AI Article Synopsis

  • Federated learning in healthcare enables collaboration on model training using distributed data while maintaining privacy; however, traditional methods struggle to utilize unique institutional data features.* -
  • A new method called personalized progressive federated learning (PPFL) was proposed, which considers client-specific features and showed superior performance in in-hospital mortality prediction, with an accuracy of 0.941 and AUROC of 0.948.* -
  • PPFL not only outperformed conventional federated models but also retained strong performance with cancer data, identifying key features linked to mortality for different institutions.*

Article Abstract

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.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11460500PMC
http://dx.doi.org/10.1016/j.isci.2024.110943DOI Listing

Publication Analysis

Top Keywords

ppfl personalized
8
personalized progressive
8
federated learning
8
client-specific features
8
ppfl achieved
8
ppfl
5
progressive federated
4
learning method
4
method leveraging
4
leveraging healthcare
4

Similar Publications

Article Synopsis
  • Federated learning in healthcare enables collaboration on model training using distributed data while maintaining privacy; however, traditional methods struggle to utilize unique institutional data features.* -
  • A new method called personalized progressive federated learning (PPFL) was proposed, which considers client-specific features and showed superior performance in in-hospital mortality prediction, with an accuracy of 0.941 and AUROC of 0.948.* -
  • PPFL not only outperformed conventional federated models but also retained strong performance with cancer data, identifying key features linked to mortality for different institutions.*
View Article and Find Full Text PDF

Is mercury in fluorescent lamps the only risk to human health? A study of environmental mobility of toxic metals and human health risk assessment.

Chemosphere

December 2020

Analytical Chemistry Department, Chemistry Institute, Federal University of Rio de Janeiro (IQ/UFRJ), Avenue Athos da Silveira Ramos, Nº 149, Block A, 5th Floor, Technology Center, Postal Code: 21941-909, University City, Rio de Janeiro, RJ, Brazil.

Although fluorescent lamps (FL) are extensively used worldwide, recycling rates in some countries are still low. If disposed of inappropriately and broken, FL can cause soil contamination. Hg toxicity in FL is extensively discussed in the literature; however, few studies address the other toxic metals present in the phosphorous powder of FL (PPFL).

View Article and Find Full Text PDF

Flow limitation during sleep occurs when the rise in esophageal pressure is not accompanied by a flow increase which results in a non-rounded inspiratory flow shape. Short periods of flow limitation ending in an arousal or in a fall in SaO2 (hypopnea or upper airway resistance syndrome) are detrimental but the role of prolonged periods of flow limitation (PPFL) has not yet been clarified. This is important not only for diagnosis but also for nasal continuous positive airway pressure (CPAP) titration, especially for the automatic devices that need to be setup.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!