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Discriminative Feature Network Based on a Hierarchical Attention Mechanism for Semantic Hippocampus Segmentation

机译:基于语义海马分割的分层关注机制的鉴别特征网络

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The morphological analysis of hippocampus is vital to various neurological studies including brain disorders and brain anatomy. To assist doctors in analyzing the shape and volume of the hippocampus, an accurate and automatic hippocampus segmentation method is highly demanded in the clinical practice. Given that fully convolutional networks (FCNs) have made significant contributions in biomedical image segmentation applications, we propose a notably discriminative feature network based on a hierarchical attention mechanism in hippocampal segmentation. First, considering the problem that the hippocampus is a rather small part in MR images, we design a contexta-ware high-level feature extraction module (CHFEM) to extract high-level features of scale invariance in the encoder stage. Further, we introduce a hierarchical attention mechanism into our segmentation framework. The mechanism is divided into three parts: a low-level feature spatial attention module (LFSAM) is developed to learn the spatial relationship between different pixels on each channel in the low-level stage of the encoder, a high-level feature channel attention module (HFCAM) is to model the semantic information relationship on different channel images in the high-level stage of the encoder, and a cross-connected attention module (CCAM) is designed in the decoder part to further suppress the noisy boundaries of hippocampus and simultaneously utilize the attentional low-level features from the encoder to better guide the high-level hippocampus edge segmentation in the decoder phase. The proposed approach achieves outstanding performance on the ADNI dataset and the Decathlon dataset compared with other semantic segmentation models and existing hippocampal segmentation approaches. Source code is available at https:Pgithub.comiLannyShi'Hippocampal-segmentation.
机译:海马的形态分析对各种神经学研究至关重要,包括脑疾病和脑解剖学。为了协助医生分析海马的形状和体积,临床实践中精确和自动的海马分割方法是非常需要的。鉴于完全卷积网络(FCNS)在生物医学图像分割应用中作出了重大贡献,我们提出了一种基于海马分割中的分层关注机制的显着辨别特征网络。首先,考虑到海马是MR图像中相当小的部分的问题,我们设计了一个ContextA-Ware高级特征提取模块(CHFEM),以提取编码器级中的尺度不变性的高级功能。此外,我们向我们的分段框架引入分层关注机制。该机制分为三个部分:开发了一个低级特征空间注意模块(LFSAM)以在编码器的低级级中的每个通道上学习不同像素之间的空间关系,高级特征通道注意模块(HFCAM)是为了在编码器的高级阶段模拟不同信道图像上的语义信息关系,并且在解码器部分中设计交叉连接的注意模块(CCAM),以进一步抑制海马的嘈杂边界和同时抑制嘈杂的边界利用来自编码器的注意力低级功能,更好地指导解码器相中的高级海马边缘分段。拟议的方法在与其他语义分割模型和现有的海马分割方法相比,在Adni DataSet和Decothlon DataSet上实现了出色的表现。源代码在https:pgithub.comilannyshi'hippocampal分段中获得。

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