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Three-dimensional Reconstruction of Internal Fascicles of Human Peripheral Nerve

机译:人周围神经内束的三维重建

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Three-dimensional reconstruction of nerve fascicle is important in the analysis of biological characteristics in thearm. The topology of fascicle has been used by doctors to investigate the nerve direction and the relationshipbetween the individual nerve fascicle. However, there still does not exist an ideal internal fascicle and 3D model inthe human peripheral nerve. Accurate segmentation of fascicle from CT images is a crucial step to obtain reliable3D nerve fascicle model. Traditional method in the fascicle segmentation is not efficient due to time consuming,manual work and poor generalization capacity. In this study, we proposed an efficient deep segmentation networkand then reconstruct 3D nerve fascicle model. The proposed network explores the intra-slice contextual featureswith convolutional long short-term memory for accurate fascicle segmentation, and model long-range semanticinformation among image slices. Transfer learning technique is integrated with ResNet34, and the discriminativecapability of intermediate features are further improved. The proposed network architecture is efficient, exibleand suitable for separating the adhesive fascicle. Our approach is the first deep learning method for nervessegmentation. The proposed approach achieves state-of-the-art performance on our dataset, where the meanDice of our method is 95.4% and at least 5% more than other methods.
机译:神经束的三维重建在分析大鼠生物学特性中很重要 手臂。束状拓扑已被医生用来研究神经的方向及其相互关系 个别神经束之间。但是,仍然不存在理想的内部分册和3D模型。 人类的周围神经。从CT图像准确分割束是获得可靠的关键步骤 3D神经束模型。分束分割的传统方法由于耗时,效率低下, 体力劳动,泛化能力差。在这项研究中,我们提出了一种有效的深度细分网络 然后重建3D神经束模型。拟议的网络探索了片内语境特征 具有卷积长短期记忆,可进行精确的束切分,并为远程语义建模 图像切片之间的信息。转移学习技术与ResNet34集成在一起,并且具有区别性 中间特征的能力得到进一步提高。所提出的网络架构是有效的, 可行的 适用于分离胶束。我们的方法是神经的第一种深度学习方法 分割。所提出的方法在我们的数据集上实现了最先进的性能,其中均值 我们方法的骰子为95.4%,比其他方法至少多5%。

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