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Privacy-preserving federated learning with light-weight attention improved CNNs for automated leukemia detection across distributed medical imaging
by
Khan, Nabeel Ahmed
, Awan, Muhammad Zeerak
, Strakos, Petr
, Jhangeer, Adil
, Riha, Lubomir
in
631/114
/ 631/67
/ 639/705
/ 692/308
/ 692/700
/ Artificial intelligence
/ Classification
/ Computer Security
/ Convolutional Neural Networks
/ Datasets
/ Enhanced CNN
/ Explainable model
/ Federated Learning
/ Health care
/ Humanities and Social Sciences
/ Humans
/ Learning
/ Leukemia
/ Leukemia - classification
/ Leukemia - diagnosis
/ Leukemia - diagnostic imaging
/ Lightweight architecture
/ multidisciplinary
/ Neural networks
/ Privacy
/ Privacy-preserving
/ Science
/ Science (multidisciplinary)
/ Training
2026
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Privacy-preserving federated learning with light-weight attention improved CNNs for automated leukemia detection across distributed medical imaging
by
Khan, Nabeel Ahmed
, Awan, Muhammad Zeerak
, Strakos, Petr
, Jhangeer, Adil
, Riha, Lubomir
in
631/114
/ 631/67
/ 639/705
/ 692/308
/ 692/700
/ Artificial intelligence
/ Classification
/ Computer Security
/ Convolutional Neural Networks
/ Datasets
/ Enhanced CNN
/ Explainable model
/ Federated Learning
/ Health care
/ Humanities and Social Sciences
/ Humans
/ Learning
/ Leukemia
/ Leukemia - classification
/ Leukemia - diagnosis
/ Leukemia - diagnostic imaging
/ Lightweight architecture
/ multidisciplinary
/ Neural networks
/ Privacy
/ Privacy-preserving
/ Science
/ Science (multidisciplinary)
/ Training
2026
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Privacy-preserving federated learning with light-weight attention improved CNNs for automated leukemia detection across distributed medical imaging
by
Khan, Nabeel Ahmed
, Awan, Muhammad Zeerak
, Strakos, Petr
, Jhangeer, Adil
, Riha, Lubomir
in
631/114
/ 631/67
/ 639/705
/ 692/308
/ 692/700
/ Artificial intelligence
/ Classification
/ Computer Security
/ Convolutional Neural Networks
/ Datasets
/ Enhanced CNN
/ Explainable model
/ Federated Learning
/ Health care
/ Humanities and Social Sciences
/ Humans
/ Learning
/ Leukemia
/ Leukemia - classification
/ Leukemia - diagnosis
/ Leukemia - diagnostic imaging
/ Lightweight architecture
/ multidisciplinary
/ Neural networks
/ Privacy
/ Privacy-preserving
/ Science
/ Science (multidisciplinary)
/ Training
2026
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Privacy-preserving federated learning with light-weight attention improved CNNs for automated leukemia detection across distributed medical imaging
Journal Article
Privacy-preserving federated learning with light-weight attention improved CNNs for automated leukemia detection across distributed medical imaging
2026
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Overview
This research work describes a lightweight, secure, and interpretable federated learning framework for automatic leukemia classification, which identifies and addresses various problems regarding clinical data security and collaborative model building among partnering healthcare organizations. This framework employs a distributed learning paradigm that allows a number of healthcare facilities to work together to build a high predictive performance classification model while training the model without exchanging sensitive information about patient data, thus ensuring data privacy and methodological reproducibility. The proposed framework employs a lightweight attention-enhanced convolutional neural network (CNN) for the automated classification of leukemia cells to one of the four categories: benign, early, pre-leukemic, and pro-leukemic at only 0.14 s/batch. The global model at 3 clients achieves 95.70% test accuracy while at 5 clients and increased training rounds achieve 96.56% on test set on a weighted aggregation method. Additionally, for increased clinical interpretability and transparency explainable methods are used in this study.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
Subject
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