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Recognition of Hyperparathyroidism based on Transfer Learning

机译:基于转移学习的甲状旁腺功能亢进识别

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Hyperparathyroidism (HPT) is a disorder in which the parathyroid glands produce too much parathyroid hormone (PTH), which may lead to hypocalcemic convulsions, cardiomyopathy, hypertension and other diseases, even threaten the lives of patients under certain severe conditions. Since HPT is usually multiple and ectopic with variable symptoms, the diagnosis and location of HPT is a difficult task even for senior radiologists. A transfer learning-based computer-aided diagnosis (CAD) approach is proposed for automated recognition of HPT in this paper. A dataset of the brightness-mode ultrasound images is developed for the HPT recognition, which is usually annotated by senior radiologists. We addressed the HPT recognition using the various computer vision algorithms on the HPT dataset and obtained good performances for all the algorithms. The experimental results demonstrated that the dataset is effective in aiding the diagnosis of HPT.
机译:甲状旁腺功能亢进症(HPT)是一种疾病,甲状旁腺腺体产生过多的甲状旁腺激素(第PH),这可能导致低血糖抽搐,心肌病,高血压等疾病,甚至威胁到某些严重条件下患者的生命。由于HPT通常是具有可变症状的多种和异位,因此HPT的诊断和位置即使是高级放射科医师也是一项艰巨的任务。提出了一种基于转移学习的计算机辅助诊断(CAD)方法,用于本文的HPT自动识别。为HPT识别开发了亮度模式超声图像的数据集,其通常由高级放射科医师注释。我们使用HPT DataSet上的各种计算机视觉算法解决了HPT识别,并为所有算法获得了良好的性能。实验结果表明,数据集可有效地实现HPT的诊断。

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