通过联邦学习增强医疗保健数据隐私和互操作性。

IF 3.5 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
PeerJ Computer Science Pub Date : 2025-05-08 eCollection Date: 2025-01-01 DOI:10.7717/peerj-cs.2870
Adil Akhmetov, Zohaib Latif, Benjamin Tyler, Adnan Yazici
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引用次数: 0

摘要

本文探讨了联邦学习(FL)与快速医疗保健互操作性资源(FHIR)协议的应用,以解决由于隐私问题和互操作性挑战而导致的数字健康革命(特别是来自可穿戴传感器的数据)产生的大量医疗保健数据利用不足的问题。尽管电子医疗记录、移动健康应用和可穿戴传感器取得了进步,但由于缺乏异构系统之间的数据分析和交换,目前的数字健康无法充分利用这些数据。为了解决这一差距,我们提出了一种结合FL和FHIR的新型融合平台,该平台使协作模型训练能够在促进数据标准化和互操作性的同时保护可穿戴传感器数据的隐私。与需要数据集中的传统集中式学习(CL)解决方案不同,我们的平台使用本地模型学习,这自然提高了数据的隐私性。我们的经验评估表明,在分类精度方面,联邦学习模型的表现与集中式学习模型一样好,甚至在数字上优于集中式学习模型,同时在回归方面也表现得同样好,如准确性、曲线下面积(AUC)、召回率和精度等指标所表明的那样,在分类方面,以及回归的平均绝对误差(MAE)、均方误差(MSE)和均方根误差(RMSE)。此外,我们开发了一个直观的automl驱动的web应用程序,它是FL和CL兼容的,以说明我们的平台在符合FHIR数据报告标准的情况下,对身体活动和能量消耗进行预测建模的可行性。这些结果突出了我们的fhir集成联邦学习平台作为未来可互操作和保护隐私的数字健康生态系统的实用框架的巨大潜力,以优化互联健康数据的使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing healthcare data privacy and interoperability with federated learning.

This article explores the application of federated learning (FL) with the Fast Healthcare Interoperability Resources (FHIR) protocol to address the underutilization of the huge volumes of healthcare data generated by the digital health revolution, especially those from wearable sensors, due to privacy concerns and interoperability challenges. Despite advances in electronic medical records, mobile health applications, and wearable sensors, current digital health cannot fully exploit these data due to the lack of data analysis and exchange between heterogeneous systems. To address this gap, we present a novel converged platform combining FL and FHIR, which enables collaborative model training that preserves the privacy of wearable sensor data while promoting data standardization and interoperability. Unlike traditional centralized learning (CL) solutions that require data centralization, our platform uses local model learning, which naturally improves data privacy. Our empirical evaluation demonstrates that federated learning models perform as well as, or even numerically better than, centralized learning models in terms of classification accuracy, while also performing equally well in regression, as indicated by metrics such as accuracy, area under the curve (AUC), recall, and precision, among others, for classification, and mean absolute error (MAE), mean squared error (MSE), and root mean square error (RMSE) for regression. In addition, we developed an intuitive AutoML-powered web application that is FL and CL compatible to illustrate the feasibility of our platform for predictive modeling of physical activity and energy expenditure, while complying with FHIR data reporting standards. These results highlight the immense potential of our FHIR-integrated federated learning platform as a practical framework for future interoperable and privacy-preserving digital health ecosystems to optimize the use of connected health data.

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来源期刊
PeerJ Computer Science
PeerJ Computer Science Computer Science-General Computer Science
CiteScore
6.10
自引率
5.30%
发文量
332
审稿时长
10 weeks
期刊介绍: PeerJ Computer Science is the new open access journal covering all subject areas in computer science, with the backing of a prestigious advisory board and more than 300 academic editors.
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