Kaynig Verena, Vazquez-Reina Amelio, Knowles-Barley Seymour, Roberts Mike, Jones Thouis R, Kasthuri Narayanan, Miller Eric, Lichtman Jeff, Pfister Hanspeter
School of Engineering and Applied Sciences, Harvard University, United States.
School of Engineering and Applied Sciences, Harvard University, United States; Department of Computer Science at Tufts University, United States.
Med Image Anal. 2015 May;22(1):77-88. doi: 10.1016/j.media.2015.02.001. Epub 2015 Mar 2.
Automated sample preparation and electron microscopy enables acquisition of very large image data sets. These technical advances are of special importance to the field of neuroanatomy, as 3D reconstructions of neuronal processes at the nm scale can provide new insight into the fine grained structure of the brain. Segmentation of large-scale electron microscopy data is the main bottleneck in the analysis of these data sets. In this paper we present a pipeline that provides state-of-the art reconstruction performance while scaling to data sets in the GB-TB range. First, we train a random forest classifier on interactive sparse user annotations. The classifier output is combined with an anisotropic smoothing prior in a Conditional Random Field framework to generate multiple segmentation hypotheses per image. These segmentations are then combined into geometrically consistent 3D objects by segmentation fusion. We provide qualitative and quantitative evaluation of the automatic segmentation and demonstrate large-scale 3D reconstructions of neuronal processes from a 27,000 μm(3) volume of brain tissue over a cube of 30 μm in each dimension corresponding to 1000 consecutive image sections. We also introduce Mojo, a proofreading tool including semi-automated correction of merge errors based on sparse user scribbles.
自动化样本制备和电子显微镜技术能够获取非常大的图像数据集。这些技术进步对神经解剖学领域尤为重要,因为在纳米尺度上对神经元突起进行三维重建可以为大脑的精细结构提供新的见解。大规模电子显微镜数据的分割是这些数据集分析的主要瓶颈。在本文中,我们提出了一种流程,该流程在扩展到GB - TB范围内的数据集时能提供最先进的重建性能。首先,我们基于交互式稀疏用户注释训练一个随机森林分类器。在条件随机场框架中,将分类器输出与各向异性平滑先验相结合,以生成每个图像的多个分割假设。然后通过分割融合将这些分割合并为几何上一致的三维物体。我们对自动分割进行了定性和定量评估,并展示了从一个三维尺寸各为30μm的立方体(对应1000个连续图像切片)、体积为27,000μm³的脑组织中对神经元突起进行的大规模三维重建。我们还引入了Mojo,这是一种校对工具,包括基于稀疏用户标记对半自动化合并错误进行校正。