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迈向智能健康保险系统的安全技术驱动架构:一项实证研究。

Towards a Secure Technology-Driven Architecture for Smart Health Insurance Systems: An Empirical Study.

作者信息

Al-Quayed Fatima, Humayun Mamoona, Tahir Sidra

机构信息

Department of Computer Science, College of Computer and Information Sciences, Jouf University, Sakakah 72341, Saudi Arabia.

Department of Information Systems, College of Computer and Information Sciences, Jouf University, Sakakah 72311, Saudi Arabia.

出版信息

Healthcare (Basel). 2023 Aug 10;11(16):2257. doi: 10.3390/healthcare11162257.

Abstract

Health insurance has become a crucial component of people's lives as the occurrence of health problems rises. Unaffordable healthcare problems for individuals with little income might be a problem. In the case of a medical emergency, health insurance assists individuals in affording the costs of healthcare services and protects them financially against the possibility of debt. Security, privacy, and fraud risks may impact the numerous benefits of health insurance. In recent years, health insurance fraud has been a contentious topic due to the substantial losses it causes for individuals, commercial enterprises, and governments. Therefore, there is a need to develop mechanisms for identifying health insurance fraud incidents. Furthermore, a large quantity of highly sensitive electronic health insurance data are generated on a daily basis, which attracts fraudulent users. Motivated by these facts, we propose a smart healthcare insurance framework for fraud detection and prevention (SHINFDP) that leverages the capabilities of cutting-edge technologies including blockchain, 5G, cloud, and machine learning (ML) to enhance the health insurance process. The proposed framework is evaluated using mathematical modeling and an industrial focus group. In addition, a case study was demonstrated to illustrate the SHINFDP's applicability in enhancing the security and effectiveness of health insurance. The findings indicate that the SHINFDP aids in the detection of healthcare fraud at early stages. Furthermore, the results of the focus group show that SHINFDP is adaptable and simple to comprehend. The case study further strengthens the findings and also describes the implications of the proposed solution in a real setting.

摘要

随着健康问题的增多,健康保险已成为人们生活中的关键组成部分。对于低收入个人来说,难以负担医疗费用可能是个问题。在医疗紧急情况下,健康保险帮助个人支付医疗服务费用,并在经济上保护他们免受债务风险。安全、隐私和欺诈风险可能会影响健康保险的诸多益处。近年来,健康保险欺诈一直是一个有争议的话题,因为它给个人、商业企业和政府造成了巨大损失。因此,需要开发识别健康保险欺诈事件的机制。此外,每天都会产生大量高度敏感的电子健康保险数据,这吸引了欺诈者。基于这些事实,我们提出了一个用于欺诈检测和预防的智能医疗保险框架(SHINFDP),该框架利用区块链、5G、云计算和机器学习(ML)等前沿技术的能力来优化医疗保险流程。使用数学建模和行业焦点小组对所提出的框架进行了评估。此外,通过一个案例研究展示了SHINFDP在提高医疗保险安全性和有效性方面的适用性。研究结果表明,SHINFDP有助于在早期阶段检测医疗欺诈。此外,焦点小组的结果表明,SHINFDP具有适应性且易于理解。案例研究进一步强化了这些发现,并描述了所提出的解决方案在实际环境中的影响。

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