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Lymph node detection and segmentation in chest CT data using discriminative learning and a spatial prior.

机译:使用判别学习和空间先验技术对胸部CT数据中的淋巴结进行检测和分割。

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摘要

Lymph nodes have high clinical relevance and routinely need to be considered in clinical practice. Automatic detection is, however, challenging due to clutter and low contrast. In this paper, a method is presented that fully automatically detects and segments lymph nodes in 3-D computed tomography images of the chest. Lymph nodes can easily be confused with other structures, it is therefore vital to incorporate as much anatomical prior knowledge as possible in order to achieve a good detection performance. Here, a learned prior of the spatial distribution is used to model this knowledge. Different prior types with increasing complexity are proposed and compared to each other. This is combined with a powerful discriminative model that detects lymph nodes from their appearance. It first generates a number of candidates of possible lymph node center positions. Then, a segmentation method is initialized with a detected candidate. The graph cuts method is adapted to the problem of lymph nodes segmentation. We propose a setting that requires only a single positive seed and at the same time solves the small cut problem of graph cuts. Furthermore, we propose a feature set that is extracted from the segmentation. A classifier is trained on this feature set and used to reject false alarms. Cross-validation on 54 CT datasets showed that for a fixed number of four false alarms per volume image, the detection rate is well more than doubled when using the spatial prior. In total, our proposed method detects mediastinal lymph nodes with a true positive rate of 52.0% at the cost of only 3.1 false alarms per volume image and a true positive rate of 60.9% with 6.1 false alarms per volume image, which compares favorably to prior work on mediastinal lymph node detection.
机译:淋巴结具有高度的临床相关性,在临床实践中通常需要考虑。然而,由于杂乱和低对比度,自动检测具有挑战性。在本文中,提出了一种在胸部的3D计算机断层扫描图像中完全自动检测和分割淋巴结的方法。淋巴结很容易与其他结构混淆,因此至关重要的是要尽可能多地结合解剖学先验知识,以实现良好的检测性能。在此,使用空间分布的先验知识对该知识进行建模。提出并增加了复杂性的不同先验类型并相互比较。这与强大的判别模型相结合,该模型可从淋巴结的外观检测出淋巴结。它首先生成许多可能的淋巴结中心位置的候选对象。然后,使用检测到的候选者初始化分割方法。图割法适用于淋巴结分割的问题。我们提出一种只需要一个正种子的设置,同时解决了图割的小割问题。此外,我们提出了一种从分割中提取的特征集。在此功能集上对分类器进行了训练,并用于拒绝错误警报。在54个CT数据集上的交叉验证显示,对于每个体积图像固定数量的四个虚假警报,使用空间先验时的检测率要高出一倍以上。总的来说,我们提出的方法可检测到纵隔淋巴结的阳性率为52.0%,每卷图像的误报率仅为3.1,而每卷图像​​的6.1误报率的阳性率为60.9%,与之前的结果相比,具有优势。从事纵隔淋巴结的检测。

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