Radiomic features are potential imaging biomarkers for therapy response assessment in oncology. However, the robustness of features with respect to imaging parameters is not well established. Previously identified potential imaging biomarkers were found to be intrinsically dependent on voxel size and number of gray levels (GLs) in a recent texture phantom investigation. Here, we validate the voxel size and GL in-phantom normalizations in lung tumors. Eighteen patients with non-small cell lung cancer of varying tumor volumes were analyzed. To compare with patient data, phantom scans were acquired on eight different scanners. Twenty four previously identified features were extracted from lung tumors. The Spearman rank (rs) and interclass corr...
Radiomics is emerging as a promising tool to extract quantitative biomarkers—called radiomic feature...
Purpose: The aim of this methods work is to explore the different behavior of radiomic features resu...
: Background: Radiomic features are increasingly used in CT of NSCLC. However, their robustness with...
Radiomic features are potential imaging biomarkers for therapy response assessment in oncology. Howe...
Radiomics treats images as quantitative data and promises to improve cancer prediction in radiology ...
Computer-assisted analysis of three-dimensional imaging data (radiomics) has received a lot of resea...
We propose a novel framework for determining radiomics feature robustness by considering the effects...
© 2019 The Author(s).Background: Radiomics suffers from feature reproducibility. We studied the vari...
Background Radiomics refers to the extraction of a large number of image biomarker describing the tu...
Since the adaptation of medical imaging as a standard clinical diagnostic tool, an ever-growing numb...
This paper studies the sensitivity of a range of image texture parameters used in radiomics to: i) t...
Consistency and duplicability in Computed Tomography (CT) output is essential to quantitative imagin...
Radiomic features are quantitative metrics calculated over regions of interest on medical images. Tu...
Purpose: Many radiomics features were originally developed for non-medical imaging applications and ...
Abstract Tumor heterogeneity has been postulated as a hallmark of treatment resistance and a cure co...
Radiomics is emerging as a promising tool to extract quantitative biomarkers—called radiomic feature...
Purpose: The aim of this methods work is to explore the different behavior of radiomic features resu...
: Background: Radiomic features are increasingly used in CT of NSCLC. However, their robustness with...
Radiomic features are potential imaging biomarkers for therapy response assessment in oncology. Howe...
Radiomics treats images as quantitative data and promises to improve cancer prediction in radiology ...
Computer-assisted analysis of three-dimensional imaging data (radiomics) has received a lot of resea...
We propose a novel framework for determining radiomics feature robustness by considering the effects...
© 2019 The Author(s).Background: Radiomics suffers from feature reproducibility. We studied the vari...
Background Radiomics refers to the extraction of a large number of image biomarker describing the tu...
Since the adaptation of medical imaging as a standard clinical diagnostic tool, an ever-growing numb...
This paper studies the sensitivity of a range of image texture parameters used in radiomics to: i) t...
Consistency and duplicability in Computed Tomography (CT) output is essential to quantitative imagin...
Radiomic features are quantitative metrics calculated over regions of interest on medical images. Tu...
Purpose: Many radiomics features were originally developed for non-medical imaging applications and ...
Abstract Tumor heterogeneity has been postulated as a hallmark of treatment resistance and a cure co...
Radiomics is emerging as a promising tool to extract quantitative biomarkers—called radiomic feature...
Purpose: The aim of this methods work is to explore the different behavior of radiomic features resu...
: Background: Radiomic features are increasingly used in CT of NSCLC. However, their robustness with...