| Literature DB >> 28288657 |
Felicity J Pendergast1, Nicola D Ridgers2, Anthony Worsley2, Sarah A McNaughton2.
Abstract
BACKGROUND: Dietary assessment methods are limited in their ability to adequately measure food and beverage consumption. Smartphone applications may provide a novel method of dietary assessment to capture real-time food intake and the contextual factors surrounding eating occasions. The aim of this study is to evaluate the capability of a Smartphone meal diary app ("FoodNow") to measure food intake using a validated objective method for assessing energy expenditure among young adults.Entities:
Keywords: Dietary assessment; Energy intake; Evaluation; SenseWear armband; Smartphone applications
Mesh:
Year: 2017 PMID: 28288657 PMCID: PMC5348892 DOI: 10.1186/s12966-017-0488-9
Source DB: PubMed Journal: Int J Behav Nutr Phys Act ISSN: 1479-5868 Impact factor: 6.457
Characteristics of the young adult participants (n = 90)
| Characteristic | |
|---|---|
| Age (years), Mean ± SD | 24.9 ± 4.1 |
| Sex (female), n (%) | 71 (79) |
| Height (m), Mean ± SD | 1.7 ± 9.2 |
| Weight visit 1 (kg), Mean ± SD | 65.7 ± 13.0 |
| Weight visit 2 (kg), Mean ± SD | 65.4 ± 13.3 |
| Body mass index (kg/m2), Mean ± SD | 22.84 ± 3.1 |
| Weight status, n (%) | |
| Underweight (BMI < 18.5) | 3 (3) |
| Healthy weight (BMI 18.5–24.9) | 68 (76) |
| Overweight (BMI 25–29.9) | 17 (19) |
| Obese (BMI > 30) | 2 (2) |
| Special diet (no), n (%) | 89 (99) |
| Smoker (no), n (%) | 88 (98) |
| Country of birth, n (%) | |
| Australia | 76 (84) |
| Other | 14 (16) |
| SEIFA, n (%) | |
| Low | 4 (4) |
| Medium | 17 (19) |
| High | 69 (77) |
| Highest qualification, n (%) | |
| Higher school certificate (Year 12 or equivalent) | 16 (18) |
| Trade/apprenticeship (e.g. hairdresser, chef) | 3 (3) |
| Certificate/diploma (e.g. childcare, technical) | 8 (9) |
| University degree | 43 (48) |
| Higher University degree (e.g. Graduate Diploma, Masters) | 20 (22) |
SEIFA Australian Bureau of Statistics Socio-economic Index for Areas
Fig. 1STROBE-nut flow diagram of analytical sample
Differences in under reporters, adequate reporters, over reporters and those who were excluded from analysis
| Characteristic | Under reporters ( | Adequate reporters ( | Over reporters ( | Excluded ( |
|---|---|---|---|---|
| Age (years), Mean ± SD | 23.90 ± 2.61 | 25.1 ± 4.68 | 24.97 ± 1.82 | 26.00 ± 2.78 |
| Sex (female), n (%) | 14 (74) | 41 (73) | 2 (100) | 12 (92) |
| Body mass index (kg/m2), Mean ± SD | 23.53 ± 2.24, | 22.79 ± 3.16 | 22.28 ± 1.94 | 22.16 ± 3.56 |
| Country of birth (Aus), n (%) | 16 (84) | 48 (86) | 2 (100) | 10 (77) |
| SEIFA (high), n (%) | 16 (84) | 44 (79) | 1 (50) | 8 (62) |
| Highest qualification (university degree or higher), n (%) | 14(74) | 39 (70) | 1 (50) | 9 (69) |
| Smoking Status (smokers), n (%) | 0 | 1 (2) | 0 | 1 (8) |
SEIFA Australian Bureau of Statistics Socio-economic Index for Areas
Fig. 2Scatterplot between measured energy intake and estimated energy intake with regression line (n = 56). kJ: Kilojoule
Fig. 3Bland-Altman plots between the mean estimated energy intake (EEI) and the difference in EEI and MEE in 56 young adults (n = 56). EEI: Estimated energy intake, MEE: Measured energy expenditure