ObjectivesTo assess the influence of gray-level discretization on inter- and intra-observer reproducibility of texture radiomics features on clinical MR images.Materials and methodsWe studied two independent MRI datasets of 74 lacrymal gland tumors and 30 breast lesions from two different centers. Two pairs of readers performed three two-dimensional delineations for each dataset. Texture features were extracted using two radiomics softwares (Pyradiomics and an in-house software). Reproducible features were selected using a combination of intra-class correlation coefficient (ICC) and concordance and coherence coefficient (CCC) with 0.8 and 0.9 as thresholds, respectively. We tested six absolute and eight relative gray-level discretization me...
Background: Feature reproducibility is a critical issue in quantitative radiomic studies. The aim of...
In recent years, texture analysis of medical images has become increasingly popular in studies inves...
Radiomics treats images as quantitative data and promises to improve cancer prediction in radiology ...
International audienceOBJECTIVES: To assess the influence of gray-level discretization on inter- and...
PurposeMany studies of MRI radiomics do not include the discretization method used for the analyses,...
Background: Radiomic analyses of CT images provide prognostic information that can potentially be us...
Background: Radiomic analyses of CT images provide prognostic information that can potentially be us...
Radiomics is emerging as a promising tool to extract quantitative biomarkers—called radiomic feature...
OBJECTIVE Before implementing radiomics in routine clinical practice, comprehensive knowledge abo...
Purpose: Many radiomics features were originally developed for non-medical imaging applications and ...
Radiomics is an emerging field using the extraction of quantitative features from medical images for...
Radiomics is an emerging field using the extraction of quantitative features from medical images for...
Machine learning models based on radiomic features allow us to obtain biomarkers that are capable of...
Radiomics-the high throughput extraction of quantitative features from medical images and their corr...
Background: Feature reproducibility is a critical issue in quantitative radiomic studies. The aim of...
In recent years, texture analysis of medical images has become increasingly popular in studies inves...
Radiomics treats images as quantitative data and promises to improve cancer prediction in radiology ...
International audienceOBJECTIVES: To assess the influence of gray-level discretization on inter- and...
PurposeMany studies of MRI radiomics do not include the discretization method used for the analyses,...
Background: Radiomic analyses of CT images provide prognostic information that can potentially be us...
Background: Radiomic analyses of CT images provide prognostic information that can potentially be us...
Radiomics is emerging as a promising tool to extract quantitative biomarkers—called radiomic feature...
OBJECTIVE Before implementing radiomics in routine clinical practice, comprehensive knowledge abo...
Purpose: Many radiomics features were originally developed for non-medical imaging applications and ...
Radiomics is an emerging field using the extraction of quantitative features from medical images for...
Radiomics is an emerging field using the extraction of quantitative features from medical images for...
Machine learning models based on radiomic features allow us to obtain biomarkers that are capable of...
Radiomics-the high throughput extraction of quantitative features from medical images and their corr...
Background: Feature reproducibility is a critical issue in quantitative radiomic studies. The aim of...
In recent years, texture analysis of medical images has become increasingly popular in studies inves...
Radiomics treats images as quantitative data and promises to improve cancer prediction in radiology ...