首页> 外文会议>IEEE Portuguese Meeting in Bioengineering >Joint Capsule Segmentation in Ultrasound Images of the Metacarpophalangeal Joint using Convolutional Neural Networks*
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Joint Capsule Segmentation in Ultrasound Images of the Metacarpophalangeal Joint using Convolutional Neural Networks*

机译:卷积神经网络在掌指关节超声图像中的关节囊分割 *

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This work addresses the automatic segmentation of the joint capsule in ultrasound images of the metacarpophalangeal joint using an adapted version of the well known UNet model. These images are used in the diagnosis of rheumatic diseases, one of the main causes of impairment and pain in developed countries. The identification of the joint capsule gives important clues about the presence or Rheumatoid Arthritis. This structure can be used to extract metrics to help quantify the disease stage and progression. The solution proposed here has the potential to reduce the burden on the radiologists as well as the subjectivity of the diagnosis by providing quantitative measurements, such as the synovitis area. The proposed approach was compared with two other works present in the literature. Results show that our solution outperforms the two reference methods with 90% of the joint capsules identified with a DICE higher than 0.67.
机译:这项工作解决了使用已知的UNet模型的改进版本在掌指关节的超声图像中对关节囊的自动分割。这些图像用于风湿性疾病的诊断,风湿性疾病是发达国家损害和疼痛的主要原因之一。关节囊的鉴定为有关类风湿关节炎的存在提供了重要线索。此结构可用于提取指标,以帮助量化疾病的阶段和进展。此处提出的解决方案具有通过提供定量测量(例如滑膜炎区域)来减轻放射科医生的负担以及诊断的主观性的潜力。将所提出的方法与文献中存在的其他两项工作进行了比较。结果表明,我们的解决方案优于两种参考方法,其中90%的关节囊被DICE识别为高于0.67。

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