Mishra Ram Kinker, AlAnsari Khalid, Cole Rylee, Nazarian Arin, Potter Ilkay Yildiz, Vaziri Ashkan
BioSensics LLC, Newton, MA 02458, USA.
Department of Emergency Medicine, Sidra Medicine, Al Rayyan Road, Doha P.O. Box 26999, Qatar.
Sensors (Basel). 2025 Aug 2;25(15):4767. doi: 10.3390/s25154767.
Shaken Baby Syndrome (SBS) is one of the primary causes of fatal head trauma in infants and young children, occurring in about 33 per 100,000 infants annually in the U.S., with mortality rates being between 15% and 38%. Survivors frequently endure long-term disabilities, such as cognitive deficits, visual impairments, and motor dysfunction. Diagnosing SBS remains difficult due to the lack of visible injuries and delayed symptom onset. Existing detection methods-such as neuroimaging, biomechanical modeling, and infant monitoring systems-cannot perform real-time detection and face ethical, technical, and accuracy limitations. This study proposes an inertial measurement unit (IMU)-based detection system enhanced with machine learning to identify aggressive shaking patterns. Findings indicate that wearable-based motion analysis is a promising method for recognizing high-risk shaking, offering a non-invasive, real-time solution that could minimize infant harm and support timely intervention.
摇晃婴儿综合征(SBS)是婴幼儿致命性头部创伤的主要原因之一,在美国每年每10万名婴儿中约有33例发生,死亡率在15%至38%之间。幸存者经常会长期残疾,如认知缺陷、视力障碍和运动功能障碍。由于缺乏可见损伤和症状出现延迟,SBS的诊断仍然困难。现有的检测方法,如神经成像、生物力学建模和婴儿监测系统,无法进行实时检测,并且面临伦理、技术和准确性方面的限制。本研究提出了一种基于惯性测量单元(IMU)并通过机器学习增强的检测系统,以识别剧烈摇晃模式。研究结果表明,基于可穿戴设备的运动分析是识别高风险摇晃的一种有前景的方法,提供了一种非侵入性的实时解决方案,可以将对婴儿的伤害降至最低并支持及时干预。