Demiralp Cağatay, Shakhnarovich Gregory, Zhang Song, Laidlaw David H
Brown University, USA.
Med Image Comput Comput Assist Interv. 2008;11(Pt 1):1051-9. doi: 10.1007/978-3-540-85988-8_125.
We present a slicing-based coherence measure for clusters of DTI integral curves. For a given cluster, we probe samples from the cluster by slicing it with a plane at regularly spaced locations parametrized by curve arc lengths. Then we compute a stability measure based on the spatial relations between the projections of the curve points in individual slices and their change across the slices. We demonstrate its use in refining agglomerative hierarchical clustering results of DTI curves that correspond to neural pathways. Expert evaluation shows that refinement based on our measure can lead to improvement of clustering that is not possible directly by using standard methods.
我们提出了一种基于切片的DTI积分曲线簇相干性度量方法。对于给定的簇,我们通过用一个由曲线弧长参数化的等间距平面切割该簇来探测其中的样本。然后,我们基于各个切片中曲线点投影之间的空间关系及其在切片间的变化来计算一种稳定性度量。我们展示了其在细化与神经通路相对应的DTI曲线的凝聚层次聚类结果中的应用。专家评估表明,基于我们的度量进行细化可以带来聚类效果的提升,而这是直接使用标准方法无法实现的。