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An image reconstruction method based on machine learning for dual-energy subtraction radiography

机译:基于机器学习的双能减射线照相的图像重建方法

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We propose a novel image reconstruction method for dual-energy subtraction radiography. When one of the dual-energy images is obtained at a low dose, a bone image generated with a dual-energy subtraction technique is degraded due to noise, especially high frequency noise. Our method restores the degraded bone image using a regression filter trained by support vector regression. The regression filter is trained based on the input of degraded bone images against an output of corresponding noiseless bone images. Due to strong correlation between the high frequency and low frequency signals of bone, the high frequency signal can be accurately generated based on the observed low frequency signal. However, learning such correlation directly is generally difficult. Therefore our technique first generates a "2-class bone model" that explicitly expresses a bone structure that should be restored. Then while utilizing this model, regression filtering is applied. The accuracy of regression learning is largely improved with this approach. Verification tests show that our method works well: a soft-tissue image obtained by subtracting a restored bone image from a standard radiograph reveals that the rib structure has been thoroughly removed and that the sharpness of the soft-tissue signal is improved in general and among the fine vessels. In conclusion, the proposed method can provide superior dose reduction as well as a better reflection of the anatomical structures in an image. With these advantages, the proposed method can offer high clinical value for the detection of lung lesions.
机译:我们提出了一种用于双能减射线照相的新型图像重建方法。当以低剂量获得双能量图像之一时,由于噪声,尤其是高频噪声,用双能减技术产生的骨图像降低。我们的方法使用支持向量回归训练的回归滤波器恢复降级的骨图像。回归滤波器基于对相应无噪声骨图像的输出的降级的骨图像的输入进行培训。由于骨骼的高频和低频信号之间的强相关性,可以基于观察到的低频信号精确地生成高频信号。然而,学习这种相关性直接是困难的。因此,我们的技术首先产生“2级骨模型”,明确表示应该恢复的骨骼结构。然后在利用此模型时,应用回归过滤。这种方法在很大程度上提高了回归学习的准确性。验证测试表明,我们的方法很好:通过从标准射线照片中减去恢复的骨图像而获得的软组织图像显示,肋结构已经完全去除并且软组织信号的锐度一般地改善了细血管。总之,所提出的方法可以提供优异的剂量降低以及图像中解剖结构的更好反射。通过这些优点,所提出的方法可以为肺病灶检测提供高临床价值。

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