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Joint capsule segmentation in ultrasound images of the metacarpophalangeal joint using a split and merge approach

机译:使用分裂和合并方法,使用分裂和合并方法在糖尿病关节的超声图像中的关节胶囊分割

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This work presents a new approach for the identification of the joint capsule in ultrasound images of the metacarpophalangeal joint. These images are used to diagnose rheumatic diseases which are one of the main causes of impairment and pain in developed countries. The early diagnosis of these conditions is crucial to a proper treatment and follow-up and so, this work contributes to the automatic extraction of relevant information from the resulting images. The algorithm uses the metacarpus, phalange and extensor tendon positions to create a region of interest. Next, a split and merge approach is used to identify the joint capsule, where the split is done using the Simple Linear Iterative Clustering algorithm and the merge is achieved with a special region growing with shape constraints. After that, the results are refined using a Localizing Active Contours method. Results shown that the segmentation is possible with 60% of the joint capsules identified with a Dice Coefficient higher than 0.7.
机译:这项工作提出了一种新方法,用于鉴定Metacarpalangeal关节的超声图像中的关节胶囊。这些图像用于诊断风湿性疾病,这些疾病是发达国家损伤和疼痛的主要原因之一。这些条件的早期诊断对于适当的处理和随访至关重要,因此,这项工作有助于从所产生的图像中自动提取相关信息。该算法使用Metacarpus,Phalange和伸展肌腱位置来创建感兴趣的区域。接下来,使用分割和合并方法来识别联合胶囊,其中使用简单的线性迭代聚类算法进行分离,并且通过具有形状约束的特殊区域实现合并。之后,使用本地化活动轮廓方法来改进结果。结果表明,分割是可以用高于0.7的骰子系数识别的60±%的关节胶囊。

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