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A Consensus Embedding Approach for Segmentation of High Resolution In Vivo Prostate Magnetic Resonance Imagery

机译:体内前列腺磁共振成像高分辨率分割的共识嵌入方法

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Current techniques for localization of prostatic adenocarcinoma (CaP) via blinded trans-rectal ultrasound biopsy are associated with a high false negative detection rate. While high resolution endorectal in vivo Magnetic Resonance (MR) prostate imaging has been shown to have improved contrast and resolution for CaP detection over ultrasound, similarity in intensity characteristics between benign and cancerous regions on MR images contribute to a high false positive detection rate. In this paper, we present a novel unsupervised segmentation method that employs manifold learning via consensus schemes for detection of cancerous regions from high resolution 1.5 Tesla (T) endorectal in vivo prostate MRI. A significant contribution of this paper is a method to combine multiple weak, lower-dimensional representations of high dimensional feature data in a way analogous to classifier ensemble schemes, and hence create a stable and accurate reduced dimensional representation. After correcting for MR image intensity artifacts, such as bias field inhomogeneity and intensity non-standardness, our algorithm extracts over 350 3D texture features at every spatial location in the MR scene at multiple scales and orientations. Non-linear dimensionality reduction schemes such as Locally Linear Embedding (LLE) and Graph Embedding (GE) are employed to create multiple low dimensional data representations of this high dimensional texture feature space. Our novel consensus embedding method is used to average object adjacencies from within the multiple low dimensional projections so that class relationships are preserved. Unsupervised consensus clustering is then used to partition the objects in this consensus embedding space into distinct classes. Quantitative evaluation on 18 1.5 T prostate MR data against corresponding histology obtained from the multi-site ACRIN trials show a sensitivity of 92.65% and a specificity of 82.06%, which suggests that our method is successfully able to detect suspicious regions in the prostate.
机译:通过致盲的反肠瓶超声活检的前列腺腺癌(帽)定位的目前的技术与高误差的阴性检测率相关。虽然已经显示了高分辨率中的叠加(MR)前列腺成像,但已经显示出对超声波检测的改善的对比和分辨率,而MR图像对MR图像的良性和癌变区之间的强度特征的相似性有助于高误探测率。在本文中,我们提出了一种新颖的无监督的分割方法,通过共识方案采用歧管学习,用于检测来自体内前列腺MRI的高分辨率1.5 Tesla(t)胸腔的癌症区域。本文的显着贡献是一种以类似于分类器集合方案的方式组合多个弱,低维表示的方法,因此创造了稳定和准确的尺寸表示。在纠正MR图像强度伪影之后,例如偏置场不均匀性和强度非标准,我们的算法在MR场景中的每个空间位置处提取超过350个3D纹理特征,在多种尺度和方向上。非线性维度降低方案,例如局部线性嵌入(LLE)和曲线图嵌入(GE)以创建该高维纹理特征空间的多个低维数据表示。我们的新协商嵌入方法用于平均来自多个低维投影的对象邻接,以便保留类关系。然后使用无监督的共识群集将该共识中的对象嵌入到不同的类中。 18 1.5 T前列腺MR数据的定量评估与来自多站点丙氨酸试验中获得的相应组织学的数据显示敏感性为92.65%,特异性为82.06%,这表明我们的方法成功地检测了前列腺中的可疑地区。

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