Zhang Qitan, Chen Xueli, Qu Xiaochao, Liang Jimin, Tian Jie
School of Life Sciences and Technology, Xidian University, Xi'an, Shaanxi 710071, China ; Contributed equally to this work.
Biomed Opt Express. 2012 Nov 1;3(11):2916-36. doi: 10.1364/BOE.3.002916. Epub 2012 Oct 23.
Inverse source reconstruction is the most challenging aspect of bioluminescence tomography (BLT) because of its ill-posedness. Although many efforts have been devoted to this problem, so far, there is no generally accepted method. Due to the ill-posedness property of the BLT inverse problem, the regularization method plays an important role in the inverse reconstruction. In this paper, six reconstruction algorithms based on l(p) regularization are surveyed. The effects of the permissible source region, measurement noise, optical properties, tissue specificity and source locations on the performance of the reconstruction algorithms are investigated using a series of single source experiments. In order to further inspect the performance of the reconstruction algorithms, we present the double sources and the in vivo mouse experiments to study their resolution ability and potential for a practical heterogeneous mouse experiment. It is hoped to provide useful guidance on algorithm development and application in the related fields.
由于其不适定性,逆源重建是生物发光断层成像(BLT)中最具挑战性的方面。尽管已经在这个问题上投入了很多努力,但到目前为止,还没有普遍接受的方法。由于BLT逆问题的不适定性,正则化方法在逆重建中起着重要作用。本文综述了基于l(p)正则化的六种重建算法。通过一系列单源实验,研究了允许源区域、测量噪声、光学特性、组织特异性和源位置对重建算法性能的影响。为了进一步检验重建算法的性能,我们进行了双源和体内小鼠实验,以研究它们的分辨率能力以及在实际异质小鼠实验中的潜力。希望能为相关领域的算法开发和应用提供有益的指导。