| Literature DB >> 28936367 |
Nicholas Vincent1, Noah Stier1, Songlin Yu1, David S Liebeskind1, Danny Jj Wang1, Fabien Scalzo1.
Abstract
Hyperperfusion detected on arterial spin labeling (ASL) images acquired after acute stroke onset has been shown to correlate with development of subsequent intracerebral hemorrhage. We present in this study a quantitative hyperperfusion detection model that can provide an objective decision support for the interpretation of ASL cerebral blood flow (CBF) maps and rapidly delineate hyperperfusion regions. The detection problem is solved using Deep Learning such that the model relates ASL image patches to the corresponding label (normal or hyperperfused). Our method takes into account the regional intensity values of contralateral hemisphere during the labeling of a pixel. Each input vector is associated to a label corresponding to the presence of hyperperfusion that was manually established by a clinical researcher in Neurology. When compared to the manually established hyperperfusion, the predicted maps reached an accuracy of 97.45 ± 2.49% after crossvalidation. Pattern recognition based on deep learning can provide an accurate and objective measure of hyperperfusion on ASL CBF images and could therefore improve the detection of hemorrhagic transformation in acute stroke patients.Entities:
Year: 2015 PMID: 28936367 PMCID: PMC5604473 DOI: 10.1109/BIBM.2015.7359870
Source DB: PubMed Journal: Proceedings (IEEE Int Conf Bioinformatics Biomed) ISSN: 2156-1125