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Issues And Trends In Healthcare Delivery System01:29

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The issues and trends in healthcare delivery are constantly changing. The COVID-19 pandemic is one recent issue that wreaked havoc on healthcare systems, causing a shortage of healthcare workers, high demand for medicines and supplies, and increased medical expenditure due to a lack of insurance. Other issues include rising healthcare costs and care fragmentation.
Cost Containment
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An Efficient CNN-Based Deep Learning Model to Detect Malware Attacks (CNN-DMA) in 5G-IoT Healthcare Applications.

Ankita Anand1, Shalli Rani1, Divya Anand2

  • 1Chitkara University Institute of Engineering and Technology, Chitkara University, Rajpura 140401, India.

Sensors (Basel, Switzerland)
|October 13, 2021
PubMed
Summary
This summary is machine-generated.

This study introduces a new deep learning model, CNN-DMA, to detect malware in e-health applications. The model achieves 99% accuracy in identifying threats to sensitive patient data stored in the cloud.

Keywords:
5G-IoTCNNdeep learninghealthcaremalimgmalware

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Area of Science:

  • Cybersecurity
  • Artificial Intelligence
  • Health Informatics

Background:

  • E-health applications rely on 5G-IoT, increasing vulnerability to cyber threats targeting sensitive patient data stored in the cloud.
  • Traditional security measures are insufficient against sophisticated malware attacks in cloud-based e-health systems.
  • Deep learning offers potential for advanced threat detection in e-health environments.

Purpose of the Study:

  • To propose a novel deep learning model, CNN-DMA, for detecting malware in e-health applications.
  • To enhance the security of sensitive patient data within cloud-based healthcare systems.
  • To evaluate the effectiveness of the proposed CNN-DMA model against known malware.

Main Methods:

  • A hybrid deep learning model, CNN-DMA, was developed using a Convolutional Neural Network (CNN) classifier.
  • The model incorporates Dense, Dropout, and Flatten layers, trained with a batch size of 64 and 20 epochs.
  • Input images of 32x32x1 dimensions were utilized for the initial convolutional layer, trained on the Malimg dataset with 25 malware families.

Main Results:

  • The CNN-DMA model demonstrated high efficacy in detecting malware, specifically identifying Alueron.gen!J.
  • The proposed model achieved an accuracy rate of 99% in malware detection.
  • Performance was validated against state-of-the-art techniques, confirming its robustness.

Conclusions:

  • The CNN-DMA model presents a highly accurate and effective solution for malware detection in e-health applications.
  • This deep learning approach significantly enhances the security of cloud-stored patient data.
  • The findings support the integration of advanced AI techniques for securing critical healthcare infrastructure.