BackgroundDifferential diagnosis between benign and malignant breast lesions is of crucial importance relating to follow-up treatment. Recent development in texture analysis and machine learning may lead to a new solution to this problem.MethodThis current study enrolled a total number of 265 patients (benign breast lesions:malignant breast lesions = 71:194) diagnosed in our hospital and received magnetic resonance imaging between January 2014 and August 2017. Patients were randomly divided into the training group and validation group (4:1), and two radiologists extracted their texture features from the contrast-enhanced T1-weighted images. We performed five different feature selection methods including Distance correlation, Gradient Boosti...
BACKGROUND: There is an increasing interest in non-contrast-enhanced magnetic resonance imaging (MRI...
To investigate methods developed for the characterisation of the morphology and enhancement kinetic ...
The current study investigates whether texture features extracted from lesion kinetics feature maps ...
We investigated whether the integration of machine learning (ML) into MRI interpretation can provide...
PURPOSE: Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is increasingly used for bre...
Breast cancer is the one common cause of death in both developed worlds and the most death-causing d...
We investigated whether the integration of machine learning (ML) into MRI interpretation can provide...
Purpose: Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is increasingly used for bre...
<div><p>Purpose</p><p>Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is increasingly...
In the field of breast cancer research, and more than ever, new computer aided diagnosis based syst...
Objectives: Patient-tailored treatments for breast cancer are based on histological and immunohistoc...
Abstract— Breast cancer is a major public health problem in women from developed and developing coun...
Introduction and objective: Computer Aided Decision (CAD) systems based on Medical Imaging could sup...
Early diagnosis and accurate treatment is crucial in increasing the survival rate of diseases that c...
AbstractBreast cancer is considered as the second leading cause of cancer deaths among women in the ...
BACKGROUND: There is an increasing interest in non-contrast-enhanced magnetic resonance imaging (MRI...
To investigate methods developed for the characterisation of the morphology and enhancement kinetic ...
The current study investigates whether texture features extracted from lesion kinetics feature maps ...
We investigated whether the integration of machine learning (ML) into MRI interpretation can provide...
PURPOSE: Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is increasingly used for bre...
Breast cancer is the one common cause of death in both developed worlds and the most death-causing d...
We investigated whether the integration of machine learning (ML) into MRI interpretation can provide...
Purpose: Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is increasingly used for bre...
<div><p>Purpose</p><p>Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is increasingly...
In the field of breast cancer research, and more than ever, new computer aided diagnosis based syst...
Objectives: Patient-tailored treatments for breast cancer are based on histological and immunohistoc...
Abstract— Breast cancer is a major public health problem in women from developed and developing coun...
Introduction and objective: Computer Aided Decision (CAD) systems based on Medical Imaging could sup...
Early diagnosis and accurate treatment is crucial in increasing the survival rate of diseases that c...
AbstractBreast cancer is considered as the second leading cause of cancer deaths among women in the ...
BACKGROUND: There is an increasing interest in non-contrast-enhanced magnetic resonance imaging (MRI...
To investigate methods developed for the characterisation of the morphology and enhancement kinetic ...
The current study investigates whether texture features extracted from lesion kinetics feature maps ...