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Automated supervised segmentation of anatomical fiber tracts using an AdaBoost framework

机译:使用AdaBoost框架自动监督解剖纤维束的分割

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Diffusion Magnetic Resonance Imaging (DMRI) can be used to reconstruct the main neural pathways in the brain, herein termed `fibers'. Segmentation of anatomical tracts out of full brain fiber-sets acquired by tractography can lead to a better understanding of white matter diseases. Hence, we developed an automatic segmentation tool based on a renowned, supervised, machine-learning framework, called Viola-Jones [1]. We applied the algorithm for tract segmentation, using simple physical, statistical and geometrical features that can characterize the tract's fibers such as length, location, variance, FFT coefficients etc. An AdaBoost based learning framework was applied in order to select the most discriminative set of features for the classification of fibers to different anatomical tracts. Linear combinations of such features were used to construct classifiers. Those classifiers were arranged in a cascade which efficiently filters out fibers that do not belong to the desired tract. The algorithm was applied on a training set consisting of brains obtained from the Human Connectome Project. A cascade was learned for three different tracts. Performance evaluation was done by calculating the dice coefficients for each of the tested brains, yielding a result of around 90% for the tracts under evaluation, indicating a successful segmentation of the tracts of the entire brain.
机译:扩散磁共振成像(DMRI)可用于重建大脑中的主要神经通路,此处称为“纤维”。通过束线照相术从完整的脑纤维集合中分割出解剖束可以更好地理解白质疾病。因此,我们基于著名的,受监督的机器学习框架Viola-Jones [1],开发了一种自动分割工具。我们使用简单的物理,统计和几何特征(可以描述束的长度,位置,方差,FFT系数等)来应用该算法进行束分割,并使用了基于AdaBoost的学习框架来选择最具区分性的用于将纤维分类到不同解剖结构的特征。这些特征的线性组合用于构造分类器。这些分类器以级联排列,可有效滤出不属于所需区域的纤维。将该算法应用于训练集,该训练集由从人类Connectome项目获得的大脑组成。学习了三个不同区域的级联。通过计算每个受测大脑的骰子系数来进行性能评估,得出被评估管道的结果大约为90%,这表明整个大脑的管道已成功分割。

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