Au Cheuk-Yan, Manazir Neha, Kang Huzhaorui, Saleem Bhagat Ali Asgar
Institute for Health Innovation & Technology (iHealthtech), National University of Singapore (NUS), MD6, 14 Medical Drive, #14-01, Singapore 117599, Singapore.
Department of Biomedical Engineering, National University of Singapore (NUS), 4 Engineering Drive 3, Singapore 117583, Singapore.
Sensors (Basel). 2025 Jul 10;25(14):4316. doi: 10.3390/s25144316.
Eczema, or atopic dermatitis (AD), is a chronic inflammatory skin condition characterized by persistent itching and scratching, significantly impacting patients' quality of life. Effective monitoring of scratching behaviour is crucial for assessing disease severity, treatment efficacy, and understanding the relationship between itch and sleep disturbances. This review explores current technological approaches for detecting and monitoring scratching and itching in AD patients, categorising them into contact-based and non-contact-based methods. Contact-based methods primarily involve wearable sensors, such as accelerometers, electromyography (EMG), and piezoelectric sensors, which track limb movements and muscle activity associated with scratching. Non-contact methods include video-based motion tracking, thermal imaging, and acoustic analysis, commonly employed in sleep clinics and controlled environments to assess nocturnal scratching. Furthermore, emerging artificial intelligence (AI)-driven approaches leveraging machine learning for automated scratch detection are discussed. The advantages, limitations, and validation challenges of these technologies, including accuracy, user comfort, data privacy, and real-world applicability, are critically analysed. Finally, we outline future research directions, emphasizing the integration of multimodal monitoring, real-time data analysis, and patient-centric wearable solutions to improve disease management. This review serves as a comprehensive resource for clinicians, researchers, and technology developers seeking to advance objective itch and scratch monitoring in AD patients.
湿疹,即特应性皮炎(AD),是一种慢性炎症性皮肤病,其特征为持续瘙痒和搔抓,严重影响患者的生活质量。有效监测搔抓行为对于评估疾病严重程度、治疗效果以及理解瘙痒与睡眠障碍之间的关系至关重要。本综述探讨了当前用于检测和监测AD患者搔抓和瘙痒的技术方法,并将其分为基于接触的方法和非基于接触的方法。基于接触的方法主要涉及可穿戴传感器,如加速度计、肌电图(EMG)和压电传感器,这些传感器可追踪与搔抓相关的肢体运动和肌肉活动。非接触方法包括基于视频的运动跟踪、热成像和声分析,这些方法通常用于睡眠诊所和受控环境中以评估夜间搔抓情况。此外,还讨论了利用机器学习进行自动搔抓检测的新兴人工智能(AI)驱动方法。对这些技术的优点、局限性和验证挑战,包括准确性、用户舒适度、数据隐私和实际适用性进行了批判性分析。最后,我们概述了未来的研究方向,强调多模态监测、实时数据分析和以患者为中心的可穿戴解决方案的整合,以改善疾病管理。本综述为寻求推进AD患者客观瘙痒和搔抓监测的临床医生、研究人员和技术开发人员提供了全面的资源。