Lundström Claes, Ljung Patric, Ynnerman Anders
Center for Medical Image Science and Visualization, Linköping University and Sectra-Imtec AB, Sweden.
IEEE Trans Vis Comput Graph. 2006 Nov-Dec;12(6):1570-9. doi: 10.1109/TVCG.2006.100.
Direct Volume Rendering (DVR) is of increasing diagnostic value in the analysis of data sets captured using the latest medical imaging modalities. The deployment of DVR in everyday clinical work, however, has so far been limited. One contributing factor is that current Transfer Function (TF) models can encode only a small fraction of the user's domain knowledge. In this paper, we use histograms of local neighborhoods to capture tissue characteristics. This allows domain knowledge on spatial relations in the data set to be integrated into the TF. As a first example, we introduce Partial Range Histograms in an automatic tissue detection scheme and present its effectiveness in a clinical evaluation. We then use local histogram analysis to perform a classification where the tissue-type certainty is treated as a second TF dimension. The result is an enhanced rendering where tissues with overlapping intensity ranges can be discerned without requiring the user to explicitly define a complex, multidimensional TF.
直接体绘制(DVR)在分析使用最新医学成像模态捕获的数据集时具有越来越高的诊断价值。然而,到目前为止,DVR在日常临床工作中的应用还很有限。一个促成因素是当前的传递函数(TF)模型只能编码用户领域知识的一小部分。在本文中,我们使用局部邻域直方图来捕获组织特征。这使得关于数据集中空间关系的领域知识能够被整合到传递函数中。作为第一个例子,我们在自动组织检测方案中引入部分范围直方图,并在临床评估中展示其有效性。然后,我们使用局部直方图分析进行分类,将组织类型的确定性视为传递函数的第二个维度。结果是一种增强的渲染,其中强度范围重叠的组织可以被辨别出来,而无需用户明确定义复杂的多维传递函数。