Content Validation of a Chrononutrition Questionnaire for the General and Shift Work Populations: A Delphi Study
Abstract
:1. Introduction
Development of a Chrononutrition Questionnaire
2. Materials and Methods
2.1. Recruitment
2.2. Data Collection and Management
2.3. Data Analysis
3. Results
3.1. Delphi Round 1
3.2. Delphi Round 2
3.3. Delphi Round 3
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Study Objective | Does the Delphi study aim to address consensus? | Yes, by presenting results reflecting the level of consensus amongst members of the expert panel. |
Participants | How will participants be selected or excluded? | Inclusion criteria:
|
Consensus definition | How will consensus be defined? | Consensus is defined as ≥70% agreement. |
Delphi process | Were items dropped? What criteria will be used to determine which items to drop? | No items were dropped, they were merged. Items will be dropped if there is ≥70% consensus on the rating “1: Irrelevant”. |
What criteria will be used to determine to stop the Delphi process or will it be run for a specific number of rounds only? | The Delphi process will run for only three rounds. |
n | % | ||
---|---|---|---|
Gender | Male | 5 | 18 |
Female | 23 | 82 | |
Age | 20–29 years | 4 | 14 |
30–39 years | 10 | 36 | |
40–49 years | 8 | 29 | |
50–59 years | 4 | 14 | |
60–69 years | 1 | 4 | |
≥70 years | 1 | 4 | |
Current role | Academic | 28 | 100 |
Clinician | 0 | 0 | |
Highest education level | Bachelor’s degree | 1 | 4 |
Master’s degree | 1 | 4 | |
Doctorate degree | 26 | 93 | |
Years of experience in the field of expertise | 1–5 years | 7 | 25 |
6–10 years | 8 | 29 | |
11–15 years | 3 | 11 | |
16–20 years | 3 | 11 | |
>20 years | 7 | 25 | |
Country of work | Australia | 11 | 39 |
Brazil | 2 | 7 | |
Canada | 1 | 4 | |
Czech Republic | 1 | 4 | |
Israel | 1 | 4 | |
Netherlands | 2 | 7 | |
United Kingdom | 4 | 14 | |
United States | 6 | 21 |
Expert Suggestions and Comments | Changes Made or Clarifications | |
---|---|---|
Questionnaire instructions and requirements | Include instructions to participants, with a clear recall period. | New section: “Instructions to participants” as suggested. |
Improve questionnaire format and layout. | As suggested, particularly:
| |
Improve choice of wording | As suggested. | |
Demographic data | Include questions about:
| New section: “Demographics”, to gather data as suggested. |
Outcomes of interest | Instead of “weekdays” and weekends”, use “work/school” and “work-free/school-free days”. | As suggested. |
Consider limitations of asking about sleep/wake patterns only on specific shift and free-day scenarios that not all shift workers have as part of their shift schedules. | Shift and free-day scenarios were based on the MCTQShift. It is acknowledged that shift workers whose shifts don’t align with these scenarios cannot be chronotyped. | |
Determine alarm clock use for waking, as in the MCTQ (waking up without an alarm clock better indicates circadian phase and estimation of chronotype). | Participants asked to state wake up time if able to choose freely (without using an alarm clock and unaffected by children/pets, hobbies) following the ultra-short MCTQ and MCTQ. | |
What is the time window for “day of a morning/afternoon/night shift” within which temporal patterns of eating are captured? | Updated definitions. | |
Consider that timing of eating occasions “on a work-free day” for shift workers may be affected by the prior day’s shift type. | Updated to “on a work-free day after a work-free day” to minimise influence of the prior day’s shift type on timing of eating occasions. | |
Will variation in timing of food intake within the same day type be captured? | Slight variations captured by asking about “typical” times. Otherwise, identified by question on regularity. | |
Better capture concept of regularity
|
| |
Consider if one has two meals that are equally large. | Updated to ask about time of largest meal(s). | |
Is defining largest meal by portion size too subjective? | No change (refer to Discussion). | |
Instead of time of largest meal, consider time when most calories are consumed (drinks and snacks may contain more than a meal). | ||
Refine definitions of terms. | As suggested. | |
Additional outcomes to include |
| Not included. |
Expert Suggestions and Comments | Changes Made or Clarifications | |
---|---|---|
Questionnaire instructions and requirements | Improve choice of wording. | As suggested. |
Improve questionnaire format and layout. | As suggested, particularly:
| |
Demographic data | Improve definition of “general population” as shift workers are technically within general population. | Removed, as redundant after addition of pathway questions. |
Allow participants to state if they go to both work and school, and the start and end times of each. | As suggested. | |
What does the term “school” refer to? | Adults who are studying. | |
Include option for non-standard shifts beyond morning/evening/night shifts. | Added option for split shift workers (refer to Discussion). | |
Outcomes of interest | Better capture concept of regularity:
|
|
What if shift workers have more than one sleep episode in between shifts? | They will be asked to choose times of main sleep, not naps. If they have ≥2 sleeps that are of equal duration, they may choose one, to be validated against data from sleep diaries/actigraphy in a later study. | |
One may not be able to freely choose wake up time unaffected by other factors (e.g., children/pets, hobbies). | Participants asked to specify wake up time without alarm clock use only. | |
Preference of time window for “day of a morning/afternoon/night shift” within which temporal patterns of eating are captured to be limited by sleep/wake time before and after the shift instead of 12 a.m.–12 a.m. limits for morning shifts and 12 p.m.–12 p.m. limits for afternoon and night shifts. | As suggested. | |
Aid identification of eating occasion (≥210 kJ) with a calorie counter. | ||
Refine definitions of terms. | ||
Additional outcomes to include | Food composition, as carbohydrate and fat-rich foods may be relevant in terms of timing of food intake. | Not included. |
Expert Suggestions and Comments | Changes Made or Clarifications | |
---|---|---|
Questionnaire instructions and requirements | Improve choice of wording. | As suggested. |
Demographic data | Provide definition for “work” to include both paid and unpaid work. | As suggested. |
Provide definition for “school”. | ||
“General population”: provide an option of “Other” for individuals do not go to work/school and are free to structure their day. | As suggested. | |
“Shift work population”: provide more shift options to categorise participants. | ||
Outcomes of interest | Better capture concept of regularity:
| No change (refer to Discussion). |
Consider if an eating occasion lasts a long duration (e.g., a drink sipped over 3 h). | ||
Refine definitions of terms within the questionnaire. | As suggested. | |
Additional outcomes to include | Are meal breaks at work scheduled or dependent on workload? | Not included (refer to Discussion). |
Other | Obtain mixed population feedback about language and burden of the questionnaire. | Considered. |
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Phoi, Y.Y.; Bonham, M.P.; Rogers, M.; Dorrian, J.; Coates, A.M. Content Validation of a Chrononutrition Questionnaire for the General and Shift Work Populations: A Delphi Study. Nutrients 2021, 13, 4087. https://doi.org/10.3390/nu13114087
Phoi YY, Bonham MP, Rogers M, Dorrian J, Coates AM. Content Validation of a Chrononutrition Questionnaire for the General and Shift Work Populations: A Delphi Study. Nutrients. 2021; 13(11):4087. https://doi.org/10.3390/nu13114087
Chicago/Turabian StylePhoi, Yan Yin, Maxine P. Bonham, Michelle Rogers, Jillian Dorrian, and Alison M. Coates. 2021. "Content Validation of a Chrononutrition Questionnaire for the General and Shift Work Populations: A Delphi Study" Nutrients 13, no. 11: 4087. https://doi.org/10.3390/nu13114087
APA StylePhoi, Y. Y., Bonham, M. P., Rogers, M., Dorrian, J., & Coates, A. M. (2021). Content Validation of a Chrononutrition Questionnaire for the General and Shift Work Populations: A Delphi Study. Nutrients, 13(11), 4087. https://doi.org/10.3390/nu13114087