用于压缩传感心脏CINE MRI的混合迁移学习

S. Park, C. Ahn
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引用次数: 4

摘要

在目标网络中采用开放数据集进行源任务作为初始网络,以提高目标任务的学习速度和性能。使用BTL,神经网络有效地学习了目标数据,同时最大限度地保留了源数据的知识。源数据与目标数据的比率从初始阶段的1逐步降低到最终阶段的0。结果:与执行TL或独立学习(SL)的神经网络相比,执行BTL的神经网络表现出改进的性能。神经网络的泛化也得到了较好的实现。使用目标数据和源数据的重建图像的归一化均方误差(NMSE)来评估学习曲线。BTL将学习时间减少了1.25到100倍,并提供了更好的图像质量。其NMSE比SL低3%-8%。结论:执行所提出的BTL的NN在学习速度和学习曲线方面表现出最好的性能。对于测试数据集,它还显示出最高的重建图像质量和最低的NMSE。因此,BTL是医学成像领域中神经网络的一种有效学习方式,在医学成像领域,数据的质量和数量总是有限的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blended-Transfer Learning for Compressed-Sensing Cardiac CINE MRI
conducting a source task using an open data set was adopted in the target network as the initial network to improve the learning speed and the performance of the target task. Using BTL, an NN effectively learned the target data while preserving knowledge from the source data to the maximum extent possible. The ratio of the source data to the target data was reduced stepwise from 1 in the initial stage to 0 in the final stage. Results: NN that performed BTL showed an improved performance compared to those that performed TL or standalone learning (SL). Generalization of NN was also better achieved. The learning curve was evaluated using normalized mean square error (NMSE) of reconstructed images for both target data and source data. BTL reduced the learning time by 1.25 to 100 times and provided better image quality. Its NMSE was 3% to 8% lower than with SL. Conclusion: The NN that performed the proposed BTL showed the best performance in terms of learning speed and learning curve. It also showed the highest reconstructed-image quality with the lowest NMSE for the test data set. Thus, BTL is an effective way of learning for NNs in the medical-imaging domain where both quality and quantity of data are always limited.
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