PPFL:一种保护隐私的个性化渐进联合学习方法,可利用不同医疗机构的具体特征

IF 4.6 2区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
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引用次数: 0

摘要

医疗保健领域的联合学习(FL)允许在分布式数据源上对模型进行协作训练,同时确保隐私并利用集体知识。然而,由于每个机构都单独收集数据,传统的联合学习无法利用不同机构的不同特征。我们提出了一种利用客户特定特征的个性化渐进式 FL(PPFL)方法,并利用真实世界数据集进行了评估。我们根据准确率和接收者操作特征下面积(AUROC)比较了我们的模型与传统模型在院内死亡率预测方面的表现。PPFL 的准确率为 0.941,AUROC 为 0.948,均高于本地模型和 FedAvg 算法的得分。我们还观察到 PPFL 在癌症数据方面也取得了类似的性能。我们发现客户的特定特征可能会影响死亡率。PPFL是一种针对异构分布式客户的个性化联合算法,它为客户特定的垂直特征信息扩展了特征空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

PPFL: A personalized progressive federated learning method for leveraging different healthcare institution-specific features

PPFL: A personalized progressive federated learning method for leveraging different healthcare institution-specific features

PPFL: A personalized progressive federated learning method for leveraging different healthcare institution-specific features
Federated learning (FL) in healthcare allows the collaborative training of models on distributed data sources, while ensuring privacy and leveraging collective knowledge. However, as each institution collects data separately, conventional FL cannot leverage the different features depending on the institution. We proposed a personalized progressive FL (PPFL) approach that leverages client-specific features and evaluated with real-world datasets. We compared the performance of in-hospital mortality prediction between our model and conventional models based on accuracy and area under the receiver operating characteristic (AUROC). PPFL achieved an accuracy of 0.941 and AUROC of 0.948, which were higher than the scores of the local models and FedAvg algorithm. We also observed that PPFL achieved a similar performance for cancer data. We identified client-specific features that can contribute to mortality. PPFL is a personalized federated algorithm for heterogeneously distributed clients that expands the feature space for client-specific vertical feature information.
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来源期刊
iScience
iScience Multidisciplinary-Multidisciplinary
CiteScore
7.20
自引率
1.70%
发文量
1972
审稿时长
6 weeks
期刊介绍: Science has many big remaining questions. To address them, we will need to work collaboratively and across disciplines. The goal of iScience is to help fuel that type of interdisciplinary thinking. iScience is a new open-access journal from Cell Press that provides a platform for original research in the life, physical, and earth sciences. The primary criterion for publication in iScience is a significant contribution to a relevant field combined with robust results and underlying methodology. The advances appearing in iScience include both fundamental and applied investigations across this interdisciplinary range of topic areas. To support transparency in scientific investigation, we are happy to consider replication studies and papers that describe negative results. We know you want your work to be published quickly and to be widely visible within your community and beyond. With the strong international reputation of Cell Press behind it, publication in iScience will help your work garner the attention and recognition it merits. Like all Cell Press journals, iScience prioritizes rapid publication. Our editorial team pays special attention to high-quality author service and to efficient, clear-cut decisions based on the information available within the manuscript. iScience taps into the expertise across Cell Press journals and selected partners to inform our editorial decisions and help publish your science in a timely and seamless way.
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