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UVM KID 研究:识别多模态特征并优化可穿戴仪器以检测儿童焦虑。

UVM KID Study: Identifying Multimodal Features and Optimizing Wearable Instrumentation to Detect Child Anxiety.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:1141-1144. doi: 10.1109/EMBC48229.2022.9871090.

DOI:10.1109/EMBC48229.2022.9871090
PMID:36085630
Abstract

Anxiety and depression, collectively known as internalizing disorders, begin as early as the preschool years and impact nearly 1 out of every 5 children. Left undiagnosed and untreated, childhood internalizing disorders predict later health problems including substance abuse, development of comorbid psychopathology, increased risk for suicide, and substantial functional impairment. Current diagnostic procedures require access to clinical experts, take considerable time to complete, and inherently assume that child symptoms are observable by caregivers. Multi-modal wearable sensors may enable development of rapid point-of-care diagnostics that address these challenges. Building on our prior work, here we present an assessment battery for the development of a digital phenotype for internalizing disorders in young children and an early feasibility case study of multi-modal wearable sensor data from two participants, one of whom has been clinically diagnosed with an internalizing disorder. Results lend support that sacral movement responses and R-R interval during a short stress-induction task may facilitate child diagnosis. Multi-modal sensors measuring movement and surface biopotentials of the chest and trapezius are also shown to have significant redundancy, introducing the potential for sensor optimization moving forward. Future work aims to further optimize sensor placement, signals, features, and assessments to enable deployment in clinical practice. Clinical Relevance- This work considers the development and optimization of technologies for improving the identification of children with internalizing disorders.

摘要

焦虑和抑郁统称为内化障碍,早在学龄前就开始出现,影响近五分之一的儿童。如果不进行诊断和治疗,儿童内化障碍会预测以后的健康问题,包括药物滥用、合并精神病理学的发展、自杀风险增加和严重的功能障碍。目前的诊断程序需要临床专家的参与,需要相当长的时间才能完成,并且内在地假设儿童的症状可以被照顾者观察到。多模态可穿戴传感器可以实现快速的即时诊断,从而解决这些挑战。在我们之前的工作基础上,我们在这里提出了一个评估电池,用于开发针对幼儿内化障碍的数字表型,以及对来自两名参与者的多模态可穿戴传感器数据的早期可行性案例研究,其中一名参与者被临床诊断为内化障碍。研究结果表明,在短时间的应激诱导任务中,骶骨运动反应和 R-R 间期可能有助于儿童的诊断。还表明,测量胸部和斜方肌运动和表面生物电势的多模态传感器具有显著的冗余性,为今后的传感器优化带来了潜力。未来的工作旨在进一步优化传感器的位置、信号、特征和评估,以实现临床实践中的应用。临床意义——这项工作考虑了改进内化障碍儿童识别技术的开发和优化。

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