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Classification As a Criterion to Select Model Order For Dynamic Functional Connectivity States in Rest-fMRI Data

机译:分类作为选择剩余功能磁共振成像数据中动态功能连通性状态的模型顺序的标准

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Currently, there is extensive research ongoing to analyze the dynamics of brain connectivity in resting fMRI data. In such approaches, there is often a selection of the number of connectivity states which are present within the data. Typically, an order selection approach such as the elbow criteria is used for this when time-varying connectivity estimates are acquired using sliding-window approach and clustered using k-means algorithm. In this work we evaluate the benefits of using classification (e.g. of patients versus controls) as a criterion for evaluating the optimal number of states (or clusters). We compare different classification strategies to perform the classification while optimizing for the number of clusters (selected via a k-means approach). In our approach, we compute cross-validated classification accuracy and variability at different numbers of states for healthy control (HC) versus schizophrenia (SZ) patients. Consistent with our earlier reports, we find improvement in classification performance when dynamic connectivity measures are combined with static connectivity measures. We also show that the model order at which maximal classification accuracy is obtained (four dynamic states for this data) can be different from the order obtained using standard k-means model order selection methods (that result in five states for the data at hand) across different combinations of features trained. We also investigate if additional information from hierarchical clustering of first level states can contribute to the performance of classification accuracy and observe no evidence for additional sub-clusters in short 5-minute resting scans. In sum, the results suggest the use of classification accuracy as a promising metric for selecting the number of states in a dynamic connectivity analysis.
机译:当前,正在进行大量研究来分析静息fMRI数据中的大脑连通性动力学。在这样的方法中,通常选择数据中存在的连接状态的数量。通常,当使用滑动窗口方法获取随时间变化的连接估计并使用k-means算法进行聚类时,将使用诸如肘标准之类的顺序选择方法。在这项工作中,我们评估了使用分类(例如患者与对照组)作为评估最佳状态(或集群)数量的标准的好处。我们比较了不同的分类策略来执行分类,同时优化聚类的数量(通过k均值方法选择)。在我们的方法中,我们计算出健康对照(HC)与精神分裂症(SZ)患者在不同状态数下的交叉验证分类准确性和变异性。与我们之前的报告一致,我们发现将动态连通性度量与静态连通性度量结合使用时,分类性能得到改善。我们还表明,获得最大分类精度的模型顺序(此数据的四个动态状态)可能与使用标准k均值模型顺序选择方法获得的模型顺序(导致手头数据的五个状态)不同。跨受过训练的功能的不同组合。我们还调查了来自第一级状态的层次聚类的其他信息是否可以有助于分类准确性的表现,并且在短短的5分钟静息扫描中没有观察到其他子类的证据。总而言之,结果表明使用分类精度作为在动态连通性分析中选择状态数的有前途的度量标准。

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