Title:
Window Classification of Brain CT Images In Biomedical Articles.
Author(s):
Zhiyun Xue, Sameer Antani, Rodney Long, Dina Demner-Fushman, George Thoma.
Institution(s):
1) National Library of Medicine, Bethesda, MD 20894
Source:
Proceedings of AMIA Annual Meeting. November 2012:1023-1029.
Abstract:
Effective capability to search biomedical articles based on visual properties of article images may significantly
augment information retrieval in the future. In this paper, we present a new method to classify the window setting
types of brain CT images. Windowing is a technique frequently used in the evaluation of CT scans, and is used to
enhance contrast for the particular tissue or abnormality type being evaluated. In particular, it provides
radiologists with an enhanced view of certain types of cranial abnormalities, such as the skull lesions and bone
dysplasia which are usually examined using the bone window setting and illustrated in biomedical articles using bone window images. Due to the inherent large variations of images among articles, it is important that the
proposed method is robust. Our algorithm attained 90% accuracy in classifying images as bone window or nonbone
window in a 210 image data set.
Publication Type: CONFERENCE
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