3D convolutional neural networks for detecting intracranial aneurysms on brachiocephalic arteries CTA scans

E. I. Zyablova, S. G. Sinitsa, I. A. Zayats, A. A. Khalafyan, D. O. Kardailskaya, V. A. Porhanov
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Abstract

Background: Computed tomography angiography (CTA) is the primary and minimally invasive imaging modality currently used for diagnosis and monitoring of intracranial aneurysms as well as preoperative planning of their treatment. However, its interpretation is time-consuming even for specially trained neuroradiologists. Nowadays little is known whether trained neural networks contribute to analyzing medical images and reduce the time to diagnosis, and how effective they are in detecting intracranial aneurysms according to the CTA findings. Objective: To assess the diagnostic value of a convolutional neural network prototype in the intracranial aneurysm detection according to the brachiocephalic arteries CTA findings. Materials and methods: We analyzed the 3D convolutional neural network prototype based at Kuban State University (Krasnodar, Russian Federation).This prototype was to determine the probability of intracranial aneurysms according to the brachiocephalic arteries CTA findings, obtained in the Radiology Department of Scientific Research Institute – Ochapovsky Regional Clinical Hospital No. 1. The study included 451 CTA scans of 205 patients with confirmed intracranial aneurysms and 246 patients without aneurysms. Results: The sensitivity of the 3D convolutional neural network prototype in the aneurysms detection according to the brachiocephalic arteries CTA findings was 85.1%, the specificity was 95.1%, and the overall accuracy was 91%. Conclusions: The 3D convolutional systems may predict aneurysms with a high accuracy as well as localize them with an accuracy of more than 90%. Such results require a larger dataset.
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三维卷积神经网络检测头臂动脉颅内动脉瘤的CTA扫描
背景:计算机断层血管造影(CTA)是目前用于颅内动脉瘤诊断和监测以及术前治疗计划的主要微创成像方式。然而,即使对受过专门训练的神经放射学家来说,它的解释也是费时的。目前,训练后的神经网络是否有助于分析医学图像并减少诊断时间,以及根据CTA发现它们在检测颅内动脉瘤方面的有效性如何,我们知之甚少。目的:根据头臂动脉CTA表现,评价卷积神经网络原型在颅内动脉瘤诊断中的价值。材料和方法:我们分析了基于库班国立大学(Krasnodar, Russian Federation)的三维卷积神经网络原型。该原型是根据科学研究所- Ochapovsky地区第一临床医院放射科获得的头臂动脉CTA结果确定颅内动脉瘤的概率。该研究包括451个CTA扫描205例确诊颅内动脉瘤患者和246例无动脉瘤患者。结果:三维卷积神经网络原型根据头臂动脉CTA表现检测动脉瘤的灵敏度为85.1%,特异性为95.1%,总体准确率为91%。结论:三维卷积系统对动脉瘤的预测精度高,定位精度可达90%以上。这样的结果需要更大的数据集。
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来源期刊
Innovatsionnaia meditsina Kubani
Innovatsionnaia meditsina Kubani Medicine-General Medicine
CiteScore
0.40
自引率
0.00%
发文量
34
审稿时长
6 weeks
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