AI-Enabled Deep Learning Model for COVID-19 Identification Leveraging Internet of Things

Authors

  • Mohd Arfian Ismail Faculty of Computing, College of Computing and Applied Sciences, Universiti Malaysia Pahang, Malaysia
  • Siti Nur Fathin Najwa Binti Mustaffa PhD Computer Science and Software Engineering UMP, Malaysia
  • Munther H. Abed Faculty of Computing, College of Computing and Applied Sciences, University Malaysia Pahang, Pahang, Malaysia

DOI:

https://doi.org/10.31185/wjcms.146

Keywords:

IoT, deep transfer learning, medical treatment and Artificial Intelligent, COVID-19

Abstract

Addressing the COVID-19 epidemic since December 2019 has emphasized the criticality of timely and error-free identification of infected COVID-19 individuals in medical settings. To effectively combat the epidemic, the utilization of deep TL-enabled automated COVID-19 identification on CXRs is paramount. This study recommended a real-time IoT system employing ensemble deep TL to enable early identification of infected COVID-19 individuals. The system allows for real-time transmission and identification of COVID-19 suspicious individuals. The suggested IoT model incorporates several DL models, including InceptionResNetV2, VGG16, ResNet152V2, and DenseNet201. These models, stored on a cloud server, are utilized in conjunction with medical sensors to gather chest X-ray data and detect infections. A chest X-ray dataset is used to compare the deep ensemble model against six transfer learning algorithms. The comparative investigation demonstrates that the suggested approach facilitates swift and effective diagnosis of COVID-19 suspicious patients, providing valuable support to radiologists. This work highlights the significance of leveraging deep transfer learning and IoT in achieving early identification of suspected COVID-19 patients. The proposed system, incorporating a deep ensemble model, offers a practical solution for assisting radiologists in efficiently diagnosing COVID-19 cases

Downloads

Download data is not yet available.

References

O. B. Akan, S. Andreev, and C. Dobre, “Internet of things and sensor Networks,” IEEE Communications Magazine, vol. 57, no. 2, pp. 40–40, 2019.

Q. Du, H. Song, and X. Zhu, “Social-feature enabled communications among devices toward the smart iot community,” IEEE Communications Magazine, vol. 57, no. 1, pp. 130–137, 2018.

P. Partila, J. Tovarek, G. H. Ilk, J. Rozhon, and M. Voznak, “Deep learning serves voice cloning: how vulnerable are automatic speaker verification systems to spoofing trials?,” IEEE Communications Magazine, vol. 58, no. 2, pp. 100–105, 2020.

I. Ahmed, A. Ahmad, and G. Jeon, “An iot based deep learning framework for early assessment of covid-19,” IEEE Internet of 4ings Journal, 2020.

Z. Han, B. Wei, and Y. Hong, “Accurate screening of covid19 using attention-based deep 3d multiple instance learning,” IEEE Transactions on Medical Imaging, vol. 39, no. 8, pp. 2584–2594, 2020.

X. Qian, H. Fu, and W. Shi, “M$3Lung-Sys: a deep learning system for multi-class Lung pneumonia screening from CT imaging,” IEEE Journal of Biomedical and Health Informatics, vol. 24, no. 12, pp. 3539–3550, 2020.

A. Waheed, M. Goyal, D. Gupta, A. Khanna, F. Al-Turjman, and P. R. Pinheiro, “Covidgan: data augmentation using auxiliary classifier gan for improved covid-19 detection,” IEEE Access, vol. 8, pp. 91916–91923, 2020.

M. J. Horry, S. Chakraborty, and M. Paul, “Covid-19 detection through transfer learning using multimodal imaging data,” IEEE Access, vol. 8, pp. 149808–149824, 2020.

M. E. H. Chowdhury, T. Rahman, and A. Khandakar, “Can AI help in screening viral and COVID-19 pneumonia?,” IEEE Access, vol. 8,

pp. 132665–132676, 2020.

X. Ouyang, J. Huo, and L. Xia, “Dual-sampling attention network for diagnosis of covid-19 from community acquired pneumonia,” IEEE Transactions on Medical Imaging, vol. 39, no. 8, pp. 2595–2605, 2020.

S. Sakib, T. Tazrin, M. M. Fouda, Z. M. Fadlullah, and M. Guizani, “DL-CRC: deep learning-based chest radiograph classification for COVID-19 detection: a novel approach,” IEEE Access, vol. 8, pp. 171575–171589, 2020.

A. Rahman, M. S. Hossain, N. A. Alrajeh, and F. Alsolami, “Adversarial examples - security threats to covid-19 deep learning systems in medical iot devices,” IEEE Internet of 4ings Journal, 2020.

N. Gianchandani, A. Jaiswal, D. Singh, V. Kumar, and M. Kaur, “Rapid COVID-19 diagnosis using ensemble deep transfer learning models from chest radiographic images,” Journal of Ambient Intelligence and Humanized Computing, pp. 1–13, 2020.

D. Singh, V. Kumar, V. Yadav, and M. Kaur, “Deep neural network-based screening model for COVID-19-infected patients using chest X-ray images,” International Journal of Pattern Recognition and Artificial Intelligence, vol. 35, no. 3, 2021.

D. Singh, V. Kumar, and M. Kaur, “Densely connected convolutional networks-based COVID-19 screening model,” Applied Intelligence, vol. 51, no. 5, pp. 3044–3051, 2021.

H. S. Basavegowda and G. Dagnew, “Deep learning approach for microarray cancer data classification,” CAAI Transactions on Intelligence Technology, vol. 5, no. 1, pp. 22–33, 2020.

S. Ghosh, P. Shivakumara, P. Roy, U. Pal, and T. Lu, “Graphology based handwritten character analysis for human behaviour identification,” CAAI Transactions on Intelligence Technology, vol. 5, no. 1, pp. 55–65, 2020.

B. Gupta, M. Tiwari, and S. S. Lamba, “Visibility improvement and mass segmentation of mammogram images using quantile separated histogram equalisation with local contrast enhancement,” CAAI Transactions on Intelligence Technology, vol. 4, no. 2, pp. 73–79, 2019.

K. H. Shih, C. T. Chiu, J. A. Lin, and Y. Y. Bu, “Real-time object detection with reduced region proposal network via multi-feature concatenation,” IEEE Transactions on Neural Networks and Learning Systems, vol. 31, no. 6, pp. 2164–2173, 2020.

Y. Zhou, G. Li, and H. Li, “Automatic cataract classification using deep neural network with discrete state transition,” IEEE Transactions on Medical Imaging, vol. 39, no. 2, pp. 436–446, 2019.

“Covid-19 chest x-ray detectindatast.” https://www.kaggle.com/darshan1504/covid19-diagnosis-xraydataset.

Downloads

Published

2023-06-30

Issue

Section

Computer

How to Cite

[1]
M. Ismail, S. N. Binti Mustaffa, and M. Abed, “AI-Enabled Deep Learning Model for COVID-19 Identification Leveraging Internet of Things ”, WJCMS, vol. 2, no. 2, pp. 33–38, Jun. 2023, doi: 10.31185/wjcms.146.