International audienceHistopathological images are the gold standard for breast cancer diagnosis. During examination several dozens of them are acquired for a single patient. Conventional, image-based classification systems make the assumption that all the patient’s images have the same label as the patient, which is rarely verified in practice since labeling the data is expensive. We propose a weakly supervised learning framework and investigate the relevance of Multiple Instance Learning (MIL) for computer-aided diagnosis of breast cancer patients, based on the analysis of histopathological images. Multiple instance learning consists in organizing instances (images) into bags (patients), without the need to label all the instances. We com...
In this paper we investigate multiple instance learning (MIL), using generic tile-based spatio-tempo...
To reach performance levels comparable to human experts, computer-aided detection (CAD) systems are ...
Digital pathology plays a pivotal role in the diagnosis and interpretation of diseases and has drawn...
Labeling a histopathology image as having cancerous regions or not is a critical task in cancer diag...
Malignant lesions in breast tissue specimen whole slide images (WSIs), may lead to a dangerous diagn...
Malignant lesions in breast tissue specimen whole slide images (WSIs), may lead to a dangerous diagn...
We study diagnosis of Barrett’s cancer from hematoxylin & eosin (H & E) stained histopatholo...
We study diagnosis of Barrett's cancer from hematoxylin & eosin (H & E) stained histopat...
AbstractMultiple instance learning algorithms have been increasingly utilized in computer aided dete...
In this paper we evaluate the suitability of multiple instance learning (MIL) for the classification...
Cancer tissues in histopathology images exhibit abnor-mal patterns; it is of great clinical importan...
Abstract In cytological examination, suspicious cells are evaluated regarding malignancy and cancer ...
As a branch of machine learning, multiple instance learning (MIL) learns from a collection of labele...
In order to reach performance levels comparable to those of human experts, computer-aided detection ...
We propose a novel multiple instance learning algorithm for cancer detection in histopathology image...
In this paper we investigate multiple instance learning (MIL), using generic tile-based spatio-tempo...
To reach performance levels comparable to human experts, computer-aided detection (CAD) systems are ...
Digital pathology plays a pivotal role in the diagnosis and interpretation of diseases and has drawn...
Labeling a histopathology image as having cancerous regions or not is a critical task in cancer diag...
Malignant lesions in breast tissue specimen whole slide images (WSIs), may lead to a dangerous diagn...
Malignant lesions in breast tissue specimen whole slide images (WSIs), may lead to a dangerous diagn...
We study diagnosis of Barrett’s cancer from hematoxylin & eosin (H & E) stained histopatholo...
We study diagnosis of Barrett's cancer from hematoxylin & eosin (H & E) stained histopat...
AbstractMultiple instance learning algorithms have been increasingly utilized in computer aided dete...
In this paper we evaluate the suitability of multiple instance learning (MIL) for the classification...
Cancer tissues in histopathology images exhibit abnor-mal patterns; it is of great clinical importan...
Abstract In cytological examination, suspicious cells are evaluated regarding malignancy and cancer ...
As a branch of machine learning, multiple instance learning (MIL) learns from a collection of labele...
In order to reach performance levels comparable to those of human experts, computer-aided detection ...
We propose a novel multiple instance learning algorithm for cancer detection in histopathology image...
In this paper we investigate multiple instance learning (MIL), using generic tile-based spatio-tempo...
To reach performance levels comparable to human experts, computer-aided detection (CAD) systems are ...
Digital pathology plays a pivotal role in the diagnosis and interpretation of diseases and has drawn...