Radiomics in Brain Tumor: Image Assessment, Quantitative Feature Descriptors, and Machine-Learning Approaches.
M ZhouJacob G ScottB ChaudhuryLawrence O HallDmitry B GoldgofKristen W YeomMichael IvYangming OuJayashree Kalpathy-CramerSandy NapelRobert James GilliesOlivier GevaertRobert A GatenbyPublished in: AJNR. American journal of neuroradiology (2017)
Radiomics describes a broad set of computational methods that extract quantitative features from radiographic images. The resulting features can be used to inform imaging diagnosis, prognosis, and therapy response in oncology. However, major challenges remain for methodologic developments to optimize feature extraction and provide rapid information flow in clinical settings. Equally important, to be clinically useful, predictive radiomic properties must be clearly linked to meaningful biologic characteristics and qualitative imaging properties familiar to radiologists. Here we use a cross-disciplinary approach to highlight studies in radiomics. We review brain tumor radiologic studies (eg, imaging interpretation) through computational models (eg, computer vision and machine learning) that provide novel clinical insights. We outline current quantitative image feature extraction and prediction strategies with different levels of available clinical classes for supporting clinical decision-making. We further discuss machine-learning challenges and data opportunities to advance radiomic studies.
Keyphrases
- machine learning
- deep learning
- high resolution
- artificial intelligence
- big data
- decision making
- rheumatoid arthritis
- lymph node metastasis
- magnetic resonance imaging
- magnetic resonance
- healthcare
- squamous cell carcinoma
- case control
- contrast enhanced
- convolutional neural network
- computed tomography
- bone marrow
- electronic health record
- photodynamic therapy
- fluorescence imaging
- quantum dots
- anti inflammatory