Computer-aided diagnosis (CAD) can help pathologists improve diagnostic accuracy together with consistency and repeatability for cancers. However, the CAD models trained with the histopathological images only from a single center (hospital) generally suffer from the generalization problem due to the straining inconsistencies among different centers. In this work, we propose a pseudo-data based self-supervised federated learning (FL) framework, named SSL-FT-BT, to improve both the diagnostic accuracy and generalization of CAD models. Specifically, the pseudo histopathological images are generated from each center, which contains inherent and specific properties corresponding to the real images in this center, but does not include the privacy...
Image analysis in digital pathology has proven to be one of the most challenging fields in medical i...
Although deep federated learning has received much attentionin recent years, progress has been made ...
Data government has played an instrumental role in securing the privacy-critical infrastructure in t...
Quantities and diversities of datasets are vital to model training in a variety of medical image dia...
Unsupervised learning has made substantial progress over the last few years, especially by means of ...
A label-efficient paradigm in computer vision is based on self-supervised contrastive pre-training o...
Unsupervised learning has been a long-standing goal of machine learning and is especially important ...
Deep learning-based medical image analysis is an effective and precise method for identifying variou...
Abstract Developing robust artificial intelligence (AI) models that generalize well to unseen datase...
In recent years, the application of federated learning to medical image classification has received ...
The unavailability of large amounts of well-labeled data poses a significant challenge in many medic...
Medical data is not fully exploited by Machine Learning (ML) techniques because the privacy concerns...
Invasive carcinoma of no special type (IC-NST) is known to be one of the most prevalent kinds of bre...
With recent developments in medical imaging facilities, extensive medical imaging data are produced ...
The success of image classification depends on copious annotated images for training. Annotating his...
Image analysis in digital pathology has proven to be one of the most challenging fields in medical i...
Although deep federated learning has received much attentionin recent years, progress has been made ...
Data government has played an instrumental role in securing the privacy-critical infrastructure in t...
Quantities and diversities of datasets are vital to model training in a variety of medical image dia...
Unsupervised learning has made substantial progress over the last few years, especially by means of ...
A label-efficient paradigm in computer vision is based on self-supervised contrastive pre-training o...
Unsupervised learning has been a long-standing goal of machine learning and is especially important ...
Deep learning-based medical image analysis is an effective and precise method for identifying variou...
Abstract Developing robust artificial intelligence (AI) models that generalize well to unseen datase...
In recent years, the application of federated learning to medical image classification has received ...
The unavailability of large amounts of well-labeled data poses a significant challenge in many medic...
Medical data is not fully exploited by Machine Learning (ML) techniques because the privacy concerns...
Invasive carcinoma of no special type (IC-NST) is known to be one of the most prevalent kinds of bre...
With recent developments in medical imaging facilities, extensive medical imaging data are produced ...
The success of image classification depends on copious annotated images for training. Annotating his...
Image analysis in digital pathology has proven to be one of the most challenging fields in medical i...
Although deep federated learning has received much attentionin recent years, progress has been made ...
Data government has played an instrumental role in securing the privacy-critical infrastructure in t...