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

Mohd Ismail, Siti Nur Binti Mustaffa, Munther H. Abed
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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
基于物联网的COVID-19识别人工智能深度学习模型
自2019年12月以来,应对COVID-19疫情强调了在医疗环境中及时、无差错地识别COVID-19感染者的重要性。为了有效地抗击疫情,在cxr上使用基于深度学习的COVID-19自动识别至关重要。本研究推荐采用集成深度TL的实时物联网系统,以实现COVID-19感染者的早期识别。该系统可以实时传播和识别COVID-19可疑人员。建议的物联网模型包含几个DL模型,包括InceptionResNetV2, VGG16, ResNet152V2和DenseNet201。这些模型存储在云服务器上,与医疗传感器一起用于收集胸部x光数据并检测感染。使用胸部x射线数据集将深度集成模型与六种迁移学习算法进行比较。对比研究表明,该方法有助于快速有效地诊断COVID-19可疑患者,为放射科医生提供了宝贵的支持。这项工作强调了利用深度迁移学习和物联网在实现COVID-19疑似患者早期识别中的重要性。该系统结合了深度集成模型,为协助放射科医生有效诊断COVID-19病例提供了实用的解决方案
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