Department of Electrical Engineering, Universidad de Chile, Av. Tupper 2007, Santiago, Chile.
Comput Med Imaging Graph. 2011 Jun;35(4):302-14. doi: 10.1016/j.compmedimag.2011.02.003. Epub 2011 Mar 2.
Image registration is the process of transforming different image data sets of an object into the same coordinate system. This is a relevant task in the field of medical imaging; one of its objectives is to combine information from different imaging modalities. The main goal of this study is the registration of renal SPECT (Single Photon Emission Computerized Tomography) images and a sparse set of ultrasound slices (2.5D US), combining functional and anatomical information. Registration is performed after kidney segmentation in both image types. The SPECT segmentation is achieved using a deformable model based on a simplex mesh. The 2.5D US image segmentation is carried out in each of the 2D slices employing a deformable contour and Gabor filters to capture multi-scale image features. Moreover, a renal medulla detection method was developed to improve the US segmentation. A nonlinear optimization algorithm is used for the registration. In this process, movements caused by patient breathing during US image acquisition are also corrected. Only a few reports describe registration between SPECT images and a sparse set of US slices of the kidney, and they usually employ an optical localizer, unlike our method, that performs movement correction using information only from the SPECT and US images. Moreover, it does not require simultaneous acquisition of both image types. The registration method and both segmentations were evaluated separately. The SPECT segmentation was evaluated qualitatively by medical experts, obtaining a score of 5 over a scale from 1 to 5, where 5 represents a perfect segmentation. The 2.5D US segmentation was evaluated quantitatively, by comparing our method with an expert manual segmentation, and obtaining an average error of 3.3mm. The registration was evaluated quantitatively and qualitatively. Quantitatively the distance between the manual segmentation of the US images and the model extracted from the SPECT image was measured, obtaining an average distance of 1.07 pixels on 7 exams. The qualitative evaluation was carried out by a group of physicians who assessed the perceived clinical usefulness of the image registration, rating each registration on a scale from 1 to 5. The average score obtained was 4.1, i.e. relevantly useful for medical purposes.
图像配准是将物体的不同图像数据集转换到同一坐标系的过程。这是医学成像领域的一项相关任务,其目标之一是结合来自不同成像模式的信息。本研究的主要目标是配准肾单光子发射计算机断层扫描(SPECT)图像和稀疏的超声切片集(2.5D US),结合功能和解剖信息。在两种图像类型中都进行肾脏分割后进行配准。SPECT 分割是使用基于单纯形网格的可变形模型实现的。2.5D US 图像分割是在每个 2D 切片中使用可变形轮廓和 Gabor 滤波器来捕获多尺度图像特征来完成的。此外,还开发了一种肾髓质检测方法来改进 US 分割。使用非线性优化算法进行配准。在此过程中,还纠正了 US 图像采集过程中患者呼吸引起的运动。只有少数报道描述了 SPECT 图像与肾脏稀疏超声切片之间的配准,它们通常使用光学定位器,与我们的方法不同,我们的方法仅使用 SPECT 和 US 图像的信息进行运动校正。此外,它不需要同时采集两种图像类型。单独评估了配准方法和两种分割。SPECT 分割由医学专家进行定性评估,获得 1 到 5 的评分,其中 5 表示完美分割。2.5D US 分割进行了定量评估,通过将我们的方法与专家手动分割进行比较,并获得平均误差为 3.3mm。对配准进行了定量和定性评估。定量地,测量了 US 图像的手动分割与从 SPECT 图像提取的模型之间的距离,在 7 次检查中获得了平均 1.07 像素的距离。定性评估由一组医生进行,他们评估了图像配准的临床实用性,对每个配准进行 1 到 5 的评分。获得的平均得分为 4.1,即对医学目的具有重要意义。