Bone Fracture Identification in X-Ray Images using Fuzzy Wavelet Features

Michael D. Vasilakakis, V. Iosifidou, Panagiota Fragkaki, Dimitrios K. Iakovidis
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引用次数: 8

Abstract

The fracture detection process is difficult and requires specialized knowledge of the anatomical structures of the area under consideration. X-ray imaging provides images of the body's internal structures. Despite the rapid developments of medical imaging by adding newer imaging techniques such as CT and MRI, the exam of choice to detect bone fractures faster and cheaper is x-ray imaging (radiography). The objective of this study is the automatic detection of fractures in bone x-ray images using an image classification method. The dataset that was used in this study consists of 300 x-ray bone images of upper and lower extremity. In this study, we propose a novel feature extraction and classification methodology for the detection of bone fractures, named Wavelet Fuzzy Phrases (WFP). WFP extracts textural information from different bands of the 2D Discrete Wavelet Transform (DWT) images, which is expressed by a set of words. Each word is represented by a fuzzy set. The words form phrases, obtained from the aggregation of the fuzzy sets, representing the image contents. The classification accuracy achieved for bone fracture detection is 84%, which is higher than that obtained by other, state-of-the-art bone fracture detection methods. The results of this work show that this method can be used to draw the attention of the physicians in areas of the x-rays that are suspicious for fracture; therefore, it could contribute in the reduction of diagnostic errors as well as the increase of the radiologists' productivity.
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基于模糊小波特征的x射线图像骨折识别
骨折检测过程是困难的,并且需要对所考虑区域的解剖结构有专门的了解。x射线成像提供人体内部结构的图像。尽管医学成像通过增加新的成像技术(如CT和MRI)迅速发展,但x射线成像(射线照相)是更快更便宜地检测骨折的首选检查。本研究的目的是利用图像分类方法自动检测骨x线图像中的骨折。本研究使用的数据集由300张上肢和下肢的x线骨图像组成。在这项研究中,我们提出了一种新的骨折特征提取和分类方法,称为小波模糊短语(WFP)。WFP从二维离散小波变换(DWT)图像的不同波段提取纹理信息,用一组单词表示。每个单词由一个模糊集表示。由模糊集聚合得到的词构成短语,代表图像内容。骨折检测的分类准确率为84%,高于其他最先进的骨折检测方法。这项工作的结果表明,这种方法可以用来引起医生对x射线可疑骨折区域的注意;因此,它有助于减少诊断错误,并提高放射科医生的工作效率。
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