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基于超体素的形态特征学习的 EM 图像堆栈中线粒体分割。

Supervoxel-based segmentation of mitochondria in em image stacks with learned shape features.

机构信息

Computer, Communication, and Information Sciences Department, Ecole Polytechnique Fédérale de Lausanne (EPFL), CH-1015 Lausanne, Switzerland.

出版信息

IEEE Trans Med Imaging. 2012 Feb;31(2):474-86. doi: 10.1109/TMI.2011.2171705. Epub 2011 Oct 13.

Abstract

It is becoming increasingly clear that mitochondria play an important role in neural function. Recent studies show mitochondrial morphology to be crucial to cellular physiology and synaptic function and a link between mitochondrial defects and neuro-degenerative diseases is strongly suspected. Electron microscopy (EM), with its very high resolution in all three directions, is one of the key tools to look more closely into these issues but the huge amounts of data it produces make automated analysis necessary. State-of-the-art computer vision algorithms designed to operate on natural 2-D images tend to perform poorly when applied to EM data for a number of reasons. First, the sheer size of a typical EM volume renders most modern segmentation schemes intractable. Furthermore, most approaches ignore important shape cues, relying only on local statistics that easily become confused when confronted with noise and textures inherent in the data. Finally, the conventional assumption that strong image gradients always correspond to object boundaries is violated by the clutter of distracting membranes. In this work, we propose an automated graph partitioning scheme that addresses these issues. It reduces the computational complexity by operating on supervoxels instead of voxels, incorporates shape features capable of describing the 3-D shape of the target objects, and learns to recognize the distinctive appearance of true boundaries. Our experiments demonstrate that our approach is able to segment mitochondria at a performance level close to that of a human annotator, and outperforms a state-of-the-art 3-D segmentation technique.

摘要

越来越明显的是,线粒体在神经功能中起着重要作用。最近的研究表明,线粒体的形态对于细胞生理学和突触功能至关重要,并且强烈怀疑线粒体缺陷与神经退行性疾病之间存在联系。电子显微镜(EM)在所有三个方向上都具有非常高的分辨率,是深入研究这些问题的关键工具之一,但它产生的大量数据使得自动化分析成为必要。为在自然 2D 图像上运行而设计的最先进的计算机视觉算法在应用于 EM 数据时往往表现不佳,原因有几个。首先,典型的 EM 体积的巨大尺寸使得大多数现代分割方案都难以处理。此外,大多数方法忽略了重要的形状线索,仅依赖于容易在面对数据中的噪声和纹理时混淆的局部统计信息。最后,传统的假设,即强图像梯度总是对应于物体边界,被干扰膜的杂乱所违反。在这项工作中,我们提出了一种自动图划分方案来解决这些问题。它通过在超体素上而不是体素上操作来降低计算复杂度,结合了能够描述目标物体 3D 形状的形状特征,并学会识别真实边界的独特外观。我们的实验表明,我们的方法能够以接近人类注释者的性能水平分割线粒体,并优于最先进的 3D 分割技术。

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