Chaos to clarity: interpreting time series complexity metrics with an application to depression.

Sandip V George
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引用次数: 0

Abstract

There is an increasing understanding in recent years that mental health and psychiatric illnesses can be interpreted as complex dynamical systems. This understanding is largely derived from the complexity of dynamics that is observed in time series that are closely related to mental health. This complexity is quantified using a range of metrics from information theory and nonlinear time series analysis. Interpreting these metrics correctly and discerning how they vary as the nature of the dynamics changes is important to correctly identify the effect of mental illness. In this perspective article I attempt to do this, by first describing complexity of time series and the metrics that are used to quantify this complexity. I then analyze the behavior of these metrics as dynamics transition between periodicity, chaos and noise. Finally, I explore these changes in the context of depression by studying existing literature, and interpret what this implies for the nature of its underlying dynamics. There are divergent trends across studies and across domains such as actigraphy, EEG, and ECG. These findings emphasize the need for a nuanced interpretation of complexity metrics and their role in advancing our understanding of the nonlinear dynamics underlying mental health conditions like depression.

从混沌到清晰:用抑郁症的应用来解释时间序列复杂性指标。
近年来,人们越来越认识到心理健康和精神疾病可以被解释为复杂的动力系统。这种理解很大程度上源于在与心理健康密切相关的时间序列中观察到的动态的复杂性。使用信息论和非线性时间序列分析的一系列度量来量化这种复杂性。正确解释这些指标并辨别它们如何随着动态变化的性质而变化,对于正确识别精神疾病的影响非常重要。在这篇透视图文章中,我试图做到这一点,首先描述时间序列的复杂性和用于量化这种复杂性的度量。然后,我分析了这些指标作为周期性、混沌和噪声之间的动态转换的行为。最后,我通过研究现有文献来探索抑郁症背景下的这些变化,并解释这意味着其潜在动力的本质。在不同的研究和不同的领域,如活动描记、脑电图和心电图,有不同的趋势。这些发现强调需要对复杂性指标进行细致入微的解释,以及它们在促进我们对抑郁症等心理健康状况的非线性动力学的理解方面的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.90
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0.00%
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