
新冠疫情几乎蔓延到了全球每个国家,造成了巨大的健康、经济和情感破坏,一些国家的医疗系统也陷入崩溃。任何能够快速检测出新冠病毒感染的自动化检测系统,都可能对全球医疗服务和人们大有裨益。目前,临床中利用分子或抗原检测以及放射学X射线成像来诊断新冠病毒。然而,由于新冠病毒感染激增以及医院医生工作量过大,开发一种高精度的基于人工智能的自动新冠检测系统变得势在必行。在X射线图像上,诊断新冠病毒、非新冠病毒引起的非新冠病毒性肺炎以及其他肺部混浊情况可能具有挑战性。本研究利用人工智能从正常胸部X射线图像中实现高精度的自动新冠病毒检测。此外,本研究还进一步扩展到区分新冠病毒感染与正常情况、肺部混浊以及非新冠病毒性肺炎图像。我们在一个包含21165张X射线图像的基准数据集上使用了三种不同的预训练模型,即Xception、VGG19和ResNet50。最初,我们将新冠病毒检测问题设定为一个二分类问题,以便从正常X射线图像中对新冠病毒进行分类,Xception、VGG19和ResNet50分别获得了97.5%、97.5%和93.3%的准确率。后来,我们专注于开发一种用于多分类的高效模型,ResNet50的准确率为75%,VGG19为92%,最后Xception为93%。尽管Xception和VGG19的性能相同,但Xception在精度、召回率和F1分数方面更高,证明效率更高。最后,我们在每个使用的模型上应用了可解释人工智能,这为我们的研究增添了可解释性。此外,我们对模型的解释进行了全面比较,研究表明Xception在指出导致模型预测的实际特征方面更为精确。这种可解释人工智能的添加将极大地造福医学专业人员,因为他们将能够直观地看到模型是如何进行预测的,而不必盲目信任我们开发的机器学习模型。