Abstract. We propose a simple strategy to improve automatic medical image segmentation. The key idea is that without deep understanding of a segmentation method, we can still improve its performance by directly calibrating its results with respect to manual segmentation. We formulate the calibration process as a bias correction problem, which is addressed by machine learning using training data. We apply this methodology on three segmentation problems/methods and show significant improve-ments for all of them.
The segmentation of medical images is a difficult task due to the inhomogeneous intensity variations...
The ability to automatically segment an image into distinct regions is a critical aspect in many vis...
We often locate ourselves in a trade-off situation between what is predicted and understanding why t...
Trustworthy deployment of deep learning medical imaging models into real-world clinical practice req...
International audienceAbstract Research in computer analysis of medical images bears many promises t...
Advances in machine learning techniques have been shown to bring benefit for analysing medical image...
In magnetic resonance imaging (MRI), bias fields are difficult to correct since they are inherently ...
Accurately segmenting MRI images is crucial for many cli-nical applications. However, manually segme...
Modern imaging techniques in medicine have revolutionized the study of human anatomy and physiology....
Evaluating the quality of segmentations is an important process in image processing, especially in t...
It has recently been shown that deep learning models for anatomical segmentation in medical images c...
We propose a simple but generally applicable approach to improving the accuracy of automatic image s...
In recent decades, with increasing amount of medical data, clinical trials are designed and conducte...
Translating machine learning research into clinical practice has several challenges. In this paper, ...
The ability to automatically segment an image into distinct regions is a critical aspect in many vis...
The segmentation of medical images is a difficult task due to the inhomogeneous intensity variations...
The ability to automatically segment an image into distinct regions is a critical aspect in many vis...
We often locate ourselves in a trade-off situation between what is predicted and understanding why t...
Trustworthy deployment of deep learning medical imaging models into real-world clinical practice req...
International audienceAbstract Research in computer analysis of medical images bears many promises t...
Advances in machine learning techniques have been shown to bring benefit for analysing medical image...
In magnetic resonance imaging (MRI), bias fields are difficult to correct since they are inherently ...
Accurately segmenting MRI images is crucial for many cli-nical applications. However, manually segme...
Modern imaging techniques in medicine have revolutionized the study of human anatomy and physiology....
Evaluating the quality of segmentations is an important process in image processing, especially in t...
It has recently been shown that deep learning models for anatomical segmentation in medical images c...
We propose a simple but generally applicable approach to improving the accuracy of automatic image s...
In recent decades, with increasing amount of medical data, clinical trials are designed and conducte...
Translating machine learning research into clinical practice has several challenges. In this paper, ...
The ability to automatically segment an image into distinct regions is a critical aspect in many vis...
The segmentation of medical images is a difficult task due to the inhomogeneous intensity variations...
The ability to automatically segment an image into distinct regions is a critical aspect in many vis...
We often locate ourselves in a trade-off situation between what is predicted and understanding why t...