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Ultrasound Fetal Brain Registration Using Weighted Coherent Point Drift

机译:使用加权相干点漂移进行超声胎儿脑配准

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Three dimensional ultrasound imaging has become the main modality for fetal health diagnostics, with extensive use in fetal brain imaging. According to the fetal position and the stage of development of the fetal skull, a specific plane of image acquisition is required. In most cases for a single plane of acquisition, the image quality is limited by the shadows produced by the skull. In this work a new method for registration of multiple views of 3D ultrasound of the fetal brain is reported, which results in improved imaging of the internal brain structures. In the initial stage, texture, intensity and edge features are used, with a support vector machine (SVM) for the segmentation of the skull in each of the 3D ultrasound views to be registered. The segmentation of each skull is modelled as a set of points with the centre determined with a Gaussian mixture model, where each point is assigned a probability of membership to a Gaussian determined by the posterior probability assigned by the SVM. Our method has shown improved results compared to intensity based registration, with a 52% reduction in the target registration error (TRE), and a 39% reduction in the TRE compared to feature based registration. These are encouraging results for the future development of an automatic method for registration and fusion of multiple views of 3D fetal ultrasound.
机译:三维超声成像已成为胎儿健康诊断的主要方式,在胎儿脑成像中得到了广泛的应用。根据胎儿的位置和胎儿头骨的发育阶段,需要特定的图像采集平面。在大多数情况下,对于单个采集平面,图像质量受到头骨产生的阴影的限制。在这项工作中,报道了一种新的方法来注册胎儿大脑3D超声的多个视图,从而改善了大脑内部结构的成像。在初始阶段,使用纹理,强度和边缘特征,并使用支持向量机(SVM)对要注册的每个3D超声视图中的头骨进行分割。每个头骨的分割被建模为一组点,其中心由高斯混合模型确定,其中,每个点都被分配一个隶属度的概率,该隶属度由SVM分配的后验概率确定。与基于强度的配准相比,我们的方法显示出改进的结果,与基于特征的配准相比,目标配准误差(TRE)降低了52%,TRE降低了39%。这些对于3D胎儿超声多视图配准和融合自动方法的未来发展是令人鼓舞的结果。

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