Mahbub Md Kawsher, Biswas Milon, Gaur Loveleen, Alenezi Fayadh, Santosh K C
Bangladesh University of Business and Technology, Rupnagar, Mirpur-2, Dhaka 1216, Bangladesh.
Amity University, Gautam Buddha Nagar, 201313 Uttar Pradesh, India.
Inf Sci (N Y). 2022 May;592:389-401. doi: 10.1016/j.ins.2022.01.062. Epub 2022 Feb 4.
Chest X-ray (CXR) imaging is a low-cost, easy-to-use imaging alternative that can be used to diagnose/screen pulmonary abnormalities due to infectious diseaseX: Covid-19, Pneumonia and Tuberculosis (TB). Not limited to binary decisions (with respect to healthy cases) that are reported in the state-of-the-art literature, we also consider non-healthy CXR screening using a lightweight deep neural network (DNN) with a reduced number of epochs and parameters. On three diverse publicly accessible and fully categorized datasets, for non-healthy versus healthy CXR screening, the proposed DNN produced the following accuracies: 99.87% on Covid-19 versus healthy, 99.55% on Pneumonia versus healthy, and 99.76% on TB versus healthy datasets. On the other hand, when considering non-healthy CXR screening, we received the following accuracies: 98.89% on Covid-19 versus Pneumonia, 98.99% on Covid-19 versus TB, and 100% on Pneumonia versus TB. To further precisely analyze how well the proposed DNN worked, we considered well-known DNNs such as ResNet50, ResNet152V2, MobileNetV2, and InceptionV3. Our results are comparable with the current state-of-the-art, and as the proposed CNN is light, it could potentially be used for mass screening in resource-constraint regions.
胸部X光(CXR)成像是一种低成本、易于使用的成像方式,可用于诊断/筛查由传染病引起的肺部异常,如:新冠病毒病(Covid-19)、肺炎和肺结核(TB)。不限于现有文献中报道的关于健康病例的二元决策,我们还考虑使用具有减少的轮次和参数数量的轻量级深度神经网络(DNN)进行非健康CXR筛查。在三个不同的公开可用且已完全分类的数据集上,对于非健康与健康CXR筛查,所提出的DNN产生了以下准确率:在新冠病毒病与健康对照中为99.87%,在肺炎与健康对照中为99.55%,在肺结核与健康对照数据集中为99.76%。另一方面,在考虑非健康CXR筛查时,我们获得了以下准确率:在新冠病毒病与肺炎对照中为98.89%,在新冠病毒病与肺结核对照中为98.99%,在肺炎与肺结核对照中为100%。为了进一步精确分析所提出的DNN的工作效果,我们考虑了诸如ResNet50、ResNet152V2、MobileNetV2和InceptionV3等知名的DNN。我们的结果与当前的先进水平相当,并且由于所提出的卷积神经网络(CNN)很轻,它有可能用于资源受限地区的大规模筛查。