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Federated Active Learning with Transfer Learning: Empowering Edge Intelligence for Enhanced Lung Cancer Diagnosis

Farah Farid Babar, Faisal Jamil, Tariq Alsboui, Faiza Fareed Babar, Shabir Ahmad, Reem Ibrahim Alkanhel

202411 citationsDOI

Abstract

Federated Learning has emerged as a promising paradigm for collaborative model training in healthcare. FL allows institutions to share knowledge without compromising patient privacy. However, data annotation remains a bottleneck, especially in medical image studies. This work proposes a Federated Active Learning with a Transfer Learning framework for efficient labeling in lung cancer diagnosis. Using ensemble entropy-based uncertainty assessment, FAL-TL streamlines sample annotation, optimizing training across distributed healthcare institutions while safeguarding patient privacy. Using the IQOTH/NCCD Lung Cancer and Chest CT-Scan images Dataset, our FAL-TL framework achieves an impressive 99.20% accuracy, surpassing traditional machine learning models. By integrating transfer learning, FAL-TL adapts pre-trained models to healthcare datasets, significantly enhancing diagnostic accuracy. This research contributes to advancing FL techniques in healthcare, offering a scalable and privacy-preserving solution with transformative implications for diagnostics and patient care.

Topics & Concepts

Computer scienceTransfer of learningEnhanced Data Rates for GSM EvolutionCancerLung cancerArtificial intelligenceMedicineOncologyInternal medicinePrivacy-Preserving Technologies in Data
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