| Literature DB >> 28623558 |
Xiao Chang1, Thomas Mazur1, H Harold Li1, Deshan Yang2.
Abstract
A method was developed to recognize anatomical site and image acquisition view automatically in 2D X-ray images that are used in image-guided radiation therapy. The purpose is to enable site and view dependent automation and optimization in the image processing tasks including 2D-2D image registration, 2D image contrast enhancement, and independent treatment site confirmation. The X-ray images for 180 patients of six disease sites (the brain, head-neck, breast, lung, abdomen, and pelvis) were included in this study with 30 patients each site and two images of orthogonal views each patient. A hierarchical multiclass recognition model was developed to recognize general site first and then specific site. Each node of the hierarchical model recognized the images using a feature extraction step based on principal component analysis followed by a binary classification step based on support vector machine. Given two images in known orthogonal views, the site recognition model achieved a 99% average F1 score across the six sites. If the views were unknown in the images, the average F1 score was 97%. If only one image was taken either with or without view information, the average F1 score was 94%. The accuracy of the site-specific view recognition models was 100%.Entities:
Keywords: Classification; Image processing; Image-guided radiation therapy; Machine learning; Principal component analysis
Mesh:
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Year: 2017 PMID: 28623558 PMCID: PMC5681474 DOI: 10.1007/s10278-017-9981-6
Source DB: PubMed Journal: J Digit Imaging ISSN: 0897-1889 Impact factor: 4.056