Measuring the Impact of Social Support on Dietary Behavior: Assessing Techniques and Calling for the Use of Daily Diaries
Ana DiGiovanni and Emily Balcetis*
Department of Psychology, New York University, USA
Submission: April 03, 2018; Published: July 17, 2018
*Corresponding author: Emily Balcetis, Department of Psychology, New York University, USA.
How to cite this article: DiGiovanni A, Balcetis E. Measuring the Impact of Social Support on Dietary Behavior: Assessing Techniques and Calling for the Use of Daily Diaries. Psychol Behav Sci Int J. 2018; 9(4): 555767. DOI: 10.19080/PBSIJ.2018.09.555767.
Introduction
Establishing good health is a concern for many. In 2016, more than 57 million Americans held memberships at gym facilities [1]. Industry analysts estimated that health club revenues, in the year 2015, stood at $25.8 billion, in part due to the health goals held by patrons [2]. At any given point in time, more than 50% of women are dieting and almost 90% of teenagers report doing so regularly [3]. Yet, almost as common as possessing a health goal is the inability to successfully see it through. Currently, over two-thirds of Americans are either overweight or obese, and these numbers are rising. It is predicted that the United States will have an obesity rate of 42% in 2030 [4]. While the United States stands as the country with the highest rates of obesity, it is not alone in experiencing a health crisis; on average 20% of the populations of all 35 member countries in the Organization for Economic Co-operation and Development are obese [5]. How can people reduce the discrepancy between intention and action? While the possibilities are many, we focus on the influence of social support on health-related decision making. We review insights gained from daily diary and longitudinal methods, and offer suggestions for research in this area.
Social support, generally, facilitates beneficial long-term health outcomes. Much research demonstrates the positive effects of social support on reducing morbidity and mortality, depression, and chronic illness [6-8]. Close others offer assistance in stressful times to improve acute symptoms and longstanding health risks, habitual choices, or far-reaching disorders. However, there is less known about how social support influences the daily decisions people make about what they eat and how they exercise. Chronic conditions are the result of daily decisions that accumulate over time. Modeling long-term health outcomes requires, then, an understanding of the choices people make people make each day and the factors that influence these momentary decisions. As a result, to advance the understanding of the processes by which social support influences health, it is advantageous to both narrow the scope of inquiry but also extend it over time, exploring the impact of support on interim decision-making, and doing so longitudinally.
At present, the vast majority of research in this area models the impact of social support on health, with both constructs defined at broad, high-levels of description. Specifically, the predominant tactic is to investigate perceptions of social support reported by recipients as they reflect on the course of their recent life, and give summary statements of their recent experiences.For instance, questionnaires assessing perceived social support often ask participants to reflect on extended periods of time, such as the last three months, and recall the prevalence of others’ attempts to support or sabotage one’s own health-related behaviors during that timeframe [9]. Perceived social support then indexes gestalt assessments, reflecting recipients’ recollections of the general availability of social support and global satisfaction with this care. In contrast, a less often employed tactic is to measure received social support, a construct that assesses specific actions enacted as supportive behaviors [10,11]. Questionnaires measuring received social support ask recipients to give specific examples of recently received supportive behaviors.
Interestingly, the relationship between perceived and received social support is not well understood. Previous attempts to demarcate their unique contributions to health outcomes have proved inconclusive. Left as an open question at present is how, or even if, if received social support benefits individuals in unique ways relative to perceived social support [10-12]. We propose that one reason for this uncertainty lies in the units of analysis under investigation. Researchers may gain computational power by constraining the time frame for reporting by operationalizing both social support and health behaviors at similar levels of abstraction or specificity. We advise asking about received support, as concrete instantiations of support and health behaviors rather than perceived support, as indexed by global assessments and subjective generalizations. Moreover, we encourage measurement of received support on the daily level, repeatedly sampled over extended periods of time.
The match or mismatch in the specificity or generality of each variable may impact the predictive power of the model. Perceived social support is a relatively more abstract representation than received social support. As a result, perceived support may better predict subjective and global reports of personal health status rather than specific behavioral intentions for the coming day. The mismatch in specificity may reduce the strength of the statistical relationship between the two. Moreover, perceived support may reflect memory biases associated with encoding others’ actions in light of active schemas [13]. For example, actions enacted by others that do not conform to the schema of a supportive partner would be better remembered than those that do conform [14]; as a result of biased memory reconstructions, gestalt summary statements like reports of perceived support may not accurately reflect reality experienced on a day to day basis, unless for instance, individuals are motivated to engage in more effortful reconstruction [15].
Scholz et al. [16] are some of the few researchers that have adopted our preferred measurement strategy. They studied the influence of received diet-specific social support on dietary behavior using a longitudinal approach [16]. At baseline, participants reported on received dietary social support over the last week using the Berlin Social Support Scale [17]. They also reported dietary intentions; however, those reflected global self-assessments of goals to eat healthier meals. Twelve months later, participants again reported on dietary intentions, in addition to fat-intake as indexed by reactions to three global statements including, “I follow a low-fat diet.” Results indicated that baseline levels of received instrumental support predicted stronger intentions to eat a low-fat diet at follow-up for men, but not women, and reduced fat consumption at follow-up for both men and women. Baseline levels of emotional support had no influence on fat consumption at follow-up for women, but among men, greater emotional support predicted reduced fat consumption.
Although these findings provide support for the importance of received social support on diet, the level of specificity and generality of each variable may bear weight on the interpretation of the results. For instance, social support was operationalized at a fairly specific level. These researchers asked participants to recall specific instantiations of support behavior rather than relying on gestalt summaries. However, despite asking participants to recall specific actions, the time frame for reflection may induce complications that impair the accuracy of memory; it is difficult to accurately recall specific supportive behaviors that occurred over the course of seven days. Similarly, asking broad, subjective questions describing diet as a proxy for actual food consumption patterns increases the abstraction present and decreases the reliability and validity of the data itself [18]. For instance, those engaging in the least healthy behaviors may lack the knowledge to accurately report on whether they are in fact following a lowfat diet [19]. Moreover, people give themselves credit for their intentions when generating summary statements about abstract qualities and report more optimistically about themselves than their actual behavior warrants [20]. Measuring variables daily may moderate these retrospection biases [21]. And, considering the degree to which the specificity of predictor and outcome variables match may offer nuance to existing models.
Conclusion
In conclusion, social support plays a key role in promoting healthy behaviors. We suggest researchers consider the unit of analysis when assessing support and behavioral outcomes, and encourage adoption of daily measures of reflection on specific instances of both. Such an approach may foster greater or different insight into the social determinants of health-related behavior, and shed light on the best use of support systems for bolstering self-regulation in the diet and exercise domain.
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