保护隐私的联邦数据访问和联邦学习:输血医学中改进的数据共享和人工智能模型开发。

IF 2.5 3区 医学 Q2 HEMATOLOGY
Transfusion Pub Date : 2025-01-01 Epub Date: 2024-11-29 DOI:10.1111/trf.18077
Na Li, Antoine Lewin, Shuoyan Ning, Marianne Waito, Michelle P Zeller, Alan Tinmouth, Andrew W Shih
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引用次数: 0

摘要

背景:健康数据包括来自医疗保健不同方面的数据,包括行政、数字健康和面向研究的数据。总之,健康数据有助于医疗保健操作、患者护理和研究并为其提供信息。将人工智能(AI)集成到医疗保健中需要了解这些数据基础设施,并解决数据可用性、隐私和治理等挑战。联邦学习(FL)是一种分散的人工智能训练方法,通过允许模型在不离开数据源的情况下从不同的数据集学习,从而确保隐私和安全,从而解决了这些挑战。本报告介绍了FL,并讨论了其在输血医学和血液供应链管理中的潜力。方法和讨论:FL可以通过增强预测分析、个性化医疗和操作效率,为输血医学提供显著的好处。FL在不同数据集上训练的预测模型可以提高预测输血需求的准确性。个性化的治疗计划可以通过汇总来自多个使用FL的机构的患者数据来改进,减少不良反应并改善结果。通过精确的需求预测和优化的物流,也可以实现运营效率。尽管具有优势,但FL面临着数据标准化、治理和偏见等挑战。协调各种数据源和确保公平、公正的模型需要先进的分析解决方案。成功的FL实施需要强大的IT基础设施和专业知识。结论:人工智能代表了医疗保健领域人工智能发展的变革性途径,特别是在输血医学领域。通过在保持数据隐私的同时利用不同的数据集,FL有可能增强预测、支持个性化治疗并优化资源管理,最终改善患者护理和医疗保健效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-preserving federated data access and federated learning: Improved data sharing and AI model development in transfusion medicine.

Background: Health data comprise data from different aspects of healthcare including administrative, digital health, and research-oriented data. Together, health data contribute to and inform healthcare operations, patient care, and research. Integrating artificial intelligence (AI) into healthcare requires understanding these data infrastructures and addressing challenges such as data availability, privacy, and governance. Federated learning (FL), a decentralized AI training approach, addresses these challenges by allowing models to learn from diverse datasets without data leaving its source, thus ensuring privacy and security are maintained. This report introduces FL and discusses its potential in transfusion medicine and blood supply chain management.

Methods and discussion: FL can offer significant benefits in transfusion medicine by enhancing predictive analytics, personalized medicine, and operational efficiency. Predictive models trained on diverse datasets by FL can improve accuracy in forecasting blood transfusion demands. Personalized treatment plans can be refined by aggregating patient data from multiple institutions using FL, reducing adverse reactions and improving outcomes. Operational efficiency can also be achieved through precise demand forecasting and optimized logistics. Despite its advantages, FL faces challenges such as data standardization, governance, and bias. Harmonizing diverse data sources and ensuring fair, unbiased models require advanced analytical solutions. Robust IT infrastructure and specialized expertise are needed for successful FL implementation.

Conclusion: FL represents a transformative approach to AI development in healthcare, particularly in transfusion medicine. By leveraging diverse datasets while maintaining data privacy, FL has the potential to enhance predictions, support personalized treatments, and optimize resource management, ultimately improving patient care and healthcare efficiency.

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来源期刊
Transfusion
Transfusion 医学-血液学
CiteScore
4.70
自引率
20.70%
发文量
426
审稿时长
1 months
期刊介绍: TRANSFUSION is the foremost publication in the world for new information regarding transfusion medicine. Written by and for members of AABB and other health-care workers, TRANSFUSION reports on the latest technical advances, discusses opposing viewpoints regarding controversial issues, and presents key conference proceedings. In addition to blood banking and transfusion medicine topics, TRANSFUSION presents submissions concerning patient blood management, tissue transplantation and hematopoietic, cellular, and gene therapies.
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