학술논문

Computerized Detection of Early Ischemic Signs of Acute Stroke at Lentiform Nucleus in Unenhanced CT Using Deep Learning / 深層学習による単純CTにおける急性期脳梗塞のレンズ核早期虚血変化の自動検出
Document Type
Journal Article
Source
Medical Imaging Technology. 2018, 36(5):217
Subject
Acute ischemic stroke
CT
Convolutional neural network
Deep learning
急性期脳梗塞
深層学習
畳み込みニューラルネットワーク
Language
Japanese
ISSN
0288-450X
2185-3193
Abstract
Recently, endovascular thrombectomy for acute ischemic stroke is gaining increasing attention. Identifying hypoattenuation of early ischemic changes on computerized tomography (CT) images is crucial for diagnosis. However, it is difficult to identify early ischemic changes with certainty. We present an atlas-based computerized method using a convolutional neural network (CNN) to identify early ischemic changes in the lentiform nucleus. The algorithm for this method consisted of anatomic standardization, setting of regions, creation of input images for classification, training on the CNN and classification of early ischemic changes. The method was applied to 50 patients with early ischemic change of acute stroke (<4.5 h) in the lentiform nucleus and 28 normal controls. As a result, we obtained a sensitivity of 90.0%, a specificity of 100% and an accuracy of 93.6% for identifying early ischemic changes in the lentiform nucleus. These results indicate that this new method has the potential to accurately identify early ischemic changes in the lentiform nucleus in patients with acute ischemic stroke on CT images.

Online Access