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基于智能合约的医疗保险欺诈检测解决方案的开发平台自动推荐系统:分类法与性能评估。

Automatic Recommender System of Development Platforms for Smart Contract-Based Health Care Insurance Fraud Detection Solutions: Taxonomy and Performance Evaluation.

机构信息

Intelligent Computing and Communication Systems Laboratory, Computer Science Department, American University of Culture and Education, Beirut, Lebanon.

Intelligent Distributed Computing and Systems Laboratory, Department of Computer Science and Software Engineering, College of Information Technology, United Arab Emirates University, Al Ain, Abu Dhabi, United Arab Emirates.

出版信息

J Med Internet Res. 2024 Oct 18;26:e50730. doi: 10.2196/50730.

Abstract

BACKGROUND

Health care insurance fraud is on the rise in many ways, such as falsifying information and hiding third-party liability. This can result in significant losses for the medical health insurance industry. Consequently, fraud detection is crucial. Currently, companies employ auditors who manually evaluate records and pinpoint fraud. However, an automated and effective method is needed to detect fraud with the continually increasing number of patients seeking health insurance. Blockchain is an emerging technology and is constantly evolving to meet business needs. With its characteristics of immutability, transparency, traceability, and smart contracts, it demonstrates its potential in the health care domain. In particular, self-executable smart contracts are essential to reduce the costs associated with traditional paradigms, which are mostly manual, while preserving privacy and building trust among health care stakeholders, including the patient and the health insurance networks. However, with the proliferation of blockchain development platform options, selecting the right one for health care insurance can be difficult. This study addressed this void and developed an automated decision map recommender system to select the most effective blockchain platform for insurance fraud detection.

OBJECTIVE

This study aims to develop smart contracts for detecting health care insurance fraud efficiently. Therefore, we provided a taxonomy of fraud scenarios and implemented their detection using a blockchain platform that was suitable for health care insurance fraud detection. To automatically and efficiently select the best platform, we proposed and implemented a decision map-based recommender system. For developing the decision-map, we proposed a taxonomy of 102 blockchain platforms.

METHODS

We developed smart contracts for 12 fraud scenarios that we identified in the literature. We used the top 2 blockchain platforms selected by our proposed decision-making map-based recommender system, which is tailored for health care insurance fraud. The map used our taxonomy of 102 blockchain platforms classified according to their application domains.

RESULTS

The recommender system demonstrated that Hyperledger Fabric was the best blockchain platform for identifying health care insurance fraud. We validated our recommender system by comparing the performance of the top 2 platforms selected by our system. The blockchain platform taxonomy that we created revealed that 59 blockchain platforms are suitable for all application domains, 25 are suitable for financial services, and 18 are suitable for various application domains. We implemented fraud detection based on smart contracts.

CONCLUSIONS

Our decision map recommender system, which was based on our proposed taxonomy of 102 platforms, automatically selected the top 2 platforms, which were Hyperledger Fabric and Neo, for the implementation of health care insurance fraud detection. Our performance evaluation of the 2 platforms indicated that Fabric surpassed Neo in all performance metrics, as depicted by our recommender system. We provided an implementation of fraud detection based on smart contracts.

摘要

背景

医疗保健保险欺诈正在以多种方式上升,例如伪造信息和隐藏第三方责任。这可能会给医疗保险行业造成重大损失。因此,欺诈检测至关重要。目前,公司聘请审计员手动评估记录并发现欺诈行为。但是,需要一种自动化且有效的方法来检测随着寻求医疗保险的患者数量不断增加而出现的欺诈行为。区块链是一种新兴技术,不断发展以满足业务需求。凭借其不可变、透明、可追溯和智能合约的特点,它在医疗保健领域展示了其潜力。特别是,自我执行的智能合约对于降低与传统范式相关的成本至关重要,传统范式主要是手动的,同时在包括患者和医疗保险网络在内的医疗保健利益相关者之间建立隐私和信任。然而,随着区块链开发平台选项的激增,为医疗保险选择正确的平台可能具有挑战性。本研究解决了这一空白,并开发了一种自动决策图推荐系统,以选择最有效的区块链平台来检测医疗保险欺诈。

目的

本研究旨在有效地检测医疗保健保险欺诈。因此,我们提供了欺诈场景的分类法,并使用适合医疗保健保险欺诈检测的区块链平台实施了其检测。为了自动有效地选择最佳平台,我们提出并实施了基于决策图的推荐系统。为了开发决策图,我们提出了一个分类法,其中包含 102 个区块链平台。

方法

我们为文献中确定的 12 个欺诈场景开发了智能合约。我们使用我们基于决策图的推荐系统选择的前 2 个区块链平台,该系统专门用于医疗保健保险欺诈。该地图使用了我们根据其应用领域对 102 个区块链平台进行分类的分类法。

结果

推荐系统表明 Hyperledger Fabric 是识别医疗保健保险欺诈的最佳区块链平台。我们通过比较我们系统选择的前 2 个平台的性能来验证我们的推荐系统。我们创建的区块链平台分类法表明,59 个区块链平台适用于所有应用领域,25 个适用于金融服务,18 个适用于各种应用领域。我们基于智能合约实施了欺诈检测。

结论

我们的决策图推荐系统基于我们提出的 102 个平台分类法,自动选择了前 2 个平台,即 Hyperledger Fabric 和 Neo,用于实施医疗保健保险欺诈检测。我们对这 2 个平台的性能评估表明,在我们的推荐系统所描绘的所有性能指标中,Fabric 都超过了 Neo。我们提供了基于智能合约的欺诈检测实施。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/570f/11530721/93c4067df93b/jmir_v26i1e50730_fig1.jpg

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