Despite mammography (MG) being among the most widespread techniques in breast cancer screening, tumour detection and classification remain challenging tasks due to the high morphological variability of the lesions. The extraction of radiomics features has proved to be a promising approach in MG. However, radiomics features can suffer from dependency on factors such as acquisition protocol, segmentation accuracy, feature extraction and engineering methods, which prevent the implementation of robust and clinically reliable radiomics workflow in MG. In this study, the variability and robustness of radiomics features is investigated as a function of lesion segmentation in MG images from a public database. A statistical analysis is carrie...
The aim of the study was to estimate the diagnostic accuracy of textural features extracted by dual-...
Objective: To assess the similarity and differences of radiomics features on full field digital mamm...
Contrast-enhanced spectral mammography is one of the latest diagnostic tool for breast care; therefo...
Radiomics is an emerging field using the extraction of quantitative features from medical images for...
Radiomics is an emerging field using the extraction of quantitative features from medical images for...
Objective Radiomic analysis of contrast enhanced mammographic (CEM) images is an emerging field. The...
International audienceDiagnostically challenging lesions pose a challenge both for the radiological ...
Digital mammography has seen an explosion in the number of radiomic features used for risk-assessmen...
Contains fulltext : 232918.pdf (Publisher’s version ) (Open Access)PURPOSE: To dev...
Purpose: To detect malignant breast lesions using radiomic morphological features from Digital Breas...
PurposeTo develop and evaluate the diagnostic performance of an algorithm for multi-marker radiomic-...
Machine learning models based on radiomic features allow us to obtain biomarkers that are capable of...
The aim of the study was to estimate the diagnostic accuracy of textural features extracted by dual-...
Objective: To assess the similarity and differences of radiomics features on full field digital mamm...
Contrast-enhanced spectral mammography is one of the latest diagnostic tool for breast care; therefo...
Radiomics is an emerging field using the extraction of quantitative features from medical images for...
Radiomics is an emerging field using the extraction of quantitative features from medical images for...
Objective Radiomic analysis of contrast enhanced mammographic (CEM) images is an emerging field. The...
International audienceDiagnostically challenging lesions pose a challenge both for the radiological ...
Digital mammography has seen an explosion in the number of radiomic features used for risk-assessmen...
Contains fulltext : 232918.pdf (Publisher’s version ) (Open Access)PURPOSE: To dev...
Purpose: To detect malignant breast lesions using radiomic morphological features from Digital Breas...
PurposeTo develop and evaluate the diagnostic performance of an algorithm for multi-marker radiomic-...
Machine learning models based on radiomic features allow us to obtain biomarkers that are capable of...
The aim of the study was to estimate the diagnostic accuracy of textural features extracted by dual-...
Objective: To assess the similarity and differences of radiomics features on full field digital mamm...
Contrast-enhanced spectral mammography is one of the latest diagnostic tool for breast care; therefo...