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Deformable appearance pyramids for anatomy representation, landmark detection and pathology classification

机译:可变形的外观金字塔,用于解剖结构表示,界标检测和病理学分类

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摘要

PurposeududRepresentation of anatomy appearance is one of the key problems in medical image analysis. An appearance model represents the anatomies with parametric forms, which are then vectorised for prior learning, segmentation and classification tasks.ududMethodsududWe propose a part-based parametric appearance model we refer to as a deformable appearance pyramid (DAP). The parts are delineated by multi-scale local feature pyramids extracted from an image pyramid. Each anatomy is represented by an appearance pyramid, with the variability within a population approximated by local translations of the multi-scale parts and linear appearance variations in the assembly of the parts. We introduce DAPs built on two types of image pyramids, namely Gaussian and wavelet pyramids, and present two approaches to model the prior and fit the model, one explicitly using a subspace Lucas–Kanade algorithm and the other implicitly using the supervised descent method (SDM).ududResultsududWe validate the performance of the DAP instances with difference configurations on the problem of lumbar spinal stenosis for localising the landmarks and classifying the pathologies. We also compare them with classic methods such as active shape models, active appearance models and constrained local models. Experimental results show that the DAP built on wavelet pyramids and fitted with SDM gives the best results in both landmark localisation and classification.ududConclusionududA new appearance model is introduced with several configurations presented and evaluated. The DAPs can be readily applied for other clinical problems for the tasks of prior learning, landmark detection and pathology classification.
机译:目的 ud ud表示解剖外观是医学图像分析中的关键问题之一。外观模型代表具有参数形式的解剖结构,然后将其矢量化以用于先前的学习,分割和分类任务。 ud udMethods ud ud我们提出了基于零件的参数外观模型,我们将其称为可变形外观金字塔(DAP) 。通过从图像金字塔中提取的多尺度局部特征金字塔来描绘零件。每个解剖结构都由外观金字塔表示,总体中的变异性由多尺度零件的局部平移和零件装配中的线性外观变化近似。我们介绍了基于两种类型的图像金字塔(即高斯金字塔和小波金字塔)构建的DAP,并提出了两种对先验模型进行建模和拟合模型的方法,一种是显式使用子空间Lucas-Kanade算法,另一种是隐式使用监督下降方法(SDM)。 )。 ud udResults ud ud我们通过对腰椎管狭窄问题进行不同配置验证DAP实例的性能,以定位界标并分类病理。我们还将它们与经典方法(例如,主动形状模型,主动外观模型和约束局部模型)进行比较。实验结果表明,基于小波金字塔构建的DAP并结合SDM可以在界标定位和分类中获得最佳结果。 DAP可以很容易地应用于其他临床问题,以进行先前的学习,界标检测和病理学分类。

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