利用神经风格迁移改进分割模型的领域泛化

T. Kline
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引用次数: 2

摘要

将自动医学图像分割方法推广到新的图像域本身就是困难的。我们之前已经开发了许多自动分割方法,这些方法在与原始训练数据相似的条件下获得的图像上以人类读者的水平执行。我们感兴趣的是探索将提高模型泛化到新成像领域的技术。在本研究中,我们探索了一种方法来限制这些模型对强度和纹理信息的固有偏差。利用100张脂肪饱和的t2加权MR图像和100张非脂肪饱和的t2加权MR图像的数据集,我们探索了使用神经风格转移来诱导形状偏好,并提高模型在多囊肾病患者肾脏分割任务中的性能。我们发现使用神经风格转移图像将平均骰子值提高了$\sim0.2$。此外,可视化单个网络内核响应突出了优化网络之间的巨大差异。偏倚模型来调用形状偏好是一种很有前途的方法,可以创建更接近人类感知的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Domain Generalization in Segmentation Models with Neural Style Transfer
Generalizing automated medical image segmentation methods to new image domains is inherently difficult. We have previously developed a number of automated segmentation methods that perform at the level of human readers on images acquired under similar conditions to the original training data. We are interested in exploring techniques that will improve model generalization to new imaging domains. In this study we explore a method to limit the inherent bias of these models to intensity and textural information. Using a dataset of 100 T2-weighted MR images with fat-saturation, and 100 T2-weighted MR images without fat-saturation, we explore the use of neural style transfer to induce shape preference and improve model performance on the task of segmenting the kidneys in patients affected by polycystic kidney disease. We find that using neural style transfer images improves the average dice value by $\sim0.2$. In addition, visualizing individual network kernel responses highlights a drastic difference in the optimized networks. Biasing models to invoke shape preference is a promising approach to create methods that are more closely aligned with human perception.
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