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Optoacoustic image segmentation based on signal domain analysis

机译:基于信号域分析的光声图像分割

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Efficient segmentation of optoacoustic images has importance in enhancing the diagnostic and quantification capacity of this modality. It may also aid in improving the tomographic reconstruction accuracy by accounting for heterogeneous optical and acoustic tissue properties. In particular, when imaging through complex biological tissues, the real acoustic properties often deviate considerably from the idealized assumptions of homogenous conditions, which may lead to significant image artifacts if not properly accounted for. Although several methods have been proposed aiming at estimating and accounting for the complex acoustic properties in the image domain, accurate delineation of structures is often hindered by low contrast of the images and other artifacts produced due to incomplete tomographic coverage and heuristic assignment of the tissue properties during the reconstruction process. In this letter, we propose instead a signal domain analysis approach that retrieves acoustic properties of the object to be reconstructed from characteristic features of the detected optoacoustic signals prior to image reconstruction. Performance of the proposed method is first tested in simulation and experiment using two-dimensional tissue-mimicking phantoms. Significant improvements in the segmentation abilities and overall reconstructed image quality are further showcased in experimental cross-sectional data acquired from a human finger.
机译:光声图像的有效分割对于增强这种模式的诊断和量化能力很重要。通过考虑异质的光学和声学组织特性,它也可能有助于提高断层成像的重建精度。特别地,当通过复杂的生物组织成像时,真实的声学特性通常与同质条件的理想假设有很大出入,如果没有适当考虑的话,可能会导致明显的图像伪影。尽管已经提出了几种方法来估计和说明图像域中的复杂声学特性,但是由于不完整的层析成像覆盖范围和组织特性的启发式分配,所产生的图像和其他伪像的对比度较低,通常会阻碍结构的精确描绘在重建过程中。在这封信中,我们提出了一种信号域分析方法,该方法可在图像重建之前从检测到的光声信号的特征中获取待重建物体的声学特性。首先使用二维组织模拟体模在模拟和实验中测试了该方法的性能。从人的手指获得的实验横截面数据中进一步展示了分割能力和整体重建图像质量的显着提高。

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