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Detection of Orbital Floor Fractures by Principal Component Analysis

机译:主成分分析检测轨道地板骨折

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Principal component analysis (PCA) is a statistical method based on orthogonal transformation, which is used to convert possibly correlated datasets into linearly uncorrelated variables called principal components. PCA is one of the simplest methods based on the eigenvector analysis. This method is widely used in many fields, such as signal processing, quality control or mechanical engineering. In this paper, we present the use of PCA in area of medical image processing. In the medical image processing with subsequent reconstruction of 3D models, data from sources such as Computed Tomography (CT) or Magnetic Resonance Imagining (MRI) are used. Series of images representing axial slices of human body are stored in Digital Imaging and Communications in Medicine (DICOM) format. Physical properties of different body tissues are characterized by different shades of grey of each pixel correlated to the tissue density. Properties of each pixel are then used in image segmentation and subsequent creation of 3D model of human organs. Image segmentation splits digital image into regions with similar properties which are later used to create 3D model. In many cases accurate detections of edges of such objects are necessary. This could be for example the case of a tumour or orbital fracture identification. In this paper, identification of the orbital fracture using PCA method is presented as an example of application of the method in the area of medical image processing.
机译:主成分分析(PCA)是一种基于正交变换的统计方法,用于将可能相关的数据集转换为称为主组件的线性不相关变量。 PCA是基于特征向量分析的最简单方法之一。该方法广泛用于许多领域,例如信号处理,质量控制或机械工程。在本文中,我们介绍了PCA在医学图像处理区域中的使用。在随后重建3D模型的医学图像处理中,使用来自诸如计算机断层扫描(CT)或磁共振图像(MRI)的源的数据。代表轴向切片的人体的图像系列存储在医学(DICOM)格式中的数字成像和通信中。不同身体组织的物理性质的特征在于与组织密度相关的每个像素的不同灰度阴影。然后将每个像素的特性用于图像分割和后续创建人体器官的3D模型。图像分割将数字图像拆分为具有类似属性的区域,该属性稍后用于创建3D模型。在许多情况下,需要精确地检测这些物体的边缘。这可以是例如肿瘤或轨道骨折鉴定的情况。在本文中,使用PCA方法鉴定轨道骨折作为在医学图像处理区域中的应用的应用示例。

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