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解剖学背景可提高大脑年龄估计任务中的深度学习效果。

Anatomical context improves deep learning on the brain age estimation task.

机构信息

Department of Biomedical Engineering, Featheringiill Hall 371, Vanderbilt University, 400 24(th) Ave S, Nashville, TN 37212, USA.

Department of Computer Science, Featheringiill Hall 371, Vanderbilt University, 400 24(th) Ave S, Nashville, TN 37212, USA.

出版信息

Magn Reson Imaging. 2019 Oct;62:70-77. doi: 10.1016/j.mri.2019.06.018. Epub 2019 Jun 24.

DOI:10.1016/j.mri.2019.06.018
PMID:31247249
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6689246/
Abstract

Deep learning has shown remarkable improvements in the analysis of medical images without the need for engineered features. In this work, we hypothesize that deep learning is complementary to traditional feature estimation. We propose a network design to include traditional structural imaging features alongside deep convolutional ones and illustrate this approach on the task of imaging-based age prediction in two separate contexts: T1-weighted brain magnetic resonance imaging (MRI) (N = 5121, ages 4-96, healthy controls) and computed tomography (CT) of the head (N = 1313, ages 1-97, healthy controls). In brain MRI, we can predict age with a mean absolute error of 4.08 years by combining raw images along with engineered structural features, compared to 5.00 years using image-derived features alone and 8.23 years using structural features alone. In head CT, we can predict age with a median absolute error of 9.99 years combining features, compared to 11.02 years with image-derived features alone and 13.28 years with structural features alone. These results show that we can complement traditional feature estimation using deep learning to improve prediction tasks. As the field of medical image processing continues to integrate deep learning, it will be important to use the new techniques to complement traditional imaging features instead of fully displacing them.

摘要

深度学习在分析医学图像时无需工程特征就能取得显著的进步。在这项工作中,我们假设深度学习对传统特征估计具有补充作用。我们提出了一种网络设计,将传统的结构成像特征与深度卷积特征结合在一起,并在两个独立的背景下,即基于成像的年龄预测任务上,展示了这种方法:T1 加权脑磁共振成像(MRI)(N=5121,年龄 4-96 岁,健康对照组)和头部计算机断层扫描(CT)(N=1313,年龄 1-97 岁,健康对照组)。在脑 MRI 中,我们可以通过结合原始图像和工程结构特征,将年龄预测的平均绝对误差(MAE)降低到 4.08 岁,而仅使用图像衍生特征时为 5.00 岁,仅使用结构特征时为 8.23 岁。在头部 CT 中,我们可以通过结合特征将年龄预测的中位数绝对误差(MedAE)降低到 9.99 岁,而仅使用图像衍生特征时为 11.02 岁,仅使用结构特征时为 13.28 岁。这些结果表明,我们可以使用深度学习来补充传统的特征估计,以改进预测任务。随着医学图像处理领域继续整合深度学习,使用新技术来补充传统的成像特征而不是完全取代它们将变得非常重要。

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