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Erschienen in: Optical and Quantum Electronics 3/2024

01.03.2024

E-healthcare application cyber security analysis using quantum machine learning in malicious user detection

verfasst von: Zhenkun Liu, Xu Jia, Bin Li

Erschienen in: Optical and Quantum Electronics | Ausgabe 3/2024

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Abstract

In the medical field, it is crucial to manage visual and auditory data generated by Internet of Things (IoT) devices. Cloud servers are often used to manage the massive amounts of data generated by these IoT devices. Current improvements in electronic and communication technology have greatly impacted the e-healthcare sector owing to the effective exchange of patient data. IoMTs, or the Internet of Medical Things, are a relatively recent development in the field of remote health monitoring. They are used in patient-centric systems for the transmission and tracking of patient data. Authentication and anomaly detection are two areas where modern medical systems make extensive use of encryption, biometrics, and machine learning (ML) technology. This study suggests a new method for assessing the cyber security of e-healthcare apps; one that makes use of quantum machine learning. Users of e-healthcare applications have been tracked and analysed to identify risky behaviours. A deep variational adversarial encoder network and a fuzzy Gaussian quantile neural network classify the characteristics of observed user activity data, leading to the identification of malicious users and an increase in network security. Recreation aftereffects of the proposed engineering show vigor with regards to proficient execution, including prescient misfortune = 7%, learning rate = goldilocks (0.5), record advancement = 23%, transmission influence = − 18 dBm, jitter = 32 ms, delay = 90 ms, throughput = 170 bytes, obligation cycle and conveyance = 10%, and dynamic serverless reactions. Proposed technique attained Random accuracy of 98%, F-1 Score of 75%, mean average Precision (mAP) of 65%, Specificity of 66%, kappa Co-efficient of 69%.

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Literatur
Zurück zum Zitat Das, S., Das, J., Modak, S., Mazumdar, K.: Internet of things with machine learning-based smart cardiovascular disease classifier for healthcare in secure platform. In: Internet of Things and Data Mining for Modern Engineering and Healthcare Applications, pp. 45–64. Chapman and Hall/CRC (2022) Das, S., Das, J., Modak, S., Mazumdar, K.: Internet of things with machine learning-based smart cardiovascular disease classifier for healthcare in secure platform. In: Internet of Things and Data Mining for Modern Engineering and Healthcare Applications, pp. 45–64. Chapman and Hall/CRC (2022)
Zurück zum Zitat Dhasarathan, C., Shanmugam, M., Kumar, M., Tripathi, D., Khapre, S., Shankar, A.: A nomadic multi-agent based privacy metrics for e-health care: a deep learning approach. Multimed. Tools Appl. 1–24 (2023) Dhasarathan, C., Shanmugam, M., Kumar, M., Tripathi, D., Khapre, S., Shankar, A.: A nomadic multi-agent based privacy metrics for e-health care: a deep learning approach. Multimed. Tools Appl. 1–24 (2023)
Zurück zum Zitat Khan, A.A., Laghari, A.A., Shafiq, M., Cheikhrouhou, O., Alhakami, W., Hamam, H., Shaikh, Z.A.: Healthcare ledger management: a blockchain and machine learning-enabled novel and secure architecture for the medical industry. Hum. Cent. Comput. Inf. Sci 12, 55 (2022), https://doi.org/10.22967/HCIS.2022.12.055 Khan, A.A., Laghari, A.A., Shafiq, M., Cheikhrouhou, O., Alhakami, W., Hamam, H., Shaikh, Z.A.: Healthcare ledger management: a blockchain and machine learning-enabled novel and secure architecture for the medical industry. Hum. Cent. Comput. Inf. Sci 12, 55 (2022), https://​doi.​org/​10.​22967/​HCIS.​2022.​12.​055
Zurück zum Zitat Kilincer, I.F., Ertam, F., Sengur, A., Tan, R.S., Acharya, U.R.: Automated detection of cybersecurity attacks in healthcare systems with recursive feature elimination and multilayer perceptron optimization. Biocybern. Biomed. Eng. 43(1), 30–41 (2023)CrossRef Kilincer, I.F., Ertam, F., Sengur, A., Tan, R.S., Acharya, U.R.: Automated detection of cybersecurity attacks in healthcare systems with recursive feature elimination and multilayer perceptron optimization. Biocybern. Biomed. Eng. 43(1), 30–41 (2023)CrossRef
Zurück zum Zitat Kishor, A., Jeberson, W.: Diagnosis of heart disease using internet of things and machine learning algorithms. In: Proceedings of Second International Conference on Computing, Communications, and Cyber-Security: IC4S 2020, pp. 691–702. Springer Singapore (2021) Kishor, A., Jeberson, W.: Diagnosis of heart disease using internet of things and machine learning algorithms. In: Proceedings of Second International Conference on Computing, Communications, and Cyber-Security: IC4S 2020, pp. 691–702. Springer Singapore (2021)
Zurück zum Zitat Kishor, A., Chakraborty, C., Jeberson, W. (2021). A novel fog computing approach for minimization of latency in healthcare using machine learning Kishor, A., Chakraborty, C., Jeberson, W. (2021). A novel fog computing approach for minimization of latency in healthcare using machine learning
Zurück zum Zitat Kumar, S., Srivastava, S., Mongia, S., Amsa, M.: Diagnosis of heart disease using machine learning classification technique in e-healthcare. J. Pharm. Negat. Results, 656–664 (2023) Kumar, S., Srivastava, S., Mongia, S., Amsa, M.: Diagnosis of heart disease using machine learning classification technique in e-healthcare. J. Pharm. Negat. Results, 656–664 (2023)
Zurück zum Zitat Kute, S.S., Tyagi, A.K., Aswathy, S.U.: Security, privacy and trust issues in internet of things and machine learning based e-healthcare. Intell. Interact. Multimed. Syst. e-Healthc. Appl. 291–317 (2022) Kute, S.S., Tyagi, A.K., Aswathy, S.U.: Security, privacy and trust issues in internet of things and machine learning based e-healthcare. Intell. Interact. Multimed. Syst. e-Healthc. Appl. 291–317 (2022)
Zurück zum Zitat Maseleno, A., Hashim, W., Perumal, E., Ilayaraja, M., Shankar, K.: Access control and classifier-based blockchain technology in e-healthcare applications. In: Intelligent Data Security Solutions for e-Health Applications, pp. 151–167. Academic Press (2020)CrossRef Maseleno, A., Hashim, W., Perumal, E., Ilayaraja, M., Shankar, K.: Access control and classifier-based blockchain technology in e-healthcare applications. In: Intelligent Data Security Solutions for e-Health Applications, pp. 151–167. Academic Press (2020)CrossRef
Zurück zum Zitat Sengan, S., Khalaf, O.I., Sharma, D.K., Hamad, A.A.: Secured and privacy-based IDS for healthcare systems on E-medical data using machine learning approach. Int. J. Reliab. Qual. E-Healthc. (IJRQEH) 11(3), 1–11 (2022a) Sengan, S., Khalaf, O.I., Sharma, D.K., Hamad, A.A.: Secured and privacy-based IDS for healthcare systems on E-medical data using machine learning approach. Int. J. Reliab. Qual. E-Healthc. (IJRQEH) 11(3), 1–11 (2022a)
Zurück zum Zitat Sengan, S., Khalaf, O.I., Rao, G.R.K., Sharma, D.K., Amarendra, K., Hamad, A.A.: Security-aware routing on wireless communication for E-health records monitoring using machine learning. Int. J. Reliab. Qual. E-Healthc. (IJRQEH) 11(3), 1–10 (2022b) Sengan, S., Khalaf, O.I., Rao, G.R.K., Sharma, D.K., Amarendra, K., Hamad, A.A.: Security-aware routing on wireless communication for E-health records monitoring using machine learning. Int. J. Reliab. Qual. E-Healthc. (IJRQEH) 11(3), 1–10 (2022b)
Zurück zum Zitat Tenepalli, D., Thandava Meganathan, N.: A review on machine learning and blockchain technology in E-healthcare. In: International Conference on Intelligent Systems Design and Applications, pp. 338–349. Springer Nature Switzerland, Cham (2022) Tenepalli, D., Thandava Meganathan, N.: A review on machine learning and blockchain technology in E-healthcare. In: International Conference on Intelligent Systems Design and Applications, pp. 338–349. Springer Nature Switzerland, Cham (2022)
Zurück zum Zitat Unal, D., Bennbaia, S., Catak, F.O.: Machine learning for the security of healthcare systems based on Internet of Things and edge computing. In: Cybersecurity and Cognitive Science, pp. 299–320. Academic Press (2022)CrossRef Unal, D., Bennbaia, S., Catak, F.O.: Machine learning for the security of healthcare systems based on Internet of Things and edge computing. In: Cybersecurity and Cognitive Science, pp. 299–320. Academic Press (2022)CrossRef
Metadaten
Titel
E-healthcare application cyber security analysis using quantum machine learning in malicious user detection
verfasst von
Zhenkun Liu
Xu Jia
Bin Li
Publikationsdatum
01.03.2024
Verlag
Springer US
Erschienen in
Optical and Quantum Electronics / Ausgabe 3/2024
Print ISSN: 0306-8919
Elektronische ISSN: 1572-817X
DOI
https://doi.org/10.1007/s11082-023-05854-x

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