From the Department of Radiology, Stanford University School of Medicine, 300 Pasteur Dr, S-072, Stanford, CA 94305-5105.
Radiol Artif Intell. 2024 Mar;6(2):e230153. doi: 10.1148/ryai.230153.
Coronary CT angiography is increasingly used for cardiac diagnosis. Dose modulation techniques can reduce radiation dose, but resulting functional images are noisy and challenging for functional analysis. This retrospective study describes and evaluates a deep learning method for denoising functional cardiac imaging, taking advantage of multiphase information in a three-dimensional convolutional neural network. Coronary CT angiograms ( = 566) were used to derive synthetic data for training. Deep learning-based image denoising was compared with unprocessed images and a standard noise reduction algorithm (block-matching and three-dimensional filtering [BM3D]). Noise and signal-to-noise ratio measurements, as well as expert evaluation of image quality, were performed. To validate the use of the denoised images for cardiac quantification, threshold-based segmentation was performed, and results were compared with manual measurements on unprocessed images. Deep learning-based denoised images showed significantly improved noise compared with standard denoising-based images (SD of left ventricular blood pool, 20.3 HU ± 42.5 [SD] vs 33.4 HU ± 39.8 for deep learning-based image denoising vs BM3D; < .0001). Expert evaluations of image quality were significantly higher in deep learning-based denoised images compared with standard denoising. Semiautomatic left ventricular size measurements on deep learning-based denoised images showed excellent correlation with expert quantification on unprocessed images (intraclass correlation coefficient, 0.97). Deep learning-based denoising using a three-dimensional approach resulted in excellent denoising performance and facilitated valid automatic processing of cardiac functional imaging. Cardiac CT Angiography, Deep Learning, Image Denoising © RSNA, 2024.
冠状动脉 CT 血管造影术越来越多地用于心脏诊断。剂量调制技术可以降低辐射剂量,但由此产生的功能图像存在噪声,对功能分析具有挑战性。本回顾性研究描述并评估了一种利用三维卷积神经网络中多相位信息进行功能心脏成像去噪的深度学习方法。使用冠状动脉 CT 血管造影图(=566)为训练生成合成数据。将基于深度学习的图像去噪与未经处理的图像和标准降噪算法(块匹配和三维滤波[BM3D])进行比较。进行了噪声和信噪比测量以及专家对图像质量的评估。为了验证使用去噪图像进行心脏定量分析,进行了基于阈值的分割,并将结果与未经处理图像上的手动测量进行比较。与基于标准降噪的图像相比(左心室血池的 SD 为 20.3 HU ± 42.5[SD]与基于深度学习的图像去噪的 33.4 HU ± 39.8 相比;<.0001),基于深度学习的去噪图像的噪声明显改善。基于深度学习的去噪图像的专家图像质量评估明显高于标准去噪图像。基于深度学习的去噪图像的半自动左心室大小测量与未经处理图像上的专家定量具有极好的相关性(组内相关系数,0.97)。使用三维方法进行基于深度学习的去噪可实现出色的去噪性能,并有利于对心脏功能成像的自动处理。 心脏 CT 血管造影术,深度学习,图像去噪 ©RSNA,2024 年。