The largest bottleneck to the development of convolutional neural network (CNN) models in the computational pathology domain is the collection and curation of diverse training datasets. Training CNNs requires large cohorts of image data, and model generalizability is dependent on training data heterogeneity. Including data from multiple centers enhances the generalizability of CNN-based models, but this is hindered by the logistical challenges of sharing medical data. In this paper, we explore the feasibility of training our recently developed cloud-based segmentation tool (Histo-Cloud) using federated learning. Using a dataset of renal tissue biopsies we show that federated training to segment interstitial fibrosis and tubular atrophy (IFT...
Data scarcity is a common issue when training deep learning models for digital pathology, as large e...
In digital pathology, deep learning has been shown to have a wide range of applications, from cancer...
Obtaining large amounts of high quality labeled microscopy data is expensive and time-consuming. To ...
The largest bottleneck to the development of convolutional neural network (CNN) models in the comput...
BackgroundImage-based machine learning tools hold great promise for clinical applications in patholo...
Background: Image-based machine learning tools hold great promise for clinical applications in patho...
Artificial intelligence, and more precisely deep learning, has shown remarkable performance in the f...
Federated learning is an emerging paradigm allowing large-scale decentralized learning without shari...
In Federated Learning (FL), data communication among clients is denied. However, it is difficult to ...
International audienceFederated learning and its application to medical image segmentation have rece...
Objective. De-centralized data analysis becomes an increasingly preferred option in the healthcare d...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
Training deep learning models for medical imaging requires access to large volumes of sensitive pati...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
Quantities and diversities of datasets are vital to model training in a variety of medical image dia...
Data scarcity is a common issue when training deep learning models for digital pathology, as large e...
In digital pathology, deep learning has been shown to have a wide range of applications, from cancer...
Obtaining large amounts of high quality labeled microscopy data is expensive and time-consuming. To ...
The largest bottleneck to the development of convolutional neural network (CNN) models in the comput...
BackgroundImage-based machine learning tools hold great promise for clinical applications in patholo...
Background: Image-based machine learning tools hold great promise for clinical applications in patho...
Artificial intelligence, and more precisely deep learning, has shown remarkable performance in the f...
Federated learning is an emerging paradigm allowing large-scale decentralized learning without shari...
In Federated Learning (FL), data communication among clients is denied. However, it is difficult to ...
International audienceFederated learning and its application to medical image segmentation have rece...
Objective. De-centralized data analysis becomes an increasingly preferred option in the healthcare d...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
Training deep learning models for medical imaging requires access to large volumes of sensitive pati...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
Quantities and diversities of datasets are vital to model training in a variety of medical image dia...
Data scarcity is a common issue when training deep learning models for digital pathology, as large e...
In digital pathology, deep learning has been shown to have a wide range of applications, from cancer...
Obtaining large amounts of high quality labeled microscopy data is expensive and time-consuming. To ...