| Literature DB >> 30037829 |
Alexa M Morcom1, Richard N A Henson2,3.
Abstract
Elevated prefrontal cortex activity is often observed in healthy older adults despite declines in their memory and other cognitive functions. According to one view, this activity reflects a compensatory functional posterior-to-anterior shift, which contributes to maintenance of cognitive performance when posterior cortical function is impaired. Alternatively, the increased prefrontal activity may be less efficient or less specific because of structural and neurochemical changes accompanying aging. These accounts are difficult to distinguish on the basis of average activity levels within brain regions. Instead, we used a novel, model-based multivariate analysis technique applied to two independent fMRI datasets from an adult-lifespan human sample (N = 123 and N = 115; approximately half female). Standard analysis replicated the age-related increase in average prefrontal activation, but multivariate tests revealed that this activity did not carry additional information. The results contradict the hypothesis of a compensatory posterior-to-anterior shift. Instead, they suggest that the increased prefrontal activation reflects reduced efficiency or specificity rather than compensation.SIGNIFICANCE STATEMENT Functional brain imaging studies have often shown increased activity in prefrontal brain regions in older adults. This has been proposed to reflect a compensatory shift to greater reliance on prefrontal cortex (PFC), helping to maintain cognitive function. Alternatively, activity may become less specific as people age. This is a key question in the neuroscience of aging. In this study, we used novel tests of how different brain regions contribute to long- and short-term memory. We found increased activity in PFC in older adults, but this activity carried less information about memory outcomes than activity in visual regions. These findings are relevant for understanding why cognitive abilities decline with age, suggesting that optimal function depends on successful brain maintenance rather than compensation.Entities:
Keywords: aging; compensation; fMRI; memory; multivariate; prefrontal
Mesh:
Year: 2018 PMID: 30037829 PMCID: PMC6096047 DOI: 10.1523/JNEUROSCI.1701-17.2018
Source DB: PubMed Journal: J Neurosci ISSN: 0270-6474 Impact factor: 6.167
Figure 1.Memory tasks. , , LTM task. , STM task. , Associative encoding. In the scanned study phase of the LTM task, participants were asked to make up a story that linked each object with its background scene (120 trials total). A scene with positive valence is illustrated. On each trial, the scene was presented for 2 s, the object was superimposed for 7.5 s, and finally the screen was blanked for 0.5 s before the next trial. , Associative retrieval. At test (out of the scanner), each object was presented again and, after a measure of priming, item memory, and background valence memory, participants were asked to verbally describe the scene with which it was paired at study. The latter verbal recall was scored as correct or incorrect, which was then used to classify the trials at study into “remembered” and “forgotten” (see text for details). The example illustrates encoding and retrieval of a trial with neutral valence. , An example trial of STM task with memory load of two items. Trials began with fixation dot for 7 s. On each trial, three dot displays were displayed in red, yellow, and blue for 500 ms each (250 ms gap). To vary load, the dots in one, two, or three of the dot displays moved in a consistent direction (the to-be-ignored displays rotated). After the last display, the screen was blanked for an 8 s maintenance period and then the probe display presented a colored circle to indicate which dot display to recall (red, yellow, or blue). Participants had up to 5 s to adjust the pointer until the direction matched that of the to-be-remembered display.
Figure 2.Relationship between age and univariate and multivariate effects within ROIs. , Univariate subsequent memory effects (mean activity for remembered − forgotten), showing increased activity with age in PFC but not PVC. , Spread of multivariate responses predicting subsequent memory (SD of fitted MVB voxel weights), showing reduced spread of responses with age in both ROIs. , Univariate effects of load (positive linear contrast) during STM maintenance, showing increased activity with age in both ROIs. , Spread of multivariate responses during STM maintenance predicting increasing load, showing reduced spread of responses with age in both ROIs. Red and blue lines are robust-fitted second-order polynomial regression lines and shaded areas show 95% confidence intervals. , PVC (blue) and PFC (red) ROIs overlaid on sagittal section (x = +36) of a canonical T1-weighted brain image. Note that y-axis scales are not comparable across tasks.
Trial numbers divided by condition
| Younger (19–45 years) | Middle age (46–64 years) | Older (65–88 years) | |
|---|---|---|---|
| Remembered | 55 (25) | 44 (24) | 23 (15) |
| Forgotten | |||
| Associative miss | 31 (13) | 38 (17) | 46 (18) |
| Associative intrusion | 11 (8) | 13 (10) | 10 (8) |
| Item miss | 22 (15) | 25 (17) | 42 (24) |
Remembered refers to trials with correct object recognition and scene recall; associative miss, trials with correct object recognition but no scene recall; associative intrusion, trials with correct object recognition but recall of an incorrect scene; item miss, trials with misclassification of the object as unstudied. Data are split by age tertile and are shown as means (SD).
Age effects on mean univariate SM effects and spread of multivariate SM effects in the LTM task
| ROI/ measure | Model | Linear | Quadratic | |||||
|---|---|---|---|---|---|---|---|---|
| Mean univariate SM activation | ||||||||
| PFC | 5.49 | 0.00525 | 2.43 | 0.0312 | 0.0166 | 2.58 | 0.0371 | 0.0111 |
| PVC | 0.426 | 0.654 | 0.728 | — | 0.480 | 0.703 | — | 0.495 |
| PFC-PVC | 0.837 | 0.436 | 0.883 | — | 0.388 | 1.084 | — | 0.293 |
| Multivariate spread (SD) of SM activity | ||||||||
| PFC | 6.36 | 0.00240 | −3.33 | 0.0701 | 0.000998 | −1.44 | — | 0.151 |
| PVC | 11.3 | <0.0001 | −3.49 | 0.0780 | 0.000650 | −3.50 | 0.0784 | 0.000621 |
| PFC-PVC | 2.02 | 0.109 | 4.16 | — | 0.0437 | 0.398 | — | 0.690 |
PFC-PVC refers to analyses in which the dependent variable was the difference in each measure between PFC and PVC. n = 119.
Figure 3.Evidence against a compensatory posterior-to-anterior shift from MVB comparisons between ROIs. Ordinal regression of Bayesian model comparison of combined PVC+PFC model versus PVC-only model using age to predict outcomes of model comparison: adding PFC to the model boosts prediction of the cognitive outcome (difference in log evidence >3) or there is no boost (−3 < difference <3), or a reduction in log evidence (difference < −3). , LTM. For subsequent memory effects, a boost was no more frequent with increasing age. , STM. For load effects, a boost was less frequent with increasing age.
Age effects for PFC subregions in the LTM task
| ROI/ measure | Model | Linear | Quadratic | |||||
|---|---|---|---|---|---|---|---|---|
| BA10 | ||||||||
| Mean univariate SM | 5.24 | 0.00660 | 1.33 | — | 0.180 | 2.36 | — | 0.0189 |
| MVB spread (SD) | 8.28 | 0.000433 | −3.75 | 0.0911 | 0.0003249 | −1.86 | — | 0.0623 |
| PFC boost | — | — | −1.44 | — | −0.321 | — | ||
| IFG | ||||||||
| Mean univariate SM | 5.39 | 0.00572 | 2.48 | 0.204 | 0.0152 | 2.72 | 0.227 | 0.00824 |
| MVB spread (SD) | 3.30 | 0.0405 | −2.50 | — | 0.0127 | −0.653 | — | 0.514 |
| PFC boost | — | — | 0.00665 | — | −0.210 | — | ||
| MFG | ||||||||
| Mean univariate SM | 1.34 | 0.266 | 1.56 | — | 0.119 | 1.38 | — | 0.169 |
| MVB spread (SD) | 4.54 | 0.0126 | −2.86 | 0.0487 | 0.00466 | −1.10 | — | 0.271 |
| PFC boost | — | — | −1.45 | — | −0.132 | — | ||
| SFG | ||||||||
| Mean univariate SM | 1.72 | 0.184 | 1.33 | — | 0.181 | 1.34 | — | 0.179 |
| MVB spread (SD) | 4.39 | 0.0145 | −2.83 | 0.0474 | 0.00533 | −1.09 | — | 0.275 |
| PFC boost | — | — | −1.68 | — | 1.03 | — | ||
The table lists mean univariate SM effects, the spread (SD) of multivariate Bayesian (MVB) voxel weights predicting SM, and results of the between-region tests of “boost” to model evidence for PFC plus PVC models compared with PVC-only. See text for details. Alpha = 0.0125. SM, Subsequent memory. n = 119.
Age effects on mean univariate SM effects and spread of multivariate SM effects in the STM task
| ROI/ measure | Model | Linear | Quadratic | |||||
|---|---|---|---|---|---|---|---|---|
| Mean univariate STM activation | ||||||||
| PFC | 4.57 | 0.0128 | 3.01 | 0.0553 | 0.00336 | −0.505 | — | 0.615 |
| PVC | 9.43 | 0.000187 | 4.28 | 0.119 | <0.0001 | −0.988 | — | 0.324 |
| PFC-PVC | 0.606 | 0.548 | −0.587 | — | 0.559 | −0.878 | — | 0.380 |
| Multivariate spread (SD) of STM activity | ||||||||
| PFC | 13.4 | <0.0001 | 0.662 | — | 0.507 | −5.03 | 0.162 | <0.0001 |
| PVC | 9.30 | 0.000210 | −1.01 | — | 0.308 | −4.07 | 0.108 | <0.0001 |
| PFC-PFC | 3.00 | 0.0547 | 0.674 | — | 0.497 | 2.26 | 0.0250 | 0244 |
PFC-PVC refers to analyses in which the dependent variable was the difference in each measure between PFC and PVC. n = 96.
Age effects for PFC subregions in the visual short-term memory task
| ROI/ measure | Model | Linear | Quadratic | |||||
|---|---|---|---|---|---|---|---|---|
| BA10 | ||||||||
| Mean univariate | 1.90 | 0.155 | 1.79 | — | 0.0787 | −0.937 | — | 0.352 |
| MVB spread (SD) | 12.7 | <0.0001 | −1.41 | — | 0.158 | −4.69 | 0.171 | <0.0001 |
| PFC boost | — | — | −1.48 | — | 0.142 | −1.00 | — | 0.320 |
| PFC boost BF01 | — | — | 10.0 | — | — | — | — | — |
| IFG | ||||||||
| Mean univariate | 2.64 | 0.0767 | 1.99 | — | 0.0512 | 0.997 | — | 0.323 |
| MVB spread (SD) | 6.26 | 0.00282 | −0.787 | — | 0.427 | −3.35 | 0.0864 | 0.00109 |
| PFC boost | — | — | −1.11 | — | 0.270 | −1.10 | — | 0.274 |
| PFC boost BF01 | — | — | 7.69 | — | — | — | — | — |
| MFG | ||||||||
| Mean univariate | 2.08 | 0.131 | 2.03 | — | 0.0459 | −0.447 | — | 0.654 |
| MVB spread (SD) | 11.0 | <0.0001 | 0.300 | — | 0.762 | −4.60 | 0.165 | <0.0001 |
| PFC boost | — | — | −1.38 | — | 0.171 | −0.788 | — | 0.433 |
| PFC boost BF01 | — | — | 6.25 | — | — | — | — | — |
| SFG | ||||||||
| Mean univariate | 2.64 | 0.0770 | 2.27 | — | 0.0264 | 0.241 | — | 0.812 |
| MVB spread (SD) | 7.37 | 0.00106 | −1.57 | — | 0.116 | −3.34 | 0.0858 | 0.00111 |
| PFC boost | — | — | −2.73 | 0.0528 | 0.00755 | −0.720 | — | 0.473 |
| PFC boost BF01 | — | — | 14.3 | — | — | — | — | — |
The table lists mean univariate activation during maintenance in response to increasing VSTM load, the spread (SD) of MVB voxel weights predicting linearly increasing VSTM load, and results of the between-region tests of “boost” to model evidence for PFC plus PVC models compared with PVC-only. See text for details. Alpha = 0.0125. n = 96.