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Automatic articular cartilage segmentation with multiple models

机译:具有多种模型的自动关节软骨分割

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In this paper a method for cartilage segmentation of human knee from MRI images using multiple models is presented. Initially we trained a model with three types of knee MRI scans using existing set of large data called as training set. This training set includes features of pixels and their classes such as background and cartilage. Multiple k-NN models based on MRI scan type and slice number are used to segment cartilage from knee MRI scan. Multiple models are required for different types of MRI scans which have different levels of intensities. Each MRI scan has around 20 slices in which few slices in middle have more cartilage pixels than other slices. The performance of proposed method is evaluated on knee MRI scan and comparison is carried out with manual segmentation by a radiologist. It is revealed that proposed technique improves accuracy and processing time during segmentation of cartilage.
机译:本文提出了一种使用多种模型从MRI图像中对人的膝盖进行软骨分割的方法。最初,我们使用称为训练集的现有大数据集训练了三种类型的膝盖MRI扫描模型。该训练集包括像素特征及其类别,例如背景和软骨。使用基于MRI扫描类型和切片编号的多个k-NN模型对来自膝盖MRI扫描的软骨进行分段。具有不同强度级别的不同类型的MRI扫描需要多个模型。每次MRI扫描约有20个切片,其中中间的几个切片比其他切片具有更多的软骨像素。通过膝部MRI扫描评估所提出方法的性能,并由放射科医生进行手动分割,进行比较。揭示了所提出的技术提高了软骨分割期间的准确性和处理时间。

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