| Literature DB >> 35301376 |
Alexander V Lebedev1,2, Christoph Abé3, Kasim Acar3, Gustavo Deco4,5, Morten L Kringelbach6,7,8, Martin Ingvar3, Predrag Petrovic3,9.
Abstract
The stock market is a bellwether of socio-economic changes that may directly affect individual well-being. Using large-scale UK-biobank data generated over 14 years, we applied specification curve analysis to rigorously identify significant associations between the local stock market index (FTSE100) and 479,791 UK residents' mood, as well as their alcohol intake and blood pressure adjusting the results for a large number of potential confounders, including age, sex, linear and non-linear effects of time, research site, other stock market indexes. Furthermore, we found similar associations between FTSE100 and volumetric measures of affective brain regions in a subsample (n = 39,755; measurements performed over 5.5 years), which were particularly strong around phase transitions characterized by maximum volatility in the market. The main findings did not depend on applied effect-size estimation criteria (linear methods or mutual information criterion) and were replicated in two independent US-based studies (Parkinson's Progression Markers Initiative; n = 424; performed over 2.5 years and MyConnectome; n = 1; 81 measurements over 1.5 years). Our results suggest that phase transitions in the society, indexed by stock market, exhibit close relationships with human mood, health and the affective brain from an individual to population level.Entities:
Mesh:
Year: 2022 PMID: 35301376 PMCID: PMC8931098 DOI: 10.1038/s41598-022-08569-3
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.996
Figure 1Non-MRI variables and stock market moves. The figure illustrates the identified associations between stock market moves and non-MRI indicators of well-being in the UK Biobank sample (top panel A) and My Connectome data, a single-subject study (bottom panel B); *p < 0.05, **p < 0.01, ***p < 0.001. Corresponding effect-sizes estimated with mutual information criterion are reported in the supplement (Supplementary Table S11).
Subjective well-being and FTSE100 scores: 14 years period. β standardized β coefficients, p p-values corrected for multiple testing with false discovery rate. Subcomponents of negative emotions are binary variables (–), Day/MonthAVG data averaged by days and months. The analyses leveraged random linear mixed effects framework with subject as a random effect, as a subset (n = 1427) of the study subjects was assessed twice. *Corresponding effect-sizes estimated with mutual information criterion are reported in the supplement (Supplementary Table S11).
| Linear mixed-effects | Effect-sizes*, Pearson r (95% CI) | |||||
|---|---|---|---|---|---|---|
| Raw | DayAVG | MonthAVG | ||||
| NegEm (total) | − 0.03 | − 24.33 (37,671) | < 0.001 | − 0.034 (− 0.037, − 0.031) | − 0.396 (− 0.428, − 0.362) | − 0.591 (− 0.692, − 0.467) |
| Irritability | − 0.01 | − 5.86 (37,671) | < 0.001 | – | − 0.117 (− 0.155,− 0.078) | − 0.266 (− 0.418,− 0.099) |
| Sensitivity/hurt | − 0.04 | − 24.75(37,671) | < 0.001 | – | − 0.379 (− 0.412,− 0.345) | − 0.516 (− 0.632,− 0.378) |
| Nervous | − 0.01 | − 8.51 (37,671) | < 0.001 | – | − 0.264 (− 0.300,− 0.228) | − 0.508 (− 0.625,− 0.368) |
| Worrier/anxious | − 0.02 | − 10.9 (37,671) | < 0.001 | – | − 0.287 (− 0.322,− 0.25) | − 0.444 (− 0.572,− 0.294) |
| Happiness | 0.04 | 19.81 (15,633) | < 0.001 | 0.052 (0.047,0.056) | 0.247 (0.204,0.288) | 0.556 (0.406,0.677) |
Figure 2Studied brain-market associations. The figure illustrates the study rationale and reports the investigated effects for the main sample (A), as well as their replication (B) in a medium-sized (PPMI) and single-subject (My Connectome) fMRI study; *p < 0.05, ***p < 0.001. Raw-individual measures without day-averaging.
Associations between FTSE100 and structural characteristics of the fear network: cortical and subcortical volumes. Day/MonthAVG data averaged over days and months. Intracranial volume (ICV) was selected as a reference measure, which was not expected to exhibit significant associations with global stock market behaviour. β standardized β coefficients, p p-values corrected for multiple testing with false discovery rate. The analyses leveraged random linear mixed effects framework with subject as a random effect, as a subset (n = 1427) of the study subjects was scanned twice. *corresponding effect sizes estimated with the mutual information criterion are reported in the supplement (Supplementary Table S11).
| Region | Linear mixed-effects | Effect-sizes*, Pearson r (95% CI) | ||||
|---|---|---|---|---|---|---|
| Raw, | DayAVG, | MonthAVG, | ||||
| L amygdala | − 0.054 | − 9.51 | < 0.001 | − 0.055 (− 0.066, − 0.043) | − 0.253 (− 0.304, − 0.202) | − 0.615 (− 0.746, − 0.439) |
| R amygdala | − 0.062 | − 10.91 | < 0.001 | − 0.063 (− 0.074, − 0.052) | − 0.282 (− 0.332, − 0.231) | − 0.644 (− 0.767, − 0.477) |
| L accumbens | − 0.054 | − 9.54 | < 0.001 | − 0.055 (− 0.066 ,− 0.044) | − 0.232 (− 0.283, − 0.18) | − 0.623 (− 0.752, − 0.449) |
| R accumbens | − 0.062 | − 10.89 | < 0.001 | − 0.064 (− 0.075, − 0.052) | − 0.259 (− 0.309, − 0.207) | − 0.662 (− 0.779, − 0.5) |
| L LOFC | − 0.026 | − 4.68 | < 0.001 | − 0.031 (− 0.042, − 0.02) | − 0.141 (− 0.193, − 0.087) | − 0.443 (− 0.619, − 0.225) |
| R LOFC | − 0.019 | − 3.49 | 0.001 | − 0.023 (− 0.034, − 0.012) | − 0.082 (− 0.136, − 0.028) | − 0.292 (− 0.499, − 0.054) |
| L insula | 0.037 | 6.62 | < 0.001 | 0.042 (0.031, 0.053) | 0.21 (0.157, 0.261) | 0.494 (0.286, 0.657) |
| R insula | 0.032 | 5.86 | < 0.001 | 0.037 (0.026, 0.048) | 0.187 (0.134, 0.239) | 0.413 (0.19, 0.595) |
| L subcallosal | 0.018 | 3.18 | 0.002 | 0.02 (0.009, 0.032) | 0.134 (0.08, 0.187) | 0.322 (0.087, 0.524) |
| R subcallosal | 0.015 | 2.74 | 0.008 | 0.019 (0.007, 0.03) | 0.129 (0.075, 0.182) | 0.305 (0.068, 0.509) |
| L anterior cingulate | 0.025 | 4.67 | < 0.001 | 0.035 (0.024, 0.046) | 0.178 (0.124, 0.23) | 0.408 (0.184, 0.591) |
| R anterior cingulate | 0.024 | 4.44 | < 0.001 | 0.033 (0.022, 0.044) | 0.169 (0.116, 0.222) | 0.428 (0.207, 0.607) |
| L paracingulate | 0.004 | 0.8 | 0.426 | 0.001 (− 0.01, 0.013) | 0.044 (− 0.01, 0.098) | 0.106 (− 0.14, 0.339) |
| R paracingulate | 0.005 | 0.83 | 0.426 | 0.003 (− 0.008, 0.014) | 0.052 (− 0.003, 0.106) | 0.122 (− 0.124, 0.353) |
| Intracranial volume | 0.004 | 0.87 | 0.426 | − 0.009 (− 0.02, 0.002) | − 0.016 (− 0.07, 0.038) | − 0.098 (− 0.332, 0.147) |
Figure 3Regional profile of brain-market associations. (A) Three-dimensional view of the significant associations (pFDR < 0.05). FTSE100 exhibited negative associations with amygdala, nucleus accumbens and orbitofrontal cortex (B), whereas insular and cingulate regions were positively associated with the index scores (C). The analyses leveraged random linear mixed effects framework with subject as a random effect, as a subset (n = 1427) of the study subjects was scanned twice.
Figure 4Pattern of brain-market associations for different capital market indexes. Strongest associations were found for the UK market index (FTSE100). Japanese and Singapore and Hong Kong indexes also exhibited a similar pattern of associations possibly reflecting socioeconomic and geographic similarity with the UK, whereas Dow Jones Industrial Average (DJA) likely reflects major contribution of the United States to the world economy. Chinese index (preregistered as a reference) had one of the weakest associations with the studied volumetric measures. FTSE100-IND correlations: Pearson correlation of FTSE100 with other investigated indexes. The analyses leveraged random linear mixed effects framework with subject as a random effect, as a subset (n = 1427) of the study subjects was scanned twice.
Figure 5Pearson correlations for the brain and FTSE100-lagged data averaged over days. Transparent lines represent individual regions whereas thick lines represent medians of the correlations. Dotted boundaries represent critical r-values for α = 0.001. The plot represents magnitudes of associations between brain data at the date of scanning and the FTSE100 index shifted forward (right) and backward (left) in time. Note a reversed peak for earlier dates reflective of autocorrelations.
Figure 6Noise simulation experiments and autocorrelation function density plots. Left: Uniform and gaussian noise simulations failed to produce the effect sizes of equivalent (root-squared) magnitude to the one found in the present study (top). However, 1/f noise was capable of inducing such associations (bottom). Note that we intentionally used root-squared estimates to illustrate these effects. Without this step, all of the estimates from multiple noise simulations converge to zero (Supplementary Fig. S12), unlike the reported results showing consistent directionality in different time-bins and three independent samples. Right: Autocorrelation function (ACF) density plots demonstrating scale-free properties of the stock market data most similar to the ones of 1/f noise (pink and red).