Department of Electrical Engineering, Eindhoven University of Technology, Groene Loper 19, 5612, AP Eindhoven, the Netherlands.
Department of Electrical Engineering, Eindhoven University of Technology, Groene Loper 19, 5612, AP Eindhoven, the Netherlands.
Comput Biol Med. 2020 Dec;127:104055. doi: 10.1016/j.compbiomed.2020.104055. Epub 2020 Oct 15.
Several studies claim that listening to Mozart music affects cognition and can be used to treat neurological conditions like epilepsy. Research into this Mozart effect has not addressed how dynamic interactions between brain networks, i.e. effective connectivity, are affected. The Granger-causality analysis is often used to infer effective connectivity. First, we investigate if a new method, Bayesian topology identification, can be used as an alternative. Both methods are evaluated on simulation data, where the Bayesian method outperforms the Granger-causality analysis in the inference of connectivity graphs of dynamic networks, especially for short data lengths. In the second part, the Bayesian method is extended to enable the inference of changes in effective connectivity between groups of subjects. Next, we apply both methods to fMRI scans of 16 healthy subjects, who were scanned before and after the exposure to Mozart's sonata K448 at least 2 hours a day for 7 days. Here, we investigate if the effective connectivity of the subjects significantly changed after listening to Mozart music. The Bayesian method detected changes in effective connectivity between networks related to cognitive processing and control in the connection from the central executive to the superior sensori-motor network, in the connection from the posterior default mode to the fronto-parietal right network, and in the connection from the anterior default mode to the dorsal attention network. This last connection was only detected in a subgroup of subjects with a longer listening duration. Only in this last connection, an effect was found by the Granger-causality analysis.
一些研究声称,听莫扎特音乐可以影响认知,并可用于治疗癫痫等神经疾病。但针对这种莫扎特效应的研究并未涉及大脑网络之间的动态相互作用,即有效连通性,是如何受到影响的。格兰杰因果关系分析经常被用来推断有效连通性。首先,我们研究一种新方法,贝叶斯拓扑识别,是否可以作为替代方法。这两种方法都在模拟数据上进行了评估,贝叶斯方法在推断动态网络的连通图方面优于格兰杰因果关系分析,尤其是在数据长度较短的情况下。在第二部分,我们将贝叶斯方法扩展到能够推断组间有效连通性的变化。接下来,我们将这两种方法应用于 16 名健康受试者的 fMRI 扫描,这些受试者在至少 2 天每天暴露于莫扎特奏鸣曲 K448 之前和之后接受扫描。在这里,我们研究受试者在听莫扎特音乐后是否有效连通性发生了变化。贝叶斯方法检测到与认知处理和控制相关的网络之间的有效连通性的变化,连接从中枢执行网络到上感觉运动网络,从后默认模式网络到额顶右网络,从前默认模式网络到背侧注意网络。在连接到背侧注意网络的连接中,只有在后默认模式网络中检测到这种变化。这种连接仅在一组听音乐时间较长的受试者中检测到。只有在后一种连接中,格兰杰因果关系分析发现了一种效应。