Studies have shown that individuals’ choice of a life partner predicts their life outcomes, from their relationship satisfaction to their career success. The present study examined whether the reach of one’s spouse extends even further, to the ultimate life outcome: mortality. A dyadic survival analysis using a representative sample of elderly couples ( N = 4,374) followed for up to 8 years showed that a 1-standard-deviation-higher level of spousal life satisfaction was associated with a 13% lower mortality risk. This effect was robust to controlling for couples’ socioeconomic situation (e.g., household income), both partners’ sociodemographic characteristics, and baseline health. Exploratory mediation analyses pointed toward partner and actor physical activity as sequential mediators. These findings suggest that life satisfaction has not only intrapersonal but also interpersonal associations with longevity and contribute to the fields of epidemiology, positive psychology, and relationship research.

Research has consistently shown that life satisfaction is associated with longevity (for a review, see Diener & Chan, 2011). For example, meta-analyses of long-term prospective studies have shown that higher life satisfaction predicts lower risk of mortality over decades (Chida & Steptoe, 2008). Although this literature has demonstrated an intrapersonal effect of life satisfaction (i.e., an effect of an individual’s life satisfaction on that individual’s mortality), it is less clear whether life satisfaction has interpersonal effects as well. In particular, does an individual’s life satisfaction affect the mortality risk of his or her spouse?

Epidemiological studies have demonstrated the importance of contextual characteristics (e.g., neighborhood characteristics; Bosma, Dike van de Mheen, Borsboom, & Mackenbach, 2001) for individuals’ longevity. Adopting the interpersonal perspective (Zayas, Shoda, & Ayduk, 2002), I propose that the characteristics (e.g., life satisfaction) of the people who are close to an individual can also make up that person’s context and, potentially, affect his or her life outcomes. For example, life satisfaction has been associated with healthy behaviors such as physical exercise (Kim, Kubzansky, Soo, & Boehm, 2017). Given that spouses tend to affect each other’s lifestyle (Jackson, Steptoe, & Wardle, 2015), having a happy spouse might increase one’s likelihood of engaging in healthy behaviors. In addition, happiness has been associated with helping behavior (O’Malley & Andrews, 1983). Hence, having a happy partner might be related to experiencing support from that partner and, consequently, might improve one’s health and longevity.

Indeed, a recent study found that spousal life satisfaction was associated with individuals’ self-rated health (Chopik & O’Brien, 2017), although such interpersonal effects were not detected for doctor-diagnosed chronic conditions (Chopik & O’Brien, 2017) or for inflammation markers (Uchino et al., 2018). None of the existing studies have explored whether spousal life satisfaction predicts individuals’ mortality. The present research examined this question using panel data of approximately 4,400 elderly couples in the United States. In addition, a set of exploratory mediation analyses tested the role of partner support as well as partner and actor physical activity as potential mechanisms for such an association.

Finally, it is possible that the level of spousal life satisfaction per se matters much less than the extent to which it is similar to individuals’ own life satisfaction. A growing body of research has underscored the level of congruence between partners’ dispositional characteristics as an important factor for their relationship and life outcomes (Dyrenforth, Kashy, Donnellan, & Lucas, 2010). Therefore, in an additional set of analyses, I explored whether the level of actor-partner similarity in life satisfaction was associated with actor mortality.

Method Participants The data for this study came from the Health and Retirement Study (HRS; http://hrsonline.isr.umich.edu/), a nationally representative panel study of American adults ages 50 and older and their spouses. It is sponsored by the National Institute on Aging (Grant No. NIA U01AG009740) and is conducted by the University of Michigan. HRS is particularly well suited for the present investigation because it collects data from both spouses. Starting in 2006, the study has included a measure of life satisfaction, as part of a self-report questionnaire that participants are asked to complete on their own and return by mail. For one half of the sample, life satisfaction was first measured in 2006, and for the other half, it was first measured in 2008. These data were combined into a baseline assessment. I selected participants who had a spouse or a live-in partner at baseline (95.7% of the participants who had a live-in partner were officially married).1 After I removed cases with missing values on key variables (actor life satisfaction, partner life satisfaction, survival time), the final sample consisted of 8,748 individuals (mean age at baseline = 67.17, SD = 9.75; 50.0% male). This sample size was large enough for even small effects to be detected with 80% power (at α = .05). Of the 4,374 couples, 99.5% were heterosexual. Data from participants who remained alive throughout the observation period (n = 6,643) or were lost to follow-up (n = 656) were censored.2 The data and materials for HRS can be accessed at its Website (http://hrsonline.isr.umich.edu/). The computer code for the analyses reported here can be accessed at the Open Science Framework (https://osf.io/geq9x/). Measures Life satisfaction Life satisfaction was measured with the Satisfaction With Life Scale (Diener, Emmons, Larsen, & Griffin, 1985). This scale includes five items (e.g., “I am satisfied with my life”). Because a 6-point response scale was used in 2006 and a 7-point response scale was used in 2008 (both scales ranged from strongly disagree to strongly agree), I rescaled the responses to range from 1 to 10.3 The scale had good reliability (2006 subsample: α = .89; 2008 subsample: α = .88). The analyses included both partner and actor life satisfaction. Mortality The HRS data set included information on participants’ vital status (1 = deceased, 0 = alive) through December 2014. This information came from the National Death Index (Centers for Disease Control and Prevention, 2017), the spouse’s report, or both. Survival time was computed in months, starting from the month of the baseline interview and ending with death or censoring (in December 2014). Additional variables Perceived partner support was measured by participants’ ratings of the extent to which their partners provided them with social support (seven items; e.g., “How much can you rely on [your partner] if you have a serious problem?” “How much can you open up to [your partner] if you need to talk about your worries?” “How much does [your partner] let you down when you are counting on him/her?”; all items are provided in the Supplemental Material available online). Responses were given on a 4-point scale (1 = a lot, 4 = not at all) and were recoded such that higher values reflected stronger support. Each person’s recoded responses were then averaged (2006 subsample: α = .82; 2008 subsample: α = .84). Actor and partner physical activity were assessed with two questions. Both partners indicated how often they engaged in vigorous activities (e.g., jogging, cycling, digging with a spade or shovel) and moderately energetic activities (e.g., gardening, cleaning the car, walking at a moderate pace, dancing). Responses to both questions were given on a 4-point scale (1 = more than once a week, 2 = once a week, 3 = one to three times a month, 4 = hardly ever or never) and were recoded such that higher values reflected higher frequency. The frequencies of vigorous and moderately energetic activity were related to each other (r = .36, p < .001), so I combined the responses to these two questions to form an indicator of physical activity. To make sure that any observed association between partner life satisfaction and actor mortality was not driven by an overlap with sociodemographic characteristics or baseline health (e.g., one spouse’s health problems might negatively affect both spouses’ life satisfaction and mortality), I included a range of control variables in the analyses. Specifically, I controlled for actor and partner self-rated health (1 = poor, 5 = excellent), as well as morbidity, measured with the number of doctor-diagnosed chronic conditions (hypertension, diabetes, cancer, lung disease, coronary heart disease, stroke, arthritis, incontinence, psychiatric problems; although this list is not comprehensive, it covers major causes of death). Further control variables included actor gender (1 = male, 0 = female), actor and partner age at baseline, actor and partner ethnicity (1 = Caucasian, 0 = other), actor and partner education (1 = less than high school, 2 = general education diploma, 3 = high school diploma, 4 = some college, 5 = college and above), and baseline year (1 = 2008, 0 = 2006). Given that the household financial situation is likely to affect both partners’ life satisfaction and longevity, the analyses also included baseline household income (total annual household income in dollars, log transformed). To account for partner mortality, the analyses included a variable indicating whether the partner died during the observation period (1 = deceased, 0 = alive).

Discussion Previous research has shown that individuals’ career success and relationship and life satisfaction are predicted by their spouses’ dispositional characteristics (Dyrenforth et al., 2010; Solomon & Jackson, 2014). The present research suggests that spouses’ reach might extend even further. A dyadic survival analysis using the data from 4,374 couples showed that having a spouse who was more satisfied with life was associated with reduced mortality. What explains this interpersonal effect of life satisfaction? Exploratory mediation analyses established partner and actor physical activity as sequential mediators. One partner’s life satisfaction was associated with his or her increased physical activity, which in turn was related to increased physical activity in the other partner, which predicted that partner’s mortality. Yet, given the correlational nature of these data, these results should be interpreted with caution. It is noteworthy that the effect of spousal life satisfaction was comparable in size to the effects of other well-established predictors of mortality, such as education and income (in the present study, HRs = 0.90 for partner life satisfaction, 0.93 for household income, and 0.91 for actor education). In fact, spousal life satisfaction predicted mortality as strongly as (and even more robustly than) an individual’s own life satisfaction and as strongly as basic personality traits, such as neuroticism and extraversion, predicted mortality in previous work (Jokela et al., 2013). Although most existing research on predictors of mortality has focused nearly exclusively on individuals’ own characteristics, the present analyses revealed that the characteristics of a person who is close to an individual, such as a spouse, might be an equally important determinant of that individual’s mortality. Continuing this line of research, future studies might explore whether the interpersonal effect of life satisfaction on mortality is restricted to (marital) dyads or whether it extends to larger social networks. To conclude, happiness is a desirable trait in a romantic partner, and marriage to a happy person is more likely to last than is marriage to an unhappy person (Lucas, 2005). The present study showed that having a happier spouse is associated not only with a longer marriage but also with a longer life.

Acknowledgements I would like to thank Anthony M. Evans for his statistical advice and general support.

Action Editor

James K. McNulty served as action editor for this article. Author Contributions

O. Stavrova is the sole author of this article and is responsible for its content. ORCID iD

Olga Stavrova https://orcid.org/0000-0002-6079-4151 Declaration of Conflicting Interests

The author(s) declared that there were no conflicts of interest with respect to the authorship or the publication of this article. Supplemental Material

Additional supporting information can be found at http://journals.sagepub.com/doi/suppl/10.1177/0956797619835147 Open Practices

All analysis code for this study has been made publicly available via the Open Science Framework and can be accessed at https://osf.io/geq9x/. The data are available through the Health and Retirement Study’s Web site (http://hrsonline.isr.umich.edu/). The design and analysis plans for this study were not preregistered. The complete Open Practices Disclosure for this article can be found at http://journals.sagepub.com/doi/suppl/10.1177/0956797619835147. This article has received the badge for Open Materials. More information about the Open Practices badges can be found at http://www.psychologicalscience.org/publications/badges.

Notes 1.

Additional analyses using only married couples produced identical results (see Table S4 in the Supplemental Material). 2.

These two groups of censored observations did not differ from each other on any variable included in the analyses, except for the number of chronic conditions: Participants who dropped out reported fewer chronic conditions (M = 1.87, SD = 1.40) than did participants who stayed in the panel (M = 2.07, SD = 1.46), t(7296) = 3.46, p = .001. 3.

As a robustness check, I used standardization to normalize the data instead (i.e., I standardized the values within the two subsamples). The analyses using the standardized scale produced the same results as the analyses presented in the main text (see Table S3 in the Supplemental Material). 4.

Being part of a same-sex couple positively predicted mortality (HR = 2.72, p = .018; there were 9 gay and 11 lesbian couples in the sample). The interaction between couple type (gay vs. lesbian) and actor gender was not significant (HR = 0.38, p = .260).