Deep learning based medical image recognition systems often require a substantial amount of training data with expert annotations, which can be expensive and time-consuming to obtain. Recently, synthetic augmentation techniques have been proposed to mitigate the issue by generating realistic images conditioned on class labels. However, the effectiveness of these methods heavily depends on the representation capability of the trained generative model, which cannot be guaranteed without sufficient labeled training data. To further reduce the dependency on annotated data, we propose a synthetic augmentation method called HistoDiffusion, which can be pre-trained on large-scale unlabeled datasets and later applied to a small-scale labeled datase...
Deep learning has shown excellent performance in analysing medical images. However, datasets are dif...
Harnessing the power of pre-training on large-scale datasets like ImageNet forms a fundamental build...
Dermatological classification algorithms developed without sufficiently diverse training data may ge...
While hundreds of artificial intelligence (AI) algorithms are now approved or cleared by the US Food...
Self-supervised pre-training has become the priory choice to establish reliable models for automated...
In order to achieve good performance and generalisability, medical image segmentation models should ...
Large-scale, big-variant, and high-quality data are crucial for developing robust and successful dee...
Integrating deep learning with clinical expertise holds great potential for addressing healthcare ch...
Currently deep learning requires large volumes of training data to fit accurate models. In practice,...
One of the biggest issues facing the use of machine learning in medical imaging is the lack of avail...
peer reviewedData scarcity is a common issue when training deep learning models for digital patholog...
Fully-supervised deep learning segmentation models are inflexible when encountering new unseen seman...
Abstract Deep learning in medical imaging has the potential to minimize the risk of diagnostic error...
Analyzing medical data to find abnormalities is a time-consuming and costly task, particularly for r...
Digital pathology tasks have benefited greatly from modern deep learning algorithms. However, their ...
Deep learning has shown excellent performance in analysing medical images. However, datasets are dif...
Harnessing the power of pre-training on large-scale datasets like ImageNet forms a fundamental build...
Dermatological classification algorithms developed without sufficiently diverse training data may ge...
While hundreds of artificial intelligence (AI) algorithms are now approved or cleared by the US Food...
Self-supervised pre-training has become the priory choice to establish reliable models for automated...
In order to achieve good performance and generalisability, medical image segmentation models should ...
Large-scale, big-variant, and high-quality data are crucial for developing robust and successful dee...
Integrating deep learning with clinical expertise holds great potential for addressing healthcare ch...
Currently deep learning requires large volumes of training data to fit accurate models. In practice,...
One of the biggest issues facing the use of machine learning in medical imaging is the lack of avail...
peer reviewedData scarcity is a common issue when training deep learning models for digital patholog...
Fully-supervised deep learning segmentation models are inflexible when encountering new unseen seman...
Abstract Deep learning in medical imaging has the potential to minimize the risk of diagnostic error...
Analyzing medical data to find abnormalities is a time-consuming and costly task, particularly for r...
Digital pathology tasks have benefited greatly from modern deep learning algorithms. However, their ...
Deep learning has shown excellent performance in analysing medical images. However, datasets are dif...
Harnessing the power of pre-training on large-scale datasets like ImageNet forms a fundamental build...
Dermatological classification algorithms developed without sufficiently diverse training data may ge...