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Stable between‐subject statistical inference from unstable within‐subject functional connectivity estimates

机译:从不稳定的受试者内部功能连接性估计得出稳定的受试者间统计推断

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摘要

Spatial or temporal aspects of neural organization are known to be important indices of how cognition is organized. However, measurements and estimations are often noisy and many of the algorithms used are probabilistic, which in combination have been argued to limit studies exploring the neural basis of specific aspects of cognition. Focusing on static and dynamic functional connectivity estimations, we propose to leverage this variability to improve statistical efficiency in relating these estimations to behavior. To achieve this goal, we use a procedure based on permutation testing that provides a way of combining the results from many individual tests that refer to the same hypothesis. This is needed when testing a measure whose value is obtained from a noisy process, which can be repeated multiple times, referred to as replications. Focusing on functional connectivity, this noisy process can be: (a) computational, for example, when using an approximate inference algorithm for which different runs can produce different results or (b) observational, if we have the capacity to acquire data multiple times, and the different acquired data sets can be considered noisy examples of some underlying truth. In both cases, we are not interested in the individual replications but on the unobserved process generating each replication. In this note, we show how results can be combined instead of choosing just one of the estimated models. Using both simulations and real data, we show the benefits of this approach in practice.
机译:已知神经组织的空间或时间方面是认知如何组织的重要指标。但是,测量和估计通常比较嘈杂,并且所使用的许多算法都是概率性的,已被认为限制了探索认知特定方面的神经基础的研究。着重于静态和动态功能连接性估计,我们建议利用此可变性来提高将这些估计与行为相关联的统计效率。为了实现此目标,我们使用了基于置换检验的过程,该过程提供了一种方法,可以将来自多个引用相同假设的单个检验的结果进行组合。在测试其值是从有噪声的过程中获得的,可以重复多次(称为重复)的度量时,这是必需的。着眼于功能连接性,这种嘈杂的过程可能是:(a)计算,例如,当使用近似推理算法时,不同的运行可能会产生不同的结果,或者(b)观测,如果我们有能力多次获取数据,并且获得的不同数据集可被视为某些基本事实的嘈杂示例。在这两种情况下,我们都不会对单个复制感兴趣,而对生成每个复制的未观察到的过程感兴趣。在本说明中,我们展示了如何将结果组合起来,而不是仅选择一种估计模型。通过使用仿真和实际数据,我们在实践中展示了这种方法的好处。

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