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Tumor sensitive matching flow: A variational method to detecting and segmenting perihepatic and perisplenic ovarian cancer metastases on contrast-enhanced abdominal CT

机译:肿瘤敏感匹配流:一种通过对比增强型腹部CT来检测和分割肝周和脾周卵巢癌转移的变异方法

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Accurate automated segmentation and detection of ovarian cancer metastases may improve the diagnosis and prognosis of women with ovarian cancer. In this paper, we focus on an important subset of ovarian cancer metastases that spread to the surface of the liver and spleen. Automated ovarian cancer metastasis detection and segmentation are very challenging problems to solve. These metastases have a wide variety of shapes and intensity values similar to that of the liver, spleen and adjacent soft tissues. To address these challenges, this paper presents a variational approach, called tumor sensitive matching flow (TSMF), to detect and segment perihepatic and perisplenic ovarian cancer metastases. TSMF is an image motion field that only highlights metastasis-caused deformation on the surface of liver and spleen while dampening all other image motion between the patient image and the atlas image. It provides several benefits: (1) juxtaposing the roles of image matching and metastasis classification within a variational framework; (2) only requiring a small set of features from a few patient images to train a metastasis-likelihood function for classification; and (3) dynamically creating shape priors for geodesic active contour (GAC) to prevent inaccurate metastasis segmentation. We compared the TSMF to an organ surface partition (OSP) baseline approach. At a false positive rate of 2 per patient, the sensitivities of TSMF and OSP were 87% and 17% (p < 0.001), respectively. In a comparison of the segmentations conducted using TSMF-constrained GAC and conventional GAC, the volume overlap rates were 73 ± 9% and 46 ± 26% (p < 0.001) and average surface distances were 2.4 ± 1.2. mm and 7.0 ± 6.0. mm (p < 0.001), respectively. These encouraging results demonstrate that TSMF could accurately detect and segment ovarian cancer metastases.
机译:准确的自动分割和检测卵巢癌转移可能会改善卵巢癌女性的诊断和预后。在本文中,我们关注卵巢癌转移至肝和脾表面的重要转移子集。卵巢癌转移的自动检测和分割是非常有挑战性的问题。这些转移灶的形状和强度值与肝脏,脾脏和邻近的软组织相似。为了应对这些挑战,本文提出了一种变体方法,称为肿瘤敏感匹配流(TSMF),用于检测和分割肝周和脾周卵巢癌转移灶。 TSMF是图像运动场,仅突出肝脏和脾脏表面上因转移引起的变形,同时抑制患者图像和图集图像之间的所有其他图像运动。它提供了以下好处:(1)在可变框架内并置图像匹配和转移分类的作用; (2)仅需要几个患者图像中的一小部分特征即可训练转移可能性函数进行分类; (3)为测地线活动轮廓(GAC)动态创建形状先验,以防止不准确的转移分割。我们将TSMF与器官表面分区(OSP)基线方法进行了比较。每名患者的假阳性率为2,TSMF和OSP的敏感性分别为87%和17%(p <0.001)。在使用TSMF约束的GAC和常规GAC进行的分割的比较中,体积重叠率为73±9%和46±26%(p <0.001),平均表面距离为2.4±1.2。毫米和7.0±6.0。毫米(p <0.001)。这些令人鼓舞的结果表明,TSMF可以准确地检测和分割卵巢癌转移灶。

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