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A Bayesian approach to inferring fiber tract bundle labels in Diffusion Tensor Imaging

机译:一种贝叶斯途径推断纤维束标签在扩散张量成像中

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Aiming for achieving anatomically meaningful results in automatic unsupervised clustering of reconstructed white matter (WM) fiber tracts in Diffusion Tensor Imaging (DTI), we present a Bayesian approach enabling to incorporate prior anatomical knowledge and handle outliers easily. Particularly, the distribution of WM fiber tracts is described by a Gaussian mixture model. By applying the Bayesian theorem, we are able to evaluate the posterior probability that a fiber tract belongs to each target bundle based on both the probability distribution and prior anatomical information. A fiber tract is labeled into a target bundle with which the maximum posterior probability occurs. If all calculated posterior probabilities are smaller than a user defined threshold, the fiber tract is labeled as an outlier. The prior anatomical information is represented by the target fiber tract bundles' prior distribution which can be obtained by anatomical studies and may be amended by further researches. The fact that this type of prior information is less dependent on individual brain structures than that in some existing methods makes this approach useful in group studies. Real DTI datasets are used to assess the performance of the method. Experimental results show that this technique is feasible and may have potential applications in group analysis of WM fiber tracts in DTI.
机译:旨在实现在扩散张量成像(DTI)中的重建白质(WM)纤维道的自动无监督聚类的解剖学上有意义的结果,我们展示了一种贝叶斯方法,使能够纳入先前的解剖知识并轻松处理异常值。特别地,通过高斯混合模型描述了WM光纤散射的分布。通过应用贝叶斯定理,我们能够基于概率分布和先前解剖信息来评估光纤道的后验概率属于每个目标束。将纤维道标记为最大后概率发生的目标束。如果所有计算出的后验概率小于用户定义的阈值,则光纤散则标记为异常值。先前的解剖信息由目标光纤束束的现有分布表示,该纤维可以通过解剖学研究获得,并且可以通过进一步的研究进行修改。这种类型的先前信息的事实依赖于个体脑结构,而不是一些现有方法使得这种方法在群体研究中有用。真实的DTI数据集用于评估方法的性能。实验结果表明,这种技术是可行的,并且可能对DTI中的WM纤维束进行群体分析中的潜在应用。

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