Verma Dhirendra Kumar, Saxena Gaurav, Paraye Amit, Rajan Alpana, Rawat Anil, Verma Rajesh Kumar
Raja Ramanna Centre for Advanced Technology, Indore, Madhya Pradesh, India.
J Med Phys. 2022 Jan-Mar;47(1):57-64. doi: 10.4103/jmp.jmp_100_21. Epub 2022 Mar 31.
Automated detection of COVID-19 in real time can greatly help clinicians to handle increasing number of cases for preliminary screening. Deep CNN models trained with sufficiently large datasets may become best candidates to meet the purpose.
This study aims for automated detection and classification of COVID-19 and viral pneumonia diseases by applying deep CNN model using chest X-ray images. The proposed model performs multiclass classification to meet the purpose.
The proposed model is built on top of VGG16 architecture with pretrained ImageNet weights. The model was fine-tuned using additional custom layers to deliver better performance specific to the target.
A total of 15,153 samples are used in this work. These samples include chest X-ray images of COVID-19, viral pneumonia, and normal cases. The entire dataset was split into train and test sets, with a ratio of 80:20 before training the model. To enhance important image features, image preprocessing and augmentation were applied before feeding the image batches to the model.
Performance of the model is evaluated through accuracy, precision, recall, and F1 score performance metrics. The results produced by the model are also compared with other recent leading studies.
The proposed model has achieved a classification accuracy of 98% with 98% precision, 96% recall, and 97% F1 score on the test dataset for multiclass classification. The area under receiver operating characteristic curve score was 0.99 for all three cases of multiclass classification.
The proposed classification model may be highly useful for the preliminary diagnosis of COVID-19 and viral pneumonia cases, especially during heavy workloads and large quantities.
实时自动检测新冠病毒肺炎能极大地帮助临床医生处理日益增多的病例进行初步筛查。使用足够大的数据集训练的深度卷积神经网络(CNN)模型可能成为实现这一目标的最佳候选方案。
本研究旨在通过应用基于胸部X光图像的深度CNN模型对新冠病毒肺炎和病毒性肺炎疾病进行自动检测和分类。所提出的模型进行多类分类以实现这一目的。
所提出的模型基于具有预训练ImageNet权重的VGG16架构构建。该模型使用额外的自定义层进行微调,以提供针对目标的更好性能。
本研究共使用了15153个样本。这些样本包括新冠病毒肺炎、病毒性肺炎和正常病例的胸部X光图像。在训练模型之前,整个数据集按80:20的比例分为训练集和测试集。在将图像批次输入模型之前,应用图像预处理和增强来增强重要的图像特征。
通过准确率、精确率、召回率和F1分数性能指标评估模型的性能。该模型产生的结果也与其他近期的领先研究进行了比较。
所提出的模型在多类分类的测试数据集上实现了98%的分类准确率,精确率为98%,召回率为96%,F1分数为97%。多类分类的所有三种情况的受试者工作特征曲线下面积分数均为0.99。
所提出的分类模型对于新冠病毒肺炎和病毒性肺炎病例的初步诊断可能非常有用,特别是在工作量大且病例数量多的情况下。