Department of Electrical and Computer Engineering, University of Texas at Austin, Austin, TX 78712 USA.
IEEE Trans Med Imaging. 2012 Dec;31(12):2241-52. doi: 10.1109/TMI.2012.2214229. Epub 2012 Aug 20.
We introduce a tomographic reconstruction method implemented using a shape-based regularization technique. Spatial models of known features in the structure being reconstructed are integrated into the reconstruction process as regularizers. Our regularization scheme is driven locally through shape information obtained from segmentation and compared with a known spatial model. We demonstrated our method on tomography data from digital phantoms, simulated data, and experimental electron tomography (ET) data of virus complexes. Our reconstruction showed reduced blurring and an improvement in the resolution of the reconstructed volume was also measured. This method also produced improved demarcation of spike boundaries in viral membranes when compared with popular techniques like weighted back projection and the algebraic reconstruction technique. Improved ET reconstructions will provide better structure elucidation and improved feature visualization, which can aid in solving key biological issues. Our method can also be generalized to other tomographic modalities.
我们介绍了一种基于形状正则化技术的层析重建方法。在重建过程中,将结构中已知特征的空间模型作为正则化项进行集成。我们的正则化方案通过从分割中获得的形状信息进行局部驱动,并与已知的空间模型进行比较。我们在数字体模的层析数据、模拟数据和病毒复合物的实验电子层析(ET)数据上验证了我们的方法。与加权反向投影和代数重建技术等流行技术相比,我们的重建显示出了较低的模糊度,并且重建体积的分辨率也得到了提高。当与流行的技术如加权反向投影和代数重建技术相比时,这种方法还能提高病毒膜中刺突边界的划分。改进的 ET 重建将提供更好的结构解析和改进的特征可视化,这有助于解决关键的生物学问题。我们的方法也可以推广到其他层析方式。