An algorithm was developed to statistically predict ischemic tissue fate on a pixel-by-pixel basis. Quantitative high-resolution (200 x 200 microm) cerebral blood flow (CBF) and apparent diffusion coefficient (ADC) were measured on acute stroke rats subjected to permanent middle cerebral artery occlusion and an automated clustering (ISODATA) technique was used to classify ischemic tissue types. Probability and probability density profiles were derived from a training data set (n=6) and probability maps of risk of subsequent infarction were computed in another group of animals (n=6) as ischemia progressed. Predictions were applied to overall tissue fate. Performance measures (sensitivity, specificity, and receiver operating characteristic) s...
AbstractOver the last 15years, basic thresholding techniques in combination with standard statistica...
INTRODUCTION:In recent years, numerous methods have been proposed to predict tissue outcome in acute...
Estimation of hemorrhagic transformation (HT) risk is crucial for treatment decision–making after ac...
High-resolution (200 x 200 x 1,500 microm3) imaging was performed to derive quantitative cerebral bl...
was performed to derive quantitative cerebral blood flow (CBF) and apparent diffusion coefficient (A...
Acute ischemic stroke is a major cause of death and disability in modern western society. Possible b...
The effects of reperfusion on the spatiotemporal dynamics of transient (60 minutes) focal ischemic b...
Summary: The effects of reperfusion on the spatiotemporal dynamics of transient (60 minutes) focal i...
International audienceMachine Learning (ML) has been proposed for tissue fate prediction after acute...
BackgroundAn accurate prediction of tissue outcome in acute ischemic stroke patients is of high inte...
In this study we present a novel automated strategy for predicting infarct evolution, based on MR di...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
AbstractOver the last 15years, basic thresholding techniques in combination with standard statistica...
INTRODUCTION:In recent years, numerous methods have been proposed to predict tissue outcome in acute...
Estimation of hemorrhagic transformation (HT) risk is crucial for treatment decision–making after ac...
High-resolution (200 x 200 x 1,500 microm3) imaging was performed to derive quantitative cerebral bl...
was performed to derive quantitative cerebral blood flow (CBF) and apparent diffusion coefficient (A...
Acute ischemic stroke is a major cause of death and disability in modern western society. Possible b...
The effects of reperfusion on the spatiotemporal dynamics of transient (60 minutes) focal ischemic b...
Summary: The effects of reperfusion on the spatiotemporal dynamics of transient (60 minutes) focal i...
International audienceMachine Learning (ML) has been proposed for tissue fate prediction after acute...
BackgroundAn accurate prediction of tissue outcome in acute ischemic stroke patients is of high inte...
In this study we present a novel automated strategy for predicting infarct evolution, based on MR di...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
AbstractOver the last 15years, basic thresholding techniques in combination with standard statistica...
INTRODUCTION:In recent years, numerous methods have been proposed to predict tissue outcome in acute...
Estimation of hemorrhagic transformation (HT) risk is crucial for treatment decision–making after ac...