We provide a practical approach for radiologists to undertake radiomic and radiogenomic studies.
The process outlines the preliminary steps of: selection of imaging data,
registration and tumour segmentation.
This is followed by extraction of quantitative intensity,
shape and wavelet-based features.
Machine-learning analysis of radiomic,
clinical data and multiparametric MRI data is performed,
involving feature selection and classification....
Phenotypic information is routinely being extracted through imaging non-invasively which can be used for precision medicine. 2 It is critically important that radiologists lead this artificial intelligence (AI) revolution.
They have developed clinical skills and experience through generations of accumulated knowledge.
predictive radiomic properties must be clearly linked to meaningful biologic characteristics and qualitative imaging properties familiar to radiologists....
Findings and procedure details
Identifying a Clinical Question and the Research Team Selection of the patient population and clinical question should be explored between clinical teams and radiologists to ensure appropriate and clinically focused research studies are undertaken.
The research should address an unmet clinical need that aims to bring direct patient benefit.
A multidisciplinary team approach to research utilising skills of radiologists,
data scientists and...
Through the convergence of radiology,
computer vision and machine learning techniques,
radiomics provides a mechanism for a multidisciplinary approach in imaging. When radiomic models align well with disease biology,
then only radiomic findings maximise their likelihood for clinical utility.
there is the risk of drowning into the plethora of clinically unsupervised informatics. This newly developing field should form a part of the Radiology Training Programmes.
Machine Learning for Medical Imaging.
2017;37(2):505-515. Gillies RJ,
Radiomics: Images Are More than Pictures,
They Are Data.
2016;278(2):563-77. Zhou M,
Radiomics in Brain Tumor: Image Assessment,
Quantitative Feature Descriptors,
and Machine-Learning Approaches.
AJNR Am J Neuroradiol.