Emteq Ltd., Brighton, United Kingdom.
Faculty of Informatics, Università della Svizzera Italiana, Lugano, Switzerland.
JMIR Mhealth Uhealth. 2024 Sep 26;12:e59469. doi: 10.2196/59469.
The increasing prevalence of obesity necessitates innovative approaches to better understand this health crisis, particularly given its strong connection to chronic diseases such as diabetes, cancer, and cardiovascular conditions. Monitoring dietary behavior is crucial for designing effective interventions that help decrease obesity prevalence and promote healthy lifestyles. However, traditional dietary tracking methods are limited by participant burden and recall bias. Exploring microlevel eating activities, such as meal duration and chewing frequency, in addition to eating episodes, is crucial due to their substantial relation to obesity and disease risk.
The primary objective of the study was to develop an accurate and noninvasive system for automatically monitoring eating and chewing activities using sensor-equipped smart glasses. The system distinguishes chewing from other facial activities, such as speaking and teeth clenching. The secondary objective was to evaluate the system's performance on unseen test users using a combination of laboratory-controlled and real-life user studies. Unlike state-of-the-art studies that focus on detecting full eating episodes, our approach provides a more granular analysis by specifically detecting chewing segments within each eating episode.
The study uses OCO optical sensors embedded in smart glasses to monitor facial muscle activations related to eating and chewing activities. The sensors measure relative movements on the skin's surface in 2 dimensions (X and Y). Data from these sensors are analyzed using deep learning (DL) to distinguish chewing from other facial activities. To address the temporal dependence between chewing events in real life, we integrate a hidden Markov model as an additional component that analyzes the output from the DL model.
Statistical tests of mean sensor activations revealed statistically significant differences across all 6 comparison pairs (P<.001) involving 2 sensors (cheeks and temple) and 3 facial activities (eating, clenching, and speaking). These results demonstrate the sensitivity of the sensor data. Furthermore, the convolutional long short-term memory model, which is a combination of convolutional and long short-term memory neural networks, emerged as the best-performing DL model for chewing detection. In controlled laboratory settings, the model achieved an F-score of 0.91, demonstrating robust performance. In real-life scenarios, the system demonstrated high precision (0.95) and recall (0.82) for detecting eating segments. The chewing rates and the number of chews evaluated in the real-life study showed consistency with expected real-life eating behaviors.
The study represents a substantial advancement in dietary monitoring and health technology. By providing a reliable and noninvasive method for tracking eating behavior, it has the potential to revolutionize how dietary data are collected and used. This could lead to more effective health interventions and a better understanding of the factors influencing eating habits and their health implications.
肥胖症的患病率不断上升,这就需要创新方法来更好地了解这一健康危机,尤其是鉴于肥胖症与糖尿病、癌症和心血管疾病等慢性病之间存在很强的关联。监测饮食行为对于设计有助于降低肥胖症患病率和促进健康生活方式的有效干预措施至关重要。但是,传统的饮食跟踪方法受到参与者负担和回忆偏差的限制。除了饮食事件外,探索微观的饮食活动,如用餐时间和咀嚼频率,对于肥胖症和疾病风险具有重要意义。
本研究的主要目的是开发一种使用配备传感器的智能眼镜自动监测饮食和咀嚼活动的准确且非侵入性系统。该系统能够区分咀嚼和其他面部活动,如说话和咬牙。次要目的是通过实验室控制和真实用户研究的组合,评估系统在未见测试用户中的性能。与专注于检测完整饮食事件的最新研究不同,我们的方法通过专门检测每个饮食事件中的咀嚼片段,提供更细致的分析。
该研究使用嵌入智能眼镜中的 OCO 光学传感器监测与饮食和咀嚼活动相关的面部肌肉活动。传感器以 2 维(X 和 Y)测量皮肤表面的相对运动。使用深度学习(DL)分析来自这些传感器的数据,以区分咀嚼和其他面部活动。为了解决现实生活中咀嚼事件之间的时间依赖性问题,我们将隐马尔可夫模型作为附加组件集成到分析中,该模型分析 DL 模型的输出。
对所有涉及 2 个传感器(脸颊和太阳穴)和 3 种面部活动(进食、咬牙和说话)的 6 个比较对的传感器激活均值的统计检验均显示出具有统计学意义的差异(P<.001)。这些结果表明传感器数据具有敏感性。此外,对于咀嚼检测,表现最佳的 DL 模型是卷积长短期记忆模型,这是卷积和长短期记忆神经网络的组合。在实验室控制环境中,该模型的 F 分数为 0.91,性能稳健。在现实生活场景中,该系统对于检测饮食段,其准确率达到 0.95,召回率为 0.82。在现实生活研究中评估的咀嚼率和咀嚼次数与预期的现实生活中的进食行为一致。
本研究代表了饮食监测和健康技术的重大进展。通过提供一种可靠且非侵入性的方法来跟踪饮食行为,它有可能彻底改变饮食数据的收集和使用方式。这可能会导致更有效的健康干预措施,并更好地了解影响饮食习惯及其健康影响的因素。