In this paper, we describe the evaluation of the effects of mammographic semantic information in breast cancer diagnoses. A brief description of relations between semantic information and image features are given. We demonstrate the experiments based on mammographic semantic information and the MIAS database. Mammograms were annotated by expert radiologists with semantic information and assigned NHSBSP five-point score. Two classifiers were applied to automatically classify the mammogram into NHSBSP five-point score using the semantic information and radiologists also classified the mammograms by their own annotated semantic information. The analysis of the experimental results provides further understanding when using mammographic semantic...
Information about cancer stage in a patient is crucial when clinicians assess treatment progress. De...
Breast tissue characteristics are widely accepted as important indicators of the likelihood of the d...
In this study, we applied semantic segmentation using a fully convolutional deep learning network to...
In this paper, we describe the evaluation of the effects of mammographic semantic information in bre...
9 pagesInternational audienceNarrowing the semantic gap represents one of the most outstanding chall...
Although mammography is the standard of reference for the detection of early breast cancer, as many ...
International audienceIn this paper, we propose a novel approach for ontology instantiating from rea...
International audienceIn this paper, we propose a novel approach for ontology instantiating from rea...
This paper presents an ontology-based annotation system and BI-RADS (Breast Imaging Reporting and Da...
International audienceComputer-assisted consensus in medical imaging involves automatic comparison o...
Breast cancer is a leading cause of cancer death in women. Early diagnosis and treatment are crucial...
Medical information is evolving towards more complex multimedia data representation, as new imaging ...
In this study, a task ontology was constructed for knowledge sharing on mammographic examination amo...
International audienceIntroduction/ BackgroundRecently, histopathology has seen the introduction of ...
In healthcare domain it can be useful to compare unstructured free-text clinical reports in order to...
Information about cancer stage in a patient is crucial when clinicians assess treatment progress. De...
Breast tissue characteristics are widely accepted as important indicators of the likelihood of the d...
In this study, we applied semantic segmentation using a fully convolutional deep learning network to...
In this paper, we describe the evaluation of the effects of mammographic semantic information in bre...
9 pagesInternational audienceNarrowing the semantic gap represents one of the most outstanding chall...
Although mammography is the standard of reference for the detection of early breast cancer, as many ...
International audienceIn this paper, we propose a novel approach for ontology instantiating from rea...
International audienceIn this paper, we propose a novel approach for ontology instantiating from rea...
This paper presents an ontology-based annotation system and BI-RADS (Breast Imaging Reporting and Da...
International audienceComputer-assisted consensus in medical imaging involves automatic comparison o...
Breast cancer is a leading cause of cancer death in women. Early diagnosis and treatment are crucial...
Medical information is evolving towards more complex multimedia data representation, as new imaging ...
In this study, a task ontology was constructed for knowledge sharing on mammographic examination amo...
International audienceIntroduction/ BackgroundRecently, histopathology has seen the introduction of ...
In healthcare domain it can be useful to compare unstructured free-text clinical reports in order to...
Information about cancer stage in a patient is crucial when clinicians assess treatment progress. De...
Breast tissue characteristics are widely accepted as important indicators of the likelihood of the d...
In this study, we applied semantic segmentation using a fully convolutional deep learning network to...