| Literature DB >> 21961066 |
Carolyn M Aldwin1, Nuoo-Ting Molitor, Spiro Avron, Michael R Levenson, John Molitor, Heidi Igarashi.
Abstract
We examined long-term patterns of stressful life events (SLE) and their impact on mortality contrasting two theoretical models: allostatic load (linear relationship) and hormesis (inverted U relationship) in 1443 NAS men (aged 41-87 in 1985; M = 60.30, SD = 7.3) with at least two reports of SLEs over 18 years (total observations = 7,634). Using a zero-inflated Poisson growth mixture model, we identified four patterns of SLE trajectories, three showing linear decreases over time with low, medium, and high intercepts, respectively, and one an inverted U, peaking at age 70. Repeating the analysis omitting two health-related SLEs yielded only the first three linear patterns. Compared to the low-stress group, both the moderate and the high-stress groups showed excess mortality, controlling for demographics and health behavior habits, HRs = 1.42 and 1.37, ps <.01 and <.05. The relationship between stress trajectories and mortality was complex and not easily explained by either theoretical model.Entities:
Year: 2011 PMID: 21961066 PMCID: PMC3180855 DOI: 10.4061/2011/896109
Source DB: PubMed Journal: J Aging Res ISSN: 2090-2204
Figure 1Distribution of the stressful life event measures.
Determining the number of classes for stressful life event trajectories including health items.
| Classes | log likelihood | BIC1 | AIC | 2ΔBIC |
|---|---|---|---|---|
| 1 | −15417.42324 | −15435.60944 | −15422.42324 | — |
| 2 | −14741.18617 | −14773.92133 | −14750.18617 | 1323.38 |
| 3 | −14634.89249 | −14682.17661 | −14647.89249 | 183.49 |
| 4 | −14602.43102 | −14664.26409 | −14619.43102 | 35.83 |
| 5 | −14590.9149 | −14667.29693 | −14611.9149 | −6.07 |
Latent class growth analysis results for stressful life events including health items.
| Classes | Parameter | Estimate | Error | Parameter = 0 | Prob >|T| |
|---|---|---|---|---|---|
| 1 | Intercept | 0.21144 | 0.05578 | 3.79 | .00 |
| Linear | −0.03782 | 0.00476 | −7.941 | .001 | |
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| 2 | Intercept | 0.98264 | 0.03549 | 27.691 | .001 |
| Linear | −0.02215 | 0.00221 | −10.024 | .001 | |
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| 3 | Intercept | 1.69093 | 0.02611 | 64.765 | .001 |
| Linear | −0.02336 | 0.00202 | −11.563 | .001 | |
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| 4 | Intercept | 0.4921 | 0.31959 | 1.54 | 0.1237 |
| Linear | 0.36437 | 0.06986 | 5.216 | .001 | |
| Quadratic | −0.01735 | 0.00331 | −5.248 | .001 | |
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| Alpha0 | −1.80433 | 0.05954 | −30.302 | .001 | |
| Alpha1 | 0.02563 | 0.00558 | 4.598 | .001 | |
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| Group membership | |||||
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| 1 | (%) | 28.53623 | 3.29379 | 8.664 | .001 |
| 2 | (%) | 52.28231 | 2.93452 | 17.816 | .001 |
| 3 | (%) | 18.15619 | 1.80972 | 10.033 | .001 |
| 4 | (%) | 1.02527 | 0.37458 | 2.737 | .001 |
Figure 2Graphs of the predicted trajectories for the different stressful life event classes (including health items).
Determining the number of classes for stressful life events excluding health items.
| Classes | log likelihood | BIC1 | AIC | 2ΔBIC |
|---|---|---|---|---|
| 1 | −13698.23027 | −13716.41647 | −13703.2 | — |
| 2 | −13147.60309 | −13180.33825 | −13156.6 | 1072.16 |
| 3 | −13061.26944 | −13108.55355 | −13074.3 | 143.57 |
| 4 | −13051.09206 | −13112.92514 | −13068.1 | −8.74 |
Figure 3Graphs of the predicted trajectories for the different life event classes (excluding health items).
Latent class growth analysis results for stressful life events including health items.
| Classes | Parameter | Estimate | Error | Parameter = 0 | Prob >|T| |
|---|---|---|---|---|---|
| 1 | Intercept | −0.01395 | 0.06973 | −0.2 | 0.8415 |
| Linear | −0.04067 | 0.0054 | −7.539 | .001 | |
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| 2 | Intercept | 0.838 | 0.04367 | 19.187 | .001 |
| Linear | −0.02431 | 0.0026 | −9.335 | .001 | |
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| 3 | Intercept | 1.61165 | 0.03105 | 51.905 | .001 |
| Linear | −0.0199 | 0.00238 | −8.363 | .001 | |
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| Alpha0 | −1.52872 | 0.05863 | −26.075 | .001 | |
| Alpha1 | 0.03221 | 0.00565 | 5.706 | .001 | |
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| Group membership | |||||
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| 1 | (%) | 31.61516 | 3.98985 | 7.924 | .001 |
| 2 | (%) | 53.83532 | 3.46901 | 15.519 | .001 |
| 3 | (%) | 14.54953 | 1.66608 | 8.733 | .001 |
Proportional hazard models predicting mortality (N = 977).
| Parameter | Estimate | StdErr | ChiSq | prob | Hazard ratio | HRLower CL | HRUpper CL |
|---|---|---|---|---|---|---|---|
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| Moderate-stress group | 0.356 | 0.107 | 10.947 | .001 | 1.428 | 1.156 | 1.764 |
| High-stress group | 0.398 | 0.155 | 6.638 | .010 | 1.490 | 1.100 | 2.018 |
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| Moderate-stress group | 0.352 | 0.109 | 10.440 | .001 | 1.422 | 1.149 | 1.761 |
| High-stress group | 0.315 | 0.157 | 4.023 | .045 | 1.371 | 1.007 | 1.866 |
| Health rating | − 0.288 | 0.064 | 20.497 | .001 | 0.749 | 0.661 | 0.849 |
| Married | − 0.331 | 0.131 | 6.458 | .011 | 0.718 | 0.556 | 0.927 |
| Less than high school | − 0.231 | 0.184 | 1.596 | .207 | 0.793 | 0.553 | 1.136 |
| College | − 0.121 | 0.111 | 1.174 | .279 | 0.886 | 0.712 | 1.103 |
| Postgrad | 0.038 | 0.150 | 0.065 | 0.799 | 1.039 | 0.774 | 1.394 |
| Nondrinker | 0.314 | 0.123 | 6.496 | 0.011 | 1.369 | 1.075 | 1.743 |
| Heavy drinker | − 0.009 | 0.125 | 0.005 | 0.944 | 0.991 | 0.776 | 1.267 |
| Smoker | 0.215 | 0.127 | 2.859 | 0.091 | 1.240 | 0.966 | 1.591 |