Since the adaptation of medical imaging as a standard clinical diagnostic tool, an ever-growing number of images has been taken. Radiomics took the big-data approach to extract quantitative features from medical images invisible to the naked eye to support clinical decision making, known as biomarkers. Over 440 radiomics features are available including size and shape based features, features derived from intensity histogram and texture features that describes the relationship between voxels. To date, there are no widely accepted biomarkers like tumour, nodes and metastases (TNM) staging in oncology due to concerns on the robustness of features.This thesis presents a detailed robustness study of 43 commonly used radiomics mainly 3-dimensio...
Computer-assisted analysis of three-dimensional imaging data (radiomics) has received a lot of resea...
The repeatability and reproducibility of radiomic features extracted from CT scans need to be invest...
Radiomics is emerging as a promising tool to extract quantitative biomarkers—called radiomic feature...
This paper studies the sensitivity of a range of image texture parameters used in radiomics to: i) t...
Background Radiomics refers to the extraction of a large number of image biomarker describing the tu...
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...
The lung cancer is the principle cause of the worldwide deaths and its prognosis is poor with a 5-ye...
In this thesis, a methodology is developed to generate optimised three-dimensional voxel-based CT te...
Radiomic features are potential imaging biomarkers for therapy response assessment in oncology. Howe...
[Aim]The present study aimed to determine whether PET/CT texture parameters can differentiate NSCLC ...
Purpose: An ever-growing number of predictive models used to inform clinical decision making have in...
Computer-assisted analysis of three-dimensional imaging data (radiomics) has received a lot of resea...
The repeatability and reproducibility of radiomic features extracted from CT scans need to be invest...
Radiomics is emerging as a promising tool to extract quantitative biomarkers—called radiomic feature...
This paper studies the sensitivity of a range of image texture parameters used in radiomics to: i) t...
Background Radiomics refers to the extraction of a large number of image biomarker describing the tu...
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...
The lung cancer is the principle cause of the worldwide deaths and its prognosis is poor with a 5-ye...
In this thesis, a methodology is developed to generate optimised three-dimensional voxel-based CT te...
Radiomic features are potential imaging biomarkers for therapy response assessment in oncology. Howe...
[Aim]The present study aimed to determine whether PET/CT texture parameters can differentiate NSCLC ...
Purpose: An ever-growing number of predictive models used to inform clinical decision making have in...
Computer-assisted analysis of three-dimensional imaging data (radiomics) has received a lot of resea...
The repeatability and reproducibility of radiomic features extracted from CT scans need to be invest...
Radiomics is emerging as a promising tool to extract quantitative biomarkers—called radiomic feature...