Center for Research in Biological Systems, National Center for Microscopy and Imaging Research, University of California San Diego, La Jolla, CA, USA ; Department of Bioengineering, University of California San Diego, La Jolla, CA, USA.
Scientific Computing and Imaging Institute, University of Utah Salt Lake City, UT, USA.
Front Neuroanat. 2014 Nov 7;8:126. doi: 10.3389/fnana.2014.00126. eCollection 2014.
Electron microscopy (EM) facilitates analysis of the form, distribution, and functional status of key organelle systems in various pathological processes, including those associated with neurodegenerative disease. Such EM data often provide important new insights into the underlying disease mechanisms. The development of more accurate and efficient methods to quantify changes in subcellular microanatomy has already proven key to understanding the pathogenesis of Parkinson's and Alzheimer's diseases, as well as glaucoma. While our ability to acquire large volumes of 3D EM data is progressing rapidly, more advanced analysis tools are needed to assist in measuring precise three-dimensional morphologies of organelles within data sets that can include hundreds to thousands of whole cells. Although new imaging instrument throughputs can exceed teravoxels of data per day, image segmentation and analysis remain significant bottlenecks to achieving quantitative descriptions of whole cell structural organellomes. Here, we present a novel method for the automatic segmentation of organelles in 3D EM image stacks. Segmentations are generated using only 2D image information, making the method suitable for anisotropic imaging techniques such as serial block-face scanning electron microscopy (SBEM). Additionally, no assumptions about 3D organelle morphology are made, ensuring the method can be easily expanded to any number of structurally and functionally diverse organelles. Following the presentation of our algorithm, we validate its performance by assessing the segmentation accuracy of different organelle targets in an example SBEM dataset and demonstrate that it can be efficiently parallelized on supercomputing resources, resulting in a dramatic reduction in runtime.
电子显微镜(EM)有助于分析各种病理过程中关键细胞器系统的形态、分布和功能状态,包括与神经退行性疾病相关的过程。此类 EM 数据通常为深入了解潜在疾病机制提供了重要的新见解。开发更准确和高效的方法来量化亚细胞微观结构的变化已经被证明是理解帕金森病和阿尔茨海默病以及青光眼发病机制的关键。虽然我们获取大量 3D EM 数据的能力正在迅速提高,但需要更先进的分析工具来协助测量可以包含数百到数千个完整细胞的数据集内细胞器的精确三维形态。尽管新型成像仪器的吞吐量每天可超过 10 万亿体素,但图像分割和分析仍然是实现对完整细胞结构细胞器组进行定量描述的主要瓶颈。在这里,我们提出了一种用于 3D EM 图像堆栈中细胞器自动分割的新方法。分割仅使用 2D 图像信息生成,因此该方法适用于诸如连续块面扫描电子显微镜(SBEM)等各向异性成像技术。此外,没有对 3D 细胞器形态做出任何假设,从而确保该方法可以轻松扩展到任何数量具有结构和功能多样性的细胞器。在介绍我们的算法之后,我们通过评估在示例 SBEM 数据集中不同细胞器靶标分割的准确性来验证其性能,并证明它可以在超级计算资源上有效地进行并行化,从而显著缩短运行时间。