Mammographic breast density is an important risk marker in breast cancer screening. The ACR BI-RADS guidelines (5th ed.) define four breast density categories that can be dichotomized by the two super-classes dense" and not dense". Due to the qualitative description of the categories, density assessment by radiologists is characterized by a high inter-observer variability. To quantify this variability, we compute the overall percentage agreement (OPA) and Cohen's kappa of 32 radiologists to the panel majority vote based on the two super-classes. Further, we analyze the OPA between individual radiologists and compare the performances to an automated assessment via a convolutional neural network (CNN). The data used for evaluation contains 60...
This work aims to develop a method for deep neural network explainability. It is the ability to expl...
Mammography is currently the preferred imaging method for breast cancer screening. Masses and calcif...
OBJECTIVE: Disagreement in mammographic breast density (MBD) assessment can impact breast cancer ris...
Mammographic breast density is an important risk marker in breast cancer screening. The ACR BI-RADS ...
We are currently experiencing a revolution in data production and artificial intelligence (AI) appli...
OBJECTIVE: High breast density is a risk factor for breast cancer. The aim of this study was to dev...
Breast cancer is one of the most diagnosed cancer all over the world. It has been studied that one w...
Breast parenchymal density is considered a strong indicator of breast cancer risk and therefore usef...
We propose and evaluate a procedure for the explainability of a breast density deep learning based c...
Deep neural network explainability is a critical issue in Artificial Intelligence (AI). This work ai...
The aim of this study was to investigate the potential of a machine learning algorithm to accurately...
In this paper, we present a work on breast density classification performed with deep residual neura...
Breast density estimation is one of the key tasks in recognizing individuals predisposed to breast c...
We propose and evaluate a procedure for the explainability of a breast density deep learning based c...
The goal of this retrospective cohort study was to investigate the potential of a deep convolutional...
This work aims to develop a method for deep neural network explainability. It is the ability to expl...
Mammography is currently the preferred imaging method for breast cancer screening. Masses and calcif...
OBJECTIVE: Disagreement in mammographic breast density (MBD) assessment can impact breast cancer ris...
Mammographic breast density is an important risk marker in breast cancer screening. The ACR BI-RADS ...
We are currently experiencing a revolution in data production and artificial intelligence (AI) appli...
OBJECTIVE: High breast density is a risk factor for breast cancer. The aim of this study was to dev...
Breast cancer is one of the most diagnosed cancer all over the world. It has been studied that one w...
Breast parenchymal density is considered a strong indicator of breast cancer risk and therefore usef...
We propose and evaluate a procedure for the explainability of a breast density deep learning based c...
Deep neural network explainability is a critical issue in Artificial Intelligence (AI). This work ai...
The aim of this study was to investigate the potential of a machine learning algorithm to accurately...
In this paper, we present a work on breast density classification performed with deep residual neura...
Breast density estimation is one of the key tasks in recognizing individuals predisposed to breast c...
We propose and evaluate a procedure for the explainability of a breast density deep learning based c...
The goal of this retrospective cohort study was to investigate the potential of a deep convolutional...
This work aims to develop a method for deep neural network explainability. It is the ability to expl...
Mammography is currently the preferred imaging method for breast cancer screening. Masses and calcif...
OBJECTIVE: Disagreement in mammographic breast density (MBD) assessment can impact breast cancer ris...