Preserving privacy in big data research: the role of federated learning in spine surgery.

IF 2.6 3区 医学 Q2 CLINICAL NEUROLOGY
European Spine Journal Pub Date : 2024-11-01 Epub Date: 2024-02-25 DOI:10.1007/s00586-024-08172-2
Hania Shahzad, Cole Veliky, Hai Le, Sheeraz Qureshi, Frank M Phillips, Yashar Javidan, Safdar N Khan
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引用次数: 0

Abstract

Purpose: Integrating machine learning models into electronic medical record systems can greatly enhance decision-making, patient outcomes, and value-based care in healthcare systems. Challenges related to data accessibility, privacy, and sharing can impede the development and deployment of effective predictive models in spine surgery. Federated learning (FL) offers a decentralized approach to machine learning that allows local model training while preserving data privacy, making it well-suited for healthcare settings. Our objective was to describe federated learning solutions for enhanced predictive modeling in spine surgery.

Methods: The authors reviewed the literature.

Results: FL has promising applications in spine surgery, including telesurgery, AI-based prediction models, and medical image segmentation. Implementing FL requires careful consideration of infrastructure, data quality, and standardization, but it holds the potential to revolutionize orthopedic surgery while ensuring patient privacy and data control.

Conclusions: Federated learning shows great promise in revolutionizing predictive modeling in spine surgery by addressing the challenges of data privacy, accessibility, and sharing. The applications of FL in telesurgery, AI-based predictive models, and medical image segmentation have demonstrated their potential to enhance patient outcomes and value-based care.

在大数据研究中保护隐私:联合学习在脊柱外科中的作用。
目的:将机器学习模型集成到电子病历系统中可大大提高医疗保健系统的决策、患者疗效和基于价值的护理。与数据可访问性、隐私和共享相关的挑战可能会阻碍脊柱外科有效预测模型的开发和部署。联合学习(FL)提供了一种分散的机器学习方法,允许在保护数据隐私的同时进行本地模型训练,因此非常适合医疗保健领域。我们的目标是描述用于增强脊柱手术预测建模的联合学习解决方案:作者查阅了相关文献:结果:FL 在脊柱手术中的应用前景广阔,包括远程手术、基于人工智能的预测模型和医学影像分割。实施FL需要仔细考虑基础设施、数据质量和标准化问题,但它有可能在确保患者隐私和数据控制的同时彻底改变骨科手术:联合学习通过解决数据隐私、可访问性和共享等难题,为脊柱外科预测建模带来了巨大的变革前景。FL在远程手术、基于人工智能的预测模型和医学影像分割中的应用证明了其在提高患者疗效和基于价值的护理方面的潜力。
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来源期刊
European Spine Journal
European Spine Journal 医学-临床神经学
CiteScore
4.80
自引率
10.70%
发文量
373
审稿时长
2-4 weeks
期刊介绍: "European Spine Journal" is a publication founded in response to the increasing trend toward specialization in spinal surgery and spinal pathology in general. The Journal is devoted to all spine related disciplines, including functional and surgical anatomy of the spine, biomechanics and pathophysiology, diagnostic procedures, and neurology, surgery and outcomes. The aim of "European Spine Journal" is to support the further development of highly innovative spine treatments including but not restricted to surgery and to provide an integrated and balanced view of diagnostic, research and treatment procedures as well as outcomes that will enhance effective collaboration among specialists worldwide. The “European Spine Journal” also participates in education by means of videos, interactive meetings and the endorsement of educative efforts. Official publication of EUROSPINE, The Spine Society of Europe
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