| Literature DB >> 26237423 |
Stanley Sheft1, Valeriy Shafiro1, Emily Wang1, Lisa L Barnes2, Raj C Shah3.
Abstract
OBJECTIVE: The objective was to evaluate the association of peripheral and central hearing abilities with cognitive function in older adults.Entities:
Mesh:
Year: 2015 PMID: 26237423 PMCID: PMC4523175 DOI: 10.1371/journal.pone.0134330
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Demographic characteristics.
| Black ( | White ( |
|
| Cohen’s | |
|---|---|---|---|---|---|
|
| 74.6 (5.7) | 75.9 (6.9) | 0.26 (122) | .267 | .20 |
|
| 15.5 (3.6) | 15.3 (3.2) | -0.21 (122) | .735 | -.03 |
|
| 89 | 88 | .835 | ||
|
| 28.2 (1.7) | 28.7 (1.6) | 1.76 (122) | .080 | .32 |
Values are arithmetic mean (SD), except for women in percent. t values, degrees of freedom (df), and p values are from t tests of differences between Black and White subjects, except for percent women which was evaluated with Pearson’s χ2. Cohen’s d is a measure of effect size for each test.
Fig 1Ripple-phase discrimination.
Schematic illustration of the spectral-ripple condition showing the contrasting amplitude spectra of a discrimination trial with difference due to change in starting phase of the spectral ripple. The speech-shaped filtering of the stimuli is omitted in the illustration.
Fig 2Stochastic FM discrimination.
Schematic illustration of stochastic FM showing the contrasting instantaneous frequency functions of two stimuli of a discrimination trial.
Fig 3Masker from FM SNR condition.
Left panel: time waveform of a masker sample used in the FM SNR condition. Right panel: spectrogram of the masker sample showing the amplitude spectrum as a function of time.
Test results.
| Black ( | White ( |
|
| Cohen’s | |
|---|---|---|---|---|---|
|
| |||||
|
| 0.081 (0.420) | 0.582 (0.520) | 5.90 (122) | >.001 | 1.06 |
|
| 0.372 (0.547) | 0.685 (0.684) | 2.81 (122) | .018 | 0.51 |
|
| 0.008 (0.591) | 0.677 (0.619) | 6.15 (122) | >.001 | 1.11 |
|
| -0.335 (0.733) | 0.330 (0.825) | 4.73 (122) | >.001 | 0.85 |
|
| 0.218 (0.802) | 0.682 (0.887) | 3.05 (122) | .012 | 0.55 |
|
| -0.226 (0.741) | 0.436 (0.622) | 5.40 (122) | >.001 | 0.97 |
|
| |||||
|
| 21.6 (9.1) | 24.1 (12.0) | 1.29 (115.2) | .396 | 0.23 |
|
| 3.2 (2.8) | 4.2 (5.7) | 1.23 (89.7) | .396 | 0.22 |
|
| 0.63 (1.89) | 0.39 (1.69) | -4.59 (116.2) | >.001 | 0.82 |
|
| 2.8 (6.3) | -1.2 (6.8) | -3.43 (122) | .005 | 0.62 |
Values are arithmetic mean (SD), except for ripple-phase threshold with the geometric mean (SD) reported. t values, degrees of freedom (df), and p values are from t tests of differences between Black and White subjects with the Bonferroni-Holm correction for multiple comparisons. When less than 122, df was adjusted due to significance of Levene’s test for equality of variances. Cohen’s d is a measure of effect size for each test.
Fig 4Cognitive test results.
In separate panels for the five domain-specific cognitive metrics and global cognition, results as z scores for each subject group (White or Black). Error bars show the 10th and 90th percentiles, with outliers exceeding the error-bar range plotted as filled circles.
Fig 5Audiograms.
In separate panels for the left and right ear, group audiograms. Subject group is indicated by box shading with the White group without shading and the Black group with gray shading. Error bars show the 10th and 90th percentiles, with outliers exceeding the error-bar range plotted as filled circles.
Fig 6Auditory test results.
In separate panels for each of the four auditory metrics, results from each subject group (White or Black). Error bars show the 10th and 90th percentiles, with outliers exceeding the error-bar range plotted as filled circles.
Fig 7Relationships between global cognition and auditory abilities.
In separate panels, individual global-cognition z scores as a function of each of the four auditory metrics. The solid red line is a linear regression of the data. Correlation, with the Bonferonni-Holm corrected p value in parentheses, is indicated in the lower left corner of each panel.
Relation of global cognition to demographic and test variables.
| Independent Variable | Estimate |
| 95% CI (lower/upper) |
|
| Squared Semi-Partial Correlation | Squared Structure Coefficient |
|---|---|---|---|---|---|---|---|
|
| -.284 | .007 | -.028/.000 | -.164 | .048 | .019 | .087 |
|
| -.137 | .114 | -.363/.090 | -.084 | .235 | .007 | .026 |
|
| .027 | .011 | .005/.050 | .174 | .017 | .028 | .098 |
|
| -.360 | .085 | -.528/-.192 | -.338 | >.001 | .085 | .485 |
|
| .002 | .006 | -.009/.014 | .047 | .689 | >.001 | .057 |
|
| -.005 | .013 | -.031/.021 | -.043 | .700 | >.001 | .041 |
|
| -.232 | .075 | -.380/-.084 | -.273 | .002 | .045 | .619 |
|
| -.013 | .006 | -.026/-.001 | -.172 | .034 | .022 | .420 |
Table entries are the estimated coefficient, standard error (SE), the lower and upper 95% confidence interval (CI) for the estimate, standardized coefficient (β), p value, squared semi-partial correlation, and squared structure coefficient of a linear regression model predicting global cognition. For the model, F(8,123) = 12.08, p < .001, and R2 and adjusted R2 were .457 and.419, respectively.
Unique and shared variance components in predicting global cognition.
| Component | Variance explained (%) |
|---|---|
|
| 18.7 |
|
| 17.4 |
|
| 16.3 |
|
| 10.0 |
|
| 6.6 |
|
| 6.1 |
|
| 4.7 |
|
| 4.4 |
|
| 4.1 |
Unique and shared variance components contributing at least 4% to variance explained in the linear regression model of global cognition in Table 3.
Pattern matrix.
| Component | |||
|---|---|---|---|
| 1 | 2 | 3 | |
|
|
|
|
|
|
|
| .110 | -.064 |
|
|
| .057 | -.051 |
|
|
| -.158 | -.114 |
|
|
| .100 |
|
|
| .037 | .114 |
|
|
| .101 |
| .158 |
|
| .096 |
| .105 |
|
| -.154 | .230 |
|
|
| -.077 | .196 |
|
Component weighting of age, cognitive, and auditory variables obtained in a principal-components factor analysis using Oblimin rotation with Kaiser Normalization. Magnitude of component weights > 0.3 are highlighted via bold font and underscore.
Relation of spectral-pattern discrimination and speech-in-noise ability to working memory.
| Model | Dependent Variable | Estimate |
| 95% CI (lower/upper) |
|
| Squared Semi-Partial Correlation | Squared Structure Coefficient |
|---|---|---|---|---|---|---|---|---|
|
|
| -.183 | .064 | -.309/-.057 | -.247 | .005 | .051 | .492 |
|
|
| -2.063 | .724 | -3.496/-.629 | -.256 | .005 | .055 | .530 |
|
|
| -.741 | .468 | -1.668/.185 | -.139 | .116 | .016 | .011 |
From three separate linear regression models that controlled for age, gender, race, and education, table entries are the estimated coefficient, standard error (SE), the lower and upper 95% confidence interval (CI) for the estimate, standardized coefficient (β), p value, squared semi-partial correlation, and squared structure coefficient for the independent variable working memory. For model 1, F(5,123) = 8.88, p < .001; model 2, F(5,123) = 6.18, p < .001; and model 3, F(6,123) = 7.90, p < .001. R2 (adjusted R2) was .273 (.243), .208 (.174), and .251 (.219) for models 1, 2, and 3, respectively.