A Collaborative Privacy Preserved Federated Learning Framework for Pneumonia Detection using Diverse Chest X-ray Data Silos

Pneumonia detection from chest X-rays remains one of the most challenging tasks in the traditional centralized framework due to the requirement of data consolidation at the central location raising data privacy and security concerns. The amalgamation of healthcare data at the centralized storage lea...

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Main Authors: Shagun Sharma, Kalpna Guleria
Format: Article
Language:English
Published: Ram Arti Publishers 2025-04-01
Series:International Journal of Mathematical, Engineering and Management Sciences
Subjects:
Online Access:https://www.ijmems.in/cms/storage/app/public/uploads/volumes/23-IJMEMS-24-0502-10-2-464-485-2025.pdf
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author Shagun Sharma
Kalpna Guleria
author_facet Shagun Sharma
Kalpna Guleria
author_sort Shagun Sharma
collection DOAJ
description Pneumonia detection from chest X-rays remains one of the most challenging tasks in the traditional centralized framework due to the requirement of data consolidation at the central location raising data privacy and security concerns. The amalgamation of healthcare data at the centralized storage leads to regulatory concerns passed by the governments of various countries. To address these challenges, a decentralized, federated learning framework has been proposed for early pneumonia detection in chest X-ray images with a 5-client architecture. This model enhances data privacy while performing collaborative learning with diverse data silos and resulting in improved predictions. The proposed federated learning framework has been trained with a pre-trained EfficientNetB3 model in the Independent and Identically Distributed (IID) and non-IID data distributions, while the model updation has been performed using federated proximal aggregation. The configuration of the proximal term has been kept as 0.05, achieving an accuracy of 99.32% on IID data and 96.14% on non-IID data. In addition, the proximal term has also been configured to 0.5, resulting the accuracy levels of 92.05% and 96.98% in IID data and non-IID data distributions, respectively. The results of the proposed model demonstrate the effectiveness of the federated learning model in pneumonia detection, highlighting its potential for real-world applications in decentralized healthcare configurations.
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spelling doaj-art-5c9e8e916ecc425eb0e473aafd46c9c92025-02-07T16:09:38ZengRam Arti PublishersInternational Journal of Mathematical, Engineering and Management Sciences2455-77492025-04-01102464485https://doi.org/10.33889/IJMEMS.2025.10.2.023A Collaborative Privacy Preserved Federated Learning Framework for Pneumonia Detection using Diverse Chest X-ray Data Silos Shagun Sharma0Kalpna Guleria1Chitkara University Institute of Engineering and Technology, Chitkara University, Punjab, India.Chitkara University Institute of Engineering and Technology, Chitkara University, Punjab, India.Pneumonia detection from chest X-rays remains one of the most challenging tasks in the traditional centralized framework due to the requirement of data consolidation at the central location raising data privacy and security concerns. The amalgamation of healthcare data at the centralized storage leads to regulatory concerns passed by the governments of various countries. To address these challenges, a decentralized, federated learning framework has been proposed for early pneumonia detection in chest X-ray images with a 5-client architecture. This model enhances data privacy while performing collaborative learning with diverse data silos and resulting in improved predictions. The proposed federated learning framework has been trained with a pre-trained EfficientNetB3 model in the Independent and Identically Distributed (IID) and non-IID data distributions, while the model updation has been performed using federated proximal aggregation. The configuration of the proximal term has been kept as 0.05, achieving an accuracy of 99.32% on IID data and 96.14% on non-IID data. In addition, the proximal term has also been configured to 0.5, resulting the accuracy levels of 92.05% and 96.98% in IID data and non-IID data distributions, respectively. The results of the proposed model demonstrate the effectiveness of the federated learning model in pneumonia detection, highlighting its potential for real-world applications in decentralized healthcare configurations.https://www.ijmems.in/cms/storage/app/public/uploads/volumes/23-IJMEMS-24-0502-10-2-464-485-2025.pdffederated learningdecentralized learningcollaborative learningdeep learningpneumonia detectionefficientnetb3
spellingShingle Shagun Sharma
Kalpna Guleria
A Collaborative Privacy Preserved Federated Learning Framework for Pneumonia Detection using Diverse Chest X-ray Data Silos
International Journal of Mathematical, Engineering and Management Sciences
federated learning
decentralized learning
collaborative learning
deep learning
pneumonia detection
efficientnetb3
title A Collaborative Privacy Preserved Federated Learning Framework for Pneumonia Detection using Diverse Chest X-ray Data Silos
title_full A Collaborative Privacy Preserved Federated Learning Framework for Pneumonia Detection using Diverse Chest X-ray Data Silos
title_fullStr A Collaborative Privacy Preserved Federated Learning Framework for Pneumonia Detection using Diverse Chest X-ray Data Silos
title_full_unstemmed A Collaborative Privacy Preserved Federated Learning Framework for Pneumonia Detection using Diverse Chest X-ray Data Silos
title_short A Collaborative Privacy Preserved Federated Learning Framework for Pneumonia Detection using Diverse Chest X-ray Data Silos
title_sort collaborative privacy preserved federated learning framework for pneumonia detection using diverse chest x ray data silos
topic federated learning
decentralized learning
collaborative learning
deep learning
pneumonia detection
efficientnetb3
url https://www.ijmems.in/cms/storage/app/public/uploads/volumes/23-IJMEMS-24-0502-10-2-464-485-2025.pdf
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