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Suppression of the Contrast of Ribs in Chest Radiographs by Means of Massive Training Artificial Neural Network

机译:抑制胸部射线照相肋骨肋骨的抑制方法通过大规模训练人工神经网络

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We developed a method for suppression of the contrast of ribs in chest radiographs by means of a massive training artificial neural network (MTANN). The MTANN is a trainable highly nonlinear filter that can be trained by using input chest radiographs and the corresponding teacher images. We used either the soft-tissue image or the bone image obtained by use of a dual-energy subtraction technique as the teacher image for suppression of ribs in chest radiographs. When the soft-tissue images were used as the teacher images, the MTANN directly produced a "soft-tissue-image-like" image where the contrast of ribs was suppressed. When the bone images were used as the teacher images, the MTANN was able to produce a "bone-image-like" image, and then was subtracted from the corresponding chest radiograph to produce a bone-subtracted image where ribs are suppressed. Thus, the two kinds of rib-suppressed images, i.e., the soft-tissue-image-like image and the bone-subtracted image, could be produced by use of the MTANNs trained with two different teacher images. We applied each of the two trained MTANNs to non-training chest radiographs to investigate the difference between the processed images. The results showed that the contrast of ribs in chest radiographs almost disappeared, and was reduced to less than 10% in both processed images. The contrast of ribs was reduced slightly better in the soft-tissue-image-like images than in the bone-subtracted images, whereas soft-tissue opacities such as lung vessels and nodules were maintained better in the bone-subtracted images. Therefore, the use of the bone images as the teacher images for training the MTANN has produced better rib-suppressed images where soft-tissue opacities were substantially maintained. A method for rib suppression using the MTANN would be useful for radiologists as well as CAD schemes in detection of lung diseases such as nodules in chest radiographs.
机译:我们开发了一种抑制胸部射线照片中肋骨对比的方法,通过大规模的培训人工神经网络(MTANN)。 MTANN是一种可培训高度非线性滤波器,可以通过使用输入胸部射线照片和相应的教师图像进行培训。我们使用了通过使用双能量减法技术获得的软组织图像或骨图像作为教师图像,以抑制胸部射线照片中的肋骨。当软组织图像被用作教师图像时,MTANN直接产生“软组织图像状”图像,其中抑制了肋的对比度。当使用骨图像作为教师图像时,MTANN能够产生“骨图像状”图像,然后从相应的胸部射线照片中减去以产生骨骼减去的图像,其中抑制肋。因此,可以通过使用用两个不同的教师图像训练的MTANNS来生产两种肋抑制图像,即软组织图像状图像和骨减去图像。我们将两个培训的MTANN中的每一个应用于非训练胸部射线照相,以研究加工图像之间的差异。结果表明,胸部射线照片中的肋骨对比几乎消失,并且在两个加工的图像中减少到小于10%。在软组织 - 图像状图像中,肋骨的对比度比在骨减去的图像中略微降低,而在骨减去的图像中更好地保​​持诸如肺血管和结节的软组织不透明性。因此,使用骨图像作为训练M栏的教师图像已经产生了更好的肋抑制图像,其中基本上保持软组织不透明。使用MTANN的肋骨抑制方法对于放射科医师以及CAD方案在检测胸部射线照片中的结节中有用。

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