Early prediction of COVID-19 using ensemble of transfer learning
In the wake of the COVID-19 outbreak, automated disease detection has become a crucial
part of medical science given the infectious nature of the coronavirus. This research aims to
introduce a deep ensemble framework of transfer learning models for early prediction of
COVID-19 from the respective chest X-ray images of the patients. The dataset used in this
research was taken from the Kaggle repository having two classes—COVID-19 Positive and
COVID-19 Negative. The proposed model achieved high accuracy on the test sample with …
part of medical science given the infectious nature of the coronavirus. This research aims to
introduce a deep ensemble framework of transfer learning models for early prediction of
COVID-19 from the respective chest X-ray images of the patients. The dataset used in this
research was taken from the Kaggle repository having two classes—COVID-19 Positive and
COVID-19 Negative. The proposed model achieved high accuracy on the test sample with …
Abstract
In the wake of the COVID-19 outbreak, automated disease detection has become a crucial part of medical science given the infectious nature of the coronavirus. This research aims to introduce a deep ensemble framework of transfer learning models for early prediction of COVID-19 from the respective chest X-ray images of the patients. The dataset used in this research was taken from the Kaggle repository having two classes—COVID-19 Positive and COVID-19 Negative. The proposed model achieved high accuracy on the test sample with minimum false positive prediction. It can assist doctors and technicians with early detection of COVID-19 infection. The patient’s health can further be monitored remotely with the help of connected devices with the Internet, which may be termed as the Internet of Medical Things (IoMT). The proposed IoMT-based solution for the automatic detection of COVID-19 can be a significant step toward fighting the pandemic.
Elsevier
以上显示的是最相近的搜索结果。 查看全部搜索结果