BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dimensional MRI images, the predictive value of three-dimensional volumetric features from dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) for predicting breast cancer molecular subtypes has not been thoroughly investigated. This study aimed to look into the role of features derived from DCE-MRI and how they could be combined with clinical data to predict invasive ductal breast cancer molecular subtypes.MethodsFrom January 2019 to December 2021, 190 Chinese women with invasive ductal breast cancer were studied (32 triple-negative, 59 HER2-enriched, and 99 luminal lesions) in this institutional review board-approved retrospective c...
\u3cp\u3ePurpose: To develop and validate an interpretable and repeatable machine learning model app...
Breast cancer is a prevalent disease that can be classified into four molecular subtypes based on g...
Rationale and Objectives: To develop and validate a radiomic model, with radiomic features extracted...
BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dim...
The purpose of this study was to investigate the role of features derived from breast dynamic contra...
This work was supported in part by financial support from the National Natural Science Foundation of...
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...
This data set is part of the public development data for the 2023 Automated Universal Classification...
Using quantitative radiomics, we demonstrate that computer-extracted magnetic resonance (MR) image-b...
ObjectiveTo investigate whether texture features extracted from dynamic contrast-enhanced magnetic r...
Objectives: To investigate machine learning approaches for radiomics-based prediction of prognostic ...
Abstract OBJECTIVE: The purpose of this retrospective study is to find a correlation between dynam...
Radiogenomics is a field of investigation that attempts to examine the relationship between imaging ...
Rationale and objectives: To determine whether deep learning models can distinguish between breast c...
\u3cp\u3ePurpose: To develop and validate an interpretable and repeatable machine learning model app...
Breast cancer is a prevalent disease that can be classified into four molecular subtypes based on g...
Rationale and Objectives: To develop and validate a radiomic model, with radiomic features extracted...
BackgroundMost studies of molecular subtype prediction in breast cancer were mainly based on two-dim...
The purpose of this study was to investigate the role of features derived from breast dynamic contra...
This work was supported in part by financial support from the National Natural Science Foundation of...
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...
This data set is part of the public development data for the 2023 Automated Universal Classification...
Using quantitative radiomics, we demonstrate that computer-extracted magnetic resonance (MR) image-b...
ObjectiveTo investigate whether texture features extracted from dynamic contrast-enhanced magnetic r...
Objectives: To investigate machine learning approaches for radiomics-based prediction of prognostic ...
Abstract OBJECTIVE: The purpose of this retrospective study is to find a correlation between dynam...
Radiogenomics is a field of investigation that attempts to examine the relationship between imaging ...
Rationale and objectives: To determine whether deep learning models can distinguish between breast c...
\u3cp\u3ePurpose: To develop and validate an interpretable and repeatable machine learning model app...
Breast cancer is a prevalent disease that can be classified into four molecular subtypes based on g...
Rationale and Objectives: To develop and validate a radiomic model, with radiomic features extracted...