Nishii Tatsuya, Morikawa Tomoro, Nakajima Hiroki, Ohta Yasutoshi, Kobayashi Takuma, Umehara Kensuke, Ota Junko, Kakuta Takashi, Fukushima Satsuki, Fukuda Tetsuya
Department of Radiology, National Cerebral and Cardiovascular Center, 6-1, Kishibe-Shimmachi, Suita, Osaka, 564-8565, Japan.
Medical Informatics Section, QST Hospital, National Institutes for Quantum Science and Technology, Inage-ku, Chiba, Japan.
Int J Cardiovasc Imaging. 2025 Apr 23. doi: 10.1007/s10554-025-03403-z.
We hypothesized that deep learning-based post hoc denoising could improve the quality of cardiac CT for the 3D volume-rendered (VR) imaging of mitral valve (MV) prolapse. We aimed to evaluate the quality of denoised 3D VR images for visualizing MV prolapse and assess their diagnostic performance and efficiency. We retrospectively reviewed the cardiac CTs of consecutive patients who underwent MV repair in 2023. The original images were iteratively reconstructed and denoised with a residual dense network. 3DVR images of the "surgeon's view" were created with blood chamber transparency to display the MV leaflets. We compared the 3DVR image quality between the original and denoised images with a 100-point scoring system. Diagnostic confidence for prolapse was evaluated across eight MV segments: A1-3, P1-3, and the anterior and posterior commissures. Surgical findings were used as the reference to assess diagnostic ability with the area under curve (AUC). The interpretation time for the denoised 3DVR images was compared with that for multiplanar reformat images. For fifty patients (median age 64 years, 30 males), denoising the 3DVR images significantly improved their image quality scores from 50 to 76 (P <.001). The AUC in identifying MV prolapse improved from 0.91 (95% CI 0.87-0.95) to 0.94 (95% CI 0.91-0.98) (P =.009). The denoised 3DVR images were interpreted five-times faster than the multiplanar reformat images (P <.001). Deep learning-based denoising enhanced the quality of 3DVR imaging of the MV, improving the performance and efficiency in detecting MV prolapse on cardiac CT.
我们假设基于深度学习的事后去噪可以提高心脏CT用于二尖瓣脱垂三维容积再现(VR)成像的质量。我们旨在评估去噪后的三维VR图像在显示二尖瓣脱垂方面的质量,并评估其诊断性能和效率。我们回顾性分析了2023年接受二尖瓣修复的连续患者的心脏CT。原始图像用残差密集网络进行迭代重建和去噪。创建具有血腔透明度的“外科医生视角”三维VR图像以显示二尖瓣叶。我们用100分评分系统比较了原始图像和去噪后图像的三维VR图像质量。在二尖瓣的八个节段(A1-3、P1-3以及前后交界处)评估对脱垂的诊断置信度。以手术结果作为参考,用曲线下面积(AUC)评估诊断能力。将去噪后的三维VR图像的解读时间与多平面重组图像的解读时间进行比较。对于50例患者(中位年龄64岁,30例男性),对三维VR图像去噪后,其图像质量评分从50分显著提高到76分(P<0.001)。识别二尖瓣脱垂的AUC从0.91(95%CI 0.87-0.95)提高到0.94(95%CI 0.91-0.98)(P=0.009)。去噪后的三维VR图像的解读速度比多平面重组图像快5倍(P<0.001)。基于深度学习的去噪提高了二尖瓣三维VR成像的质量,改善了心脏CT检测二尖瓣脱垂的性能和效率。