Department of Computer Science and Engineering, SRM Institute of Science and Technology, Chennai, India.
School of Information Technology and Engineering, Vellore Institute of Technology, Vellore, Tamil Nadu, India.
Comput Math Methods Med. 2022 Jul 27;2022:9771212. doi: 10.1155/2022/9771212. eCollection 2022.
As a result of the COVID-19 outbreak, which has put the world in an unprecedented predicament, thousands of people have died. Data from structured and unstructured sources are combined to create user-friendly platforms for clinicians and researchers in an integrated bioinformatics approach. The diagnosis and treatment of COVID-19 disease can be accelerated using AI-based platforms. In the battle against the virus, however, researchers and decision-makers must contend with an ever-increasing volume of data, referred to as "big data." VGG19 and ResNet152V2 pretrained deep learning architectures were used in this study. With these datasets, we could train and fine-tune our model on lung ultrasound frames from healthy people as well as from patients with COVID-19 and pneumonia. In two separate experiments, we evaluated two different classes of predictive models: one against pneumonia and the other against non-COVID-19. COVID-19 can be detected and diagnosed accurately and efficiently using these models, according to the findings. Therefore, the use of these inexpensive and affordable deep learning methods should be considered as a reliable method for the diagnosis of COVID-19.
由于 COVID-19 疫情的爆发,全球陷入了前所未有的困境,数以千计的人因此死亡。通过综合生物信息学方法,将来自结构化和非结构化来源的数据结合起来,为临床医生和研究人员创建用户友好的平台。基于人工智能的平台可以加速 COVID-19 疾病的诊断和治疗。然而,在与病毒的斗争中,研究人员和决策者必须应对不断增加的所谓“大数据”。在这项研究中使用了 VGG19 和 ResNet152V2 预先训练的深度学习架构。使用这些数据集,我们可以在来自健康人和 COVID-19 及肺炎患者的肺部超声图像上训练和微调我们的模型。在两个单独的实验中,我们评估了两种不同类别的预测模型:一种是针对肺炎的,另一种是针对非 COVID-19 的。根据研究结果,这些模型可以准确、有效地检测和诊断 COVID-19。因此,应该考虑使用这些廉价且负担得起的深度学习方法作为 COVID-19 诊断的可靠方法。