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Deep Learning-Based Identification of Spinal Metastasis in Lung Cancer Using Spectral CT Images

机译:基于深度学习的肺癌脊髓转移鉴定使用光谱CT图像

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In this study, deep learning algorithm-based energy/spectral computed tomography (CT) for the spinal metastasis from lung cancer was used. A dilated convolutional U-Net model (DC-U-Net model) was first proposed, which was used to segment the energy/spectral CT image of patients with the spinal metastasis from lung cancer. Subsequently, energy/spectral CT images under different energy levels were collected for the signal-to-noise ratio (SNR) and contrast-to-noise ratio (CNR) comparison. It was found the learning rate of the model decreased exponentially as the number of training increased, with the lung contour segmented out of the image. Under 40–65?keV, the CT value of bone metastasis from lung cancer decreased with increasing energy, as with the average rank sum test result. The SNR and CNR values were the highest under 60?keV. The detection rate of the deep learning algorithm below 60?keV was 81.41%, and that of professional doctors was 77.56%. The detection rate of the deep learning algorithm below 140?keV was 66.03%, and that of professional doctors was 64.74%. In conclusion, the DC-U-Net model demonstrates better segmentation effects versus the convolutional neutral networ k (CNN), with the lung contour segmented. Further, a higher energy level leads to worse segmentation effects on the energy/spectral CT image.
机译:在本研究中,使用了来自肺癌脊髓转移的基于深度学习算法的能量/光谱计算断层扫描(CT)。首先提出了一种扩张的卷积U-NET模型(DC-U-NET模型),用于将肺癌脊髓转移的患者的能量/光谱CT图像分段。随后,收集不同能量水平下的能量/光谱CT图像,用于信噪比(SNR)和对比度 - 噪声比(CNR)比较。发现模型的学习率随着培训数量的增加而降低,肺轮廓分割出图像。低于40-65℃以下,肺癌骨转移的CT值随能量的增加而降低,与平均等级和试验结果一样。 SNR和CNR值是最高的60次?KEV。低于60的深度学习算法的检测率为60?Kev为81.41%,专业医生的检测率为77.56%。低于140的深度学习算法的检测率为66.03%,专业医生的持续时间为64.74%。总之,DC-U-NET模型表明了肺轮廓分段的卷积中性Networ K(CNN)的更好的分割效果。此外,更高的能级导致对能量/光谱CT图像的较差的分割效应。

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