首页> 外文会议>International Conference on Medical Image Computing and Computer-Assisted Intervention >Automated Infarct Segmentation from Follow-up Non-Contrast CT Scans in Patients with Acute Ischemic Stroke Using Dense Multi-Path Contextual Generative Adversarial Network
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Automated Infarct Segmentation from Follow-up Non-Contrast CT Scans in Patients with Acute Ischemic Stroke Using Dense Multi-Path Contextual Generative Adversarial Network

机译:使用密集多路径上下文生成对抗网络,对急性缺血性卒中患者的随访非造影CT扫描进行自动梗塞分割

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Cerebral infarct volume measured in follow-up non-contrast CT (NCCT) scans is an important radiologic outcome measure evaluating the effectiveness of endovascular therapy of acute ischemic stroke (AIS) patients. In this paper, a dense Multi-Path Contextual Generative Adversarial Network (MPC-GAN) is proposed to automatically segment ischemic infarct volume from NCCT images of AIS patients. The developed MPC-GAN approach makes use of a dense multi-path U-Net as generator regularized by a discriminator network. Both generator and discriminator take contextual information as inputs, such as bilateral intensity difference, infarct location probability, and distance to cerebrospinal fluid (CSF). We collected 100 NCCT images with manual segmentations. Of 100 patients, 60 patients were used to train the MPC-GAN, 10 patients were used to tune the parameters, and the remained 30 patients were used for validation. Quantitative results in comparison with manual segmentations show that the proposed MPC-GAN achieved a dice coefficient (DC) of 72.6%, outperforming some state-of-the-art segmentation methods, such as U-Net, U-Net based GAN, and random forest based segmentation method.
机译:随访非造影CT(NCCT)扫描中测得的脑梗死体积是评估急性缺血性卒中(AIS)患者血管内治疗效果的重要放射学指标。本文提出了一种密集的多路径上下文生成对抗网络(MPC-GAN),用于从AIS患者的NCCT图像中自动分割缺血性梗死体积。发达的MPC-GAN方法利用密集的多路径U-Net作为由鉴别器网络规范化的生成器。生成器和鉴别器都将上下文信息作为输入,例如双边强度差异,梗塞位置概率以及到脑脊液的距离(CSF)。我们通过手动分割收集了100张NCCT图像。在100例患者中,有60例用于训练MPC-GAN,10例用于调整参数,其余30例用于验证。与手动细分相比,定量结果表明,拟议的MPC-GAN的骰子系数(DC)为72.6%,优于某些最新的细分方法,例如U-Net,基于U-Net的GAN和基于随机森林的分割方法。

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