Quantitative imaging features (radiomics) extracted from apparent diffusion coefficient (ADC) maps of rectal cancer patients can provide additional information to support treatment decision. Most available radiomic computational packages allow extraction of hundreds to thousands of features. However, two major factors can influence the reproducibility of radiomic features: interobserver variability, and imaging filtering applied prior to features extraction. In this exploratory study we seek to determine to what extent various commonly-used features are reproducible with regards to the mentioned factors using ADC maps from two different clinics (56 patients). Features derived from intensity distribution histograms are less sensitive to manu...
Abstract Background Diffusion-weighted imaging (DWI) and apparent diffusion coefficient (ADC) values...
Purpose: An ever-growing number of predictive models used to inform clinical decision making have in...
Abstract Radiomics is a promising technique for discovering image based biomarkers of therapy respon...
Quantitative imaging features (radiomics) extracted from apparent diffusion coefficient (ADC) maps o...
Quantitative radiomics features, extracted from medical images, characterize tumour-phenotypes and h...
Purpose: The aims of this study are to evaluate the stability of radiomic features from Apparent Dif...
Quantitative radiomics features, extracted from medical images, characterize tumour-phenotypes and h...
The objectives of the study are to develop a new way to assess stability and discrimination capacity...
Radiomics extracts a large number of features from medical images to perform a quantitative characte...
The purpose of this study was to investigate the effect of image preprocessing on radiomic features ...
Radiomics allows additional information to be extracted from medical images, which cannot be seen wi...
OBJECTIVE: We elected to analyze the correlation between the pre-treatment apparent diffusion coeffi...
We elected to analyze the correlation between the pre-treatment apparent diffusion coefficient (ADC)...
Abstract Background Diffusion-weighted imaging (DWI) and apparent diffusion coefficient (ADC) values...
Purpose: An ever-growing number of predictive models used to inform clinical decision making have in...
Abstract Radiomics is a promising technique for discovering image based biomarkers of therapy respon...
Quantitative imaging features (radiomics) extracted from apparent diffusion coefficient (ADC) maps o...
Quantitative radiomics features, extracted from medical images, characterize tumour-phenotypes and h...
Purpose: The aims of this study are to evaluate the stability of radiomic features from Apparent Dif...
Quantitative radiomics features, extracted from medical images, characterize tumour-phenotypes and h...
The objectives of the study are to develop a new way to assess stability and discrimination capacity...
Radiomics extracts a large number of features from medical images to perform a quantitative characte...
The purpose of this study was to investigate the effect of image preprocessing on radiomic features ...
Radiomics allows additional information to be extracted from medical images, which cannot be seen wi...
OBJECTIVE: We elected to analyze the correlation between the pre-treatment apparent diffusion coeffi...
We elected to analyze the correlation between the pre-treatment apparent diffusion coefficient (ADC)...
Abstract Background Diffusion-weighted imaging (DWI) and apparent diffusion coefficient (ADC) values...
Purpose: An ever-growing number of predictive models used to inform clinical decision making have in...
Abstract Radiomics is a promising technique for discovering image based biomarkers of therapy respon...