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Discovering Brain Mechanisms Using Network Analysis and Causal Modeling

机译:使用网络分析和因果模型发现大脑机制

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摘要

Mechanist philosophers have examined several strategies scientists use for discovering causal mechanisms in neuroscience. Findings about the anatomical organization of the brain play a central role in several such strategies. Little attention has been paid, however, to the use of network analysis and causal modeling techniques for mechanism discovery. In particular, mechanist philosophers have not explored whether and how these strategies incorporate information about the anatomical organization of the brain. This paper clarifies these issues in the light of the distinction between structural, functional and effective connectivity. Specifically, we examine two quantitative strategies currently used for causal discovery from functional neuroimaging data: dynamic causal modeling and probabilistic graphical modeling. We show that dynamic causal modeling uses findings about the brain’s anatomical organization to improve the statistical estimation of parameters in an already specified causal model of the target brain mechanism. Probabilistic graphical modeling, in contrast, makes no appeal to the brain’s anatomical organization, but lays bare the conditions under which correlational data suffice to license reliable inferences about the causal organization of a target brain mechanism. The question of whether findings about the anatomical organization of the brain can and should constrain the inference of causal networks remains open, but we show how the tools supplied by graphical modeling methods help to address it.
机译:机械主义哲学家研究了科学家用来发现神经科学因果机制的几种策略。关于大脑解剖结构的发现在几种此类策略中起着核心作用。然而,很少有人关注将网络分析和因果建模技术用于机制发现。尤其是,机械哲学家尚未探索这些策略是否以及如何结合有关大脑解剖结构的信息。本文根据结构,功能和有效连接之间的区别澄清了这些问题。具体来说,我们研究了目前用于从功能性神经影像数据中发现因果关系的两种定量策略:动态因果关系建模和概率图形建模。我们显示动态因果模型利用关于大脑解剖组织的发现来改善目标脑机制已经指定的因果模型中参数的统计估计。相比之下,概率图形建模对大脑的解剖组织没有吸引力,但为相关数据足以许可有关目标大脑机制的因果组织的可靠推断奠定了条件。关于大脑解剖结构的发现是否能够并且应该限制因果网络的推断的问题仍然悬而未决,但是我们展示了图形建模方法提供的工具如何帮助解决这一问题。

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