| Literature DB >> 31799938 |
Nabil Alshurafa1,2,3, Annie Wen Lin1, Fengqing Zhu4, Roozbeh Ghaffari5, Josiah Hester2,3, Edward Delp4, John Rogers5,6, Bonnie Spring1.
Abstract
BACKGROUND: Conventional diet assessment approaches such as the 24-hour self-reported recall are burdensome, suffer from recall bias, and are inaccurate in estimating energy intake. Wearable sensor technology, coupled with advanced algorithms, is increasingly showing promise in its ability to capture behaviors that provide useful information for estimating calorie and macronutrient intake.Entities:
Keywords: computer vision systems; computing methodologies; diet; eHealth; eating; energy intake; feeding behavior; mHealth; nutritional status; obesity; wearable technology
Mesh:
Year: 2019 PMID: 31799938 PMCID: PMC6920913 DOI: 10.2196/14904
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Overview of challenges in developing technology-enabled, automated caloric-monitoring methods.
Challenges and research opportunities in adopting image-based sensing methods.
| Challenge | Research opportunity |
| Lack of publicly available large-scale food image datasets with comprehensive | Develop feasible method to annotate food images crawled from the Web or collected from nutrition studies that can scale up |
| Inaccurate food image–segmentation algorithms | Reduce the burden of requiring fine-grain pixel-level training data for image segmentation and leverage accurate image or specific image region level information to improve food segmentation performance |
| Nonrobust food image–recognition systems | Design deep neural network–based models to capture structures in the image that are associated with specific foods and incorporate contextual information to improve robustness |
| Inaccurate food portion size estimation in image | Develop methods that can directly link food images to portion size; explore 3-dimensional information from newer camera sensors on mobile devices |
Challenges and research opportunities in adopting eating action unit–based sensing methods.
| Challenge | Research opportunity |
| Limited understanding of context surrounding system success and failures | Use wearable video cameras to validate contextual information surrounding when sensor–algorithm pairings fail in real-world settings |
| Privacy protection in | Identify novel ways of protecting bystanders and other sensitive information in the field of view of cameras both in hardware and software to ensure wearer privacy concerns are addressed, thereby increasing likelihood of capturing naturally occurring behavior |
| Inability to accurately distinguish between food categories | Define food categories that are most useful for clinicians and researchers for diet interventions and food recalls |
Challenges and research opportunities in adopting biochemical measure–based sensing methods.
| Challenge | Research opportunity |
| On-body biochemical monitoring | Apply wearable biochemical sensors to monitor electrolytes, metabolites, and proteins in biological fluids (eg, saliva, sweat, and interstitial fluid) |
| Stability of wearable sensors under different environmental conditions for metabolites, electrolytes, and proteins | Develop stable biochemical tests to determine concentrations (bioassays) of glucose, lactate, cortisol, ammonium, sodium, chloride, and potassium, which require limited handling and refrigeration with dehydration or freeze-drying methods |
| Reusable vs single-use wearable sensors | Develop low-cost battery and energy harvesting solutions to enable single-use and multiuse modes of operation |
Conventional subjective measurements of energy and macronutrient intake.
| Method | Description | Strengths | Limitations |
| 24-hour diet recalls | Inquiry about everything one had to eat and drink during the previous day (usually midnight to midnight); probes often used to collect more detail and standardize the interview | Open-ended, enabling greater detail about intake and food preparation; good for culturally diverse diets; less burdensome | Memory dependent; error prone in quantifying portion sizes; requires intensive interviewer effort, which can decrease motivation to collect accurate data; repeated measures needed to capture usual intake; can alter eating behaviors if recalls are scheduled in advance |
| Food records | Detailed list of all foods and drinks consumed over a specified amount of time, written by respondent and ideally using weight scales or measuring tools to determine portion size; provides data about actual intake | Open-ended; does not rely on memory if records are completed on time; allows for self-monitoring | Requires intensive respondent effort, which can decrease motivation to collect accurate data or lead to poor response rate; burdensome on staff to analyze data owing to entering and coding items; repeated measures needed to capture usual intake; can alter eating behaviors since respondents are monitoring their diets |
| Food frequency questionnaire | Questionnaire asking whether a food item was consumed during a specified period of time; contains 2 components (food list and frequency response question); provides data about relative intake | Measures usual intake; less burdensome on respondent and research staff | Memory dependent; food list is fixed and may not capture usual intake, particularly in a culturally diverse diet; may be difficult to quantify food portions without food images; difficult to inquire about mixed dishes; respondent may have difficulty interpreting the questions |