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Identifying mild traumatic brain injury patients from MR images using bag of visual words

机译:使用袋子的视觉词语鉴定MR图像的轻度创伤性脑损伤患者

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Mild traumatic brain injury (mTBI) is a growing public health problem with an estimated incidence of one million people annually in US. Neurocognitive tests are used to both assess the patient condition and to monitor the patient progress. This work aims to directly use MR images taken shortly after injury to detect whether a patient suffers from mTBI, by incorporating machine learning and computer vision techniques to learn features suitable discriminating between mTBI and normal patients. We focus on 3 regions in brain, and extract multiple patches from them, and use bag-of-visual-word technique to represent each subject as a histogram of representative patterns derived from patches from all training subjects. After extracting the features, we use greedy forward feature selection, to choose a subset of features which achieves highest accuracy. We show through experimental studies that BoW features perform better than the simple mean value features which were used previously.
机译:轻度创伤性脑损伤(MTBI)是一个日益增长的公共卫生问题,在美国每年估计每年百万分之一的发病率。神经认知测试用于评估患者状况并监测患者进展。这项工作旨在直接使用伤害后不久的MR图像来检测患者是否患有MTBI,通过结合机器学习和计算机视觉技术来学习合适的MTBI和正常患者之间的特征。我们专注于大脑中的3个区域,并从它们中提取多个贴片,并使用袋 - 视觉词技术来表示每个受试者作为来自所有训练主题的斑块的代表性模式的直方图。在提取功能后,我们使用贪婪的前向功能选择,选择实现最高精度的功能子集。我们通过实验研究表明,弓形特征比以前使用的简单平均值特征更好。

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