Beverage Consumption Patterns among U.S. Adolescents and Adults from a New 24-h Beverage Recall Survey Compared to the National Health and Nutrition Examination Survey (NHANES) 2017–2018
Abstract
:1. Introduction
2. Materials and Methods
2.1. ABA-BSW
- Time of beverage consumption (6 a.m.–8 a.m., 8 a.m.–11 a.m., 11 a.m.–2 p.m., 2 p.m.–5 p.m., 5 p.m.–8 p.m., and 8 p.m.–6 a.m.),
- Type of beverage (e.g., regular CSD, LNCS CSD, ready-to-drink or not, caffeinated or decaffeinated, sparkling or still, etc.),
- Brand of beverage from a listing for each beverage type and an option to enter the brand (if not listed), and
- Container volume and fraction of the container consumed (e.g., between ½ and ¾ of a 20–24-ounce container); participants were also permitted to directly enter the volume consumed.
2.2. WWEIA Component of NHANES
2.3. Study Population
2.4. Statistical Analyses
3. Results
3.1. Demographic Characteristics
3.2. Total Daily Consumption Amounts
3.3. Number of COs per Day and Amount per CO
3.4. Consumption Patterns during the Day
4. Discussion
4.1. Total Daily Consumption Amounts
4.2. Number of COs per Day and Amount per CO
4.3. Comparing the Design of the the ABA-BSW 2021 and NHANES 2017–2018 Surveys (Strengths and Limitations)
4.4. Additional Comments
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
ABA | American Beverage Association |
AMPM | Automated Multiple-Pass Method |
BSW | Brandscapes Worldwide |
CO | Consumption occasion |
CSD | Carbonated Soft Drinks |
FFQ | Food frequency questionnaire |
LNCS | Low- and No-Calorie Sweetened |
NCHS | National Center for Health Statistics |
NCI | National Cancer Institute |
NHANES | National Health and Nutrition Examination Survey |
P90:P10 | 90th-to-10th percentile ratio |
RIM | Random iterative method |
SSB | Sugar Sweetened Beverages |
U.S. | United States |
WWEIA | What We Eat in America |
y | Years |
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Beverage Types | Description/Examples |
---|---|
Bottled water | Unsweetened bottled still or sparkling water |
Carbonated Soft drink (CSD) | Regular, diet, reduced sugar, caffeinated or caffeine-free carbonated soft drinks such as but not limited to ginger ale, cola, root beer, and pepper type |
Coffee | Hot or iced brewed, instant, or bottled coffee including but not limited to with/without milk, with/without sweetener, with/without caffeine café con leche, cappuccino, latte, Turkish coffee, cafe mocha, and other coffee drinks |
Dairy-Based Drinks | Chocolate and other flavored milk (includes hot chocolate/cocoa), eggnog, malted milk, dairy-based smoothie, milkshake |
Energy Drinks | Sugar-sweetened and sugar-free energy drinks including but not limited to Red Bull, Rockstar, and Monster |
Flavored Water | Sugar-sweetened or low-calorie or no-calorie sweetened flavored water beverages including but not limited to Glaceau Water and Propel |
Nutritional Beverages | Meal supplement or replacement beverages including but not limited to Boost, Ensure, and other protein drinks; nutritional powder converted to reconstituted volumes |
Plain Milk consumed as a beverage | Plain cow’s milk and goat’s milk, whole, low fat, reduced fat, fat free |
Plant-Based Drinks | Almond milk, soy milk, rice milk, and coconut milk including but not limited to flavored drinks |
Plant water | Coconut water |
Sports Drinks | Thirst quencher beverage including but not limited to Gatorade and Powerade |
Still Juices and Fruit Flavored Drinks | 100% fruit and vegetable juices, fruit nectar, fruit and/or vegetable based smoothies, and fruit-flavored drinks |
Tap water | Tap Water |
Tea | Hot or iced brewed, instant, or bottled teas including but not limited to unsweetened, pre-sweetened, regular or diet black, green, and herbal teas |
Characteristic, Weighted % | Survey | |
---|---|---|
ABA-BSW 2021 | NHANES 2017–2018 | |
Unweighted Sample Size | 20,553 | 4436 |
Age (y) 1 | 38 (25, 51) | 38 (25, 52) |
Age Group | ||
13 to 19 y | 13.0% | 13.7% |
20 to 49 y | 58.5% | 56.5% |
50 to 64 y | 28.5% | 29.9% |
Sex | ||
Male | 49.8% | 49.0% |
Female | 50.2% | 51.0% |
Race/Ethnicity | ||
Hispanic | 19.1% | 18.8% |
Non-Hispanic, White | 58.6% | 56.9% |
Non-Hispanic, Black | 13.1% | 12.5% |
Non-Hispanic, Asian | 6.3% | 6.3% |
Other race | 3.0% | 5.6% |
Marital Status 2 | ||
Single | 38.6% | 23.9% |
Married/In a relationship | 51.6% | 61.5% |
Divorced/Widowed/Separated | 8.9% | 14.6% |
Declined to Answer | 0.9% | 0.04% |
Household size | ||
1 to 3 | 63.5% | 55.2% |
4 to 5 | 31.1% | 33.6% |
6 or more | 5.4% | 11.3% |
Beverage Type | Statistics (mL/Day) | Survey | |
---|---|---|---|
ABA-BSW 2021 | NHANES 2017–2018 | ||
(n = 20,553) | (n = 4436) | ||
All beverages (excluding tap water) | % Consumers | 98.7% | 97.0% |
Per Capita Mean | 1878 | 1653 | |
Per Consumer Estimates | |||
Mean | 1903 | 1704 | |
P10 | 474 | 445 | |
P25 | 896 | 805 | |
P50 | 1577 | 1431 | |
P75 | 2510 | 2226 | |
P90 | 3646 | 3240 | |
P90:P10 ratio | 8 | 7 | |
Bottled water | % Consumers | 48.5% | 50.8% |
Per Capita Mean | 428 | 692 | |
Per Consumer Estimates | |||
Mean | 882 | 1362 | |
P10 | 181 | 360 | |
P25 | 361 | 507 | |
P50 | 631 | 1014 | |
P75 | 1241 | 1800 | |
P90 | 2022 | 2700 | |
P90:P10 ratio | 11 | 8 | |
CSD (total) | % Consumers | 53.4% | 35.8% |
Per Capita Mean | 385 | 241 | |
Per Consumer Estimates | |||
Mean | 721 | 672 | |
P10 | 134 | 186 | |
P25 | 293 | 334 | |
P50 | 536 | 480 | |
P75 | 943 | 782 | |
P90 | 1538 | 1326 | |
P90:P10 ratio | 11 | 7 | |
Regular CSD | % Consumers | 43.5% | 30.0% |
Per Capita Mean | 294 | 190 | |
Per Consumer Estimates | |||
Mean | 676 | 634 | |
P10 | 125 | 186 | |
P25 | 260 | 326 | |
P50 | 476 | 450 | |
P75 | 887 | 744 | |
P90 | 1478 | 1256 | |
P90:P10 ratio | 12 | 7 | |
Low- and no-calorie sweetened (LNCS) CSD | % Consumers | 13.6% | 6.4% |
Per Capita Mean | 91 | 50 | |
Per Consumer Estimates | |||
Mean | 668 | 788 | |
P10 | 114 | 240 | |
P25 | 260 | 360 | |
P50 | 414 | 507 | |
P75 | 874 | 960 | |
P90 | 1478 | 1440 | |
P90:P10 ratio | 13 | 6 | |
Coffee | % Consumers | 54.5% | 47.4% |
Per Capita Mean | 271 | 263 | |
Per Consumer Estimates | |||
Mean | 497 | 555 | |
P10 | 125 | 195 | |
P25 | 236 | 270 | |
P50 | 355 | 390 | |
P75 | 623 | 675 | |
P90 | 1006 | 1020 | |
P90:P10 ratio | 8 | 5 | |
Dairy-based beverages | % Consumers | 14.9% | 4.9% |
Per Capita Mean | 48 | 20 | |
Per Consumer Estimates | |||
Mean | 326 | 406 | |
P10 | 79 | 176 | |
P25 | 125 | 248 | |
P50 | 255 | 352 | |
P75 | 414 | 494 | |
P90 | 634 | 636 | |
P90:P10 ratio | 8 | 4 | |
Energy drinks | % Consumers | 20.1% | 3.5% |
Per Capita Mean | 85 | 20 | |
Per Consumer Estimates | |||
Mean | 426 | 564 | |
P10 | 114 | 124 | |
P25 | 181 | 360 | |
P50 | 338 | 496 | |
P75 | 536 | 744 | |
P90 | 830 | 960 | |
P90:P10 ratio | 7 | 8 | |
Flavored water | % Consumers | 15.5% | 2.2% |
Per Capita Mean | 92 | 15 | |
Per Consumer Estimates | |||
Mean | 597 | 663 | |
P10 | 125 | 180 | |
P25 | 260 | 435 | |
P50 | 419 | 525 | |
P75 | 792 | 870 | |
P90 | 1241 | 1110 | |
P90:P10 ratio | 10 | 6 | |
Nutritional beverages | % Consumers | 9.7% | 4.6% |
Per Capita Mean | 36 | 20 | |
Per Consumer Estimates | |||
Mean | 372 | 433 | |
P10 | 79 | 213 | |
P25 | 163 | 240 | |
P50 | 296 | 384 | |
P75 | 414 | 512 | |
P90 | 670 | 640 | |
P90:P10 ratio | 9 | 3 | |
Plain milk | % Consumers | 23.8% | 10.0% |
Per Capita Mean | 89 | 38 | |
Per Consumer Estimates | |||
Mean | 375 | 384 | |
P10 | 79 | 153 | |
P25 | 159 | 244 | |
P50 | 273 | 336 | |
P75 | 414 | 488 | |
P90 | 754 | 641 | |
P90:P10 ratio | 10 | 4 | |
Plant-based drinks | % Consumers | 9.9% | 4.4% |
Per Capita Mean | 32 | 10 | |
Per Consumer Estimates | |||
Mean | 323 | 223 | |
P10 | 48 | 61 | |
P25 | 125 | 92 | |
P50 | 227 | 214 | |
P75 | 390 | 320 | |
P90 | 650 | 381 | |
P90:P10 ratio | 14 | 6 | |
Plant water | % Consumers | 1.7% | 0.6% |
Per Capita Mean | 8 | 3 | |
Per Consumer Estimates | |||
Mean | 443 | 579 | |
P10 | 79 | 300 | |
P25 | 181 | 444 | |
P50 | 375 | 690 | |
P75 | 536 | 690 | |
P90 | 852 | 690 | |
P90:P10 ratio | 11 | 2 | |
Sports drinks | % Consumers | 19.7% | 4.7% |
Per Capita Mean | 101 | 31 | |
Per Consumer Estimates | |||
Mean | 512 | 670 | |
P10 | 114 | 248 | |
P25 | 204 | 372 | |
P50 | 414 | 620 | |
P75 | 650 | 870 | |
P90 | 1072 | 992 | |
P90:P10 ratio | 9 | 4 | |
Still juices and fruit flavored drinks | % Consumers | 34.2% | 25.3% |
Per Capita Mean | 160 | 118 | |
Per Consumer Estimates | |||
Mean | 469 | 466 | |
P10 | 114 | 140 | |
P25 | 181 | 233 | |
P50 | 328 | 357 | |
P75 | 588 | 543 | |
P90 | 984 | 870 | |
P90:P10 ratio | 9 | 6 | |
Tea | % Consumers | 33.1% | 27.7% |
Per Capita Mean | 167 | 182 | |
Per Consumer Estimates | |||
Mean | 504 | 656 | |
P10 | 118 | 195 | |
P25 | 224 | 300 | |
P50 | 355 | 512 | |
P75 | 600 | 805 | |
P90 | 1065 | 1320 | |
P90:P10 ratio | 9 | 7 | |
Tap water 1 | % Consumers | 81.8% | 46.8% |
Per Capita Mean | 828 | 655 | |
Per Consumer Estimates | |||
Mean | 1012 | 1400 | |
P10 | 250 | 304 | |
P25 | 375 | 525 | |
P50 | 750 | 1035 | |
P75 | 1250 | 1920 | |
P90 | 1750 | 2899 | |
P90:P10 ratio | 7 | 10 |
Beverage Type | ABA-BSW 2021 | NHANES 2017–2018 | ||||
---|---|---|---|---|---|---|
Total Number of COs 1 | Average | Total Number of COs | Average | |||
COs/Day | mL/CO | COs/Day | mL/CO | |||
All beverages (excluding tap water) | 124,511 | 6.1 | 313 | 14,295 | 3.3 | 511 |
Bottled water | 24,574 | 2.5 | 349 | 4798 | 2.0 | 685 |
CSD (total) | 24,235 | 2.2 | 334 | 2366 | 1.5 | 460 |
Regular CSD | 19,155 | 2.1 | 328 | 2036 | 1.5 | 449 |
LNCS CSD | 5080 | 1.9 | 358 | 330 | 1.4 | 510 |
Coffee | 19,285 | 1.7 | 291 | 2253 | 1.3 | 441 |
Dairy-based drinks | 3897 | 1.3 | 249 | 275 | 1.1 | 370 |
Energy drinks | 5915 | 1.4 | 304 | 126 | 1.1 | 526 |
Flavored water | 6241 | 1.9 | 307 | 88 | 1.4 | 482 |
Nutritional beverages | 2744 | 1.4 | 272 | 155 | 1.2 | 358 |
Plain milk | 6619 | 1.4 | 269 | 509 | 1.1 | 336 |
Plant-based drinks | 2641 | 1.3 | 246 | 194 | 1.3 | 171 |
Plant water | 497 | 1.4 | 310 | 31 | 1.5 | 392 |
Sports drinks | 5666 | 1.4 | 359 | 250 | 1.1 | 606 |
Still juices and fruit flavored drinks | 10,773 | 1.6 | 298 | 1674 | 1.3 | 371 |
Tea | 11,424 | 1.7 | 303 | 1576 | 1.4 | 483 |
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Bi, X.; Davis, B.J.K.; Barraj, L.M.; Srinivasan, D.; Mahadev, P.; Mathew, P.; Mishra, D.; Scrafford, C.G.; Tran, N.L.; Jack, M.M. Beverage Consumption Patterns among U.S. Adolescents and Adults from a New 24-h Beverage Recall Survey Compared to the National Health and Nutrition Examination Survey (NHANES) 2017–2018. Nutrients 2023, 15, 3561. https://doi.org/10.3390/nu15163561
Bi X, Davis BJK, Barraj LM, Srinivasan D, Mahadev P, Mathew P, Mishra D, Scrafford CG, Tran NL, Jack MM. Beverage Consumption Patterns among U.S. Adolescents and Adults from a New 24-h Beverage Recall Survey Compared to the National Health and Nutrition Examination Survey (NHANES) 2017–2018. Nutrients. 2023; 15(16):3561. https://doi.org/10.3390/nu15163561
Chicago/Turabian StyleBi, Xiaoyu, Benjamin J. K. Davis, Leila M. Barraj, Devanathan Srinivasan, Parvati Mahadev, Preeti Mathew, Dibyendu Mishra, Carolyn G. Scrafford, Nga L. Tran, and Maia M. Jack. 2023. "Beverage Consumption Patterns among U.S. Adolescents and Adults from a New 24-h Beverage Recall Survey Compared to the National Health and Nutrition Examination Survey (NHANES) 2017–2018" Nutrients 15, no. 16: 3561. https://doi.org/10.3390/nu15163561
APA StyleBi, X., Davis, B. J. K., Barraj, L. M., Srinivasan, D., Mahadev, P., Mathew, P., Mishra, D., Scrafford, C. G., Tran, N. L., & Jack, M. M. (2023). Beverage Consumption Patterns among U.S. Adolescents and Adults from a New 24-h Beverage Recall Survey Compared to the National Health and Nutrition Examination Survey (NHANES) 2017–2018. Nutrients, 15(16), 3561. https://doi.org/10.3390/nu15163561