AbstractMRI modality is one of the most usual techniques used for diagnosis and treatment planning of breast cancer. The aim of this study is to prove that texture based feature techniques such as co-occurrence matrix features extracted from MRI images can be used to quantify response of tumor treatment. To this aim, we use a dataset composed of two breast MRI examinations for 9 patients. Three of them were responders and six non responders. The first exam was achieved before the initiation of the treatment (baseline). The later one was done after the first cycle of the chemo treatment (control). A set of selected texture parameters have been selected and calculated for each exam. These selected parameters are: Cluster Shade, dissimilarity,...
Background: The main purpose was to investigate the correlation between magnetic resonance imaging (...
Abstract The purpose of this study was to investigate the performances of the tumor response predict...
Background: To evaluate the diagnostic performance of a Machine Learning (ML) algorithm based on Tex...
MRI modality is one of the most usual techniques used for diagnosis and treatment planning of breast...
AbstractMRI modality is one of the most usual techniques used for diagnosis and treatment planning o...
Background Previous studies have suggested that texture analysis is a promising tool in the diagnosi...
Purpose. To assess correlations between volumetric first-order texture parameters on baseline MRI an...
Objectives: To determine whether texture analysis for magnetic resonance imaging (MRI) can predict r...
Abstract Purpose This study used machine learning classification of texture features from MRI of bre...
BACKGROUND: To assess the performance of a predictive model of non-response to neoadjuvant chemother...
Objectives: Patient-tailored treatments for breast cancer are based on histological and immunohistoc...
The work in this thesis examines the use of texture analysis techniques and shape descriptors to ana...
PurposeTo predict pathological complete response (pCR) after neoadjuvant chemotherapy using extreme ...
Although neoadjuvant chemotherapy (NAC) is a crucial component of treatment for locally advanced bre...
Introduction: To determine the performance of texture analysis and conventional MRI parameters in pr...
Background: The main purpose was to investigate the correlation between magnetic resonance imaging (...
Abstract The purpose of this study was to investigate the performances of the tumor response predict...
Background: To evaluate the diagnostic performance of a Machine Learning (ML) algorithm based on Tex...
MRI modality is one of the most usual techniques used for diagnosis and treatment planning of breast...
AbstractMRI modality is one of the most usual techniques used for diagnosis and treatment planning o...
Background Previous studies have suggested that texture analysis is a promising tool in the diagnosi...
Purpose. To assess correlations between volumetric first-order texture parameters on baseline MRI an...
Objectives: To determine whether texture analysis for magnetic resonance imaging (MRI) can predict r...
Abstract Purpose This study used machine learning classification of texture features from MRI of bre...
BACKGROUND: To assess the performance of a predictive model of non-response to neoadjuvant chemother...
Objectives: Patient-tailored treatments for breast cancer are based on histological and immunohistoc...
The work in this thesis examines the use of texture analysis techniques and shape descriptors to ana...
PurposeTo predict pathological complete response (pCR) after neoadjuvant chemotherapy using extreme ...
Although neoadjuvant chemotherapy (NAC) is a crucial component of treatment for locally advanced bre...
Introduction: To determine the performance of texture analysis and conventional MRI parameters in pr...
Background: The main purpose was to investigate the correlation between magnetic resonance imaging (...
Abstract The purpose of this study was to investigate the performances of the tumor response predict...
Background: To evaluate the diagnostic performance of a Machine Learning (ML) algorithm based on Tex...