通过缓解键盘记录器攻击增强物联网医疗保健的数据隐私

Atul Kumar, Ishu Sharma
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引用次数: 0

摘要

医疗保健行业已经被物联网(IoT)彻底改变,这使得开发各种应用程序来监测患者的健康状况并提供定制化护理成为可能。物联网在医疗保健中的应用方式之一是通过远程患者监控。这包括从支持物联网的设备(如血压计、温度计和心率监测器)收集实时数据,这可以帮助医疗保健专业人员在患者健康状况发生变化之前检测并做出反应。尽管物联网医疗保健应用程序有许多好处,但仍有一些关键的安全问题需要解决。其中一个问题是数据隐私,因为物联网设备收集了大量敏感的患者信息,需要保护这些信息免受未经授权的访问、黑客攻击和破坏。另一个问题是,由于安全保护不足和软件过时,物联网设备容易受到恶意软件和黑客攻击。网络攻击者可以利用物联网设备通过键盘记录器攻击远程获取专利数据。键盘记录器攻击造成的危害是巨大的,因为它们会泄露私人信息,如患者的私人详细信息,导致身份盗窃和其他犯罪。这些攻击还可能导致操作问题,例如物联网医疗保健响应时间下降、系统崩溃和文件损坏。键盘记录程序很难被发现,因为它们在后台秘密运行。本文提出了一种方法,用于在物联网医疗保健中早期检测键盘记录器攻击,以使用基于机器学习的方法保护患者的身份免受网络攻击者的攻击。提出的框架在物联网医疗数据集上进行了实验,以比较LightGBM、CNN和ANN机器学习模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Data Privacy of IoT Healthcare with Keylogger Attack Mitigation
The healthcare industry has been revolutionized by the Internet of Things (IoT), which has made it possible to develop various applications to monitor patients' health conditions and provide customized care. One of the ways in which IoT is being used in healthcare is through remote patient monitoring. This involves collecting real-time data from IoT-enabled devices such as blood pressure monitors, thermometers, and heart rate monitors, which can help healthcare professionals detect and respond to changes in a patient's health condition before they become critical. Despite the numerous benefits of IoT healthcare applications, there are critical security concerns that need to be addressed. One such concern is data privacy, as IoT devices collect a significant amount of sensitive patient information that needs to be protected from unauthorized access, hacking, and breaches. Another issue is the vulnerability of IoT devices to malware and hacking attacks due to inadequate security protections and outdated software. IoT devices can be utilized by cyber attackers to remotely get the patent’s data by causing keylogger attacks. The harm caused by keylogger attacks is significant, as they compromise private information such as patients’ private details, leading to identity theft and other crimes. These attacks can also cause operational problems such as degraded response time of IoT healthcare, system crashes, and corrupted files. Keyloggers can be difficult to detect as they run covertly in the background. In this paper, a methodology is proposed for early detection of keylogger attacks in IoT healthcare to preserve the patient’s identity from cyber attackers using the machine learning-based approach. The proposed framework is experimented on IoT healthcare dataset for comparing the performance of LightGBM, CNN, and ANN machine learning models.
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