An IoT-Based Deep Learning Framework for Real-Time Detection of COVID-19 through Chest X-ray Images

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Abstract

Over the next decade, Internet of Things (IoT) and the high-speed 5G network will be crucial in enabling remote access to the healthcare system for easy and fast diagnosis. In this paper, an IoT-based deep learning computer-aided diagnosis (CAD) framework is proposed for online and real-time COVID-19 identification. The proposed work first fine-tuned the five state-of-the-art deep CNN models such as Xception, ResNet50, DenseNet201, MobileNet, and VGG19 and then combined these models into a majority voting deep ensemble CNN (DECNN) model in order to detect COVID-19 accurately. The findings demonstrate that the suggested framework, with a test accuracy of 98%, outperforms other relevant state-of-the-art methodologies in terms of overall performance. The proposed CAD framework has the potential to serve as a decision support system for general clinicians and rural health workers in order to diagnose COVID-19 at an early stage.

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APA

Karmakar, M., Choudhury, B., Patowary, R., & Nag, A. (2023). An IoT-Based Deep Learning Framework for Real-Time Detection of COVID-19 through Chest X-ray Images. Computers, 12(1). https://doi.org/10.3390/computers12010008

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