Sanghvi Harshal A, Patel Riki H, Agarwal Ankur, Gupta Shailesh, Sawhney Vivek, Pandya Abhijit S
Department of CEECS Florida Atlantic University Boca Raton Florida USA.
Department of Clinical Trials and Research Specialty Retina Center Coral Springs Florida USA.
Int J Imaging Syst Technol. 2022 Sep 29. doi: 10.1002/ima.22812.
In the present paper, our model consists of deep learning approach: DenseNet201 for detection of COVID and Pneumonia using the Chest X-ray Images. The model is a framework consisting of the modeling software which assists in Health Insurance Portability and Accountability Act Compliance which protects and secures the Protected Health Information . The need of the proposed framework in medical facilities shall give the feedback to the radiologist for detecting COVID and pneumonia though the transfer learning methods. A Graphical User Interface tool allows the technician to upload the chest X-ray Image. The software then uploads chest X-ray radiograph (CXR) to the developed detection model for the detection. Once the radiographs are processed, the radiologist shall receive the Classification of the disease which further aids them to verify the similar CXR Images and draw the conclusion. Our model consists of the dataset from Kaggle and if we observe the results, we get an accuracy of 99.1%, sensitivity of 98.5%, and specificity of 98.95%. The proposed Bio-Medical Innovation is a user-ready framework which assists the medical providers in providing the patients with the best-suited medication regimen by looking into the previous CXR Images and confirming the results. There is a motivation to design more such applications for Medical Image Analysis in the future to serve the community and improve the patient care.
在本文中,我们的模型由深度学习方法组成:使用胸部X光图像检测新冠肺炎和肺炎的DenseNet201。该模型是一个由建模软件组成的框架,有助于遵守《健康保险流通与责任法案》,该法案保护和保障受保护的健康信息。在医疗设施中,所提出框架的需求应通过迁移学习方法为放射科医生提供检测新冠肺炎和肺炎的反馈。一个图形用户界面工具允许技术人员上传胸部X光图像。然后,该软件将胸部X光片(CXR)上传到已开发的检测模型进行检测。一旦X光片被处理,放射科医生将收到疾病分类结果,这将进一步帮助他们验证相似的CXR图像并得出结论。我们的模型使用了来自Kaggle的数据集,如果观察结果,我们得到的准确率为99.1%,灵敏度为98.5%,特异性为98.95%。所提出的生物医学创新是一个用户就绪的框架,通过查看以前的CXR图像并确认结果,协助医疗服务提供者为患者提供最适合的药物治疗方案。未来有动力设计更多这样的医学图像分析应用程序,以服务社区并改善患者护理。