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Spatio-temporal fuzzy clustering of functional magnetic resonance imaging data.

机译:功能磁共振成像数据的时空模糊聚类。

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Magnetic resonance imaging (MRI) is a preferred imaging modality due to its high resolution images of in vivo tissue. Functional MRI (fMRI) infers organ function using blood flow intensities. However, multiple response models for hemodynamics and, more specifically, neural activation, contend for widespread adoption. Development of models, imaging techniques and various types of noise compound problems in analysis and motivate the use of exploratory data analysis to elicit intrinsic data structure. This work demonstrates the utility and efficacy of a novel exploratory data analysis technique derived from a robust, unsupervised learning method, fuzzy C-means (FCM). The algorithm, designated FCM with feature partitions (FCMP), integrates feature relationships in the clustering process. One feature relation not widely exploited in fMRI analysis is the high probability that temporally similar time courses are also spatially proximal. FCMP has exploited this relation to generate both novel and robust data inferences. Both synthetic and in vivo fMRI data are examined. FCMP is compared to benchmarks from industry and academia, including FCM, cluster merging, CHAMELEON and EvIdentRTM. Ten distinct experiments examine aspects of FCMP with respect to fMRI analysis, in particular, means to integrate distinct feature subsets and feature relationships, sample membership in regions of interest, use of validation indices for fMRI, and data-driven global thresholding. Efficacy of FCMP for fMRI analysis is shown in terms of noise reduction, statistical specificity, and discovery of novel spatial relations between time courses in regions of interest.
机译:由于磁共振成像(MRI)具有体内组织的高分辨率图像,因此是一种优选的成像方式。功能性MRI(fMRI)使用血流强度推断器官功能。然而,针对血液动力学尤其是神经激活的多种反应模型争相被广泛采用。在分析中开发模型,成像技术和各种类型的噪声复合问题,并激发探索性数据分析的使用,以得出固有的数据结构。这项工作证明了一种新颖的探索性数据分析技术的效用和功效,该技术源自一种健壮的,无监督的学习方法,模糊C均值(FCM)。该算法称为带有特征分区的FCM(FCMP),它在聚类过程中集成了特征关系。在功能磁共振成像分析中未被广泛利用的一个特征关系是,时间相似的时程在空间上也很接近。 FCMP利用这种关系来生成新颖而可靠的数据推论。合成和体内功能磁共振成像数据都经过检查。将FCMP与行业和学术界的基准进行比较,包括FCM,集群合并,CHAMELEON和EvIdentRTM。十个不同的实验检查了关于fMRI分析的FCMP方面,特别是整合不同特征子集和特征关系,感兴趣区域中的样本成员,使用fMRI验证指标以及数据驱动的全局阈值化的手段。 FCMP在功能磁共振成像分析中的功效从降噪,统计特异性以及在感兴趣区域的时程之间发现新颖的空间关系方面表现出来。

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