Automated Prediction of Glasgow Outcome Scale for Traumatic Brain Injury

ICPR(2014)

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摘要
Clinical features found in brain CT scan images are widely used in traumatic brain injury (TBI) as indicators for Glasgow Outcome Scale (GOS) prediction. However, due to the lack of automated methods to measure and quantify the CT scan image features, the computerized prediction of GOS in TBI has not been well studied. This paper introduces an automated GOS prediction system for traumatic brain CT images. Different from most existing systems that perform the prognosis based on pre-processed data, our system directly works on brain CT scan images based on the image features. Our system can also be extended to large dataset with easy adaptation. For each new image of a CT scan series, our proposed system first makes use of sparse representation model that predicts the GOS of each CT image slice using Gabor features. Logistic regression, which integrates the GOS of each CT scan slice with a pre-trained model, is then applied to estimate the GOS score for the new case which contains multiple CT slices. Evaluation of the system has shown promising results in prediction of GOS of traumatic brain injury cases.
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关键词
logistic regression,ct scan image features,image representation,glasgow outcome scale,computerised tomography,brain ct scan, glasgow outcome scale, sparse representation classifier, logistic regression,brain ct scan,regression analysis,gos prediction,sparse representation model,injuries,gabor filters,feature extraction,brain,traumatic brain injury,gabor features,sparse representation classifier,tbi,medical image processing
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