Thomas Michael S C, Forrester Neil A, Ronald Angelica
Developmental Neurocognition Lab, Birkbeck, University of London.
Cogn Sci. 2016 Jan;40(1):51-99. doi: 10.1111/cogs.12230. Epub 2015 Apr 3.
In the multidisciplinary field of developmental cognitive neuroscience, statistical associations between levels of description play an increasingly important role. One example of such associations is the observation of correlations between relatively common gene variants and individual differences in behavior. It is perhaps surprising that such associations can be detected despite the remoteness of these levels of description, and the fact that behavior is the outcome of an extended developmental process involving interaction of the whole organism with a variable environment. Given that they have been detected, how do such associations inform cognitive-level theories? To investigate this question, we employed a multiscale computational model of development, using a sample domain drawn from the field of language acquisition. The model comprised an artificial neural network model of past-tense acquisition trained using the backpropagation learning algorithm, extended to incorporate population modeling and genetic algorithms. It included five levels of description-four internal: genetic, network, neurocomputation, behavior; and one external: environment. Since the mechanistic assumptions of the model were known and its operation was relatively transparent, we could evaluate whether cross-level associations gave an accurate picture of causal processes. We established that associations could be detected between artificial genes and behavioral variation, even under polygenic assumptions of a many-to-one relationship between genes and neurocomputational parameters, and when an experience-dependent developmental process interceded between the action of genes and the emergence of behavior. We evaluated these associations with respect to their specificity (to different behaviors, to function vs. structure), to their developmental stability, and to their replicability, as well as considering issues of missing heritability and gene-environment interactions. We argue that gene-behavior associations can inform cognitive theory with respect to effect size, specificity, and timing. The model demonstrates a means by which researchers can undertake multiscale modeling with respect to cognition and develop highly specific and complex hypotheses across multiple levels of description.
在发展认知神经科学这个多学科领域中,不同描述层次之间的统计关联正发挥着越来越重要的作用。此类关联的一个例子是观察到相对常见的基因变异与行为个体差异之间的相关性。尽管这些描述层次之间存在距离,而且行为是一个涉及整个生物体与多变环境相互作用的漫长发育过程的结果,但能检测到这种关联或许令人惊讶。鉴于已经检测到了这些关联,那么它们如何为认知层面的理论提供信息呢?为了研究这个问题,我们采用了一个多尺度发育计算模型,使用了从语言习得领域选取的一个样本领域。该模型包括一个使用反向传播学习算法训练的过去式习得人工神经网络模型,并扩展到纳入群体建模和遗传算法。它包括五个描述层次——四个内部层次:基因、网络、神经计算、行为;以及一个外部层次:环境。由于模型的机制假设是已知的,并且其操作相对透明,我们可以评估跨层次关联是否准确描绘了因果过程。我们确定,即使在基因与神经计算参数之间存在多对一关系的多基因假设下,以及当一个依赖经验的发育过程在基因作用与行为出现之间起中介作用时,也能检测到人工基因与行为变异之间的关联。我们从特异性(针对不同行为、针对功能与结构)、发育稳定性、可重复性等方面评估了这些关联,同时也考虑了缺失遗传力和基因 - 环境相互作用等问题。我们认为基因 - 行为关联可以在效应大小、特异性和时间方面为认知理论提供信息。该模型展示了一种研究人员可以针对认知进行多尺度建模并在多个描述层次上提出高度具体和复杂假设的方法。