Scientific Computing and Imaging Institute, Salt Lake City, UT 84112, United States.
Med Image Anal. 2010 Dec;14(6):770-83. doi: 10.1016/j.media.2010.06.002. Epub 2010 Jun 18.
Study of nervous systems via the connectome, the map of connectivities of all neurons in that system, is a challenging problem in neuroscience. Towards this goal, neurobiologists are acquiring large electron microscopy datasets. However, the shear volume of these datasets renders manual analysis infeasible. Hence, automated image analysis methods are required for reconstructing the connectome from these very large image collections. Segmentation of neurons in these images, an essential step of the reconstruction pipeline, is challenging because of noise, anisotropic shapes and brightness, and the presence of confounding structures. The method described in this paper uses a series of artificial neural networks (ANNs) in a framework combined with a feature vector that is composed of image intensities sampled over a stencil neighborhood. Several ANNs are applied in series allowing each ANN to use the classification context provided by the previous network to improve detection accuracy. We develop the method of serial ANNs and show that the learned context does improve detection over traditional ANNs. We also demonstrate advantages over previous membrane detection methods. The results are a significant step towards an automated system for the reconstruction of the connectome.
通过连接组学(即系统中所有神经元连接的图谱)来研究神经系统是神经科学中的一个具有挑战性的问题。为此,神经生物学家正在获取大量电子显微镜数据集。然而,这些数据集的庞大体积使得手动分析变得不可行。因此,需要自动化的图像分析方法来从这些非常大的图像集中重建连接组。由于噪声、各向异性形状和亮度以及存在混杂结构,这些图像中的神经元分割是重建管道中的一个基本步骤,具有挑战性。本文所描述的方法使用了一系列人工神经网络(ANN)在一个框架中,并结合了一个特征向量,该向量由模板邻域上的图像强度样本组成。几个 ANN 被串联应用,允许每个 ANN 使用前一个网络提供的分类上下文来提高检测准确性。我们开发了串联 ANN 的方法,并表明学习到的上下文确实可以提高传统 ANN 的检测准确性。我们还展示了优于以前的膜检测方法的优势。这些结果是朝着连接组自动重建系统迈出的重要一步。