MRI based diffusion and perfusion predictive model to estimate stroke evolution
| Contribuinte(s) |
J. Gore |
|---|---|
| Data(s) |
01/10/2001
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| Resumo |
In this study we present a novel automated strategy for predicting infarct evolution, based on MR diffusion and perfusion images acquired in the acute stage of stroke. The validity of this methodology was tested on novel patient data including data acquired from an independent stroke clinic. Regions-of-interest (ROIs) defining the initial diffusion lesion and tissue with abnormal hemodynamic function as defined by the mean transit time (MTT) abnormality were automatically extracted from DWI/PI maps. Quantitative measures of cerebral blood flow (CBF) and volume (CBV) along with ratio measures defined relative to the contralateral hemisphere (r(a)CBF and r(a)CBV) were calculated for the MTT ROIs. A parametric normal classifier algorithm incorporating these measures was used to predict infarct growth. The mean r(a)CBF and r(a)CBV values for eventually infarcted MTT tissue were 0.70 +/-0.19 and 1.20 +/-0.36. For recovered tissue the mean values were 0.99 +/-0.25 and 1.87 +/-0.71, respectively. There was a significant difference between these two regions for both measures (P |
| Identificador | |
| Idioma(s) |
eng |
| Publicador |
Elsevier Science |
| Palavras-Chave | #Radiology, Nuclear Medicine & Medical Imaging #Acute Stroke #Magnetic Resonance Imaging #Diffusion And Perfusion #Cerebral Blood-flow #Positron-emission-tomography #High-resolution Measurement #Imaging Bolus Tracking #Ischemic Stroke #Weighted Mri #Hyperacute Stroke #Time-course #Volume #Brain #C1 #230204 Applied Statistics #780101 Mathematical sciences |
| Tipo |
Journal Article |