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Validation of Deep Learning-Based Artifact Correction on Synthetic FLAIR Images in a Different Scanning Environment

机译:不同扫描环境中综合效力图像的深度学习艺术校正的验证

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We investigated the capability of a trained deep learning (DL) model with a convolutional neural network (CNN) in a different scanning environment in terms of ameliorating the quality of synthetic fluid-attenuated inversion recovery (FLAIR) images. The acquired data of 319 patients obtained from the retrospective review were used as test sets for the already trained DL model to correct the synthetic FLAIR images. Quantitative analyses were performed for native synthetic FLAIR and DL-FLAIR images against conventional FLAIR images. Two neuroradiologists assessed the quality and artifact degree of the native synthetic FLAIR and DL-FLAIR images. The quantitative parameters showed significant improvement on DL-FLAIR in all individual tissue segments and total intracranial tissues than on the native synthetic FLAIR (p < 0.0001). DL-FLAIR images showed improved image quality with fewer artifacts than the native synthetic FLAIR images (p < 0.0001). There was no significant difference in the preservation of the periventricular white matter hyperintensities and lesion conspicuity between the two FLAIR image sets (p = 0.217). The quality of synthetic FLAIR images was improved through artifact correction using the trained DL model on a different scan environment. DL-based correction can be a promising solution for ameliorating the quality of synthetic FLAIR images to broaden the clinical use of synthetic magnetic resonance imaging (MRI).
机译:我们在不同扫描环境中调查了训练的深度学习(DL)模型的能力在不同的扫描环境中,以改善合成流体衰减的反转恢复(Flair)图像的质量。从回顾性审查中获得的319名患者的获得数据被用作已培训的DL模型的测试集,以纠正合成的Flair图像。针对传统Flair图像进行原生合成的Flair和DL-Flair图像进行定量分析。两位神经加理学家评估了天然合成的Flair和DL-Flair图像的质量和伪影度。定量参数显示所有单个组织段的DL-Flair的显着改善,以及总颅内组织的颅内组织而不是对天然合成菌(P <0.0001)。 DL-Flair图像显示出改善的图像质量,伪像比本地合成刀片图像更少(P <0.0001)。两个Flair图像集之间的脑室白物质过度收缩性和病变阴部的保存没有显着差异(P = 0.217)。通过使用培训的DL模型在不同的扫描环境下使用训练的DL模型来改善合成的Flair图像的质量。基于DL的校正可以是改善合成型式图像质量以扩大合成磁共振成像(MRI)的临床应用的有希望的解决方案。

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