The College of Electronic Information and Control Engineering, Beijing University of Technology, Beijing, China.
Med Phys. 2011 Nov;38(11):5933-44. doi: 10.1118/1.3635221.
Bioluminescence tomography (BLT) provides an effective tool for monitoring physiological and pathological activities in vivo. However, the measured data in bioluminescence imaging are corrupted by noise. Therefore, regularization methods are commonly used to find a regularized solution. Nevertheless, for the quality of the reconstructed bioluminescent source obtained by regularization methods, the choice of the regularization parameters is crucial. To date, the selection of regularization parameters remains challenging. With regards to the above problems, the authors proposed a BLT reconstruction algorithm with an adaptive parameter choice rule.
The proposed reconstruction algorithm uses a diffusion equation for modeling the bioluminescent photon transport. The diffusion equation is solved with a finite element method. Computed tomography (CT) images provide anatomical information regarding the geometry of the small animal and its internal organs. To reduce the ill-posedness of BLT, spectral information and the optimal permissible source region are employed. Then, the relationship between the unknown source distribution and multiview and multispectral boundary measurements is established based on the finite element method and the optimal permissible source region. Since the measured data are noisy, the BLT reconstruction is formulated as l(2) data fidelity and a general regularization term. When choosing the regularization parameters for BLT, an efficient model function approach is proposed, which does not require knowledge of the noise level. This approach only requests the computation of the residual and regularized solution norm. With this knowledge, we construct the model function to approximate the objective function, and the regularization parameter is updated iteratively.
First, the micro-CT based mouse phantom was used for simulation verification. Simulation experiments were used to illustrate why multispectral data were used rather than monochromatic data. Furthermore, the study conducted using an adaptive regularization parameter demonstrated our ability to accurately localize the bioluminescent source. With the adaptively estimated regularization parameter, the reconstructed center position of the source was (20.37, 31.05, 12.95) mm, and the distance to the real source was 0.63 mm. The results of the dual-source experiments further showed that our algorithm could localize the bioluminescent sources accurately. The authors then presented experimental evidence that the proposed algorithm exhibited its calculated efficiency over the heuristic method. The effectiveness of the new algorithm was also confirmed by comparing it with the L-curve method. Furthermore, various initial speculations regarding the regularization parameter were used to illustrate the convergence of our algorithm. Finally, in vivo mouse experiment further illustrates the effectiveness of the proposed algorithm.
Utilizing numerical, physical phantom and in vivo examples, we demonstrated that the bioluminescent sources could be reconstructed accurately with automatic regularization parameters. The proposed algorithm exhibited superior performance than both the heuristic regularization parameter choice method and L-curve method based on the computational speed and localization error.
生物发光断层扫描(BLT)为监测体内生理和病理活动提供了一种有效的工具。然而,生物发光成像中的测量数据会受到噪声的干扰。因此,通常使用正则化方法来找到正则化解。然而,对于正则化方法获得的重建生物发光源的质量,正则化参数的选择至关重要。迄今为止,正则化参数的选择仍然具有挑战性。针对上述问题,作者提出了一种具有自适应参数选择规则的 BLT 重建算法。
所提出的重建算法使用扩散方程来模拟生物发光光子的传输。扩散方程使用有限元方法求解。计算机断层扫描(CT)图像提供了小动物的几何形状及其内部器官的解剖学信息。为了降低 BLT 的不适定性,使用了光谱信息和最优允许源区域。然后,基于有限元方法和最优允许源区域,建立了未知源分布与多视图和多光谱边界测量之间的关系。由于测量数据存在噪声,因此将 BLT 重建公式化为 l(2)数据保真度和一般正则化项。在为 BLT 选择正则化参数时,提出了一种有效的模型函数方法,该方法不需要知道噪声水平。该方法仅要求计算残差和正则化解范数。有了这个知识,我们构建模型函数来逼近目标函数,并迭代更新正则化参数。
首先,使用基于微 CT 的小鼠体模进行了仿真验证。仿真实验说明了为什么使用多光谱数据而不是单色数据。此外,使用自适应正则化参数的研究表明,我们能够准确地定位生物发光源。使用自适应估计的正则化参数,重建源的中心位置为(20.37、31.05、12.95)mm,与真实源的距离为 0.63mm。双源实验的结果进一步表明,我们的算法能够准确地定位生物发光源。作者还提供了实验证据,证明该算法比启发式方法具有更高的计算效率。与 L 曲线法相比,也证实了新算法的有效性。此外,还使用了各种关于正则化参数的初始假设来证明我们算法的收敛性。最后,体内小鼠实验进一步说明了所提出算法的有效性。
利用数值、物理体模和体内实例,我们证明了可以使用自动正则化参数准确重建生物发光源。与启发式正则化参数选择方法和基于计算速度和定位误差的 L 曲线方法相比,所提出的算法表现出更好的性能。