| Literature DB >> 28797702 |
J Blechert1, M Liedlgruber2, A Lender3, J Reichenberger3, F H Wilhelm2.
Abstract
Research on eating behavior is limited by an overreliance on self-report. It is well known that actual food intake is frequently underreported, and it is likely that this problem is overrepresented in vulnerable populations. The present research tested a chewing detection method that could assist self-report methods. A trained sample of 15 participants (usable data of 14 participants) kept detailed eating records during one day and one night while carrying a recording device. Signals recorded from electromyography sensors unobtrusively placed behind the right ear were used to develop a chewing detection algorithm. Results showed that eating could be detected with high accuracy (sensitivity, specificity >90%) compared to trained self-report. Thus, electromyography-based eating detection might usefully complement future food intake studies in healthy and vulnerable populations.Entities:
Keywords: Ambulatory assessment; Chewing; Chewing episodes detection algorithm; Eating behavior; Electromyography
Mesh:
Year: 2017 PMID: 28797702 DOI: 10.1016/j.appet.2017.08.008
Source DB: PubMed Journal: Appetite ISSN: 0195-6663 Impact factor: 5.016