| Literature DB >> 28639168 |
Karen M Hampson1, Matthew P Cufflin2, Edward A H Mallen2.
Abstract
When fixating on a stationary object, the power of the eye's lens fluctuates. Studies have suggested that changes in these so-called microfluctuations in accommodation may be a factor in the onset and progression of short-sightedness. Like many physiological signals, the fluctuations in the power of the lens exhibit chaotic behaviour. A breakdown or reduction in chaos in physiological systems indicates stress to the system or pathology. The purpose of this study was to determine whether the chaos in fluctuations of the power of the lens changes with refractive error, i.e. how short-sighted a subject is, and/or accommodative demand, i.e. the effective distance of the object that is being viewed. Six emmetropes (EMMs, non-short-sighted), six early-onset myopes (EOMs, onset of short-sightedness before the age of 15), and six late-onset myopes (LOMs, onset of short-sightedness after the age of 15) took part in the study. Accommodative microfluctuations were measured at 22 Hz using an SRW-5000 autorefractor at accommodative demands of 1 D (dioptres), 2 D, and 3 D. Chaos theory analysis was used to determine the embedding lag, embedding dimension, limit of predictability, and Lyapunov exponent. Topological transitivity was also tested for. For comparison, the power spectrum and standard deviation were calculated for each time record. The EMMs had a statistically significant higher Lyapunov exponent than the LOMs ([Formula: see text] vs. [Formula: see text]) and a lower embedding dimension than the LOMs ([Formula: see text] vs. [Formula: see text]). There was insufficient evidence (non-significant p value) of a difference between EOMs and EMMs or EOMs and LOMs. The majority of time records were topologically transitive. There was insufficient evidence of accommodative demand having an effect. Power spectrum analysis and assessment of the standard deviation of the fluctuations failed to discern differences based on refractive error. Chaos differences in accommodation microfluctuations indicate that the control system for LOMs is under stress in comparison to EMMs. Chaos theory analysis is a more sensitive marker of changes in accommodation microfluctuations than traditional analysis methods.Entities:
Keywords: Accommodation fluctuations; Chaos theory; Power spectrum; Refractive error
Mesh:
Year: 2017 PMID: 28639168 PMCID: PMC5517597 DOI: 10.1007/s11538-017-0310-5
Source DB: PubMed Journal: Bull Math Biol ISSN: 0092-8240 Impact factor: 1.758
Fig. 1Experimental set-up. The target is viewed via a hot mirror which transmits visible light. The infrared light used for measuring the accommodation fluctuations is reflected into the eye via the hot mirror
Fig. 2Principle of obtaining a multi-dimensional phase space plot from a one-dimensional time series. a The embedding lag is determined from the first minimum of the mutual information, which is three in the example given. b The original time series and the portion of the signal used for each of the two axes to obtain the phase space plot
Fig. 3Principle of obtaining the correct embedding dimension. The correct dimension is three in the example shown. If the two points are embedded in too low a dimension, two in the example, the points appear artificially close
Fig. 4Determination of the Lyapunov exponent for a series with an embedding dimension of two. a Schematic of the divergence of nearby trajectories in phase space. b How the LE is obtained from the separation of neighbouring trajectories over time. The LE is the slope of the natural logarithm of the divergence of neighbouring trajectories over time. For a chaotic time series there is an initial rise in the natural logarithm of divergence over time and so the LE is positive
Fig. 5Chaos theory results for each processing step for an LOM at a 2 D accommodative demand. a Detrended accommodation time trace. b Mutual information. The first minimum is the embedding lag which is five data points. c The percentage of false nearest neighbours versus embedding dimension. The dimension is three in this case as this results in 5% false nearest neighbours. d The time evolution of the average separation of nearby trajectories in phase space. The slope of the linear rise is the LE. The end of the linear rise is the limit of predictability. e The reconstructed phase space
Fig. 6Divergence plots for each refractive group averaged across all accommodative demands. Also shown is the fit to each curve. The gradient of the linear rise is the LE. Circles indicate the limit of predictability
Chaos parameters for each group averaged across accommodative demand
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| LE (D/s) |
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Indicates a significant difference between groups
Fig. 7a Recurrence plots for three subjects for a 3 D accommodative demand. White represents a value of one. b Plot of the minimum recurrence rate for topological transitivity to test positive
Fig. 8Results from the traditional analysis methods used to study changes in microfluctuations in accommodation. a Area under the LFC. b Area under the HFC. c Standard deviation. d Mean accommodation level
Fig. 9Effect of filtering on the LE. Asterisk represents statistically significant difference ()