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Personalized Graphical Models for Anatomical Landmark Localization in Whole-Body Medical Images

机译:全身医学图像中解剖地标定位的个性化图形模型

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The goal of this work is to accurately and reliably localize anatomical landmarks in 3D Computed Tomography (CT) scans of the upper bodies of cancer patients even in the presence of pathologies and imaging artifacts that may markedly change the appearances of anatomical structures. We propose a method based on dense matching of parts-based graphical models. For landmark localization, we replace population averaged models by personalized models that are adapted to each test image at runtime. We do so by jointly leveraging weighted combinations of labeled training exemplars. We report results for localizing standard anatomical landmarks in clinical 3D CT volumes, using a database of 83 lung cancer patients. We compare our method against both (baseline) population averaged graphical models and against atlas-based deformable registration and show the method is in each case able to localize landmarks with significantly improved reliability and accuracy.
机译:这项工作的目的是在癌症患者上身的3D计算机断层扫描(CT)扫描中准确,可靠地定位解剖学界标,即使存在可能明显改变解剖结构外观的病理学和成像伪像。我们提出了一种基于基于零件的图形模型的密集匹配的方法。对于地标定位,我们用在运行时适应每个测试图像的个性化模型替换总体平均模型。我们通过联合利用带标签的训练样本的加权组合来做到这一点。我们报告了使用83个肺癌患者的数据库在临床3D CT卷中定位标准解剖标志的结果。我们将我们的方法与(基线)总体平均图形模型和基于图集的可变形配准进行了比较,结果表明,该方法在每种情况下都能够以显着提高的可靠性和准确性来定位地标。

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