WebQuorumChain: A web framework for quorum-based health care model learning

Xiyan Shao , Anh Pham , Tsung-Ting Kuo
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引用次数: 0

Abstract

Background

Institutions interested in collaborative machine learning to enhance healthcare may be deterred by privacy concerns. Decentralized federated learning is a privacy-preserving and security-robust tool to promote cross-institutional learning, however, such frameworks require complex setups and advanced technical expertise. Here, we aim to improve their utilization by offering an intuitive, user-friendly, and secure system that integrates both front-end and back-end functionalities.

Method

We develop WebQuorumChain, an integrated system built upon the QuorumChain schema. We test the system on a 2-site network using two publicly available health datasets and measure the average vertical and horizontal-ensemble AUCs per dataset across 30 trials, as well as the average execution time of the system.

Results

Our system achieved consistently high AUCs for each dataset (0.94–0.96), with reasonable total execution times ranging from 5 to 20 min, inclusive of modeling and all other system overheads. The front-end displays event logs generated from back-end layers in real time, in sync with the progress of the underlying algorithm.

Conclusions

We develop a web-based system that supplies users with visual tools to configure the federated learning network, manage training sessions, and inspect the learning process. WebQuorumChain helps schedule and monitor low-level processes without violating the fundamental security promises of cross-institutional decentralized machine learning. The system also maintains predictive accuracy and runtime efficiency in the presence of additional layers. WebQuorumChain will help promote meaningful collaboration among healthcare institutions, who can retain full control of their data privacy while contributing to data-driven discoveries.

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网络法定人数链:基于法定人数的医疗保健模型学习网络框架
背景对协作式机器学习以提高医疗保健水平感兴趣的机构可能会因隐私问题而望而却步。分散式联合学习是一种既能保护隐私又能保证安全的工具,可用于促进跨机构学习,然而,这种框架需要复杂的设置和先进的专业技术。在此,我们旨在通过提供一个直观、用户友好且安全的系统,将前端和后端功能集成在一起,从而提高其利用率。方法我们开发了WebQuorumChain,这是一个基于QuorumChain模式的集成系统。我们使用两个公开的健康数据集在一个两站网络上测试了该系统,并测量了每个数据集在30次测试中的平均纵向和横向集合AUC,以及系统的平均执行时间。前端实时显示后端层生成的事件日志,与底层算法的进度同步。结论我们开发了一个基于网络的系统,为用户提供可视化工具,用于配置联合学习网络、管理训练会话和检查学习过程。WebQuorumChain可帮助调度和监控底层进程,而不会违反跨机构分散式机器学习的基本安全承诺。该系统还能在存在额外层级的情况下保持预测准确性和运行效率。WebQuorumChain 将有助于促进医疗保健机构之间有意义的合作,这些机构可以完全控制其数据隐私,同时为数据驱动的发现做出贡献。
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来源期刊
Informatics in Medicine Unlocked
Informatics in Medicine Unlocked Medicine-Health Informatics
CiteScore
9.50
自引率
0.00%
发文量
282
审稿时长
39 days
期刊介绍: Informatics in Medicine Unlocked (IMU) is an international gold open access journal covering a broad spectrum of topics within medical informatics, including (but not limited to) papers focusing on imaging, pathology, teledermatology, public health, ophthalmological, nursing and translational medicine informatics. The full papers that are published in the journal are accessible to all who visit the website.
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