Woolford David, Hankamer Ben, Ericksson Geoffery
Institute for Molecular Bioscience, Brisbane, Qld 4072, Australia.
J Struct Biol. 2007 Jul;159(1):122-34. doi: 10.1016/j.jsb.2007.03.003. Epub 2007 Mar 30.
The automation of single particle selection and tomographic segmentation of asymmetric particles and objects is facilitated by continuing improvement of methods based on the detection of pixel discontinuity. Here, we present the new arbitrary z-crossings approach which can be employed to enhance the accuracy of edge detection algorithms that are based on the second derivative. This is demonstrated using the Laplacian of Gaussian (LoG) filter. In its normal implementation the LoG filter uses a z value of zero to define edge contours. In contrast, the arbitrary z-crossings approach allows the user to adjust z, which causes the subsequently generated contours to tend towards lighter or darker image objects, depending on the sign of z. This functionality has been coupled with an additional feature: the ability to use the major and minor axes of bounding contours to hone automated object selection. In combination, these features significantly enhance the accuracy of particle selection and the speed of tomographic segmentation. Both features have been incorporated into the software package Swarm(PS) in which parameters are automatically adjusted based on user defined target selection.
基于像素不连续性检测的方法不断改进,有助于实现不对称粒子和物体的单粒子选择与断层扫描分割自动化。在此,我们提出了一种新的任意z交叉方法,该方法可用于提高基于二阶导数的边缘检测算法的准确性。使用高斯-拉普拉斯(LoG)滤波器对此进行了演示。在其常规实现中,LoG滤波器使用z值为零来定义边缘轮廓。相比之下,任意z交叉方法允许用户调整z,这会使随后生成的轮廓根据z的符号趋向于较亮或较暗的图像对象。此功能还与另一个特性相结合:能够使用边界轮廓的长轴和短轴来优化自动对象选择。综合起来,这些特性显著提高了粒子选择的准确性和断层扫描分割的速度。这两个特性都已整合到软件包Swarm(PS)中,其中参数会根据用户定义的目标选择自动调整。