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Patient's Data Privacy Protection in Medical Healthcare Transmission Services Using Back Propagation Learning

Computers & electrical engineering(2022)

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摘要
Medical healthcare services rely on communication technologies for exchanging digital records of patients. The new digitalizing of health records brings a specific change in healthcare services. The Electronic Health Records (EHRs) contains cumulative information about patients, such as medical history, observations, diagnostics, specimens, and reports. EHRs are sensitive information readily available for patient's and healthcare providers' access while maintaining privacy. Therefore, preserving security and privacy is of utmost importance for healthcare systems since it reduces the impact of adversaries on EHR exchange and transmissions through wearable antennas. This research introduces Healthcare Data Privacy (HDP) through Backpropagation Learning (BL) to improve privacy maintenance in medical healthcare transmission services using wearable devices. The proposed method identifies the need for encrypting and decrypting the accumulated healthcare data based on data integrity verifications. It operates on two levels for verifying the security measures to prevent data losses in successive transmissions of wearable devices.
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关键词
Backpropagation,Data Analytics,Electronic Health Record,Healthcare Services,Privacy,Encryption,Decryption,Learning,Data integrity,Security
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