| Literature DB >> 22935297 |
Benjamin Gardner1, Charles Abraham, Phillippa Lally, Gert-Jan de Bruijn.
Abstract
BACKGROUND: The twelve-item Self-Report Habit Index (SRHI) is the most popular measure of energy-balance related habits. This measure characterises habit by automatic activation, behavioural frequency, and relevance to self-identity. Previous empirical research suggests that the SRHI may be abbreviated with no losses in reliability or predictive utility. Drawing on recent theorising suggesting that automaticity is the 'active ingredient' of habit-behaviour relationships, we tested whether an automaticity-specific SRHI subscale could capture habit-based behaviour patterns in self-report data.Entities:
Mesh:
Year: 2012 PMID: 22935297 PMCID: PMC3552971 DOI: 10.1186/1479-5868-9-102
Source DB: PubMed Journal: Int J Behav Nutr Phys Act ISSN: 1479-5868 Impact factor: 6.457
Meta-analysis of SRHI-SRBAI and habit-behaviour correlation coefficients
| 45 | 11,257 | .92*** | | | |
| (.91, .92) | |||||
| 28 | 8,492 | .47*** | .41*** | 14.31*** | |
| (.45, .48) | (.39, .43) | ||||
***p < .001. k = number of datasets, N = total number of participants across datasets, Z = test for difference between SRHI-behaviour and SRBAI-behaviour correlation coefficients (see [37]).
SRHI vs SRBAI as moderator of the intention-behaviour relationship
| De Bruijn
[ | 538 | Eating at least 2 pieces of fruit per day | To eat two pieces of fruit per day | I, H, PBC, A, SN | .39(<.001) | .34(<.001) | .16(.01) | .44(<.001) | .38(<.001) | .24(<.001) | ||
| 538 | Using a bicycle | To use a bicycle | I, H, PBC, IA, AA, SN, DG, DA | .28(<.001) | .16(.004) | .15(.01) | .31(<.001) | .23(<.001) | .22(<.001) | |||
| 538 | Exercising for at least 20 mins per day | To engage in vigorous exercise | I, H, PBC, IA, AA, SN | .22(.001) | .15(.007) | .06(.38) | .27(<.001) | .22(<.001) | .15(.02) | |||
| De Bruijn, Kroeze et al.
[ | 748 | Watching the amount of fat in my diet | To watch the amount of fat in my diet | I, H, PBC, IA, AA, SN | -.29(<.001) | -.19(<.001) | .07(.14) | -.36(<.001) | -.23(<.001) | -.11(<.001) | ||
| De Bruijn, Kremers, Singh et al.
[ | 317 | Using a bicycle as a means of transportation | To use bicycle for transportation | OB, D, I, PBC, A, SN, H | .67(<.001) | .37(<.001) | .10(.11) | .56(<.001) | .37(<.001) | .18(.007) | ||
| Norman
[ | 109 | Binge-drinking | To engage in binge-drinking | I, H | .28(.01) | .42(.001) | .57(<.001) | .35(.001) | .52(<.001) | .68(<.001) | ||
| Rhodes, De Bruijn & Matheson
[ | 153 | Leisure time active sport or vigorous PA | To engage in PA (x) times per week | I, H, PBC, AA, IA, SN, IS, IxIS | .42(.03) | .34(.001) | .78(<.001) | .52(.005) | .38(<.001) | .48(.01) | ||
PA = Physical activity. Covariates: I = Intention, H = Habit (SRHI/SRBAI), PBC = Perceived behavioral control, A = Attitude, IA = Instrumental attitude, AA = Affective attitude, SN = Subjective norm, IS = Intention stability, IxIS = Intention x intention stability, D = (various) demographics, OB = engagement in (various) other behaviors. DG = Demographic: Gender. DA = Demographic: Age. Italicised references indicate papers based on same data but in which the focal moderation test was not reported.
Habit indices as correlates of behaviour and moderators of intention-behaviour relationship in four primary datasets
| Dataset 1: (
[ | 105 | Inactive (car) commuting | “Using a car to commute to campus” | “To use a car to commute to campus on most days” | SRHI (.95) | .94 | .52 | .82a | .75 | .001 | .54*** | .27* | .01 |
| SRBAI (.92) | .52 | .76b | .75 | <.001 | .69*** | .41*** | .12 | ||||||
| Non-SRBAI (.91) | .49 | .81a | .73 | .01 | .57*** | .37** | .16 | ||||||
| Dataset 2: (
[ | 102 | Active (bicycle) commuting | “Using a bicycle to commute to campus” | “To use a bicycle to commute to campus on most days” | SRHI (.95) | .97 | .67 | .86 a | .77 | .04 | .16 | .02 | -.12 |
| SRBAI (.93) | .65 | .86 a | .77 | .04 | .21* | .08 | -.05 | ||||||
| Non-SRBAI (.91) | .67 | .84 a | .74 | .04 | .26** | .12 | -.02 | ||||||
| Dataset 3: | 188 | Unhealthy snacking | “Eating high-calorie snacks” | “To avoid high-calorie snacks” | SRHI (.89) | .90 | - | .50a | .26 | .89 | | | |
| SRBAI (.84) | - | .42b | .19 | .35 | | | | ||||||
| Non-SRBAI (.81) | - | .50a | .27 | .95 | | | | ||||||
| Dataset 4: | 204 | Alcohol consumption with the evening meal | “Drinking an alcoholic drink with my evening meal” | “To drink an alcoholic drink with my evening meal” | SRHI (.89) | .95 | - | .80 a | .68 | .14 | | | |
| SRBAI (.84) | - | .75 b | .64 | .02 | .56*** | .46*** | .35*** | ||||||
| Non-SRBAI (.81) | - | .80 a | .68 | .18 | |||||||||
*p < .05, ** p < .01, *** p < .001. Further details and analyses of all datasets are available on request from the first author.
† Ns are reduced for correlations with RFM in Datasets 1 (N = 102) and 2 (N = 99) due to missing RFM data.
†† Differing superscript letters in ‘habit-behaviour’ column indicate differences in the magnitude of habit-behaviour correlations at p < .05 (see [37]). Correlations with the transport-specific RFM were only available in Datasets 1 and 2. All correlations significant at p < .01.
††† All regression models were significant at p < .001.
†††† ‘Moderation effect’ refers to the predictive impact of a means-centred habit x intention interaction term on behaviour, controlling for habit and intention as independent predictors. Simple slope coefficients are provided for significant moderation effects only (p < .05).