Objectives: To investigate machine learning approaches for radiomics-based prediction of prognostic biomarkers and molecular subtypes of breast cancer using quantification of tumor heterogeneity and angiogenesis properties on magnetic resonance imaging (MRI). Methods: This prospective study examined 291 invasive cancers in 288 patients who underwent breast MRI at 3 T before treatment between May 2017 and July 2019. Texture and perfusion analyses were performed and a total of 160 parameters for each cancer were extracted. Relationships between MRI parameters and prognostic biomarkers were analyzed using five machine learning algorithms. Each model was built using only texture features, only perfusion features, or both. Model performance was...
BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dim...
Breast cancer (BC) is the most frequently diagnosed female invasive cancer in Western countries and ...
OBJECTIVES: To investigate whether radiomics features extracted from MRI of BRCA-positive patients w...
Using quantitative radiomics, we demonstrate that computer-extracted magnetic resonance (MR) image-b...
ObjectiveTo investigate whether radiomics features extracted from multi-parametric MRI combining mac...
BACKGROUND: To use clinical and MRI radiomic features coupled with machine learning to assess HER2 e...
Traditional biomarkers of breast cancer are dependent on invasive sampling of the areas suspicious o...
We evaluated the performance of radiomics and artificial intelligence (AI) from multiparametric magn...
Background: in current clinical practice, the standard evaluation for axillary lymph node (ALN) stat...
Breast cancer is the first leading cause of mortality among women in the world. The knowledge of the...
Abstract Purpose This study used machine learning classification of texture features from MRI of bre...
Using quantitative radiomics, we demonstrate that computer-extracted magnetic resonance (MR) image-b...
Breast Cancer (BC) is the most common cancer among women worldwide and is characterized by intra- an...
BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dim...
Contains fulltext : 153334.pdf (publisher's version ) (Open Access)Radiomics extra...
BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dim...
Breast cancer (BC) is the most frequently diagnosed female invasive cancer in Western countries and ...
OBJECTIVES: To investigate whether radiomics features extracted from MRI of BRCA-positive patients w...
Using quantitative radiomics, we demonstrate that computer-extracted magnetic resonance (MR) image-b...
ObjectiveTo investigate whether radiomics features extracted from multi-parametric MRI combining mac...
BACKGROUND: To use clinical and MRI radiomic features coupled with machine learning to assess HER2 e...
Traditional biomarkers of breast cancer are dependent on invasive sampling of the areas suspicious o...
We evaluated the performance of radiomics and artificial intelligence (AI) from multiparametric magn...
Background: in current clinical practice, the standard evaluation for axillary lymph node (ALN) stat...
Breast cancer is the first leading cause of mortality among women in the world. The knowledge of the...
Abstract Purpose This study used machine learning classification of texture features from MRI of bre...
Using quantitative radiomics, we demonstrate that computer-extracted magnetic resonance (MR) image-b...
Breast Cancer (BC) is the most common cancer among women worldwide and is characterized by intra- an...
BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dim...
Contains fulltext : 153334.pdf (publisher's version ) (Open Access)Radiomics extra...
BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dim...
Breast cancer (BC) is the most frequently diagnosed female invasive cancer in Western countries and ...
OBJECTIVES: To investigate whether radiomics features extracted from MRI of BRCA-positive patients w...