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Combining Deep Learning and Active Contours Opens The Way to Robust, Automated Analysis of Brain Cytoarchitectonics

机译:组合深度学习和活动轮廓开辟了脑细胞建筑学的强大,自动分析的方式

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Deep learning has thoroughly changed the field of image analysis yielding impressive results whenever enough annotated data can be gathered. While partial annotation can be very fast, manual segmentation of 3D biological structures is tedious and error-prone. Additionally, high-level shape concepts such as topology or boundary smoothness are hard if not impossible to encode in Feedforward Neural Networks. Here we present a modular strategy for the accurate segmentation of neural cell bodies from light-sheet microscopy combining mixed-scale convolutional neural networks and topology-preserving geometric deformable models. We show that the network can be trained efficiently from simple cell centroid annotations, and that the final segmentation provides accurate cell detection and smooth segmentations that do not introduce further cell splitting or merging.
机译:深度学习已经完全改变了图像分析领域,每当可以收集足够的注释数据时产生令人印象深刻的结果。虽然部分注释可以非常快,但3D生物结构的手动分割是乏味的,并且容易出错。此外,如果在馈电神经网络中不可能编码,则诸如拓扑或边界平滑度的高级形状概念很难。在这里,我们提出了一种模块化策略,用于从光纸显微镜和拓扑卷积神经网络和拓扑保存的几何可变形模型组合的微细胞体的精确分割。我们表明网络可以从简单的小区质心注释有效地培训,最终分割提供准确的细胞检测和不引入进一步细胞分裂或合并的平滑细分。

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