Mild traumatic brain injury is a growing public health problem with an estimated incidence of over 1.7 million people annually in US. Diagnosis is based on clinical history and symptoms, and accurate, concrete measures of injury are lacking. This work aims to directly use diffusion MR images obtained within one month of trauma to detect injury, by incorporating deep learning techniques. To overcome the challenge due to limited training data, we describe each brain region using the bag of word representation, which specifies the distribution of representative patch patterns. We apply a convolutional auto-encoder to learn the patch-level features, from overlapping image patches extracted from the MR images, to learn features from diffusion MR images of brain using an unsupervised approach. Our experimental results show that the bag of word representation using patch level features learnt by the auto encoder provides similar performance as that using the raw patch patterns, both significantly outperform earlier work relying on the mean values of MR metrics in selected brain regions.
翻译:轻微的创伤性脑损伤是一个日益严重的公共健康问题,在美国每年估计有170多万人受伤。诊断基于临床历史和症状,缺乏准确、具体的伤害计量方法。这项工作旨在直接传播创伤后一个月内获得的MR图像,通过采用深层学习技术来检测伤害。为了克服培训数据有限造成的挑战,我们用单词表达法描述每个大脑区域,该词表达法具体规定有代表性的补丁模式的分布。我们应用一个共生自动编码来学习补丁级特征,从从MR图像中提取的重叠图像补丁中学习,从使用不受监督的方法传播脑部的MR图像中学习特征。我们的实验结果显示,使用汽车编码器所学的补丁级特征的单词表达包提供了类似于使用原始补丁模式的类似性能,两者都大大超过某些脑部区域以前依靠MR公积值的平均值完成的工作。