Pilot prospective two group observational study to create a model of the carotid plaque composition based on ultrasonic backscattered signals and select clinical data.
Stroke is a major cause of morbidity and mortality among patients with cardiovascular disease and the major cause of long-term disability in the United States. Current imaging modalities can determine the severity of luminal stenosis resulting from plaque, as in the carotid arteries. However, cerebrovascular accidents (CVAs) are often associated with the rupture of unstable plaques located in regions with a non-significant degree of luminal stenosis. Thus up to 50% of high-risk atherosclerotic plaques may go undetected and untreated. Plaque composition is an additional and perhaps, more important risk factor for CVA rather than stenosis severity alone. Accurate identification of these high-risk, rupture-prone plaques may potentially prevent CVAs in a significant number of patients. The data collected during this study (ultrasonic backscatter and histologically processed carotid plaque) will provide the basis for a novel algorithm to add plaque composition information to the plaque size and location information that is currently provided by standard ultrasound imaging. The input parameters for the algorithm are derived from two types of non-invasive ultrasound data: spectral parameters and acoustic radiation force impulse (ARFI) data. Spectral parameters are extracted from the frequency content of the backscattered diagnostic ultrasound signals. These are the same signals currently used for imaging, however, imaging relies solely on the strength of the signal to form the image and ignores the spectral information. Thus spectral analysis is an approach to use the information which is sensitive to the number and nature of the scatterers. In contrast ARFI techniques provide information on the stiffness of the tissue. ARFI is based on using a ultrasonic push pulse to slightly move the tissue (displacement on the order of microns) and an image of the relative displacements of the tissue (ARFI image) is created. The ARFI derived data and the spectral parameters will be combined with clinically available measures currently used for diagnosis of carotid stenosis to form the input parameters for the algorithm. In order to train and test the algorithm the plaque removed during surgery will be collected and the histology slides prepared from these plaques. This histology review provides the 'gold' standard for training and testing the algorithm. The majority of these matched sets (67%) will be used for training the algorithm. While the remainder (33%) will provide a test of the accuracy of the algorithm for these types of matched data. The sensitivity and specificity for each tissue type defined during the histology review will be reported.
Study Type
OBSERVATIONAL
Enrollment
150
Collection of backscattered ultrasound data during non-invasive ultrasound exam * ARFI based images of the carotid artery and plaque * Ultrasound signals received by the ultrasound imaging system are recorded. These signals are discarded during the image formation process for a standard duplex ultrasound exam.
Cleveland Clinic
Cleveland, Ohio, United States
Classification Algorithm Error Rate
Classification of carotid artery plaque is produced by an algorithm that uses the QUS and ARFI derived parameters corresponding to a given region in the plaque to produce a classification of the plaque region into one of the following: calcium, fibrous, necrotic, or hemorrhagic. Error rates from both the training and test data sets will be reported.
Time frame: Baseline
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