| Literature DB >> 28785177 |
Gina Louise Trakman1, Adrienne Forsyth1, Russell Hoye2, Regina Belski1,3.
Abstract
BACKGROUND: Appropriate dietary intake can have a significant influence on athletic performance. There is a growing consensus on sports nutrition and professionals working with athletes often provide dietary education. However, due to the limitations of existing sports nutrition knowledge questionnaires, previous reports of athletes' nutrition knowledge may be inaccurate.Entities:
Keywords: Classical test theory; Measure; Nutrition knowledge; Questionnaire; Rasch analysis; Sports nutrition; Valid
Mesh:
Year: 2017 PMID: 28785177 PMCID: PMC5543556 DOI: 10.1186/s12970-017-0182-y
Source DB: PubMed Journal: J Int Soc Sports Nutr ISSN: 1550-2783 Impact factor: 5.150
Fig. 1Flow chart of 8-step methadology used to develop and validate the Nutrition for Sport Questionnaire (UNSQ). * Content Validity = the measure covers all relevant topics related to sports nutrition. † CVI = Number of experts who rated an item ‘very relevant’ or ‘relevant’ divided by total number of experts; > 0.78 is adequate. ‡ Face Validity = the measure, on face value is an adequate reflection of sports nutrition. § Difficulty index = frequency with which items were answered correctly; <20% = too hard; >80% = too easy. ǁ Discrimination index = average score of top 10% of participants minus average score of bottom 10% of participants; > 0.3 is adequate. ¶ Distractor utility = frequency with which each multi-choice option is selected; > 5% = effective distractor. **Fit residuals between −2.5 and 2.5 indicate observed = expected responses. ††DIF assessed using ANOVA; non-significant p-value = no differences in response pattern based on participant characteristics; ‡‡ Disordered thresholds are assessed graphically. §§ Perc5% statistic <5% = scale is unidimensional (assessing one concept). ǁ ǁ SD of 0 and Mean of 1for the overall item/person interaction = perfect fit to Rasch model; a SD > 1.5 = misfit. ¶¶ Significant differences in known-group comparison scores = construct validity (questionnaire test what it is supposed to). *** Pearson’s r > 0.7 = test-retest reliability (stability overtime). ††† KR-20 > 0.7 = Internal reliability (consistency in items)
Characteristics of participants included in the first item analysis using CTT and Rasch analysis (n = 188)
| Characteristic | Option: N (% available data) |
|---|---|
| Gender | Male: 77 (42) |
| Female: 106 (58) | |
| Age | 17–25: 45 (25) |
| 26–35: 73 (41) | |
| 36–45: 35 (20) | |
| 46–55: 18 (11) | |
| 56–65: 8 (4) | |
| Country of Birth (COB) | Australia: 159 (86) |
| New Zealand: 4 (2) | |
| USA: 6 (3) | |
| UK: 6 (3) | |
| Other: 10 (5) | |
| Marital Status | Single: 95 (51) |
| Married/De-facto: 85 (46) | |
| Divorced: 5 (3) | |
| Highest level of education | Primary School: 2 (1) |
| High School: 23 (13) | |
| Vocational education or other diploma: 19 (10) | |
| University: | |
| Bachelors/Undergrad degree: 90 (49) | |
| Honors/Master: 43 (23) | |
| Doctorate: 7 (4) | |
| Main sport played | AFL: 77 (42)) |
| Basketball: 3 (2) | |
| Cricket: 19 (10) | |
| Cycling: 3 (2) | |
| Distance running: 30 (16) | |
| Netball: 10 (5) | |
| Soccer/Football: 8 (4) | |
| Swimming: 4 (2) | |
| Rowing: 2 (2) | |
| Other: 28 (15) | |
| Hours Training /Week | 1.0–28.0 (2.7+/−1.1) |
| Athletic Caliber | International: 11 (6) |
| National: 16 (9) | |
| State: 36 (21) | |
| Local: 88 (50) | |
| Recreational: 25 (14) | |
| Paid to play sport | Yes: 9 (5) |
| No: 172 (95) | |
| Formal nutrition studies | Yes: 35 (19) |
| No: 147 (81) | |
| Advice to change diet | Yes: 91 (49) |
| No: 96 (51) |
There was data missing for gender (n = 5), age (n = 9), COB (n = 3), marital status (n = 3), education (n = 4), main sport played (n = 4), hours training (n = 12), athletic caliber (n = 12), paid to play sport (n = 7), formal nutrition studies (n = 6), advice to change diet (n = 1). Percentages have been rounded to the nearest whole figure and reported based on available data
Characteristics of participants included in Study Two analysis (n = 181)
| Characteristic | First completion: n (% available data) | Second completion: n (%) |
|---|---|---|
| Gender | Male: 36 (26) | Male: 6 (21) |
| Female: 103 (74) | Female: 22 (79) | |
| Age | 17–25: 77 (53) | 17–25: 15 (54) |
| 26–35: 35 (24) | 26–35: 5 (18) | |
| 36 - 45: 21 (15) | 37 - 45: 3 (11) | |
| 46 - 55: 6 (4) | 46 - 55: 3 (11) | |
| >55: 6 (4) | >55: 2 (7) | |
| Country of Birth (COB) | Australia: 111 (80) | Australia: 23 (82) |
| Outside Australia: 27 (20) | Outside Australia: 5 (18) | |
| Marital status | Single: 95 (68) | Single: 18 (64) |
| Married/De-facto: 39 (28) | Married/De-facto: 7 (25) | |
| Divorced: 5 (4) | Divorced: 3 (11) | |
| Highest level of education | High school: 3 (2) | |
| Vocational training or other diploma: 3 (2) | Bachelor/undergraduate degree: 18 (64) | |
| Bachelor/undergraduate degree: 87 (60) | Honours/master’s degree: 7 (25) | |
| Honours/master’s degree: 35 (24) | Doctoral degree): 3 (11) | |
| Doctoral degree: 16 (11) | ||
| Nutrition education | Yes: 77 (52) | Yes: 20 (71) |
| No: 70 (48) | No: 8 (29) | |
| Plays sport on a regular basis | Yes: 88 (66) | Yes: 12 (43) |
| No: 45 (34) | No: 16 (57) |
For first round completion (n 153), there was data missing for gender (n = 14); age (n = 8); COB (n = 15); marital status (n = 19); education (n = 9); nutrition education (n = 6); sport (n = 20). There was no missing data for second round completion (n 28). Percentages have been rounded to the nearest whole figure and reported based on available data
Comparison of scores between individuals with and without previous nutrition education; test-retest reliability; internal reliability analysis; results of Rasch analysis
| Section | Score (%): Nutrition education | Score (%): No nutrition education | Score p-level | Pearson’s Correlation R (p- level) | KR-20+ | Dimensionality (Per < 5%) | Bonferroni adjusted p-level | Item fit statistics |
|---|---|---|---|---|---|---|---|---|
| *Overall ( | 64. 65 (16) | 52 (19) | <0.001 | 0.92 (<0.001) | 0.0.87 | 19.3% | 0.0005 | Persons SD = 1.0271, Mean = −0.0938 |
| Items SD = 1.324, Mean = 0.0724 | ||||||||
| Chi-Square probability = 0.000 | ||||||||
| **WeightManagement ( | 77 (23) | 62 (31) | <0.001 | 0.0.81 (<0.001) | 0.62 | 2.8% | 0.004 | Persons SD = 0.62, Mean = −0.12; |
| Items SD = 1.06; Mean = 0.02; | ||||||||
| Chi Square probability = 0.01 > 0.004 | ||||||||
| *Macronutrients ( | 78 (15) | 61 (16) | <0.001 | 0.0.81 (<0.001) | 0.78 | 5.0% | 0.002 | Persons SD = 0.72, Mean = −0.11; |
| Items SD = 1.35; Mean = 0.05; | ||||||||
| Chi Square probability = 0.0000 < 0.002 | ||||||||
| **Micronutrients ( | 69 (23) | 50.0 (30.8) | <0.001 | 0.76 (<0.001) | 0.71 | 0.0% | 0.005 | Persons SD = 0.80, Mean = −0.21; |
| 50 (31) | ||||||||
| Items SD = 1.16; Mean = −0.36; | ||||||||
| Chi Square probability = 0.0002 < 0.0004 | ||||||||
| **Sports Nutrition ( | 54 (23) | 46 (23) | <0.001 | 0.0.73 (<0.001) | 0.63 | 1.7% | 0.004 | Persons SD = 0.57, Mean = −0.19; |
| Items SD = 1.39; Mean = 0.06; | ||||||||
| Chi Square probability = 0.009 > 0.004 | ||||||||
| **Supplements ( | 33 (33) | 25 (25) | <0.001 | (0.60.35 (0.6) | 0.0.69 | 0.0% | 0.004 | Persons SD = 0.69, Mean = −0.13; |
| Items SD = 0.82; Mean = −0.20; | ||||||||
| Chi Square probability = 0.02 > 0.004 | ||||||||
| **Alcohol ( | 63 (31) | 63 (25) | 0.0.80 | 0.66 (<0.001) | 0.0.51 | 0.0% | 0.007 | Persons SD = 0.65, Mean = −0.14; |
| Items SD = 1.1; Mean = −0.09; | ||||||||
| Chi Square probability = 0.003 < 0.007 |
*Normally distributed; scores reported as Mean (SD) **Non-normally distributed; scores reported as Median (IQR). CTT: Significant differences in groups scores indicate construct validity; Pearson’s r of 0.7 indicates adequate test-retest reliability; a KR-20 of 0.7 indicates adequate internal reliability. Rasch analysis: A non-significant Bonferroni adjusted chi-square probability indicates items are equally difficult across all participants (i.e. are good discriminators); a SD of 1 and Mean of 0 (for persons/items) indicate perfect fit to the Rasch model; a SD of >1.5 indicates the assumptions that difficult items are less likely to be answered correctly or well-scoring participants are more likely to answer questions correctly has not been met