Deep Learning Denoising Improves CT Perfusion Image Quality in the Setting of Lower Contrast Dosing: A Feasibility Study.

Mahmud Mossa-Basha, Chengcheng Zhu, Tanya Pandhi, Steve Mendoza, Javid Azadbakht, Ahmed Safwat, Dean Homen, Carlos Zamora, Dinesh Kumar Gnanasekaran, Ruiyue Peng, Steven Cen, Vinay Duddalwar, Jeffry R Alger, Danny J J Wang
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Abstract

Background and purpose: Considering recent iodinated contrast shortages and a focus on reducing waste, developing protocols with lower contrast dosing while maintaining image quality through artificial intelligence is needed. This study compared reduced iodinated contrast media and standard dose CTP acquisitions, and the impact of deep learning denoising on CTP image quality in preclinical and clinical studies. The effect of reduced X-ray mAs dose was also investigated in preclinical studies.

Materials and methods: Twelve swine underwent 9 CTP examinations each, performed at combinations of 3 different x-ray (37, 67, and 127 mAs) and iodinated contrast media doses (10, 15, and 20 mL). Clinical CTP acquisitions performed before and during the iodinated contrast media shortage and protocol change (from 40 to 30 mL) were retrospectively included. Eleven patients with reduced iodinated contrast media dosages and 11 propensity-score-matched controls with the standard iodinated contrast media dosages were included. A residual encoder-decoder convolutional neural network (RED-CNN) was trained for CTP denoising using k-space-weighted image average filtered CTP images as the target. The standard, RED-CNN-denoised, and k-space-weighted image average noise-filtered images for animal and human studies were compared for quantitative SNR and qualitative image evaluation.

Results: The SNR of animal CTP images decreased with reductions in iodinated contrast media and milliampere-second doses. Contrast dose reduction had a greater effect on SNR than milliampere-second reduction. Noise-filtering by k-space-weighted image average and RED-CNN denoising progressively improved the SNR of CTP maps, with RED-CNN resulting in the highest SNR. The SNR of clinical CTP images was generally lower with a reduced iodinated contrast media dose, which was improved by the k-space-weighted image average and RED-CNN denoising (P < .05). Qualitative readings consistently rated RED-CNN denoised CTP as the best quality, followed by k-space-weighted image average and then standard CTP images.

Conclusions: Deep learning-denoising can improve image quality for low iodinated contrast media CTP protocols, and could approximate standard iodinated contrast media dose CTP, in addition to potentially improving image quality for low milliampere-second acquisitions.

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深度学习去噪技术在降低对比剂剂量的情况下改善 CT 灌注图像质量:可行性研究
背景和目的:考虑到最近碘化造影剂(ICM)的短缺,本研究比较了减少 ICM 剂量和标准剂量的 CTP 采集,以及深度学习(DL)去噪对临床前和临床研究中 CTP 图像质量的影响:12 头猪分别接受了 9 次 CTP 检查,以 3 种不同的 X 射线(37、67 和 127mAs)和 ICM 剂量(10、15 和 20mL)组合进行。回顾性纳入了在 ICM 短缺和方案变更(从 40 毫升到 30 毫升)之前和期间进行的临床 CTP 采集。纳入了 11 名 ICM 剂量减少的患者和 11 名 ICM 剂量标准的倾向分数匹配对照组。以 K 空间加权图像平均值 (KWIA) 滤波 CTP 图像为目标,训练残差编码器-解码器卷积神经网络 (RED-CNN) 对 CTP 去噪。对动物和人体研究的标准图像、RED-CNN 去噪图像和 KWIA 噪声过滤图像进行了信噪比定量比较和定性图像评估:动物 CTP 图像的信噪比随着 ICM 和 mAs 剂量的降低而下降。对比剂量的减少对信噪比的影响大于 mAs 的减少。通过 KWIA 和 RED-CNN 去噪过滤可逐步提高 CTP 图像的信噪比,其中 RED-CNN 的信噪比最高。随着 ICM 剂量的减少,临床 CTP 图像的信噪比普遍较低,而 KWIA 和 RED-CNN 去噪后,信噪比有所提高(结论:DL 去噪可提高 ICM 的剂量,从而改善 CTP 图像的信噪比:DL 去噪能改善低 ICM CTP 方案的图像质量,并能接近标准 ICM 剂量 CTP,此外还可能改善低 mAs 采集的图像质量:缩写:ICM=碘化造影剂;DL=深度学习;KWIA=k 空间加权图像平均值;LCD=低对比剂量;SCD=标准对比剂量;RED-CNN=剩余编码器-解码器卷积神经网络;PSNR=峰值信噪比;RMSE=根均值平方误差;SSIM=结构相似性指数。
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