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A Variational Framework for Joint Detection and Segmentation of Ovarian Cancer Metastases

机译:用于卵巢癌转移的联合检测和分割的变分框架

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摘要

Detection and segmentation of ovarian cancer metastases have great clinical impacts on women’s health. However, the random distribution and weak boundaries of metastases significantly complicate this task. This paper presents a variational framework that combines region competition based level set propagation and image matching flow computation to jointly detect and segment metastases. Image matching flow not only detects metastases, but also creates shape priors to reduce over-segmentation. Accordingly, accurate segmentation helps to improve the detection accuracy by separating flow computation in metastasis and non-metastasis regions. Since all components in the image processing pipeline benefit from each other, our joint framework can achieve accurate metastasis detection and segmentation. Validation on 50 patient datasets demonstrated that our joint approach was superior to a sequential method with sensitivity 89.2% vs. 81.4% (Fisher exact test p = 0.046) and false positive per patient 1.04 vs. 2.04. The Dice coefficient of metastasis segmentation was 92 ± 5.2% vs. 72 ± 8% (paired t-test p = 0.022), and the average surface distance was 1.9±1.5mm vs. 4.5±2.2mm (paired t-test p = 0.004).
机译:卵巢癌转移的检测和分割对女性健康具有重大的临床影响。但是,转移的随机分布和弱边界使这项任务变得十分复杂。本文提出了一种变体框架,将基于区域竞争的水平集传播和图像匹配流计算相结合,共同检测和分割转移灶。图像匹配流程不仅可以检测转移,还可以创建形状先验以减少过度分割。因此,准确的分割有助于通过分离转移和非转移区域中的流量计算来提高检测准确性。由于图像处理流水线中的所有组件都彼此受益,因此我们的联合框架可以实现准确的转移检测和分割。对50个患者数据集的验证表明,我们的联合方法优于顺序方法,其敏感性分别为89.2%和81.4%(Fisher精确检验p = 0.046),每位患者的假阳性率分别为1.04和2.04。 Dice转移分割的系数为92±5.2%与72±8%(配对t检验p = 0.022),平均表面距离为1.9±1.5mm对4.5±2.2mm(配对t检验p = 0.004)。

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