Volume 0 , Issue 1 , PP: 15-25, 2019 | Cite this article as | XML | PDF | Full Length Article
Ibrahim M. EL-Hasnony 1 * , Mohamed Elhoseny 2 , Mohammed K. Hassan 3
Recently, information security in the healthcare sector has become essential to ensure confidentiality in medical data. At the same time, automated disease diagnosis using deep learning (DL) models also gained considerable attention to accomplish enhanced classification performance. This paper designs an intelligent neighborhood indexing sequence based on encoding with a classification model for healthcare information security (INISEC-HIS). The proposed INISEC-HIS technique aims to accomplish security in medical data transmission and diagnosis. The neighborhood indexing sequence (NIS) technique is applied to securely transmit the data, which transforms the medical data into an encoded format. Besides, a novel artificial fish swarm algorithm (AFSA) with deep neural networks (DNN) model is used for the classification process. The design of AFSA to optimally adjust the hyperparameters of the DNN model shows the study's novelty. An extensive simulation analysis takes place to examine the improved outcomes of the INISEC-HIS technique, and the obtained results highlighted the supremacy over the other techniques.
Healthcare, Information security, Encryption, Data encoding, Deep learning, Disease diagnosis
[1] Engelhardt, M.A., 2017. Hitching healthcare to the chain: An introduction to blockchain technology in the healthcare sector. Technology Innovation Management Review, 7(10).
[2] Javed, S.A. and Ilyas, F., 2018. Service quality and satisfaction in healthcare sector of Pakistan—the patients’ expectations. International journal of health care quality assurance.
[3] Collyer, F.M., Willis, K.F. and Lewis, S., 2017. Gatekeepers in the healthcare sector: Knowledge and Bourdieu's concept of field. Social Science & Medicine, 186, pp.96-103.
[4] Almajali, D.A. and Tarhini, A., 2016. Antecedents of ERP systems implementation success: a study on Jordanian healthcare sector. Journal of Enterprise Information Management.
[5] Ghazisaeidi, M., Safdari, R., Torabi, M., Mirzaee, M., Farzi, J. and Goodini, A., 2015. Development of performance dashboards in healthcare sector: key practical issues. Acta Informatica Medica, 23(5), p.317.
[6] Ahsan, K. and Rahman, S., 2017. Green public procurement implementation challenges in Australian public healthcare sector. Journal of Cleaner Production, 152, pp.181-197.
[7] Manyazewal, T. and Matlakala, M.C., 2017. Beyond patient care: the impact of healthcare reform on job satisfaction in the Ethiopian public healthcare sector. Human resources for health, 15(1), pp.1-9.
[8] Mascia, D., Dello Russo, S. and Morandi, F., 2015. Exploring professionals' motivation to lead: a cross-level study in the healthcare sector. The International Journal of Human Resource Management, 26(12), pp.1622-1644.
[9] Evans, J.M., Brown, A. and Baker, G.R., 2015. Intellectual capital in the healthcare sector: a systematic review and critique of the literature. BMC health services research, 15(1), pp.1-14.
[10] Shaikh, M.U., Ahmad, S.A. and Adnan, W.A.W., 2018, December. Investigation of data encryption algorithm for secured transmission of electrocardiograph (ECG) signal. In 2018 IEEE-EMBS Conference on Biomedical Engineering and Sciences (IECBES) (pp. 274-278). IEEE.
[11] Carpov, S., Nguyen, T.H., Sirdey, R., Constantino, G. and Martinelli, F., 2016, June. Practical privacy-preserving medical diagnosis using homomorphic encryption. In 2016 IEEE 9th International Conference on Cloud Computing (CLOUD) (pp. 593-599). IEEE.
[12] Elhoseny, M., Ramírez-González, G., Abu-Elnasr, O.M., Shawkat, S.A., Arunkumar, N. and Farouk, A., 2018. Secure medical data transmission model for IoT-based healthcare systems. Ieee Access, 6, pp.20596-20608.
[13] Hamza, R., Muhammad, K., Arunkumar, N. and Ramirez-Gonzalez, G., 2017. Hash based encryption for keyframes of diagnostic hysteroscopy. IEEE Access, 6, pp.60160-60170.
[14] Chen, C.L., Hu, J.X., Fan, C.L. and Wang, K.H., 2016, October. Design of a secure medical data sharing system via an authorized mechanism. In 2016 IEEE International Conference on Systems, Man, and Cybernetics (SMC) (pp. 002478-002482). IEEE.
[15] Hua, J., Zhu, H., Wang, F., Liu, X., Lu, R., Li, H. and Zhang, Y., 2018. CINEMA: Efficient and privacy-preserving online medical primary diagnosis with skyline query. IEEE Internet of Things Journal, 6(2), pp.1450-1461.
[16] Le, S.T., Prilepsky, J.E. and Turitsyn, S.K., 2015. Nonlinear inverse synthesis technique for optical links with lumped amplification. Optics express, 23(7), pp.8317-8328.
[17] Yu, H., Tan, Z.H., Ma, Z., Martin, R. and Guo, J., 2017. Spoofing detection in automatic speaker verification systems using DNN classifiers and dynamic acoustic features. IEEE transactions on neural networks and learning systems, 29(10), pp.4633-4644.
[18] Zhang, C., Zhang, F.M., Li, F. and Wu, H.S., 2014, June. Improved artificial fish swarm algorithm. In 2014 9th IEEE Conference on Industrial Electronics and Applications (pp. 748-753). IEEE.