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BRIEF RESEARCH REPORT article

Front. Psychol., 02 August 2019
Sec. Movement Science
This article is part of the Research Topic Adaptation to Psychological Stress in Sport View all 26 articles

How Consistent Are Challenge and Threat Evaluations? A Generalizability Analysis

  • 1Department for Health, University of Bath, Bath, United Kingdom
  • 2School of Sport, Rehabilitation, and Exercise Sciences, University of Essex, Colchester, United Kingdom

Viewing stressful situations as more of a challenge than a threat (i.e., coping resources match or exceed situational demands) has been associated with better performance and long-term health. However, to date, little research has examined if individuals have tendencies to evaluate all stressful situations as more of a challenge or threat. Thus, this study used generalizability analyses to investigate the consistency (or variability) of challenge and threat evaluations across potentially stressful situations. 1813 roller derby players (89.0% female; Mage = 33 years, SD = 7) read nine stressful vignettes (e.g., injury, non-selection, family illness), before completing self-report items assessing challenge and threat evaluations. Generalizability analyses revealed that the Athlete × Stressor interaction accounted for the greatest amount of variance in challenge and threat evaluations (51.9%), suggesting that athletes had idiosyncrasies in their tendency to view particular stressors as more of a challenge or threat. The Athlete (15.4%) and Stressor (21.9%) components also accounted for a significant amount of variance. While the Athlete component suggested some consistency in challenge and threat evaluations, and that differences existed between athletes in whether they tended to view stressors as more of a challenge or threat, the Stressor component indicated some agreement among the athletes in their tendency to view some stressors as more of a challenge or threat than others. The findings offer direct support for transactional stress theories, and have important implications for practitioners developing stress management interventions.

Introduction

Sport is inherently stressful, with athletes required to cope with the multiple demands they face during competition (e.g., high pressure), day-to-day training (e.g., coach conflict), and their personal lives (e.g., family duties; Fletcher et al., 2006). The ability to cope with stress is highly sought-after, and is a psychological skill that characterizes world-class athletes (e.g., Olympians; Gould et al., 2002). As such, researchers continue to develop interventions that help athletes manage stress (e.g., mindfulness; see Rumbold et al., 2012; Randall et al., 2019 for reviews). To aid intervention development, researchers have tested models that explain how athletes evaluate stressful situations, and whether these evaluations, and subsequent responses, vary between athletes and across situations (e.g., model for coping with acute stress in sports; Anshel, 2001). One theory that has gained recent attention, and is the focus of this study, is the biopsychosocial model (BPSM) of challenge and threat states (Blascovich, 2008a).

Akin to other transactional stress theories (e.g., cognitive appraisal theory; Lazarus and Folkman, 1984), the BPSM states that when faced with a stressful situation, an athlete evaluates the demands of the situation and whether they possess the resources to cope with those demands (Blascovich, 2008a). If an athlete perceives that they have sufficient resources, they evaluate the situation as a challenge. However, if an athlete perceives that they lack the resources, they evaluate the situation as a threat (Blascovich, 2008a). The BPSM argues that these evaluations trigger distinct physiological responses (Seery, 2011). Specifically, inspired by the theory of physiological toughness (Dienstbier, 1989), a challenge evaluation initiates sympathetic-adrenomedullary activation and the release of catecholamines (e.g., adrenaline), resulting in dilation of the blood vessels and increased blood flow (marked by reduced total peripheral resistance and elevated cardiac output). Conversely, a threat evaluation triggers pituitary-adrenocortical activation and the release of cortisol, causing little change or constriction of the blood vessels and little change or decreased blood flow (marked by little change or elevated total peripheral resistance and little change or reduced cardiac output; Seery, 2011). Despite their discrete labels, challenge and threat are not conceptualized as dichotomous states but anchors of a bipolar continuum, meaning that relative rather than absolute differences in challenge and threat are often examined (e.g., situation evaluated as more or less of a challenge or threat; Seery, 2011).

The BPSM posits that a challenge state should lead to better performance than a threat state (Blascovich, 2008a). Research has supported this assertion (see Behnke and Kaczmarek, 2018; Hase et al., 2018 for reviews), demonstrating that athletes perform more optimally when they evaluate situations as more of a challenge (resources match or exceed demands; e.g., Moore et al., 2013), and respond to situations with cardiovascular reactivity more consistent with a challenge state (reduced total peripheral resistance and elevated cardiac output; e.g., Turner et al., 2013). Beyond their short-term effects on performance, challenge and threat states are also thought to impact long-term health (Blascovich, 2008b). Indeed, repeatedly evaluating stressful situations as a threat has been linked with poor mental health (e.g., depression), and frequently responding to situations with more threat-like cardiovascular reactivity has been associated with heart disease (Blascovich, 2008b). Despite these important outcomes, little research has explored the consistency (or variability) of challenge and threat, and whether individuals have tendencies to evaluate all stressful situations as more of a challenge or threat. This is surprising given that psychometric tools assessing individual differences in challenge and threat have recently emerged (Tomaka et al., 2018), and that while limited, evidence has hinted that threat evaluations are moderately to highly consistent across situations (e.g., Power and Hill, 2010).

One approach that could help elucidate the consistency (or variability) of challenge and threat evaluations is generalizability theory (Cronbach et al., 1972). Generalizability theory is a variance partitioning approach that is used to examine within-person variation, and specifically person × situation interactions, or differences between individuals in their perceptions and responses across the same situations (see Lakey, 2016 for a review). Generalizability theory has been applied to a range of psychosocial constructs to understand if these constructs are features of the person, situation, or person × situation interactions (e.g., social support; Lakey, 2010). For instance, Endler and Hunt (1966, 1969) applied generalizability theory to anxiety, asking participants to rate their anxiety in response to various situations (e.g., giving a speech, long car drive). Person effects accounted for 8% of variance in anxiety, suggesting some participants reported more anxiety than others across the situations. In addition, situation effects accounted for 7% of variance, implying that some situations evoked more anxiety than others, across all participants. Finally, person × situation interactions accounted for 17% of variance, suggesting idiosyncrasies in anxiety responses, and that participants reported different levels of anxiety across situations (e.g., some participants rated the speech as more anxiety-provoking than the long car drive, while others rated the drive as more anxiety-provoking). Thus, both person and situation effects explained small but meaningful proportions of variance in anxiety, and their interaction represented the largest variance component, explaining twice as much variance as the individual components. Despite its potential to improve our understanding of stress responses, generalizability theory has rarely been applied to this psychosocial construct, possibly due to the conceptual and analytical complexities associated with this approach (Lakey, 2016).

To the authors’ knowledge, to date, only one study has used generalizability theory in the stress literature (Lucas et al., 2012). Lucas and colleagues found that the stress appraisals of police officers were primarily comprised of person × situation interactions (38–41% of variance), although the person and situation effects were also significant (14–15 and 18–19% of variance, respectively). The findings offered direct support for transactional theories (e.g., cognitive appraisal theory; Lazarus and Folkman, 1984), which conceptualize stress as a psychosocial construct that emerges from interactions between the individual and their environment. Furthermore, the findings had implications for stress management interventions, highlighting that to be effective, such interventions should move beyond solely individual- or environment-based approaches, and instead take a conjoint approach that considers who is encountering what particular stressors (e.g., cognitive-behavioral strategies that allow individuals to acquire new skills that they can use to cope with the stressors that they find uniquely stressful; Giga et al., 2003). Therefore, by illuminating the relative importance of different sources of variance in stress responses (person, situation, or person × situation effects), generalizability analyses can offer a direct test of theory and have important implications for the creation of stress management interventions.

Using generalizability theory, this study investigated the consistency (or variability) of challenge and threat evaluations across potentially stressful situations. Although the athlete (person) and stressor (situation) effects were expected to be significant, with a greater athlete effect suggesting that challenge and threat evaluations were relatively consistent across stressful situations, it was predicted that the athlete × stressor (person × situation) interaction effect would also be significant and account for the greatest amount of variance in challenge and threat evaluations. This interaction effect would reflect unique matches between athletes and stressors, or idiosyncrasies in the tendency for athletes to view certain stressors as more of a challenge or threat. The same pattern of significant effects were also expected when demand and resource evaluations were examined separately.

Methods

Participants

Roller derby players were recruited via advertisements and a link to the study posted on publicly available internet message boards (e.g., Facebook), and by emailing teams and asking them to share the link. In total, the link was opened 2628 times, with 2176 participants partially completing the survey, however, 363 were missing challenge and threat evaluation data for all stressful vignettes. Thus, the final sample consisted of 1813 participants (140 males, 1625 females, 48 preferred to self-describe; demographic and sport-specific characteristics are summarized in Table 1). Participants were aged between 18 and 78 years (Mage = 33 years, SD = 7), and had been playing roller derby for between 0 (less than 1 year) and 14 years (Mexperience = 4 years, SD = 2). All participants provided written informed consent in line with the Declaration of Helsinki.

TABLE 1
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Table 1. Demographic and sport-specific characteristics of the participants (n = 1813).

Procedure and Measures

Following institutional ethical approval, an online survey was created using Qualtrics software. The survey took ∼15 min to complete. In the first part, participants reported demographic and sport-specific information (age, gender, nationality, competitive level, and playing experience). In the second part, participants read nine vignettes, each describing a potentially stressful situation (e.g., ‘deselection,’ ‘family illness’; see section “Stressful Vignettes”). After reading each vignette, participants completed four self-report items, two from the cognitive appraisal ratio (CAR; Tomaka et al., 1993), and two from the stressor appraisal scale (SAS; Schneider, 2008). Specifically, to assess evaluations of situational demands in response to each vignette, participants were asked “how demanding would you find this situation?” (CAR), and “how stressful would you find this situation?” (SAS). Furthermore, to assess evaluations of coping resources, participants were asked “how well would you be able to cope with the demands of this situation?” (CAR), and “how well do you think you could manage the demands imposed on you in this situation?” (SAS). All items were rated on six-point Likert scales anchored between 1 (not at all) and 6 (extremely). The items were then converted into two demand resource evaluation scores (DRES). The first DRES score, termed DRES-CAR, was calculated by subtracting the first demands item (“how demanding would you find this situation?”) from the first resources item (“how well would you be able to cope with the demands of this situation?”). The second DRES score, labeled DRES-SAS, was calculated by subtracting the second demands item (“how stressful would you find this situation?”) from the second resources item (“how well do you think you could manage the demands imposed on you in this situation?”). Both DRES scores ranged from −5 to +5, with positive values reflecting challenge evaluations (resources match or exceed demands), and negative values reflecting threat evaluations (demands exceed resources; as Moore et al., 2018).

Stressful Vignettes

Inspired by research highlighting the stressors commonly experienced in sport (e.g., Arnold and Fletcher, 2012a; Sarkar and Fletcher, 2014), two subsets of potentially stressful vignettes were created (as Lucas et al., 2012). Two separate subsets were used to reduce the length of the survey (36 vs. 72 items), and thus improve completion rates and sample size. Each subset contained nine vignettes, with three describing competitive stressors (e.g., ‘underperforming’), three outlining organizational stressors (e.g., ‘travel’), and three describing personal stressors (e.g., ‘relationship problems’). A diverse set of stressors was selected to offer a better test of the consistency (or variability) of challenge and threat evaluations compared to a more uniform set of stressors (e.g., competitive only). All stressors were processive rather than systemic (i.e., required cognitive processing vs. purely physiological in nature; Anisman, 2014). Participants were randomly assigned to one of the two subsets by the Qualtrics survey, and the order in which the vignettes were presented within each subset was also randomized. The content and wording of each vignette was developed by the lead researcher and edited to improve sport-specificity by another member of the research team who was an experienced roller derby coach. Additionally, each vignette was scrutinized by two other coaches to ensure that the content was relevant, and the length, tone, and focus were appropriate. Each vignette is presented in full in Table 2.

TABLE 2
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Table 2. The potentially stressful vignettes (or stressors) used in the study, grouped by subset.

Statistical Analyses

Consistent with previous generalizability theory research (e.g., Lakey et al., 2010; Lucas et al., 2012), variance components analyses with restricted maximum likelihood estimation were conducted separately for DRES, demand evaluations, and resource evaluations in IBM SPSS statistics software (version 22). For each outcome, the analysis had an 1813 (Athletes) × 18 (Stressors) × 2 (Items) × 2 (Subsets) design. Stressors and Items were within-participants factors, and Athletes and Subsets were between-participants factors. However, because the design was not fully crossed (i.e., Stressors and Athletes nested within Subsets), estimates of variance related to Stressors were adjusted accordingly (by specifying nested terms; e.g., Stressors [Subsets] and Athletes [Subsets]). The highest order interaction term was confounded with error and variance not attributable to any measured effect or component (Shavelson and Webb, 1991). The Stressor [Subsets], Athlete [Subsets], and the Athlete × Stressor were the key components of interest, but others were also estimated (Items, Subsets, Item × Stressor, Item × Athlete, Item × Subset, and Athlete × Subset). The significance of all estimated sources of variance was examined using 95% confidence intervals, where significant sources did not include or cross zero. The components were considered significantly different from one another if their 95% confidence intervals did not overlap (Field, 2013). Each raw variance component was converted into a percentage of total variance to provide a more meaningful measure of effect size.

Results

Descriptive Statistics

The descriptive DRES, demand evaluation, and resource evaluation data for each vignette are presented in Table 3, grouped by subset. On average, participants evaluated the vignettes entitled ‘outcome pressure,’ ‘officials,’ ‘spectators,’ ‘missing friends and family,’ ‘relationship problems,’ ‘expectations,’ ‘selection,’ ‘travel,’ and ‘financial issues’ as more of a challenge (resources match or exceed demands). Conversely, participants evaluated the vignettes entitled ‘inadequate preparation,’ ‘injury,’ ‘coach’s personality and behavior,’ ‘balancing training and work,’ ‘underperforming,’ ‘self-presentation,’ ‘teammate attitude,’ ‘family illness,’ and ‘death of a friend’ as more of a threat (demands exceed resources). Indeed, ‘teammate attitude’ and ‘underperforming’ were evaluated as most demanding, whereas ‘missing friends and family’ and ‘travel’ were rated as least demanding. Moreover, participants evaluated that they were most able to cope with ‘missing friends and family’ and ‘expectations,’ but least able to cope with ‘teammate attitude’ and ‘death of a friend.’

TABLE 3
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Table 3. Mean (SD) demand resource evaluation score (DRES), demand evaluation, and resource evaluation data for the different potentially stressful vignettes (or stressors), grouped by subset (n = 1813).

Demand Resource Evaluation Score

The percentages and significance of variance components for DRES are presented in Table 4. The Athlete × Stressor component (interaction effect) accounted for the greatest amount of variance in DRES (51.9%), suggesting that athletes had different profiles of challenge and threat evaluations across the same stressors. This interaction component accounted for a significantly greater amount of variance in DRES than the Athlete (15.4%) and Stressor (21.9%) components, although these were also significant. The Athlete component (person effect) implied that the athletes differed in whether they tended to view the stressors as more of a challenge or threat, regardless of the characteristics of the stressors. The Stressor component (situation effect) suggested some agreement among the athletes in their tendency to view some stressors as more of a challenge or threat than others. The variance attributable to the Athlete and Stressor components did not differ significantly.

TABLE 4
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Table 4. Percentages of variance and significance of DRES, demand evaluations, and resource evaluations.

Demand and Resource Evaluations

The percentages and significance of variance components for demand and resource evaluations, analyzed separately, are presented in Table 4. The Athlete × Stressor components accounted for the greatest amount of variance in both demand and resource evaluations (46.5 and 52.6%, respectively), suggesting that athletes had idiosyncrasies in their evaluations of how demanding the different stressors were, and their resources to cope with the stressors. These interaction components accounted for significantly greater amounts of variance in demand and resource evaluations than the Athlete (14.6 and 19.9%, respectively) and Stressor (20.1 and 14.8%, respectively) components, although these were also significant. The Athlete components imply that the athletes differed in how demanding they tended to view the stressors and their resources to cope with the stressors, regardless of the specific stressor characteristics. Conversely, the Stressor components suggest some agreement among the athletes in their tendency to view some stressors as more or less demanding than others, and that they had the resources to cope with some stressors better than others. The variance attributable to the Athlete and Stressor components did not differ significantly for either demand or resource evaluations.

Discussion

Repeatedly viewing stressful situations as a threat (situational demands exceed coping resources) has been linked to negative health outcomes (e.g., depression; Blascovich, 2008b). However, it is not well-known if individuals have tendencies to evaluate all stressful situations as more of a challenge or threat (Power and Hill, 2010). Thus, this study aimed to shed light on this issue using generalizability theory (Cronbach et al., 1972). The generalizability analyses revealed differences between the athletes in their tendency to view stressors as more of a challenge or threat (athlete component), as well as some agreement among the athletes in their propensity to view some stressors as more of a challenge or threat than others (stressor component). Crucially, the results predominately indicated that athletes had idiosyncrasies in their tendency to view particular stressors as more of a challenge or threat (athlete × stressor interaction), with the interaction component explaining twice as much variance as each of the individual components. The same pattern of results emerged when demand and resource evaluations were analyzed separately.

The athlete component (person effect), or amount of variance in challenge and threat evaluations due to differences between athletes, was a significant, but also comparatively limited, source of variance. This result is congruent with previous research (e.g., Lucas et al., 2012), and has two contradictory implications. On one hand, the significant athlete component supports the notion that challenge and threat evaluations are, to some extent, relatively consistent across stressful situations, meaning that psychometric tools that assess individual differences in challenge and threat evaluations hold some merit (e.g., Tomaka et al., 2018). Indeed, such tools are likely to be useful for practitioners interested in selecting ‘challenge responders’ in high-pressure domains (e.g., medicine; Roberts et al., 2015), and researchers looking to monitor the long-term health of serial ‘threat responders’ (O’Donovan et al., 2012). On the other hand, the variance attributable to the athlete component was smaller than the other hypothesized components, which corroborates the often-cited concern that stress management interventions that overly rely on individual-based approaches, and ignore the specific environmental demands encountered by individuals, are less likely to be effective (only reflecting ‘damage limitation’), despite their ease of implementation and widespread popularity (Giga et al., 2003). Indeed, these approaches shift responsibility from the organization to the individual (Cooper et al., 2001), and would need careful consideration before being implemented in elite sport given the obligations that sport organizations have to safeguard athlete welfare [see UK Government’s, 2017; Duty of Care in Sport Review (Stevenson and Farmer, 2017)].

The stressor component (situation effect), or amount of variance in challenge and threat evaluations attributable to differences between stressors, was also a significant source of variance. Although sport- and sample-specific (i.e., female roller derby players), this result suggests that some stressors were more likely to be evaluated as a challenge (e.g., ‘high expectations’), while others were more likely to be seen as a threat (e.g., ‘negative coach behavior’), by all athletes. Interestingly, and in-keeping with prior research (e.g., Lucas et al., 2012), the stressor component was larger than the athlete component (albeit not significantly). This trend has implications for stress management interventions, and implies that interventions could be more effective if they focus on the environment rather than exclusively on the individual, an approach that is rarely adopted (Giga et al., 2003). For instance, armed with a list of stressors that athletes tend to evaluate as a threat (e.g., ‘inadequate preparation,’ ‘disruptive teammate’), practitioners could change the environment by altering particular features of these stressors (e.g., frequency, intensity, duration; Arnold and Fletcher, 2012b), or by removing the stressors altogether. However, despite such environment-based interventions being able to impact more athletes and having longer-lasting effects (Arnold et al., 2017), these interventions can be disruptive and difficult to implement logistically (Cooper, 2015), especially given that some stressors are uncontrollable from a practitioner’s perspective (e.g., ‘travel disruptions’). In the case of such unpredictable stressors, “what if” planning might prove a more viable strategy than trying to alter or remove the stressor (Karageorghis and Terry, 2011). Indeed, some researchers have argued against ‘sheltering’ athletes from stressors, instead noting the benefits associated with experiencing, and learning from, stressors (Collins et al., 2016).

The athlete × stressor interaction accounted for the greatest amount of variance in challenge and threat evaluations, significantly more than the athlete and stressor components, which is in-line with previous research that has reported large person × situation interaction effects for other psychosocial constructs (e.g., anxiety, social support; Lakey, 2016). Furthermore, this result offers direct support for transactional stress theories (e.g., cognitive appraisal theory; Lazarus and Folkman, 1984), which state that stress-related perceptions result from an exchange between the person and their environment. Indeed, the findings illustrate that whether a stressor is evaluated as a challenge or threat largely depends on who, specifically, is considering what particular stressor (Lucas et al., 2012). That is, athletes have different profiles of challenge and threat evaluations across the same stressors. For example, while one athlete might evaluate non-selection as more of a threat than an official’s poor decision, another might evaluate an official’s erroneous decision as more of a threat than non-selection. Although the significant athlete and stressor components imply that stress management interventions that focus solely on the individual or environment might be effective, the large interaction suggests that interventions are more likely to be beneficial if they adopt a conjoint approach (Giga et al., 2003). For instance, practitioners could equip athletes with individualized coping strategies that they can use when faced with the stressors that they find uniquely threatening (e.g., arousal reappraisal; Jamieson et al., 2018), while also working with sport organizations to alter or remove the stressors that each athlete finds particularly threatening (e.g., make selection process more objective, transparent, fair). Indeed, this approach would ensure that athletes and sport organizations are jointly responsible for managing stress (Rumbold et al., 2018).

Despite its novel methodology and important implications, this study has several limitations. First, the data was collected from a predominately female sample and single sport. While focusing on one sport helped create more specific vignettes that could be considered by all participants, it restricted the number of male participants and limited the generalizability of the results. Research suggests that females may be more likely to evaluate stressful situations as a threat than males (e.g., Quigley et al., 2002), thus, future research should test whether the sources of variance in challenge and threat revealed in this study hold for male-dominated samples and other sports. Second, some participants failed to fully complete the survey (∼17%), and therefore the results might have been influenced by non-completion bias (Mishra et al., 1993). Third, only self-report measures were used to assess challenge and threat. While this ensured data could be collected from a large athletic sample from all over the world, objective cardiovascular measures of challenge and threat are thought to be more accurate, unambiguous, and bias-free (Blascovich and Mendes, 2000; see Brimmell et al., 2018 for a recent application). Thus, future research should use generalizability analyses to uncover the consistency (or variability) of the cardiovascular markers of challenge and threat (total peripheral resistance and cardiac output reactivity), although this might be best achieved by asking participants to react to actual, rather than hypothetical, stressors. Indeed, the findings from such research could have important implications given that repeatedly reacting to stressful situations with a threat-like cardiovascular response has been linked to heart disease (Blascovich, 2008b).

To conclude, this study used generalizability theory to investigate the consistency (or variability) of challenge and threat evaluations across potentially stressful situations. The results revealed that the challenge and threat evaluations of athletes primarily comprised athlete × stressor interactions, suggesting that athletes had idiosyncrasies in their tendency to view certain stressors as a challenge or threat. The findings offer direct support for transactional stress theory, and imply that stress management interventions are more likely to be effective if they adopt a conjoint approach, equipping athletes with coping skills they can use when faced with the stressors they find particularly threatening, while simultaneously working with sport organizations to alter or remove these stressors.

Data Availability

The raw data supporting the conclusions of this manuscript will be made available by the authors, without undue reservation, to any qualified researcher.

Ethics Statement

This study was carried out in accordance with the code of ethics and conduct published by the British Psychological Society. The study protocol was approved by the Research Ethics Approval Committee for Health (REACH) at the University of Bath.

Author Contributions

LM and ES-M led data collection, while PF and AH led data analysis. Finally, all authors contributed to the preparation of the study and writing of the manuscript.

Conflict of Interest Statement

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

References

Anisman, H. (2014). An Introduction to Stress and Health. London: Sage.

Google Scholar

Anshel, M. H. (2001). Qualitative validation of a model for coping with acute stress in sports. J. Sport. Behav. 24, 223–247.

Google Scholar

Arnold, R., and Fletcher, D. (2012a). A research synthesis and taxonomic classification of the organizational stressors encountered by sport performers. J. Sport. Exercise. Psy. 34, 397–429. doi: 10.1123/jsep.34.3.397

PubMed Abstract | CrossRef Full Text | Google Scholar

Arnold, R., and Fletcher, D. (2012b). Psychometric issues in organizational stressor research: a review and implications for sport psychology. Meas. Phys. Educ. Exercise. Sci. 16, 81–100. doi: 10.1080/1091367X.2012.639608

CrossRef Full Text | Google Scholar

Arnold, R., Fletcher, D., and Daniels, K. (2017). Organizational stressors, coping, and outcomes in competitive sport. J. Sport. Sci. 35, 694–703. doi: 10.1080/02640414.2016.1184299

PubMed Abstract | CrossRef Full Text | Google Scholar

Behnke, M., and Kaczmarek, L. D. (2018). Successful performance and cardiovascular markers of challenge and threat: a meta-analysis. Int. J. Psychophysiol. 130, 73–79. doi: 10.1016/j.ijpsycho.2018.04.007

PubMed Abstract | CrossRef Full Text | Google Scholar

Blascovich, J. (2008a). “Challenge and threat” in Handbook of Approach and Avoidance Motivation, ed. A.J. Elliot (New York, NY: Psychology Press), 431–445.

Google Scholar

Blascovich, J. (2008b). “Challenge, threat, and health,” in Handbook of Motivation Science, eds J. Y. Shah and W. L. Gardner (New York, NY: Guildford Press), 481–493.

Google Scholar

Blascovich, J., and Mendes, W. B. (2000). “Challenge and threat appraisals: the role of affective cues,” in Feeling and Thinking: The Role of Affect in Social Cognition, ed. J. P. Forgas (Paris: Cambridge University Press), 59–82.

Google Scholar

Brimmell, J., Parker, J., Furley, P., and Moore, L. J. (2018). Nonverbal behavior accompanying challenge and threat states under pressure. Psychol. Sport. Exercise. 39, 90–94. doi: 10.1016/j.psychsport.2018.08.003

CrossRef Full Text | Google Scholar

Collins, D. J., MacNamara, A., and McCarthy, N. (2016). Putting the bumps in the rocky road: Optimizing the pathway to excellence. Front. Psychol. 7:1482. doi: 10.3389/fpsyg.2016.01482

PubMed Abstract | CrossRef Full Text | Google Scholar

Cooper, C. L. (2015). “Stress management interventions: reflections,” in Derailed Organizational Interventions for Stress and Well-Being, eds M. Karanika and C. Biron (Dordrecht: Springer), 271–273. doi: 10.1007/978-94-017-9867-9_31

CrossRef Full Text | Google Scholar

Cooper, C. L., Dewe, P. J., and O’Driscoll, M. P. (2001). Organizational Stress: A Review and Critique of Theory, Research, and Applications. Thousand Oaks, CA: Sage Publications.

Google Scholar

Cronbach, L. J., Gleser, G. C., Nanda, H., and Rajaratnam, N. (1972). The Dependability of Behavioral Measurements: Theory of Generalizability for Scores and Profiles. New York, NY: John Wiley & Sons.

Google Scholar

Dienstbier, R. A. (1989). Arousal and physiological toughness: implications for mental and physical health. Psychol. Rev. 96, 84–100. doi: 10.1037/0033-295X.96.1.84

PubMed Abstract | CrossRef Full Text | Google Scholar

Endler, N. S., and Hunt, J. M. (1966). Sources of behavioral variance as measured by the S-R inventory of anxiousness. Psychol. Bull. 65, 336–346. doi: 10.1037/h0023309

PubMed Abstract | CrossRef Full Text | Google Scholar

Endler, N. S., and Hunt, J. M. (1969). Generalizability of contributions from sources of variance in the S-R inventories of anxiousness. J. Pers. 37, 1–24. doi: 10.1111/j.1467-6494.1969.tb01728

PubMed Abstract | CrossRef Full Text | Google Scholar

Field, A. (2013). Discovering Statistics Using SPSS, 4th Edn. Washington, DC: Sage.

Google Scholar

Fletcher, D., Hanton, S., and Mellalieu, S. D. (2006). “An organizational stress review: conceptual and theoretical issues in competitive sport,” in Literature Reviews in Sport Psychology, eds S. Hanton and S. D. Mellalieu (New York, NY: Nova Science), 321–374.

Google Scholar

Giga, S. I., Cooper, C. L., and Faragher, B. (2003). The development of a framework for a comprehensive approach to stress management interventions at work. Int. J. Stress. Manage. 10, 280–296. doi: 10.1037/1072-5245.10.4.280

PubMed Abstract | CrossRef Full Text | Google Scholar

Gould, D., Dieffenbach, K., and Moffett, A. (2002). Psychological characteristics and their development in Olympic champions. J. Appl. Sport Psychol. 14, 172–204. doi: 10.1080/10413200290103482

CrossRef Full Text | Google Scholar

Hase, A., O’Brien, J., Moore, L. J., and Freeman, P. (2018). The relationship between challenge and threat states and performance: a systematic review. Sport. Exerc. Perform. 8, 123–144. doi: 10.1037/spy0000132

CrossRef Full Text | Google Scholar

Jamieson, J. P., Crum, A. J., Goyer, J. P., Marotta, M. E., and Akinola, M. (2018). Optimizing stress responses with reappraisal and mindset interventions: an integrated model. Anxiety. Stress. Copin. 31, 245–261. doi: 10.1080/10615806.2018.1442615

PubMed Abstract | CrossRef Full Text | Google Scholar

Karageorghis, C., and Terry, P. (2011). Inside Sport Psychology. Champaign, IL: Human Kinetics.

Google Scholar

Lakey, B. (2010). “Social-clinical approaches to social support suggest new strategies for intervention,” in Social Psychological Foundations of Clinical Psychology, eds J. E. Maddux and J. P. Tangney (New York, NY: Guilford Press), 177–194.

Google Scholar

Lakey, B. (2016). Understanding the P×S aspect of within-person variation: a variance partitioning approach. Front. Psychol. 6:2004. doi: 10.3389/fpsyg.2015.02004

PubMed Abstract | CrossRef Full Text | Google Scholar

Lakey, B., Orehek, E., Hain, K., and van Vleet, M. (2010). Enacted support’s links to negative affect and perceived support are more consistent with theory when social influences are isolated from trait influences. Pers. Soc. Psychol. B. 36, 132–142. doi: 10.1177/0146167209349375

PubMed Abstract | CrossRef Full Text | Google Scholar

Lazarus, R. S., and Folkman, S. (1984). Stress, Appraisal, and Coping. New York, NY: Springer.

Google Scholar

Lucas, T., Weidner, N., and Janisse, J. (2012). Where does work stress come from? A generalizability analysis of stress in police officers. Psychol. Health. 27, 1426–1447. doi: 10.1080/08870446.2012.687738

PubMed Abstract | CrossRef Full Text | Google Scholar

Mishra, S. I., Dooley, D., Catalano, R., and Serxner, S. (1993). Telephone health surveys: potential bias from noncompletion. Am. J. Public. Health. 83, 94–99. doi: 10.2105/AJPH.83.1.94

PubMed Abstract | CrossRef Full Text | Google Scholar

Moore, L. J., Wilson, M. R., Vine, S. J., Coussens, A. H., and Freeman, P. (2013). Champ or chump? Challenge and threat states during pressurized competition. J. Sport. Exercise. Psy. 35, 551–562. doi: 10.1123/jsep.35.6.551

CrossRef Full Text | Google Scholar

Moore, L. J., Young, T., Freeman, P., and Sarkar, M. (2018). Adverse life events, cardiovascular responses, and sports performance under pressure. Scand. J. Med. Sci. Spor. 28, 340–347. doi: 10.1111/sms.12928

PubMed Abstract | CrossRef Full Text | Google Scholar

O’Donovan, A., Tomiyama, A. J., Lin, J., Puterman, E., Adler, N. E., Kemeny, M., et al. (2012). Stress appraisals and cellular aging: a key role for anticipatory threat in the relationship between psychological stress and telomere length. Brain. Behav. Immun. 26, 573–579. doi: 10.1016/j.bbi.2012.01.007

PubMed Abstract | CrossRef Full Text | Google Scholar

Power, T. G., and Hill, L. G. (2010). Individual differences in appraisal of minor, potentially stressful events: a cluster analytic approach. Cognition. Emotion. 24, 1081–1094. doi: 10.1080/02699930903122463

CrossRef Full Text | Google Scholar

Quigley, K. S., Barrett, L. F., and Weinstein, S. (2002). Cardiovascular patterns associated with threat and challenge appraisals: a within-subjects analysis. Psychophysiology. 39, 292–302. doi: 10.1017/S0048577201393046

PubMed Abstract | CrossRef Full Text | Google Scholar

Randall, R., Nielsen, K., and Houdmont, J. (2019). Process evaluation for stressor reduction interventions in sport. J. Appl. Sport. Psychol. 31, 47–64. doi: 10.1080/10413200.2018.1480544

CrossRef Full Text | Google Scholar

Roberts, M. J., Gale, T. E., McGrath, J. S., and Wilson, M. R. (2015). Rising to the challenge: acute stress appraisals and selection centre performance in applicants to postgraduate specialty training in anaesthesia. Adv. Health. Sci. Educ. 21, 323–339. doi: 10.1007/s10459-015-9629-6

PubMed Abstract | CrossRef Full Text | Google Scholar

Rumbold, J., Fletcher, D., and Daniels, K. (2012). A systematic review of stress management interventions with sport performers. Sport. Exercise. Perform. 1, 173–193. doi: 10.1037/a0026628

CrossRef Full Text | Google Scholar

Rumbold, J., Fletcher, D., and Daniels, K. (2018). Using a mixed method audit to inform organizational stress management interventions in sport. Psychol. Sport. Exercise. 35, 27–38. doi: 10.1016/j.psychsport.2017.10.010

CrossRef Full Text | Google Scholar

Sarkar, M., and Fletcher, D. (2014). Psychological resilience in sport performers: a review of stressors and protective factors. J. Sport. Sci. 32, 1419–1434. doi: 10.1080/02640414.2014.901551

PubMed Abstract | CrossRef Full Text | Google Scholar

Schneider, T. R. (2008). Evaluations of stressful transactions: what’s in an appraisal? Stress. Health. 24, 151–158. doi: 10.1002/smi.1176

CrossRef Full Text | Google Scholar

Seery, M. D. (2011). Challenge or threat? Cardiovascular indexes of resilience and vulnerability to potential stress in humans. Neurosci. Biobehav. R. 35, 1603–1610. doi: 10.1016/j.neubiorev.2011.03.003

PubMed Abstract | CrossRef Full Text | Google Scholar

Shavelson, R. J., and Webb, N. M. (1991). Generalizability Theory: A Primer. Newbury Park: Sage.

Google Scholar

Stevenson, D., and Farmer, P. (2017). Thriving at Work: A Review of Mental Health and Employers. Available at: https://www.gov.uk/government/publications/thriving-at-work-a-review-of-mental-health-and-employers (accessed April 8, 2019).

Google Scholar

Tomaka, J., Blascovich, J., Kelsey, R. M., and Leitten, C. L. (1993). Subjective, physiological, and behavioral effects of threat and challenge appraisal. J. Pers. Soc. Psychol. 65, 248–260. doi: 10.1037/0022-3514.65.2.248

CrossRef Full Text | Google Scholar

Tomaka, J., Palacios, R. L., Champion, C., and Monks, S. (2018). Development and validation of an instrument that assesses individual differences in threat and challenge appraisal. J. Depression. Anxiety. 7, 1–10. doi: 10.4172/2167-1044.1000313

CrossRef Full Text | Google Scholar

Turner, M. J., Jones, M. V., Sheffield, D., Slater, M. J., Barker, J. B., and Bell, J. J. (2013). Who thrives under pressure? Predicting the performance of elite academy cricketers using the cardiovascular indicators of challenge and threat states. J. Sport. Exerc. Psy. 35, 387–397. doi: 10.1123/jsep.35.4.387

PubMed Abstract | CrossRef Full Text | Google Scholar

UK Government’s (2017). Duty of Care in Sport Review. Available at: https://www.gov.uk/government/publications/duty-of-care-in-sport-review (accessed April 8, 2019).

Google Scholar

Keywords: cognitive appraisals, demand and resource evaluations, generalizability theory, roller derby, stressors, stress appraisals, stress management, variance partitioning approaches

Citation: Moore LJ, Freeman P, Hase A, Solomon-Moore E and Arnold R (2019) How Consistent Are Challenge and Threat Evaluations? A Generalizability Analysis. Front. Psychol. 10:1778. doi: 10.3389/fpsyg.2019.01778

Received: 12 April 2019; Accepted: 17 July 2019;
Published: 02 August 2019.

Edited by:

Carla Meijen, St Mary’s University, Twickenham, United Kingdom

Reviewed by:

Andreas Ivarsson, Halmstad University, Sweden
Jamie Matthew Poolton, Leeds Beckett University, United Kingdom

Copyright © 2019 Moore, Freeman, Hase, Solomon-Moore and Arnold. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

*Correspondence: Lee J. Moore, L.J.Moore@bath.ac.uk

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