Mammographic sensitivity in breasts with higher density has been questioned. Higher breast density is also linked to an increased risk for breast cancer. Even though digital breast tomosynthesis (DBT) offers an attractive solution, for varied reasons it has not yet been widely adopted in screening. An alternative could be to boost the performance of standard mammography by using computer-aided detection based on deep learning, but it remains to be proven how such methods are affected by density. A deep-learning based computer-aided detection program was used to score the suspicion of cancer on a scale of 1 to 10. A set of 13838 mammography screening exams were used. All cases had BIRADS density values available. The set included 2304 exams ...
BackgroundTo determine if mammographic features from deep learning networks can be applied in breast...
INTRODUCTION: When measured using the computer-assisted method CUMULUS, mammographic density adjuste...
Computer-aided detection systems based on deep learning have shown good performance in breast cancer...
OBJECTIVE. Our aim was to determine whether breast density affects the performance of a computer-aid...
Breast cancer is the most frequently diagnosed cancer among females worldwide. As the burden of brea...
International audienceAdmitting that mammographic breast density is an important independent risk fa...
Mammography screening using conventional digital mammography (DM) has lower sensitivity and specific...
Background Mammographic density has been shown to be a strong independent predictor of breast cance...
http://content.nejm.org/This article is hosted on a website external to the CBCRA Open Access Archiv...
Objectives: Mammographic density is a well-defined risk factor for breast cancer and having extremel...
BACKGROUND: Texture patterns have been shown to improve breast cancer risk segregation in addition t...
PURPOSE: To determine to what extent automatically measured volumetric mammographic density influenc...
Mammographic density reflects the composition of the breast tissue and can be measured by different ...
Background: Mammographic density defined by the conventional pixel brightness threshold, and adjuste...
Background: Texture patterns have been shown to improve breast cancer risk segregation in addition t...
BackgroundTo determine if mammographic features from deep learning networks can be applied in breast...
INTRODUCTION: When measured using the computer-assisted method CUMULUS, mammographic density adjuste...
Computer-aided detection systems based on deep learning have shown good performance in breast cancer...
OBJECTIVE. Our aim was to determine whether breast density affects the performance of a computer-aid...
Breast cancer is the most frequently diagnosed cancer among females worldwide. As the burden of brea...
International audienceAdmitting that mammographic breast density is an important independent risk fa...
Mammography screening using conventional digital mammography (DM) has lower sensitivity and specific...
Background Mammographic density has been shown to be a strong independent predictor of breast cance...
http://content.nejm.org/This article is hosted on a website external to the CBCRA Open Access Archiv...
Objectives: Mammographic density is a well-defined risk factor for breast cancer and having extremel...
BACKGROUND: Texture patterns have been shown to improve breast cancer risk segregation in addition t...
PURPOSE: To determine to what extent automatically measured volumetric mammographic density influenc...
Mammographic density reflects the composition of the breast tissue and can be measured by different ...
Background: Mammographic density defined by the conventional pixel brightness threshold, and adjuste...
Background: Texture patterns have been shown to improve breast cancer risk segregation in addition t...
BackgroundTo determine if mammographic features from deep learning networks can be applied in breast...
INTRODUCTION: When measured using the computer-assisted method CUMULUS, mammographic density adjuste...
Computer-aided detection systems based on deep learning have shown good performance in breast cancer...