RETRACTED: Cloud-based secure data storage and access control for internet of medical things using federated learning
International Journal of Pervasive Computing and Communications
ISSN: 1742-7371
Article publication date: 19 May 2022
Issue publication date: 20 March 2024
Retraction statement
The publishers of International Journal of Pervasive Computing and Communications wish to retract the article Bhansali, P.K., Hiran, D., Kothari, H. and Gulati, K. (2024), “Cloud-based secure data storage and access control for internet of medical things using federated learning”, International Journal of Pervasive Computing and Communications, Vol. 20 No. 2, pp. 228-239. https://doi.org/10.1108/IJPCC-02-2022-0041https://doi.org/10.1108/IJPCC-02-2022-0041
An internal investigation into a series of submissions has uncovered evidence that the peer review process was compromised. As a result of these concerns, the findings of the article cannot be relied upon. This decision has been taken in accordance with Emerald's publishing ethics and the COPE guidelines on retractions. The authors of this paper would like to note that they do not agree with the content of this notice.
The publishers of the journal sincerely apologize to the readers.
Abstract
Purpose
The purpose of this paper Computing is a recent emerging cloud model that affords clients limitless facilities, lowers the rate of customer storing and computation and progresses the ease of use, leading to a surge in the number of enterprises and individuals storing data in the cloud. Cloud services are used by various organizations (education, medical and commercial) to store their data. In the health-care industry, for example, patient medical data is outsourced to a cloud server. Instead of relying onmedical service providers, clients can access theirmedical data over the cloud.
Design/methodology/approach
This section explains the proposed cloud-based health-care system for secure data storage and access control called hash-based ciphertext policy attribute-based encryption with signature (hCP-ABES). It provides access control with finer granularity, security, authentication and user confidentiality of medical data. It enhances ciphertext-policy attribute-based encryption (CP-ABE) with hashing, encryption and signature. The proposed architecture includes protection mechanisms to guarantee that health-care and medical information can be securely exchanged between health systems via the cloud. Figure 2 depicts the proposed work's architectural design.
Findings
For health-care-related applications, safe contact with common documents hosted on a cloud server is becoming increasingly important. However, there are numerous constraints to designing an effective and safe data access method, including cloud server performance, a high number of data users and various security requirements. This work adds hashing and signature to the classic CP-ABE technique. It protects the confidentiality of health-care data while also allowing for fine-grained access control. According to an analysis of security needs, this work fulfills the privacy and integrity of health information using federated learning.
Originality/value
The Internet of Things (IoT) technology and smart diagnostic implants have enhanced health-care systems by allowing for remote access and screening of patients’ health issues at any time and from any location. Medical IoT devices monitor patients’ health status and combine this information into medical records, which are then transferred to the cloud and viewed by health providers for decision-making. However, when it comes to information transfer, the security and secrecy of electronic health records become a major concern. This work offers effective data storage and access control for a smart healthcare system to protect confidentiality. CP-ABE ensures data confidentiality and also allows control on data access at a finer level. Furthermore, it allows owners to set up a dynamic patients health data sharing policy under the cloud layer. hCP-ABES proposed fine-grained data access, security, authentication and user privacy of medical data. This paper enhances CP-ABE with hashing, encryption and signature. The proposed method has been evaluated, and the results signify that the proposed hCP-ABES is feasible compared to other access control schemes using federated learning.
Keywords
Citation
Bhansali, P.K., Hiran, D., Kothari, H. and Gulati, K. (2024), "RETRACTED: Cloud-based secure data storage and access control for internet of medical things using federated learning", International Journal of Pervasive Computing and Communications, Vol. 20 No. 2, pp. 228-239. https://doi.org/10.1108/IJPCC-02-2022-0041
Publisher
:Emerald Publishing Limited
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