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Dynamical Cluster Analysis for the Detection of Microglia Activation

机译:用于检测小胶质细胞活化的动态聚类分析

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摘要

Dynamical cluster analysis (DCA) was used to extract sets of representative time courses to detect brain lesions using positron emmision tomography (PET) data. DCA is an adaptive hard-clustering algorithm where the number of clusters k is not initially fixed but is dynamically changed by generation and fusion of clusters during runtime. We analyzed PET data sets of 9 patients applying DCA repeatedly. We compared the results that vary in the number of clusters even on the same data set. As validation measure we used the mean square quantization error (MSQE). We found that the MSQE was strictly correlated with k only on 4 of the 9 data sets. We propose DCA for extracting the reference time course required in reference tissue modeling. In the case of one patient, we checked the ability of DCA to characterize directly the three most interesting regions, reference tissue, the veins and the lesion and how this ability relates to high validation scores. The characterisation of all three regions was not reproducible in all of the runs, however, runs rated high in validity by the MSQE were able to reproduce all the three regions.
机译:动态聚类分析(DCA)用于提取具有代表性的时程集,以使用正电子放射断层扫描(PET)数据检测脑部病变。 DCA是一种自适应硬聚类算法,其中簇数k最初不是固定的,而是在运行时通过簇的生成和融合而动态变化的。我们分析了9例反复应用DCA的患者的PET数据集。我们比较了即使在同一数据集上簇数也不同的结果。作为验证措施,我们使用了均方量化误差(MSQE)。我们发现,仅在9个数据集中的4个上,MSQE与k严格相关。我们建议使用DCA提取参考组织建模所需的参考时间过程。对于一名患者,我们检查了DCA直接表征三个最有趣区域(参考组织,静脉和病变)的能力,以及该能力与高验证分数的关系。这三个区域的特征在所有运行中均不可重现,但是,MSQE评定其有效性较高的运行能够复制所有三个区域。

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