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3D Automatic Anatomy Recognition Based on Iterative Graph-Cut-ASM

机译:基于迭代图切割ASM的3D自动解剖学识别

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We call the computerized assistive process of recognizing, delineating, and quantifying organs and tissue regions in medical imaging, occurring automatically during clinical image interpretation, automatic anatomy recognition (AAR). The AAR system we are developing includes five main parts: model building, object recognition, object delineation, pathology detection, and organ system quantification. In this paper, we focus on the delineation part. For the modeling part, we employ the active shape model (ASM) strategy. For recognition and delineation, we integrate several hybrid strategies of combining purely image based methods with ASM. In this paper, an iterative Graph-Cut ASM (IGCASM) method is proposed for object delineation. An algorithm called GC-ASM was presented at this symposium last year for object delineation in 2D images which attempted to combine synergistically ASM and GC. Here, we extend this method to 3D medical image delineation. The IGCASM method effectively combines the rich statistical shape information embodied in ASM with the globally optimal delineation capability of the GC method. We propose a new GC cost function, which effectively integrates the specific image information with the ASM shape model information. The proposed methods are tested on a clinical abdominal CT data set. The preliminary results show that: (a) it is feasible to explicitly bring prior 3D statistical shape information into the GC framework; (b) the 3D IGCASM delineation method improves on ASM and GC and can provide practical operational time on clinical images.
机译:我们将计算机辅助过程称为医学成像中的器官,组织区域的识别,描绘和量化,该过程在临床图像解释过程中自动发生,并自动进行解剖结构识别(AAR)。我们正在开发的AAR系统包括五个主要部分:模型构建,对象识别,对象描绘,病理检测和器官系统量化。在本文中,我们将重点放在轮廓部分。对于建模部分,我们采用主动形状模型(ASM)策略。为了进行识别和描绘,我们集成了几种混合策略,这些策略将基于纯图像的方法与ASM相结合。在本文中,提出了一种迭代的图切割ASM(IGCASM)方法来进行对象描绘。去年的这个研讨会上提出了一种称为GC-ASM的算法,用于在2D图像中描绘对象,该算法试图将ASM和GC协同结合。在这里,我们将此方法扩展到3D医学图像描绘。 IGCASM方法有效地结合了ASM中包含的丰富统计形状信息和GC方法的全局最佳描绘功能。我们提出了一种新的GC成本函数,该函数可将特定的图像信息与ASM形状模型信息有效地集成在一起。建议的方法在临床腹部CT数据集上进行了测试。初步结果表明:(a)将先前的3D统计形状信息显式引入GC框架是可行的; (b)3D IGCASM描绘方法改进了ASM和GC,可以在临床影像上提供实际的操作时间。

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