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首页> 外文期刊>Annals of Biomedical Engineering: The Journal of the Biomedical Engineering Society >Time-Resolved Directional Brain-Heart Interplay Measurement Through Synthetic Data Generation Models
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Time-Resolved Directional Brain-Heart Interplay Measurement Through Synthetic Data Generation Models

机译:通过合成数据生成模型进行时间解决方向脑心脏相互作用

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摘要

Although a plethora of synthetic data generation models have been proposed to validate biomarkers of brain and cardiovascular dynamics separately, a limited number of computational methods estimating directed brain-heart information flow are currently available in the scientific literature. This study introduces a computational framework exploiting existing generative models for a novel time-resolved quantification of causal brain-heart interplay. Exemplarily, having electroencephalographic signals and heart rate variability series as inputs, respective synthetic data models are coupled through parametrised functions defined in accordance with current central autonomic network (CAN) knowledge. We validate this concept using data from 30 healthy volunteers undergoing notable sympathetic elicitation through a cold-pressor test, and further compare the obtained results with a state-of-the-art method as maximal information coefficient. Although our findings are in agreement with previous CAN findings, we report new insights into the role of fronto-parietal region activity and lateralisation mechanisms over the temporal cortices during prolonged peripheral elicitation, which occur with specific time delays. Additionally, the afferent autonomic outflow maps to brain oscillations in the and bands, whereas complementary cortical dynamics in the , , and bands act on efferent autonomic control. The proposed framework paves the way towards novel biomarker definitions for the assessment of complex physiological networks using existing data generation models for brain and peripheral dynamics.
机译:尽管已经提出了一种血清的合成数据生成模型,以便分别验证脑和心血管动力学的生物标志物,但是在科学文献中目前可获得有限数量的计算方法估算指导的脑心信息流。本研究介绍了一种用于利用现有的生成模型的计算框架,以便新颖的因果脑 - 心脏相互作用进行新的时间分辨量化。示例性地,具有脑电信号和心率变化序列作为输入,相应的合成数据模型通过根据当前中央自主网络(CAN)知识定义的参数化功能来耦合。我们使用来自30个健康志愿者的数据通过冷压力测试进行了显着的交感神经诱导的数据来验证这一概念,并进一步将所得结果与最先进的方法进行比较,作为最大信息系数。虽然我们的调查结果与以前的罐头结果一致,但我们向长时间外周诱导期间对颞叶片的作用和侧向机制的作用报告了新的见解,延长了外周诱导,这发生了特定的时间延迟。另外,传入自主流出地图和频段的脑振荡地图,而互补的皮质动态和频段作用于传出自主控制。拟议的框架为使用现有数据生成模型进行大脑和外围动力学评估复杂生理网络的新型生物标志定义。

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