| Literature DB >> 31974390 |
Thomas F Varley1,2,3,4, Andrea I Luppi5,6, Ioannis Pappas5,6,7, Lorina Naci8,9, Ram Adapa5, Adrian M Owen9, David K Menon5,10, Emmanuel A Stamatakis5,6.
Abstract
The brain is possibly the most complex system known to mankind, and its complexity has been called upon to explain the emergence of consciousness. However, complexity has been defined in many ways by multiple different fields: here, we investigate measures of algorithmic and process complexity in both the temporal and topological domains, testing them on functional MRI BOLD signal data obtained from individuals undergoing various levels of sedation with the anaesthetic agent propofol, replicating our results in two separate datasets. We demonstrate that the various measures are differently able to discriminate between levels of sedation, with temporal measures showing higher sensitivity. Further, we show that all measures are strongly related to a single underlying construct explaining most of the variance, as assessed by Principal Component Analysis, which we interpret as a measure of "overall complexity" of our data. This overall complexity was also able to discriminate between levels of sedation and serum concentrations of propofol, supporting the hypothesis that consciousness is related to complexity - independent of how the latter is measured.Entities:
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Year: 2020 PMID: 31974390 PMCID: PMC6978464 DOI: 10.1038/s41598-020-57695-3
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
The values for all the complexity measures, temporal and spatial, for Dataset A.
| LZ | SampEnt | PCA | Hurst | Higuchi | AlgConn | LZ | Serum Propofol | |
|---|---|---|---|---|---|---|---|---|
| Awake | 0.967 ± 0.013 | 0.662 ± 0.013 | 28.5 ± 7.771 | 0.764 ± 0.009 | 0.867 ± 0.015 | 470.433 ± 73.893 | 375316.786 ± 4256.981 | N/A |
| Mild | 0.962 ± 0.012 | 0.654 ± 0.01 | 27.429 ± 7.5 | 0.769 ± 0.008 | 0.864 ± 0.013 | 436.068 ± 70.707 | 375353.214 ± 3931.755 | 286.025 ± 133.599 |
| Moderate | 0.939 ± 0.028 | 0.626 ± 0.035 | 26.286 ± 7.314 | 0.778 ± 0.013 | 0.842 ± 0.025 | 362.762 ± 85.815 | 372431.071 ± 4277.4 | 626.126 ± 249.869 |
The values for all the complexity measures, temporal and spatial, for Dataset B.
| LZ | SampEnt | PCA | Hurst | Higuchi | AlgConn | LZ | |
|---|---|---|---|---|---|---|---|
| Awake | 0.967 ± 0.018 | 0.659 ± 0.017 | 45.812 ± 2.744 | 0.738 ± 0.008 | 0.981 ± 0.011 | 4693.704 ± 826.809 | 372236.562 ± 3794.728 |
| Deep | 0.938 ± 0.05 | 0.636 ± 0.038 | 40.625 ± 4.702 | 0.749 ± 0.016 | 0.963 ± 0.03 | 3787.616 ± 1338.374 | 367313.125 ± 8565.381 |
Figure 1The correlation matrices between all the different metrics for Datasets A and B. All entries along the diagonal have been removed. There are some typical patterns: the graph measures (LZ_Graph and Algebraic Connectivity are both generally more highly correlated, as are LZC, SampEn and Hurst). With the exception of a single correlation between the PCA Number and the Hurst Exponent in Dataset A. The p-values ranged over many orders of magnitude from 10−2 to 10−20.
Figure 2There was a significant correlation between the first component and serum concentration of propofol, with patients in the Mild condition (r = 0.53, p-value = 0.004) clustering together with low concentrations, and increasing, with larger variances, as the propofol concentration climbs. As in Fig. 3 below, the incongruous increase in the values of the component does not reflect a relative increase in complexity in this case, but is an artefact of the PCA algorithm used to derive the principal component. No Awake volunteers were included in this analysis, as all would have had a blood propofol concentration of exactly zero.
Figure 3Here are the differences in the first principal component generated from all the measures from Datasets A and B. Interestingly, in Dataset A, there was no significant difference between the Awake and Mild condition, while there were differences between both of those states and the Moderate condition. While this may be a reflection of lack of sensitivity, it is worth noting that, between the Awake and Mild conditions, consciousness was not actually lost: volunteers experienced conscious sedation, while the difference in level of consciousness between the Awake and and Moderate conditions was much more dramatic. In Dataset B, where consciousness was fully lost in the Deep condition, a significant difference appeared. Note that, despite the measures of complexity generally dropping as consciousness was lost (with the notable exception of the Hurst exponent analysis), the PCA analysis returned a Hurst-like pattern, with the values in the component increasing as consciousness is lost. This does not indicate an increase in complexity in any sense, but rather, is an artefact of how the dimensionality reduction transforms values. To ensure that this was not being driven by the Hurst exponent in any way, we ran the analysis after multiplying each Hurst exponent by −1 (so that the value decreased with loss of consciousness), and found no difference in the result.