Xu Minghua, Xu Yuan, Wang Lihong V
Optical Imaging Laboratory, Department of Biomedical Engineering, Texas A&M University, College Station, TX 77843-3120, USA.
IEEE Trans Biomed Eng. 2003 Sep;50(9):1086-99. doi: 10.1109/TBME.2003.816081.
In this paper, we present time-domain reconstruction algorithms for the thermoacoustic imaging of biological tissues. The algorithm for a spherical measurement configuration has recently been reported in another paper. Here, we extend the reconstruction algorithms to planar and cylindrical measurement configurations. First, we generalize the rigorous reconstruction formulas by employing Green's function technique. Then, in order to detect small (compared with the measurement geometry) but deeply buried objects, we can simplify the formulas when two practical conditions exist: 1) that the high-frequency components of the thermoacoustic signals contribute more to the spatial resolution than the low-frequency ones, and 2) that the detecting distances between the thermoacoustic sources and the detecting transducers are much greater than the wavelengths of the high-frequency thermoacoustic signals (i.e., those that are useful for imaging). The simplified formulas are computed with temporal back projections and coherent summations over spherical surfaces using certain spatial weighting factors. We refer to these reconstruction formulas as modified back projections. Numerical results are given to illustrate the validity of these algorithms.
在本文中,我们提出了用于生物组织热声成像的时域重建算法。球形测量配置的算法最近已在另一篇论文中报道。在此,我们将重建算法扩展到平面和圆柱形测量配置。首先,我们采用格林函数技术推广严格的重建公式。然后,为了检测小尺寸(与测量几何形状相比)但深埋的物体,当存在两个实际条件时我们可以简化公式:1)热声信号的高频分量对空间分辨率的贡献比低频分量更大;2)热声源与检测换能器之间的检测距离远大于高频热声信号(即对成像有用的信号)的波长。简化后的公式通过时间反投影以及使用某些空间加权因子在球面上进行相干求和来计算。我们将这些重建公式称为修正反投影。给出了数值结果以说明这些算法的有效性。