Segmentation of X-Ray CT Images Using Stochastic Templates [email protected]
نویسندگان
چکیده
X-ray computed tomography (CT), a non-invasive imaging technique, is being used increasingly in sheep breeding. Currently, considerable human intervention is needed to segment images into different tissues. This is undesirable because of its subjectivity and tediousness. We propose the use of deformable templates to automate the segmentation. A stochastic model has been constructed using a training set of 99 manually-segmented images: Fourier coefficients were used to parameterise the template boundaries, and the coefficients were reduced in dimensionality using principal components. As a matching criterion between a template and an image, a weighted sum of squares of the difference between pixel values and their expected values was identified using the training images. Finally, the Nelder-Mead algorithm was used to optimise the matching criterion in order to fit a template to a specific image. The results have been validated on an independent set of 99 images, and boundaries were positioned to an average accuracy of 2.7mm.
منابع مشابه
Impact of Photon Spectra on the Sensitivity of Polymer Gel Dosimetry by X-Ray Computed Tomography
Introduction: The purpose of the current study was to investigate the effect of X-ray spectra on the sensitivity of a polymer gel dosimeter imaged with a conventional computed tomography (CT) scanner. Material and Methods: The whole process of CT imaging of an irradiated polymer gel was simulated by MCNPX Monte Carlo (MC) code. The imaging of polyacrylamide gel was accomplished by means of a co...
متن کاملIntrathoracic Airway Tree Segmentation from CT Images Using a Fuzzy Connectivity Method
Introduction: Virtual bronchoscopy is a reliable and efficient diagnostic method for primary symptoms of lung cancer. The segmentation of airways from CT images is a critical step for numerous virtual bronchoscopy applications. Materials and Methods: To overcome the limitations of the fuzzy connectedness method, the proposed technique, called fuzzy connectivity - fuzzy C-mean (FC-FCM), utilized...
متن کاملEvaluation of methods of co-segmentation on PET/CT images of lung tumor: simulation study
Introduction: Lung cancer is one of the most common causes of cancer-related deaths worldwide. Nowadays PET/CT plays an essential role in radiotherapy planning specially for lung tumors as it provides anatomical and functional information simultaneously that is effective in accurate tumor delineation. The optimal segmentation method has not been introduced yet, however several ...
متن کاملProstate segmentation and lesions classification in CT images using Mask R-CNN
Purpose: Non-cancerous prostate lesions such as prostate calcification, prostate enlargement, and prostate inflammation cause too many problems for men’s health. This research proposes a novel approach, a combination of image processing techniques and deep learning methods for classification and segmentation of the prostate in CT-scan images by considering the experienced physicians’ reports. ...
متن کاملInvestigation of dosimetric characteristic of NIPAM polymer gel using x-ray CT
Introduction: Polymer gel dosimeters contain chemical materials sensitive to the radiation which are polymerized by the radiation as a function of absorbed dose. So information of spatial dose distribution can be extracted by imaging from irradiated gel. Among imaging techniques, computed tomography (CT) poses as an attractive method because of practical advantages such as acce...
متن کامل