Quantities and diversities of datasets are vital to model training in a variety of medical image diagnosis applications. However, there are the following problems in real scenes: the required data may not be available in a single institution due to the number of patients or the type of pathology, and it is often not feasible to share patient data due to medical data privacy regulations. This means keeping private data safe is required and has become an obstacle in fusing data from multi-party to train a medical model. To solve the problems, we propose a federated learning framework, which allows knowledge fusion achieved by sharing the model parameters of each client through federated training rather than sharing data. Based on breast cance...
Due to medical data privacy regulations, it is often infeasible to collect and share patient data in...
Machine learning has revolutionized every facet of human life, while also becoming more accessible ...
ObjectivesFederated learning (FL) allows multiple institutions to collaboratively develop a machine ...
Deep learning-based medical image analysis is an effective and precise method for identifying variou...
With recent developments in medical imaging facilities, extensive medical imaging data are produced ...
AbstractMachine learning has revolutionized every facet of human life, while also becoming more acce...
Objectives Federated learning (FL) allows multiple institutions to collaboratively develop a machine...
Federated learning is a data decentralization privacy-preserving technique used to perform machine o...
Advances have been made in the field of Machine Learning showing that it is an effective tool that c...
Federated learning is a data decentralization privacy-preserving technique used to perform machine o...
Medical institutions often revoke data access due to the privacy concern of patients. Federated Lear...
Invasive carcinoma of no special type (IC-NST) is known to be one of the most prevalent kinds of bre...
Computer-aided diagnosis (CAD) can help pathologists improve diagnostic accuracy together with consi...
International audienceRecent medical applications are largely dominated by the application of Machin...
Federated learning is a machine learning method that allows decentralized training of deep neural ne...
Due to medical data privacy regulations, it is often infeasible to collect and share patient data in...
Machine learning has revolutionized every facet of human life, while also becoming more accessible ...
ObjectivesFederated learning (FL) allows multiple institutions to collaboratively develop a machine ...
Deep learning-based medical image analysis is an effective and precise method for identifying variou...
With recent developments in medical imaging facilities, extensive medical imaging data are produced ...
AbstractMachine learning has revolutionized every facet of human life, while also becoming more acce...
Objectives Federated learning (FL) allows multiple institutions to collaboratively develop a machine...
Federated learning is a data decentralization privacy-preserving technique used to perform machine o...
Advances have been made in the field of Machine Learning showing that it is an effective tool that c...
Federated learning is a data decentralization privacy-preserving technique used to perform machine o...
Medical institutions often revoke data access due to the privacy concern of patients. Federated Lear...
Invasive carcinoma of no special type (IC-NST) is known to be one of the most prevalent kinds of bre...
Computer-aided diagnosis (CAD) can help pathologists improve diagnostic accuracy together with consi...
International audienceRecent medical applications are largely dominated by the application of Machin...
Federated learning is a machine learning method that allows decentralized training of deep neural ne...
Due to medical data privacy regulations, it is often infeasible to collect and share patient data in...
Machine learning has revolutionized every facet of human life, while also becoming more accessible ...
ObjectivesFederated learning (FL) allows multiple institutions to collaboratively develop a machine ...