Smith Andrew, Jerzmanowski Kuba, Raynor Phyllis, Corbett Cynthia F, Valafar Homayoun
Department of Computer Science and Engineering, University of South Carolina, Columbia, SC 29201, USA.
Advancing Chronic Care Outcomes Through Research and iNnovation (ACORN) Center, Department of Biobehavioral Health & Nursing Science, College of Nursing, University of South Carolina, Columbia, SC 29201, USA.
Sensors (Basel). 2025 Apr 12;25(8):2443. doi: 10.3390/s25082443.
The opioid epidemic in the United States has significantly impacted pregnant women with opioid use disorder (OUD), leading to increased health and social complications. This study explores the feasibility of using machine learning algorithms with consumer-grade smartwatches to identify medication-taking gestures. The research specifically focuses on treatments for OUD, investigating methadone and buprenorphine taking gestures. Participants (n = 16, all female university students) simulated medication-taking gestures in a controlled lab environment over two weeks, with data collected via Ticwatch E and E3 smartwatches running custom ASPIRE software. The study employed a RegNet-style 1D ResNet model to analyze gesture data, achieving high performance in three classification scenarios: distinguishing between medication types, separating medication gestures from daily activities, and detecting any medication-taking gesture. The model's overall F1 scores were 0.89, 0.88, and 0.96 for each scenario, respectively. These findings suggest that smartwatch-based gesture recognition could enhance real-time monitoring and adherence to medication regimens for OUD treatment. Limitations include the use of simulated gestures and a small, homogeneous participant pool, warranting further real-world validation. This approach has the potential to improve patient outcomes and management strategies.
美国的阿片类药物流行对患有阿片类药物使用障碍(OUD)的孕妇产生了重大影响,导致健康和社会并发症增加。本研究探讨了使用机器学习算法与消费级智能手表来识别服药手势的可行性。该研究特别关注OUD的治疗方法,调查美沙酮和丁丙诺啡的服药手势。参与者(n = 16,均为女大学生)在受控实验室环境中进行了为期两周的服药手势模拟,数据通过运行定制ASPIRE软件的Ticwatch E和E3智能手表收集。该研究采用了RegNet风格的1D ResNet模型来分析手势数据,在三种分类场景中取得了高性能:区分药物类型、将服药手势与日常活动分开以及检测任何服药手势。该模型在每种场景下的总体F1分数分别为0.89、0.88和0.96。这些发现表明,基于智能手表的手势识别可以加强对OUD治疗的服药方案的实时监测和依从性。局限性包括使用模拟手势和规模小且同质化的参与者群体,需要进一步进行现实世界的验证。这种方法有可能改善患者的治疗效果和管理策略。