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首页> 外文期刊>Medical Physics >SU‐F‐I‐09: Improvement of Image Registration Using Total‐Variation Based Noise Reduction Algorithms for Low‐Dose CBCT
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SU‐F‐I‐09: Improvement of Image Registration Using Total‐Variation Based Noise Reduction Algorithms for Low‐Dose CBCT

机译:SU-F-I-09:使用总基于基于变化的低剂量CBCT的降噪算法改进图像登记

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Purpose: To study the effect of total‐variation based noise reduction algorithms to improve the image registration of low‐dose CBCT for patient positioning in radiation therapy. Methods: In low‐dose CBCT, the reconstructed image is degraded by excessive quantum noise. In this study, we developed a total‐variation based noise reduction algorithm and studied the effect of the algorithm on noise reduction and image registration accuracy. To study the effect of noise reduction, we have calculated the peak signal‐to‐noise ratio (PSNR). To study the improvement of image registration, we performed image registration between volumetric CT and MV‐ CBCT images of different head‐and‐neck patients and calculated the mutual information (MI) and Pearson correlation coefficient (PCC) as a similarity metric. The PSNR, MI and PCC were calculated for both the noisy and noise‐reduced CBCT images. Results: The algorithms were shown to be effective in reducing the noise level and improving the MI and PCC for the low‐dose CBCT images tested. For the different head‐and‐neck patients, a maximum improvement of PSNR of 10 dB with respect to the noisy image was calculated. The improvement of MI and PCC was 9% and 2% respectively. Conclusion: Total‐variation based noise reduction algorithm was studied to improve the image registration between CT and low‐dose CBCT. The algorithm had shown promising results in reducing the noise from low‐dose CBCT images and improving the similarity metric in terms of MI and PCC.
机译:目的:研究基于总的变化率的降噪算法的影响,以改善低剂量CBCT的用于放射治疗患者定位的图像配准。方法:在低剂量CBCT,重构图像被过度量子噪声降低。在这项研究中,我们开发了总变化基于噪声降低算法,并研究了算法对降噪和图像配准精度的影响。为了研究噪声降低的效果,我们已计算出的峰值信噪比(PSNR)。学习图像配准的改进,我们为的相似性度量进行的立体CT和不同的头部和颈部的病人MV- CBCT图像和计算出的互信息(MI)和Pearson相关系数(PCC)之间的图像配准。的PSNR,MI和PCC分别计算嘈杂和噪声减少的CBCT图像两者。结果:算法被证明是有效地降低噪音水平和提高了MI和PCC对于测试的低剂量CBCT图像。对于不同的头部和颈部的病人,10分贝PSNR的最大改善相对于所述噪声图像进行计算。 MI和PCC的提高分别为9%和2%。结论:总的变化率基于降噪算法进行了研究,以改善CT和低剂量CBCT之间的图像配准。该算法已经表明在减少从低剂量CBCT图像中的噪声,提高了相似性MI和PCC的方面的度量有希望的结果。

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