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Deep Mouse: An End-to-End Auto-Context Refinement Framework for Brain Ventricle Body Segmentation in Embryonic Mice Ultrasound Volumes

机译:深度鼠标:胚胎小鼠超声体积中脑室和身体分割的端到端自动上下文细化框架

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The segmentation of the brain ventricle (BV) and body in embryonic mice high-frequency ultrasound (HFU) volumes can provide useful information for biological researchers. However, manual segmentation of the BV and body requires substantial time and expertise. This work proposes a novel deep learning based end-to-end auto-context refinement framework, consisting of two stages. The first stage produces a low resolution segmentation of the BV and body simultaneously. The resulting probability map for each object (BV or body) is then used to crop a region of interest (ROI) around the target object in both the original image and the probability map to provide context to the refinement segmentation network. Joint training of the two stages provides significant improvement in Dice Similarity Coefficient (DSC) over using only the first stage (0.818 to 0.906 for the BV, and 0.919 to 0.934 for the body). The proposed method significantly reduces the inference time (102.36 to 0.09 s/volume ≈1000x faster) while slightly improves the segmentation accuracy over the previous methods using slide-window approaches.
机译:胚胎小鼠高频超声(HFU)体积对脑室(BV)和身体的分割可以为生物学研究人员提供有用的信息。但是,手动分割BV和身体需要大量时间和专业知识。这项工作提出了一个新颖的基于深度学习的端到端自动上下文细化框架,包括两个阶段。第一阶段同时产生BV和人体的低分辨率分割。然后,将每个对象(BV或身体)生成的概率图用于在原始图像和概率图中裁剪目标对象周围的感兴趣区域(ROI),以为优化分割网络提供上下文。与仅使用第一阶段(BV为0.818至0.906,身体为0.919至0.934)相比,这两个阶段的联合训练在骰子相似系数(DSC)方面有显着改善。所提出的方法显着减少了推理时间(102.36到0.09 s /体积≈1000x更快),同时与使用滑窗方法的先前方法相比,略微提高了分割精度。

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