IEEE Trans Med Imaging. 2016 Oct;35(10):2209-2217. doi: 10.1109/TMI.2016.2553156. Epub 2016 Apr 12.
Segmentation of biomedical images is essential for studying and characterizing anatomical structures as well as for detection and evaluation of tissue pathologies. Segmentation has been further shown to enhance the reconstruction performance in many tomographic imaging modalities by accounting for heterogeneities in the excitation field and tissue properties in the imaged region. This is particularly relevant in optoacoustic tomography, where discontinuities in the optical and acoustic tissue properties, if not properly accounted for, may result in deterioration of the imaging performance. Efficient segmentation of optoacoustic images is often hampered by the relatively low intrinsic contrast of large anatomical structures, which is further impaired by the limited angular coverage of some commonly employed tomographic imaging configurations. Herein, we analyze the performance of active contour models for boundary segmentation in cross-sectional optoacoustic tomography. The segmented mask is employed to construct a two compartment model for the acoustic and optical parameters of the imaged tissues, which is subsequently used to improve accuracy of the image reconstruction routines. The performance of the suggested segmentation and modeling approach are showcased in tissue-mimicking phantoms and small animal imaging experiments.
生物医学图像的分割对于研究和描述解剖结构以及检测和评估组织病变至关重要。分割进一步被证明可以通过考虑激励场的非均匀性和成像区域的组织特性来提高许多层析成像模式的重建性能。在光声层析成像中,这一点尤为重要,如果不能正确考虑光学和声学组织特性的不连续性,可能会导致成像性能恶化。由于大的解剖结构的固有对比度相对较低,因此光声图像的有效分割常常受到阻碍,而某些常用的层析成像配置的有限角度覆盖范围进一步削弱了这种对比度。在此,我们分析了主动轮廓模型在横截面光声层析成像中的边界分割性能。分割后的掩模用于构建成像组织的声学和光学参数的两分区模型,随后用于提高图像重建程序的准确性。所提出的分割和建模方法的性能在组织模拟体模和小动物成像实验中得到了展示。