Doktora Tezleri
Permanent URI for this collectionhttps://hdl.handle.net/20.500.12573/5800
Browse
Search Results
Doctoral Thesis FDG-PET Görüntülerindeki Tümörlerin Makine ve Derin Öğrenme Tabanlı Analizi(Abdullah Gül Üniversitesi, Fen Bilimleri Enstitüsü, 2022) Ayyıldız, Oğuzhan; Yılmaz, BülentAnalysis of a tumor is essential in treatment planning and evaluation of treatment response. Positron Emission Tomography (PET) is a vital imaging device for clinical oncology in understanding the metabolic structure of the tumor. In this thesis, three separate studies investigating the application of machine, deep learning and statistical approaches on FDG-PET images from patients with non-small cell lung cancer (NSCLC) and pancreatic cancer. The first study aimed at performing a survey on subtype classification of NSCLC by using different texture features, feature selection methods and classifiers. Images from 92 patients and several clinical and metabolic features for each case were used in this study along with histopathological validation for the tumor subtype labeling. Stacking classifier resulted in 76% accuracy. The aim of our second study was to adapt an atrous (dilated) convolution-based tumor segmentation approach (DeepLabV3) on FDG-PET slices with maximum standard uptake value (SUVmax). MobileNet-v2 pretrained on ImageNet served as the backbone to DeepLabV3. The classification layer was interchanged with the Tversky loss layer which helped improve model's performance while the dataset was imbalanced. Images from 141 patients were employed and augmentation was performed in each training phase. Dice similarity index was obtained as 0.76 without preprocessing and 0.85 with preprocessing. The last study focused on determining the features to be used in the prognosis of pancreatic adenocarcinoma on FDG-PET images from 72 patients. Well-known texture, metabolic and physical features were extracted from tumor region that was determined with the help of random walk segmentation algorithm. On these features time-dependent ROC curve analysis was performed for 2-year overall survival (OS) prediction, and, in the univariable analyses, tumor size, energy, entropy, and strength were found to be significant predictors of OS. Keywords: PET/CT, NSCLC, Machine learning, Deep learning, Radiomics, Semantic segmentationDoctoral Thesis Medikal Termal Görüntülerin Otomatik Olarak İşlenmesi ve Sınıflandırılması(Abdullah Gül Üniversitesi, Fen Bilimleri Enstitüsü, 2022) Özdil, Ahmet; Yılmaz, BülentThe aim of this dissertation is to develop computer aided methods for processing and evaluating medical infrared thermal images. Throughout this study three problems were evaluated. The first problem was to automatically classify the body part and pose in the thermal images. In this study there were four classes; upper-lower body parts with back-front views. The first step included the segmentation of the background with Otsu's thresholding method applying histogram equalization. Next, DarkNet-19 architecture was used to extract features from images and these features were reduced using PCA and t-SNE methods. Finally reduced feature sets were used for classification. The second problem was to automatically classify liver steatosis from using thermal images. In this study, the classification problem was tested on an anatomical region of interest from abdominal images corresponding to the liver. Deep learning and texture analysis methods were employed for feature extraction, and then the selected feature sets were used for classification. The third problem was to quantify thermograms of multiple sclerosis (MS) patients for better assessment of the disease and monitoring the therapy. Thermal images of two patients and a healthy control from lower limbs were evaluated during experiments, and localized quantification of the effect of MS on the feet of the patients using thermal images method was proposed. The proposed method was fully correlated with the evaluations of physician. It is shown that medical thermal imaging has high potential in many fields of medicine as a non-invasive method for pre-diagnosis and follow-up.
