International Journal of Bipolar Disorders | |
The futility of long-term predictions in bipolar disorder: mood fluctuations are the result of deterministic chaotic processes | |
Maxine Mowete1  Martin Alda2  Abigail Ortiz3  Benoit H. Mulsant3  Stephane MacLean4  Claire Slaney5  Julie Garnham5  Kamil Bradler6  | |
[1] Department of Electrical Engineering, University of Ottawa, Ottawa, ON, Canada;Department of Psychiatry, Dalhousie University, Halifax, NS, Canada;National Institute of Mental Health, Klecany, Czech Republic;Department of Psychiatry, University of Toronto, Toronto, ON, Canada;Centre for Addiction & Mental Health, CAMH 100 Stokes St., Rm 4229, M6J 1H4, Toronto, ON, Canada;Institute for Mental Health Research, The Royal Ottawa Hospital, Ottawa, ON, Canada;Nova Scotia Health Authority, Halifax, NS, Canada;ORCA Quantum Computing, Toronto, ON, Canada; | |
关键词: Bipolar disorder; Mood fluctuations; Nonlinear analyses; Episode prediction; Unaffected first-degree relatives; | |
DOI : 10.1186/s40345-021-00235-3 | |
来源: Springer | |
【 摘 要 】
BackgroundUnderstanding the underlying architecture of mood regulation in bipolar disorder (BD) is important, as we are starting to conceptualize BD as a more complex disorder than one of recurring manic or depressive episodes. Nonlinear techniques are employed to understand and model the behavior of complex systems. Our aim was to assess the underlying nonlinear properties that account for mood and energy fluctuations in patients with BD; and to compare whether these processes were different in healthy controls (HC) and unaffected first-degree relatives (FDR). We used three different nonlinear techniques: Lyapunov exponent, detrended fluctuation analysis and fractal dimension to assess the underlying behavior of mood and energy fluctuations in all groups; and subsequently to assess whether these arise from different processes in each of these groups.ResultsThere was a positive, short-term autocorrelation for both mood and energy series in all three groups. In the mood series, the largest Lyapunov exponent was found in HC (1.84), compared to BD (1.63) and FDR (1.71) groups [F (2, 87) = 8.42, p < 0.005]. A post-hoc Tukey test showed that Lyapunov exponent in HC was significantly higher than both the BD (p = 0.003) and FDR groups (p = 0.03). Similarly, in the energy series, the largest Lyapunov exponent was found in HC (1.85), compared to BD (1.76) and FDR (1.67) [F (2, 87) = 11.02; p < 0.005]. There were no significant differences between groups for the detrended fluctuation analysis or fractal dimension.ConclusionsThe underlying nature of mood variability is in keeping with that of a chaotic system, which means that fluctuations are generated by deterministic nonlinear process(es) in HC, BD, and FDR. The value of this complex modeling lies in analyzing the nature of the processes involved in mood regulation. It also suggests that the window for episode prediction in BD will be inevitably short.
【 授权许可】
CC BY
【 预 览 】
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