Target definition is the largest source of geometric uncertainty in radiation therapy. This is partly due to a lack of contrast between tumor and healthy soft tissue for computed tomography (CT) and due to blurriness, lower spatial resolution, and lack of a truly quantitative unit for positron emission tomography (PET). First-, second-, and higher-order statistics, Tamura, and structural features were characterized for PET and CT images of lung carcinoma and organs of the thorax. A combined decision tree (DT) with K-nearest neighbours (KNN) classifiers as nodes containing combinations of 3 features were trained and used for segmentation of the gross tumor volume. This approach was validated for 31 patients from two separate institutions and scanners. The results were compared with thresholding approaches, the fuzzy clustering method, the 3-level fuzzy locally adaptive Bayesian algorithm, the multivalued level set algorithm, and a single KNN using Hounsfield units and standard uptake value. The results showed the DTKNN classifier had the highest sensitivity of 73.9%, second highest average Dice coefficient of 0.607, and a specificity of 99.2% for classifying voxels when using a probabilistic ground truth provided by simultaneous truth and performance level estimation using contours drawn by 3 trained physicians.
Keyphrases
- positron emission tomography
- computed tomography
- deep learning
- contrast enhanced
- convolutional neural network
- dual energy
- image quality
- radiation therapy
- neural network
- machine learning
- end stage renal disease
- pet imaging
- magnetic resonance imaging
- pet ct
- soft tissue
- primary care
- ejection fraction
- chronic kidney disease
- newly diagnosed
- resistance training
- diffusion weighted imaging
- magnetic resonance
- body composition
- prognostic factors
- patient reported outcomes
- single cell
- lymph node
- mass spectrometry
- high intensity
- locally advanced