Britton Chance Center for Biomedical Photonics, Wuhan National Laboratory for Optoelectronics, MoE Key Laboratory for Biomedical Photonics, School of Engineering Sciences, Huazhong University of Science and Technology, Wuhan, China.
School of Biomedical Engineering, Hainan University, Haikou, China.
BMC Bioinformatics. 2020 Sep 4;21(1):395. doi: 10.1186/s12859-020-03714-z.
Neurons are the basic structural unit of the brain, and their morphology is a key determinant of their classification. The morphology of a neuronal circuit is a fundamental component in neuron modeling. Recently, single-neuron morphologies of the whole brain have been used in many studies. The correctness and completeness of semimanually traced neuronal morphology are credible. However, there are some inaccuracies in semimanual tracing results. The distance between consecutive nodes marked by humans is very long, spanning multiple voxels. On the other hand, the nodes are marked around the centerline of the neuronal fiber, not on the centerline. Although these inaccuracies do not seriously affect the projection patterns that these studies focus on, they reduce the accuracy of the traced neuronal skeletons. These small inaccuracies will introduce deviations into subsequent studies that are based on neuronal morphology files.
We propose a neuronal digital skeleton optimization method to evaluate and make fine adjustments to a digital skeleton after neuron tracing. Provided that the neuronal fiber shape is smooth and continuous, we describe its physical properties according to two shape restrictions. One restriction is designed based on the grayscale image, and the other is designed based on geometry. These two restrictions are designed to finely adjust the digital skeleton points to the neuronal fiber centerline. With this method, we design the three-dimensional shape restriction workflow of neuronal skeleton adjustment computation. The performance of the proposed method has been quantitatively evaluated using synthetic and real neuronal image data. The results show that our method can reduce the difference between the traced neuronal skeleton and the centerline of the neuronal fiber. Furthermore, morphology metrics such as the neuronal fiber length and radius become more precise.
This method can improve the accuracy of a neuronal digital skeleton based on traced results. The greater the accuracy of the digital skeletons that are acquired, the more precise the neuronal morphologies that are analyzed will be.
神经元是大脑的基本结构单元,其形态是分类的关键决定因素。神经元回路的形态是神经元建模的基本组成部分。最近,整个大脑的单个神经元形态已在许多研究中得到应用。半自动追踪的神经元形态的正确性和完整性是可信的。然而,半自动追踪结果存在一些不准确性。人类标记的连续节点之间的距离非常长,跨越多个体素。另一方面,节点是围绕神经元纤维的中心线标记的,而不是在中心线上。尽管这些不准确性不会严重影响这些研究关注的投影模式,但它们会降低所追踪神经元骨架的准确性。这些小的不准确性会给基于神经元形态文件的后续研究引入偏差。
我们提出了一种神经元数字骨架优化方法,用于评估和微调神经元追踪后的数字骨架。假设神经元纤维形状是平滑连续的,我们根据两个形状限制来描述其物理特性。一个限制是基于灰度图像设计的,另一个是基于几何形状设计的。这两个限制用于精细调整数字骨架点到神经元纤维中心线。通过这种方法,我们设计了神经元骨架调整计算的三维形状限制工作流程。使用合成和真实神经元图像数据对所提出方法的性能进行了定量评估。结果表明,我们的方法可以减少所追踪的神经元骨架与神经元纤维中心线之间的差异。此外,神经元纤维长度和半径等形态学度量变得更加精确。
该方法可以提高基于追踪结果的神经元数字骨架的准确性。所获得的数字骨架的准确性越高,分析的神经元形态就越精确。