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Combined 3D super-resolution, de-noising and partial volume correction for percutaneous ablation

机译:合并3D超分辨率,去噪和部分体积校正,用于经皮烧蚀

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Percutaneous cryoablation is becoming more popular for the treatment of renal cell carcinoma. Interventional computed tomography (iCT) is commonly used for guidance but reducing radiation dose and increasing slice thickness makes super-resolution (SR) essential for improving image quality. The proposed method takes low quality (LQ), thick slice images and converts them to high quality (HQ). thin slice images while performing denoising and partial volume correction in the z-dircction. As LQ and HQ iCT images are challenging to pair up, we train a 3D U-Net equipped with an up-sampling module on simulated LQ (sLQ) data and then test on the real LQ (rLQ) images with cubic interpolation and random forest as comparison. During validation on sLQ data, the U-Net outperformed interpolation and random forest (SSIM 0.9991 vs 0.9959 and 0.9985 respectively), but performance suffered when testing on the out-of-distribution rLQ images. The Dice score showed a substantial improvement when used to compare needle segmentations performed on U-Net generated images versus those from interpolation and random forest (0.4073 vs. 0.2919 and 0.3777 respectively), indicating that the U-Net is reducing the z-direction partial volume effect to a greater degree than these techniques. We have shown that a neural network trained to perform SR on simulated data outperforms interpolation and random forest on real data in terms of localisation of clinically relevant, objects such as needles, despite the differing data distribution.
机译:经皮和冷冻能力对于治疗肾细胞癌进行越来越受欢迎。介入计算断层扫描(ICT)通常用于引导,但减少辐射剂量并增加切片厚度使得超分辨率(SR)对于提高图像质量来说是必不可少的。所提出的方法采用低质量(LQ),厚切片图像,并将其转换为高质量(HQ)。薄片图像在Z型Z型中执行去噪和部分体积校正。随着LQ和HQ ICT图像对配对有挑战性,我们培训配备上模拟LQ(SLQ)数据的上采样模块的3D U-Net,然后在具有立方插值和随机林的真实LQ(RLQ)图像上测试比较。在SLQ数据的验证期间,U-Net优于的插值和随机林(SSIM 0.9991 VS 0.9959和0.9985),但在分发外RLQ图像上测试时性能遭受。当用于比较U-Net生成的图像对从插值和随机林的那些(分别为0.4919和0.3777的那些,指出对比较的针分割进行了大量改进体积效应比这些技术更大程度。我们已经表明,在临床相关的本地化的情况下,培训的神经网络在模拟数据上对模拟数据进行了对实际数据的插值和随机林,尽管数据分布不同。

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