人工神经网络在髓鞘水成像中的泛化能力探索

Jieun Lee, J. Choi, Dongmyung Shin, E. Kim, S. Oh, Jongho Lee
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引用次数: 2

摘要

目的:为了了解具有各种参数的数据集对预训练网络性能的影响,通过测试具有各种扫描协议(即分辨率和重新聚焦RF脉冲形状)和疾病类型(即视神经脊髓炎和水肿)的数据集,探索人工神经网络对髓鞘水成像(ANN-MWI)的泛化能力。材料和方法:训练ANN-MWI产生T2分布,从中测量髓鞘水分数值。使用具有相同扫描方案的多回波梯度和自旋回波序列,从健康对照组和多发性硬化症患者获得训练和测试数据集。为了测试ANN-MWI的泛化能力,使用了不同设置的数据集。数据集是以不同的分辨率、重新聚焦脉冲形状和疾病类型获取或生成的。对于所有数据集,通过计算传统方法和ANN-MWI的结果之间的归一化均方根误差(NRMSE),在白质掩模中进行评估。此外,对于患者数据集,在每个病变掩模中计算NRMSE。结果:ANN-MWI的结果在从不同分辨率的数据集生成髓鞘水分数图方面显示出高可靠性。然而,对于具有不同重新聚焦脉冲形状和无序类型的数据集,报告了增加的误差。具体而言,水肿患者的病变区域报告了高NRMSE。这些增加的误差表明了ANN-MWI对再聚焦脉冲翻转角和T2特性的依赖性。结论:本研究提出了将深度学习应用于髓鞘水成像处理时,训练网络的泛化准确性信息。
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Exploring Generalization Capacity of Artificial Neural Network for Myelin Water Imaging
Purpose: To understand the effects of datasets with various parameters on pre-trained network performance, the generalization capacity of the artificial neural network for myelin water imaging (ANN-MWI) is explored by testing datasets with various scan protocols (i.e., resolution and refocusing RF pulse shape) and types of disorders (i.e., neuromyelitis optica and edema). Materials and Methods: ANN-MWI was trained to generate a T 2 distribution, from which the myelin water fraction value was measured. The training and test datasets were acquired from healthy controls and multiple sclerosis patients using a multiecho gradient and spin-echo sequence with the same scan protocols. To test the generalization capacity of ANN-MWI, datasets with different settings were utilized. The datasets were acquired or generated with different resolutions, refocusing pulse shape, and types of disorders. For all datasets, the evaluation was performed in a white matter mask by calculating the normalized root-mean-squared error (NRMSE) between the results from the conventional method and ANN-MWI. Additionally, for the patient datasets, the NRMSE was calculated in each lesion mask. Results: The results of ANN-MWI showed high reliability in generating myelin water fraction maps from the datasets with different resolutions. However, the increased errors were reported for the datasets with different refocusing pulse shapes and disorder types. Specifically, the region of lesions in edema patients reported high NRMSEs. These increased errors indicate the dependency of ANN-MWI on refocusing pulse flip angles and T 2 characteristics. Conclusion: This study proposes information about the generalization accuracy of a trained network when applying deep learning to processing myelin water imaging.
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