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Systematic bone infection detection in axial diabetic foot MRI

机译:轴向糖尿病脚MRI中的系统骨感染检测

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Osteomyelitis is an infection of the bone that leads to tissue destruction and often to debility. Early diagnosis of infection is critical, as prompt antibiotic treatment reduces the rate of amputation. Vascular insufficiency and lack of sensation predispose diabetic patients to foot infection that can lead to bone infection. Magnetic Resonance Imaging (MRI) has been shown to be capable of revealing primary marrow abnormalities with improved specificity comparing to other imaging options [1]. There will be an inevitable degree of variability in image interpretation as long as it relies on human visual perception. Therefore, tools that automate pattern recognition and image analysis can support clinical decision-making and may reduce this variability. The proposed system can be used as a basis for the computer-assisted radiology of diabetic foot infection. This paper presents a system for detecting the toe bones in axial diabetic foot MRI and categorizing them. The first aim of the system is to detect the toe bones using segmentation and filtering criteria. Detecting criteria are selected based on the experience of previous diagnoses and medical research in the area. Afterwards, the bag of feature approach is used to categorize the detected toe bones as infected, not infected or noise. For this purpose, we construct the visual vocabulary by clustering features that are extracted from a set of training images and use them to train multiclass linear support vector machine classifier for each of the three categories.
机译:骨髓炎是骨骼的感染,导致组织破坏,经常易脱裂。早期诊断感染至关重要,因为促进抗生素治疗降低了截肢率。血管功能不全,缺乏感觉易患糖尿病患者足以感染,这可能导致骨感染。已经证明磁共振成像(MRI)能够揭示与其他成像选项相比的改善的特异性的原发性骨髓异常[1]。只要依赖于人类视觉感知,图像解释就会存在不可避免的变化程度。因此,自动化模式识别和图像分析的工具可以支持临床决策,并可能降低这种可变性。所提出的系统可以用作糖尿病脚感染的计算机辅助放射学的基础。本文介绍了一种用于检测轴向糖尿病脚MRI中脚趾骨骼的系统并将其分类。该系统的第一个目的是使用分段和过滤标准来检测脚趾骨骼。根据该地区之前诊断和医学研究的经验选择检测标准。之后,使用特征方法的袋子用于将检测到的脚趾骨骼分类为感染,而不是感染或噪音。为此目的,我们通过从一组训练图像中提取的聚类功能构建视觉词汇,并使用它们来训练三个类别中的每一个的多字符线性支持向量机分类器。

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