Université Paris Descartes, Université Sorbonne Paris Cité (USPC), France; Intrasense(®), France; MAP5, UMR CNRS 8145, France.
Université Paris Descartes, Université Sorbonne Paris Cité (USPC), France; Hôpital Européen Georges Pompidou (HEGP), Assistance Publiques - Hôpitaux de Paris (APHP), France; UMR-S970, PARCC, France.
Med Image Anal. 2019 Jan;51:125-143. doi: 10.1016/j.media.2018.10.007. Epub 2018 Oct 28.
Dynamical contrast enhanced (DCE) imaging allows non invasive access to tissue micro-vascularization. It appears as a promising tool to build imaging biomarkers for diagnostic, prognosis or anti-angiogenesis treatment monitoring of cancer. However, quantitative analysis of DCE image sequences suffers from low signal to noise ratio (SNR). SNR may be improved by averaging functional information in a large region of interest when it is functionally homogeneous. We propose a novel method for automatic segmentation of DCE image sequences into functionally homogeneous regions, called DCE-HiSET. Using an observation model which depends on one parameter a and is justified a posteriori, DCE-HiSET is a hierarchical clustering algorithm. It uses the p-value of a multiple equivalence test as dissimilarity measure and consists of two steps. The first exploits the spatial neighborhood structure to reduce complexity and takes advantage of the regularity of anatomical features, while the second recovers (spatially) disconnected homogeneous structures at a larger (global) scale. Given a minimal expected homogeneity discrepancy for the multiple equivalence test, both steps stop automatically by controlling the Type I error. This provides an adaptive choice for the number of clusters. Assuming that the DCE image sequence is functionally piecewise constant with signals on each piece sufficiently separated, we prove that DCE-HiSET will retrieve the exact partition with high probability as soon as the number of images in the sequence is large enough. The minimal expected homogeneity discrepancy appears as the tuning parameter controlling the size of the segmentation. DCE-HiSET has been implemented in C++ for 2D and 3D image sequences with competitive speed.
动态对比增强(DCE)成像允许非侵入性地访问组织微血管化。它似乎是一种很有前途的工具,可以构建成像生物标志物,用于癌症的诊断、预后或抗血管生成治疗监测。然而,DCE 图像序列的定量分析受到低信噪比(SNR)的限制。当功能均匀时,可以通过在大感兴趣区域中平均功能信息来提高 SNR。我们提出了一种将 DCE 图像序列自动分割为功能均匀区域的新方法,称为 DCE-HiSET。使用依赖于一个参数 a 的观测模型,并且可以事后证明,DCE-HiSET 是一种层次聚类算法。它使用多重等效检验的 p 值作为不相似性度量,并由两个步骤组成。第一步利用空间邻域结构来降低复杂性,并利用解剖特征的规律性,第二步在更大的(全局)尺度上恢复(空间)不连续的均匀结构。对于多重等效检验,给定最小的预期均匀性差异,通过控制第一类错误,两个步骤都会自动停止。这为聚类的数量提供了自适应选择。假设 DCE 图像序列在功能上是分段常数的,并且每个片段上的信号都足够分离,我们证明只要序列中的图像数量足够大,DCE-HiSET 将以高概率检索到准确的分区。最小预期均匀性差异作为调整参数,控制分割的大小。DCE-HiSET 已经用 C++实现,适用于 2D 和 3D 图像序列,具有竞争力的速度。