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基于 2D 多节段钆延迟增强(LGE)联合人工智能重建深度学习降噪算法评估缺血性心肌病 LGE 的可行性。

Feasibility of late gadolinium enhancement (LGE) in ischemic cardiomyopathy using 2D-multisegment LGE combined with artificial intelligence reconstruction deep learning noise reduction algorithm.

机构信息

Centro Cardiologico Monzino, IRCCS, Milan, Italy.

Diagnostic Department, Azienda Ospedaliera-Universitaria di Parma, Parma, Italy.

出版信息

Int J Cardiol. 2021 Nov 15;343:164-170. doi: 10.1016/j.ijcard.2021.09.012. Epub 2021 Sep 10.

DOI:10.1016/j.ijcard.2021.09.012
PMID:34517017
Abstract

BACKGROUND

Despite the low spatial resolution of 2D-multisegment late gadolinium enhancement (2D-MSLGE) sequences, it may be useful in uncooperative patients instead of standard 2D single segmented inversion recovery gradient echo late gadolinium enhancement sequences (2D-SSLGE). The aim of the study is to assess the feasibility and comparison of 2D-MSLGE reconstructed with artificial intelligence reconstruction deep learning noise reduction (NR) algorithm compared to standard 2D-SSLGE in consecutive patients with ischemic cardiomyopathy (ICM).

METHODS

Fifty-seven patients with known ICM referred for a clinically indicated CMR were enrolled in this study. 2D-MSLGE were reconstructed using a growing level of NR (0%,25%,50%,75%and 100%). Subjective image quality, signal to noise ratio (SNR) and contrast to noise ratio (CNR) were evaluated in each dataset and compared to standard 2D-SSLGE. Moreover, diagnostic accuracy, LGE mass and scan time were compared between 2D-MSLGE with NR and 2D-SSLGE.

RESULTS

The application of NR reconstruction ≥50% to 2D-MSLGE provided better subjective image quality, CNR and SNR compared to 2D-SSLGE (p < 0.01). The best compromise in terms of subjective and objective image quality was observed for values of 2D-MSLGE 75%, while no differences were found in terms of LGE quantification between 2D-MSLGE versus 2D-SSLGE, regardless the NR applied. The sensitivity, specificity, negative predictive value, positive predictive value and accuracy of 2D-MSLGE NR 75% were 87.77%,96.27%,96.13%,88.16% and 94.22%, respectively. Time of acquisition of 2D-MSLGE was significantly shorter compared to 2D-SSLGE (p < 0.01).

CONCLUSION

When compared to standard 2D-SSLGE, the application of NR reconstruction to 2D-MSLGE provides superior image quality with similar diagnostic accuracy.

摘要

背景

尽管二维多节段晚期钆增强(2D-MSLGE)序列的空间分辨率较低,但对于不合作的患者,它可能比标准的二维单节段反转恢复梯度回波晚期钆增强序列(2D-SSLGE)更有用。本研究旨在评估在连续的缺血性心肌病(ICM)患者中,使用人工智能重建深度学习降噪(NR)算法重建的 2D-MSLGE 与标准 2D-SSLGE 的可行性和比较。

方法

本研究纳入了 57 例已知 ICM 并接受临床指示性 CMR 的患者。使用逐渐增加的 NR(0%、25%、50%、75%和 100%)重建 2D-MSLGE。在每个数据集评估主观图像质量、信噪比(SNR)和对比噪声比(CNR),并与标准 2D-SSLGE 进行比较。此外,还比较了 2D-MSLGE 与 NR 和 2D-SSLGE 的诊断准确性、LGE 质量和扫描时间。

结果

与 2D-SSLGE 相比,NR 重建≥50%的 2D-MSLGE 提供了更好的主观图像质量、CNR 和 SNR(p<0.01)。在 2D-MSLGE 75%的情况下,观察到了在主观和客观图像质量方面的最佳折衷,而无论应用的 NR 如何,在 LGE 定量方面,2D-MSLGE 与 2D-SSLGE 之间均无差异。2D-MSLGE NR 75%的灵敏度、特异性、阴性预测值、阳性预测值和准确性分别为 87.77%、96.27%、96.13%、88.16%和 94.22%。与 2D-SSLGE 相比,2D-MSLGE 的采集时间明显缩短(p<0.01)。

结论

与标准的 2D-SSLGE 相比,NR 重建应用于 2D-MSLGE 可提供更高的图像质量,同时具有相似的诊断准确性。

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