| Literature DB >> 31131293 |
King Chung Ho1, Fabien Scalzo2, Karthik V Sarma1, William Speier3, Suzie El-Saden3, Corey Arnold3.
Abstract
Predicting infarct volume from magnetic resonance perfusion-weighted imaging can provide helpful information to clinicians in deciding how aggressively to treat acute stroke patients. Models have been developed to predict tissue fate, yet these models are mostly built using hand-crafted features (e.g., time-to-maximum) derived from perfusion images, which are sensitive to deconvolution methods. We demonstrate the application of deep convolution neural networks (CNNs) on predicting final stroke infarct volume using only the source perfusion images. We propose a deep CNN architecture that improves feature learning and achieves an area under the curve of 0.871 ± 0.024 , outperforming existing tissue fate models. We further validate the proposed deep CNN with existing 2-D and 3-D deep CNNs for images/video classification, showing the importance of the proposed architecture. Our work leverages deep learning techniques in stroke tissue outcome prediction, advancing magnetic resonance imaging perfusion analysis one step closer to an operational decision support tool for stroke treatment guidance.Entities:
Keywords: convolutional neural network; deep learning; perfusion imaging; stroke; tissue fate prediction
Year: 2019 PMID: 31131293 PMCID: PMC6529818 DOI: 10.1117/1.JMI.6.2.026001
Source DB: PubMed Journal: J Med Imaging (Bellingham) ISSN: 2329-4302