Nayak Janmenjoy, Meher Saroj K, Souri Alireza, Naik Bighnaraj, Vimal S
Department of Computer Science, Maharaja Sriram Chandra Bhanja Deo (MSCB) University, Baripada, Odisha 757003 India.
Systems Science and Informatics Unit, Indian Statistical Institute (ISI), Bangalore Centre, 8th Mile, Mysore Road, RVCE Post, Bangalore, 560059 India.
J Supercomput. 2022;78(13):14866-14891. doi: 10.1007/s11227-022-04453-z. Epub 2022 Apr 10.
The Internet of Medical Things (IoMT) is a bionetwork of allied medical devices, sensors, wearable biosensor devices, etc. It is gradually reforming the healthcare industry by leveraging its capabilities to improve personalized healthcare services by enabling seamless communication of medical data. IoMT facilitates prompt emergency responses and provides improved quality of medical services with minimum cost. With the advancement of modern technology, progressively ubiquitous medical devices raise critical security and data privacy concerns through resource constraints and open connectivity. Vulnerabilities in IoMT devices allow unauthorized access for potential entry into healthcare and sensitive personal data. In addition, the patient may experience severe physical damage with the attack on IoMT devices. To provide security to IoMT devices and privacy to patient data, we have proposed a novel IoMT framework with the hybridization of Bayesian optimization and extreme learning machine (ELM). The proposed model derives encouraging performance with enhanced accuracy in decision-making process compared to similar state-of-the-art methods.
医疗物联网(IoMT)是由联合医疗设备、传感器、可穿戴生物传感器设备等组成的生物网络。它正通过利用其能力来改善个性化医疗服务,实现医疗数据的无缝通信,从而逐步重塑医疗行业。IoMT有助于迅速做出应急响应,并以最低成本提供更高质量的医疗服务。随着现代技术的进步,日益普及的医疗设备通过资源限制和开放连接引发了关键的安全和数据隐私问题。IoMT设备中的漏洞允许未经授权的访问,从而有可能获取医疗和敏感个人数据。此外,对IoMT设备的攻击可能会给患者带来严重的身体伤害。为了保障IoMT设备的安全并保护患者数据隐私,我们提出了一种将贝叶斯优化与极限学习机(ELM)相结合的新型IoMT框架。与类似的现有先进方法相比,该模型在决策过程中具有更高的准确性,表现令人鼓舞。