International audienceDeep reinforcement learning (DRL) augments the reinforcement learning framework, which learns a sequence of actions that maximizes the expected reward, with the representative power of deep neural networks. Recent works have demonstrated the great potential of DRL in medicine and healthcare. This paper presents a literature review of DRL in medical imaging. We start with a comprehensive tutorial of DRL, including the latest model-free and model-based algorithms. We then cover existing DRL applications for medical imaging, which are roughly divided into three main categories: (i) parametric medical image analysis tasks including landmark detection, object/lesion detection, registration, and view plane localization; (ii)...
Over the last decade, research in medical imaging has made significant progress in addressing challe...
This book, written by authors with more than a decade of experience in the design and development of...
What has happened in machine learning lately, and what does it mean for the future of medical image ...
Medical object detection and segmentation are crucial pre-processing steps in the clinical workflow ...
Automatic detection of anatomical landmarks is an important step for a wide range of applications in...
Deep learning (DL) is one of the branches of artificial intelligence that has seen exponential growt...
Contemporary reinforcement learning research teams have made remarkable progress in games and compar...
Reinforcement learning has achieved tremendous success in recent years, notably in complex games suc...
Many image segmentation solutions are problem-based. Medical images have very similar grey level and...
Purpose: Artificial intelligence (AI) models are playing an increasing role in biomedical research a...
We present a novel methodology for the automated detection of breast lesions from dynamic contrast-e...
This book, written by authors with more than a decade of experience in the design and development of...
Nuclear Medicine (NM) Imaging serves as a powerful technique in visualizing radio-pharmaceutically t...
Machine Learning and Medical Imaging presents state-of- the-art machine learning methods in medical ...
Purpose: Machine learning (ML) and deep learning (DL) can be utilized in radiology to help diagnosis...
Over the last decade, research in medical imaging has made significant progress in addressing challe...
This book, written by authors with more than a decade of experience in the design and development of...
What has happened in machine learning lately, and what does it mean for the future of medical image ...
Medical object detection and segmentation are crucial pre-processing steps in the clinical workflow ...
Automatic detection of anatomical landmarks is an important step for a wide range of applications in...
Deep learning (DL) is one of the branches of artificial intelligence that has seen exponential growt...
Contemporary reinforcement learning research teams have made remarkable progress in games and compar...
Reinforcement learning has achieved tremendous success in recent years, notably in complex games suc...
Many image segmentation solutions are problem-based. Medical images have very similar grey level and...
Purpose: Artificial intelligence (AI) models are playing an increasing role in biomedical research a...
We present a novel methodology for the automated detection of breast lesions from dynamic contrast-e...
This book, written by authors with more than a decade of experience in the design and development of...
Nuclear Medicine (NM) Imaging serves as a powerful technique in visualizing radio-pharmaceutically t...
Machine Learning and Medical Imaging presents state-of- the-art machine learning methods in medical ...
Purpose: Machine learning (ML) and deep learning (DL) can be utilized in radiology to help diagnosis...
Over the last decade, research in medical imaging has made significant progress in addressing challe...
This book, written by authors with more than a decade of experience in the design and development of...
What has happened in machine learning lately, and what does it mean for the future of medical image ...