Characterization of Non-Small Cell Lung Carcinoma Gross Target Volume with 18F-FDG PET scan using Texture Analysis
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Date
2020
Journal Title
Journal ISSN
Volume Title
Publisher
International Journal Dental and Medical Sciences Research (IJDMSR)
Abstract
This study concern to characterize the lung area to cardiac, lung, tumor and submucosal using
Gray Level Co-occurrence Matrix (GLCM) and extract classification features from PET/CT with fluorine-18
fluorodeoxyglucose images. Using the GLCM techniques to find the gray level variation in PET/CT images it
complements the features extracted from PET/CT images with variation of gray level in pixels and estimate the
distribution of the sub-patterns using Interactive Data Language IDL software. The results show’s that the Gray
Level Co-occurrence Matrix and features extracted give a classification accuracy of cardiac 91.6%, lung 100%,
tumor 99.6%, while the sub-mucosal showed accuracy 91.2%. The overall classification accuracy of lung area
96.0%. These relationships are stored in a Texture Dictionary that can be later used to automatically annotate
new PET/CT images with the appropriate lung area names.
Description
Keywords
Texture Analysis, Lung Carcinoma, PET scan, GLCM
