Scagliarini Tomas, Sparacino Laura, Faes Luca, Marinazzo Daniele, Stramaglia Sebastiano
Dipartimento di Fisica e Astronomia G. Galilei, Università degli Studi di Padova, Padova, Italy.
Dipartimento di Ingegneria, Università di Palermo, Palermo, Italy.
Front Netw Physiol. 2024 Jan 9;3:1335808. doi: 10.3389/fnetp.2023.1335808. eCollection 2023.
The study of high order dependencies in complex systems has recently led to the introduction of statistical synergy, a novel quantity corresponding to a form of emergence in which patterns at large scales are not traceable from lower scales. As a consequence, several works in the last years dealt with the synergy and its counterpart, the redundancy. In particular, the O-information is a signed metric that measures the balance between redundant and synergistic statistical dependencies. In spite of its growing use, this metric does not provide insight about the role played by low-order scales in the formation of high order effects. To fill this gap, the framework for the computation of the O-information has been recently expanded introducing the so-called gradients of this metric, which measure the irreducible contribution of a variable (or a group of variables) to the high order informational circuits of a system. Here, we review the theory behind the O-information and its gradients and present the potential of these concepts in the field of network physiology, showing two new applications relevant to brain functional connectivity probed via functional resonance imaging and physiological interactions among the variability of heart rate, arterial pressure, respiration and cerebral blood flow.
近年来,对复杂系统中高阶依赖性的研究催生了统计协同作用这一概念,它是一种新型的量,对应于一种涌现形式,即大尺度上的模式无法从低尺度追溯而来。因此,过去几年有多项研究探讨了协同作用及其对应物——冗余性。特别地,O信息是一种有符号度量,用于衡量冗余和协同统计依赖性之间的平衡。尽管它的应用越来越广泛,但该度量并未深入揭示低阶尺度在高阶效应形成过程中所起的作用。为填补这一空白,最近扩展了O信息的计算框架,引入了所谓的该度量的梯度,它衡量一个变量(或一组变量)对系统高阶信息回路的不可约贡献。在此,我们回顾O信息及其梯度背后的理论,并展示这些概念在网络生理学领域的潜力,介绍与通过功能磁共振成像探测的脑功能连接以及心率、动脉血压、呼吸和脑血流量变异性之间的生理相互作用相关的两个新应用。