Eames Matthew E, Dehghani Hamid
School of Physics, Stocker Road, University of Exeter, United Kingdom.
Opt Express. 2008 Oct 27;16(22):17780-91. doi: 10.1364/oe.16.017780.
Near Infrared Diffuse Optical Tomography has the potential to be used as a non-invasive imaging tool for biological tissue specifically for the diagnosis and characterization of breast cancer. Most model based reconstruction algorithms rely on calculating and inverting a large Jacobian matrix. Although this method is flexible for a wide range of complex problems, it usually results in large image artifacts from hypersensitivity around the detectors. In this work a Jacobian normalization technique is presented which takes into account the varying magnitude of different optical parameters creating a more uniform update within a spectral image reconstruction model. Using simulated data the Jacobian normalization method is used to reconstructed images of absolute chromophore and scattering parameters which are qualitatively and quantitatively as compared to conventional methods. The hypersensitivity resulting in boundary artifacts are shown to be minimized with only a small additional computational cost.
近红外漫射光学层析成像有潜力用作生物组织的非侵入性成像工具,特别是用于乳腺癌的诊断和特征描述。大多数基于模型的重建算法依赖于计算和求逆一个大型雅可比矩阵。尽管这种方法对于广泛的复杂问题具有灵活性,但它通常会因探测器周围的超敏感性而导致大量图像伪影。在这项工作中,提出了一种雅可比归一化技术,该技术考虑了不同光学参数的变化幅度,在光谱图像重建模型中实现了更均匀的更新。使用模拟数据,将雅可比归一化方法用于重建绝对发色团和散射参数的图像,并与传统方法进行定性和定量比较。结果表明,导致边界伪影的超敏感性仅以很小的额外计算成本就可降至最低。