Unsupervised Detection Of Disturbances In 2d Radiographs

Laura Estacio, M. Ehlke, A. Tack, Eveling Castro Gutierrez, H. Lamecker, R. Mora, S. Zachow
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引用次数: 0

Abstract

We present a method based on a generative model for detection of disturbances such as prosthesis, screws, zippers, and metals in 2D radiographs. The generative model is trained in an unsupervised fashion using clinical radiographs as well as simulated data, none of which contain disturbances. Our approach employs a latent space consistency loss which has the benefit of identifying similarities, and is enforced to reconstruct X-rays without disturbances. In order to detect images with disturbances, an anomaly score is computed also employing the Frechet distance between the input X-ray and the reconstructed one using our generative model. Validation was performed using clinical pelvis radiographs. We achieved an AUC of 0.77 and 0.83 with clinical and synthetic data, respectively. The results demonstrated a good accuracy of our method for detecting outliers as well as the advantage of utilizing synthetic data.
二维x光片干扰的无监督检测
我们提出了一种基于生成模型的方法,用于检测二维x光片中的干扰,如假体,螺钉,拉链和金属。生成模型以无监督的方式使用临床x光片和模拟数据进行训练,其中没有任何一个包含干扰。我们的方法采用了潜在空间一致性损失,它具有识别相似性的好处,并强制重建无干扰的x射线。为了检测有干扰的图像,还使用我们的生成模型利用输入x射线与重建x射线之间的Frechet距离计算异常分数。通过临床骨盆x线片进行验证。临床和合成数据的AUC分别为0.77和0.83。结果表明,我们的方法检测异常值具有良好的准确性和利用合成数据的优势。
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