Artificial Intelligence and Corruption: Opportunities and Challenges in the Health Sector.

IF 1.9 4区 医学 Q3 HEALTH POLICY & SERVICES
Paula Del Rey-Puech, Dina Balabanova, Martin McKee
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Abstract

Corruption in health systems diverts resources, erodes trust, and reduces service quality. Traditional oversight methods struggle to detect fraudulent patterns, but Artificial Intelligence (AI) offers new possibilities. AI can analyse large datasets to predict corruption risks and detect irregularities in procurement, insurance claims, and counterfeit medicines. Successful applications include AI-powered tools that flag suspicious transactions, expose bid-rigging in procurement, and identify fraudulent medical billing. AI can also complement other analytical tools to help track counterfeit drug supply chains through image recognition and network analysis. However, AI's impact depends on how it is deployed. Government-led AI initiatives may enhance transparency but risk reinforcing power imbalances or enabling authoritarian control. In contrast, civil society-driven efforts can empower citizens to hold authorities accountable but face challenges like limited data access and misinformation risks. Moreover, AI can also facilitate corruption in the health system through biased algorithms, deepfake propaganda, or manipulated AI-driven decision-making in resource allocation. Maximising AI's anti-corruption potential in healthcare requires investments in skilled personnel and data systems. AI should complement human oversight, with transparent auditing mechanisms to mitigate biases. Integrating blockchain and AI technologies may enhance accountability by securing procurement records and preventing data manipulation. While AI presents significant opportunities, its application to anti-corruption remains a political issue as much as a technological one. Careful governance, ethical and legal safeguards, and balanced implementation will determine whether AI combats corruption or exacerbates abuses.

人工智能与腐败:卫生部门的机遇与挑战。
卫生系统中的腐败转移了资源,侵蚀了信任,降低了服务质量。传统的监管方法很难发现欺诈模式,但人工智能(AI)提供了新的可能性。人工智能可以分析大型数据集,以预测腐败风险,并发现采购、保险索赔和假药方面的违规行为。成功的应用包括人工智能工具,这些工具可以标记可疑交易,揭露采购中的操纵投标行为,并识别欺诈性医疗账单。人工智能还可以补充其他分析工具,通过图像识别和网络分析来帮助跟踪假药供应链。然而,人工智能的影响取决于它的部署方式。政府主导的人工智能计划可能会提高透明度,但可能会加剧权力不平衡或实现威权控制。相比之下,民间社会推动的努力可以增强公民对当局问责的能力,但也面临数据获取受限和错误信息风险等挑战。此外,人工智能还可以通过有偏见的算法、深度虚假宣传或操纵人工智能驱动的资源分配决策,促进卫生系统的腐败。最大限度地发挥人工智能在医疗保健领域的反腐败潜力,需要对熟练人员和数据系统进行投资。人工智能应该补充人类的监督,通过透明的审计机制来减轻偏见。整合区块链和人工智能技术可以通过保护采购记录和防止数据操纵来加强问责制。尽管人工智能带来了巨大的机遇,但它在反腐败方面的应用仍然是一个政治问题,同样也是一个技术问题。谨慎的治理、道德和法律保障以及平衡的实施将决定人工智能是打击腐败还是加剧滥用。
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来源期刊
CiteScore
4.50
自引率
3.70%
发文量
197
期刊介绍: Policy making and implementation, planning and management are widely recognized as central to effective health systems and services and to better health. Globalization, and the economic circumstances facing groups of countries worldwide, meanwhile present a great challenge for health planning and management. The aim of this quarterly journal is to offer a forum for publications which direct attention to major issues in health policy, planning and management. The intention is to maintain a balance between theory and practice, from a variety of disciplines, fields and perspectives. The Journal is explicitly international and multidisciplinary in scope and appeal: articles about policy, planning and management in countries at various stages of political, social, cultural and economic development are welcomed, as are those directed at the different levels (national, regional, local) of the health sector. Manuscripts are invited from a spectrum of different disciplines e.g., (the social sciences, management and medicine) as long as they advance our knowledge and understanding of the health sector. The Journal is therefore global, and eclectic.
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