Department of Health Information Technology and Management, School of Allied Medical Sciences, Shahid Beheshti University of Medical Sciences, Tehran, Iran.
Department of Radiology, Baqiyatallah University of Medical Sciences, Tehran, Iran.
J Med Internet Res. 2021 Apr 26;23(4):e27468. doi: 10.2196/27468.
Owing to the COVID-19 pandemic and the imminent collapse of health care systems following the exhaustion of financial, hospital, and medicinal resources, the World Health Organization changed the alert level of the COVID-19 pandemic from high to very high. Meanwhile, more cost-effective and precise COVID-19 detection methods are being preferred worldwide.
Machine vision-based COVID-19 detection methods, especially deep learning as a diagnostic method in the early stages of the pandemic, have been assigned great importance during the pandemic. This study aimed to design a highly efficient computer-aided detection (CAD) system for COVID-19 by using a neural search architecture network (NASNet)-based algorithm.
NASNet, a state-of-the-art pretrained convolutional neural network for image feature extraction, was adopted to identify patients with COVID-19 in their early stages of the disease. A local data set, comprising 10,153 computed tomography scans of 190 patients with and 59 without COVID-19 was used.
After fitting on the training data set, hyperparameter tuning, and topological alterations of the classifier block, the proposed NASNet-based model was evaluated on the test data set and yielded remarkable results. The proposed model's performance achieved a detection sensitivity, specificity, and accuracy of 0.999, 0.986, and 0.996, respectively.
The proposed model achieved acceptable results in the categorization of 2 data classes. Therefore, a CAD system was designed on the basis of this model for COVID-19 detection using multiple lung computed tomography scans. The system differentiated all COVID-19 cases from non-COVID-19 ones without any error in the application phase. Overall, the proposed deep learning-based CAD system can greatly help radiologists detect COVID-19 in its early stages. During the COVID-19 pandemic, the use of a CAD system as a screening tool would accelerate disease detection and prevent the loss of health care resources.
由于 COVID-19 大流行以及在财政、医院和医疗资源耗尽后医疗系统即将崩溃,世界卫生组织将 COVID-19 大流行的警戒级别从高调整为非常高。与此同时,全球更倾向于使用更具成本效益和更精确的 COVID-19 检测方法。
基于机器视觉的 COVID-19 检测方法,特别是在大流行早期作为诊断方法的深度学习,在大流行期间受到了高度重视。本研究旨在通过使用基于神经搜索架构网络(NASNet)的算法设计一种高效的 COVID-19 计算机辅助检测(CAD)系统。
NASNet 是一种用于图像特征提取的最先进的预训练卷积神经网络,用于识别 COVID-19 早期患者。使用局部数据集,包含 190 名 COVID-19 患者和 59 名非 COVID-19 患者的 10153 次计算机断层扫描。
在对训练数据集进行拟合、超参数调整和分类器块拓扑改变后,在测试数据集上评估了基于 NASNet 的模型,并取得了显著的结果。该模型的性能达到了 0.999 的检测灵敏度、0.986 的特异性和 0.996 的准确性。
该模型在 2 类分类中取得了可接受的结果。因此,基于该模型设计了一个用于 COVID-19 检测的 CAD 系统,使用多个肺部计算机断层扫描。在应用阶段,该系统能够将所有 COVID-19 病例与非 COVID-19 病例区分开来,没有任何错误。总体而言,基于深度学习的 CAD 系统可以极大地帮助放射科医生在早期发现 COVID-19。在 COVID-19 大流行期间,使用 CAD 系统作为筛查工具可以加速疾病检测并防止医疗资源的损失。