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首页> 外文期刊>International journal of imaging systems and technology >Pediatric brain extraction from T2-weighted MR images using 3D dual frame U-net and human connectome database
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Pediatric brain extraction from T2-weighted MR images using 3D dual frame U-net and human connectome database

机译:使用3D双帧U-net和人类Connectome数据库从T2加权MR图像中提取小儿脑

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Accurate extraction of brain tissues from magnetic resonance (MR) images is important in neuroradiology. However, brain extraction is more difficult for pediatric brains than for adult brains due to several factors including smaller brain sizes and lower tissue contrasts. In this work, we propose a brain extraction technique that utilizes dual frame (DF) 3D U-net deep learning architecture and the human connectome project (HCP) database for multislice 2D pediatric T2-weighted MR images with diseases. To improve segmentation accuracy in small pediatric brains with detailed boundary regions, DF 3D U-net architecture was used. We pretrained networks with the HCP database to compensate for the limited amount of MR images and manual segmentation masks of pediatric patients. For quantitative analysis, we compared the brain extraction results of brain extraction tool, DF, and conventional 3D U-net using the dice similarity coefficient (DSC), intersection of union (IoU), and boundary F1 (BF) scores; each deep learning architecture was evaluated with and without pretraining using the HCP. This study included 10 patients with diseases and all images were acquired using a PROPELLER MR sequence. Pretraining using the HCP database enhanced segmentation performance of the network, and the skip connections in the DF 3D U-net could enhance the contour similarity of segmentation results. Experimental results showed that the proposed method increased the DSC, IoU, and BF scores by 0.8%, 1.6%, and 1.5%, respectively, compared with those of the conventional 3D U-net without pretraining.
机译:从磁共振(MR)图像中准确提取脑组织在神经放射学中很重要。但是,由于多种因素,包括较小的大脑尺寸和较低的组织对比度,小儿脑部的提取比成人脑部提取更困难。在这项工作中,我们提出了一种脑提取技术,该技术利用双帧(DF)3D U-net深度学习体系结构和人类Connectome Project(HCP)数据库来处理具有疾病的多层2D小儿T2加权MR图像。为了提高具有详细边界区域的小儿脑的分割精度,使用了DF 3D U-net体系结构。我们使用HCP数据库对网络进行了预培训,以补偿有限数量的MR图像和小儿患者的手动分割蒙版。为了进行定量分析,我们使用骰子相似系数(DSC),并集交集(IoU)和边界F1(BF)分数比较了脑提取工具DF和常规3D U-net的脑提取结果;使用HCP对每种深度学习体系结构进行了预训练和不进行预训练的评估。这项研究包括10名疾病患者,所有图像均使用PROPELLER MR序列采集。使用HCP数据库进行预训练可以增强网络的分割性能,而DF 3D U-net中的跳过连接可以增强分割结果的轮廓相似度。实验结果表明,与未进行预训练的常规3D U-net相比,该方法将DSC,IoU和BF评分分别提高了0.8%,1.6%和1.5%。

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