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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Addressing The False Negative Problem of Deep Learning MRI Reconstruction Models by Adversarial Attacks and Robust Training
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Addressing The False Negative Problem of Deep Learning MRI Reconstruction Models by Adversarial Attacks and Robust Training

机译:通过对抗攻击和强大的培训来解决深度学习MRI重建模型的假阴性问题

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Deep learning models have been shown to be successful in accelerating MRI reconstruction, over traditional methods. However, it has been observed that these methods tend to miss rare small features, such as meniscal tears, subchondral osteophyte, etc. in musculoskeletal applications. This is a concerning finding as these small and rare features are the particularly relevant in clinical diagnostic settings. Additionally, such potentially dangerous loss of details in the reconstructed images are not reflected by global image fidelity metrics such as mean-square error (MSE) and structural similarity metric (SSIM). In this work, we propose a framework to find the worst-case false negatives by adversarially attacking the trained models and improve the models’ability to reconstruct the small features by robust training.
机译:深入学习模型已被证明是在传统方法中加速MRI重建的成功。然而,已经观察到这些方法倾向于错过罕见的小特征,例如肌肉骨骼应用中的半月板眼泪,副骨髓性骨赘等。这是一个关于这些小而罕见的特征在临床诊断环境中特别相关。另外,重建图像中的这种潜在危险的细节丢失不是由诸如均方误差(MSE)和结构相似度量(SSIM)的全局图像保真度测量来反映。在这项工作中,我们提出了一个框架,通过对训练有素的型号进行对抗训练的型号来找到最坏情况的假阴性,并通过强大的培训改善模型的模型来重建小功能。

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