Center for Weight, Eating, and Lifestyle Sciences (WELL Center), Drexel University, Philadelphia, Pennsylvania, USA.
Department of Psychology, Drexel University, Philadelphia, Pennsylvania, USA.
Eur Eat Disord Rev. 2024 Jul;32(4):828-837. doi: 10.1002/erv.3094. Epub 2024 Apr 3.
Going extended periods of time without eating increases risk for binge eating and is a primary target of leading interventions for binge-spectrum eating disorders (B-EDs). However, existing treatments for B-EDs yield insufficient improvements in regular eating and subsequently, binge eating. These unsatisfactory clinical outcomes may result from limitations in assessment and promotion of regular eating in therapy. Detecting the absence of eating using passive sensing may improve clinical outcomes by facilitating more accurate monitoring of eating behaviours and powering just-in-time adaptive interventions. We developed an algorithm for detecting meal consumption (and extended periods without eating) using continuous glucose monitor (CGM) data and machine learning.
Adults with B-EDs (N = 22) wore CGMs and reported eating episodes on self-monitoring surveys for 2 weeks. Random forest models were run on CGM data to distinguish between eating and non-eating episodes.
The optimal model distinguished eating and non-eating episodes with high accuracy (0.82), sensitivity (0.71), and specificity (0.94).
These findings suggest that meal consumption and extended periods without eating can be detected from CGM data with high accuracy among individuals with B-EDs, which may improve clinical efforts to target dietary restriction and improve the field's understanding of its antecedents and consequences.
长时间不进食会增加暴食的风险,是暴食谱系进食障碍(B-ED)主要干预目标。然而,现有的 B-ED 治疗方法在常规进食方面的改善效果并不理想,随后暴食行为也会再次出现。这些不尽人意的临床结果可能源于治疗中在评估和促进常规进食方面存在局限性。使用被动感应技术检测进食缺失,可能会通过更准确地监测进食行为和提供及时自适应干预,从而改善临床结果。我们开发了一种使用连续血糖监测仪(CGM)数据和机器学习来检测进食(和长时间不进食)的算法。
22 名患有 B-ED 的成年人佩戴 CGM 并在自我监测调查中报告了 2 周的进食事件。在 CGM 数据上运行随机森林模型,以区分进食和非进食事件。
最佳模型以高准确度(0.82)、高灵敏度(0.71)和高特异性(0.94)区分了进食和非进食事件。
这些发现表明,在 B-ED 个体中,CGM 数据可以高精度地检测到进餐和长时间不进食,这可能会改善针对饮食限制的临床干预,并提高该领域对其前因后果的理解。