In recent years, texture analysis of medical images has become increasingly popular in studies investigating diagnosis, classification and treatment response assessment of cancerous disease. Despite numerous applications in oncology and medical imaging in general, there is no consensus regarding texture analysis workflow, or reporting of parameter settings crucial for replication of results. The aim of this study was to assess how sensitive Haralick texture features of apparent diffusion coefficient (ADC) MR images are to changes in five parameters related to image acquisition and pre-processing: noise, resolution, how the ADC map is constructed, the choice of quantization method, and the number of gray levels in the quantized image. We fou...
Purpose: The aims of this study are to evaluate the stability of radiomic features from Apparent Dif...
International audiencePurpose: Texture analysis is an emerging tool in the field of medical imaging ...
BACKGROUND AND PURPOSE: To apply a texture analysis of apparent diffusion coefficient (ADC) maps to ...
In recent years, texture analysis of medical images has become increasingly popular in studies inves...
PurposeMany studies of MRI radiomics do not include the discretization method used for the analyses,...
Quantitative imaging features (radiomics) extracted from apparent diffusion coefficient (ADC) maps o...
ObjectivesTo assess the influence of gray-level discretization on inter- and intra-observer reproduc...
The purpose of this study was to assess baseline variability in histogram and texture features deriv...
Magnetic resonance imaging (MRI) is a valuable tool for medical diagnosis, as it is a non-invasive t...
Introduction: In magnetic resonance (MR) image analysis, noise is one of the main sources of quality...
Magnetic resonance imaging, MRI, offers a vast range of imaging methods that can be employed in the ...
The purpose of this work was to systematically assess the impact of the b-value on texture analysis ...
To apply a texture analysis of apparent diffusion coefficient (ADC) maps to evaluate glioma heteroge...
Purpose: The aims of this study are to evaluate the stability of radiomic features from Apparent Dif...
International audiencePurpose: Texture analysis is an emerging tool in the field of medical imaging ...
BACKGROUND AND PURPOSE: To apply a texture analysis of apparent diffusion coefficient (ADC) maps to ...
In recent years, texture analysis of medical images has become increasingly popular in studies inves...
PurposeMany studies of MRI radiomics do not include the discretization method used for the analyses,...
Quantitative imaging features (radiomics) extracted from apparent diffusion coefficient (ADC) maps o...
ObjectivesTo assess the influence of gray-level discretization on inter- and intra-observer reproduc...
The purpose of this study was to assess baseline variability in histogram and texture features deriv...
Magnetic resonance imaging (MRI) is a valuable tool for medical diagnosis, as it is a non-invasive t...
Introduction: In magnetic resonance (MR) image analysis, noise is one of the main sources of quality...
Magnetic resonance imaging, MRI, offers a vast range of imaging methods that can be employed in the ...
The purpose of this work was to systematically assess the impact of the b-value on texture analysis ...
To apply a texture analysis of apparent diffusion coefficient (ADC) maps to evaluate glioma heteroge...
Purpose: The aims of this study are to evaluate the stability of radiomic features from Apparent Dif...
International audiencePurpose: Texture analysis is an emerging tool in the field of medical imaging ...
BACKGROUND AND PURPOSE: To apply a texture analysis of apparent diffusion coefficient (ADC) maps to ...