| Literature DB >> 27959326 |
Michael A Grubb1,2, Agnieszka Tymula3, Sharon Gilaie-Dotan4,5, Paul W Glimcher2,6, Ifat Levy7.
Abstract
Many decisions involve uncertainty, or 'risk', regarding potential outcomes, and substantial empirical evidence has demonstrated that human aging is associated with diminished tolerance for risky rewards. Grey matter volume in a region of right posterior parietal cortex (rPPC) is predictive of preferences for risky rewards in young adults, with less grey matter volume indicating decreased tolerance for risk. That grey matter loss in parietal regions is a part of healthy aging suggests that diminished rPPC grey matter volume may have a role in modulating risk preferences in older adults. Here we report evidence for this hypothesis and show that age-related declines in rPPC grey matter volume better account for age-related changes in risk preferences than does age per se. These results provide a basis for understanding the neural mechanisms that mediate risky choice and a glimpse into the neurodevelopmental dynamics that impact decision-making in an aging population.Entities:
Mesh:
Year: 2016 PMID: 27959326 PMCID: PMC5159889 DOI: 10.1038/ncomms13822
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919
Figure 1Experimental design.
(a) Example lotteries representing a 25, 50, 75% chance of gaining $15, $7, $30, respectively. (b) Example trial sequence.
Figure 2rPPC grey-matter volume accounts for risk tolerance after controlling for age.
(a) A priori defined region of interest: right posterior parietal cortex (rPPC). (b) rPPC grey matter volume plotted as a function of age for individual participants (n=52). (c) rPPC grey matter volume plotted as a function of risk tolerance for individual participants. (d) Risk tolerance as a function of age, controlling for rPPC grey matter volume, plotted for individual participants. (e) Risk tolerance as a function of rPPC grey matter volume, controlling for age, plotted for individual participants.
Estimated coefficients and Bayesian Information Criteria values for each model.
| Age | −0.003** (0.001) | — | –0.0004 (0.0017) | — | 0.001 (0.002) |
| rPPC GMV | — | 1.338*** (0.382) | 1.247* (0.585) | 0.974* (0.466) | 1.106· (0.567) |
| Global GMV | — | — | — | 0.0007 (0.0005) | 0.0009 (0.0007) |
| Constant | 0.669*** (0.064) | 0.152 (0.112) | 0.200 (0.241) | –0.162 (0.277) | –0.357 (0.517) |
| Constant | 1.016*** (0.168) | 0.986*** (0.156) | 0.985*** (0.156) | 0.971*** (0.158) | 0.970*** (0.158) |
| Value | 3,084 | 3,024 | 3,031 | 3,011 | 3,016 |
| Rank | 5 | 3 | 4 | 1 | 2 |
Standard errors, s.e.'s, in parentheses; s.e.'s clustered on participant. Coefficients significantly different from zero indicated by asterisks: ***P<0.001; **P=0.01; *P<0.05; ·P=0.051.
Estimated coefficients for each model.
| Age | −0.003* (0.001) | — | –0.0006 (0.0019) | — | 0.0008 (0.002) |
| rPPC GMV | — | 1.37*** (0.417) | 1.252* (0.585) | 1.017* (0.474) | 1.111· (0.566) |
| Global GMV | — | — | — | 0.0008 (0.0005) | 0.0009 (0.0007) |
| Gender | 0.014 (0.070) | 0.011 (0.057) | 0.020 (0.062) | 0.032 (0.055) | 0.027 (0.058) |
| Constant | 0.700*** (0.063) | 0.137 (0.138) | 0.200 (0.241) | –0.238 (0.305) | –0.380 (0.517) |
| Constant | 1.015*** (0.168) | 0.986*** (0.156) | 0.984*** (0.156) | 0.969*** (0.157) | 0.969*** (0.157) |
Standard errors, s.e.'s, in parentheses; s.e.'s clustered on participant. Coefficients significantly different from zero indicated by asterisks: ***P<0.001; **P<0.01; *P<0.05; ·P=0.050.
Figure 3Overview.
Schematic presentation of results.