Singh Ripudaman Zeeba, Panchal Janav, Ali Sami, Krone Beth, Wert Isaac J, Owens Mark, Stein Mark, Shah Maulik V
MaxisHealth LLC., Edison, NJ, United States.
Department of Psychiatry, Icahn School of Medicine at Mount Sinai, New York, NY, United States.
Front Child Adolesc Psychiatry. 2025 Mar 21;4:1549220. doi: 10.3389/frcha.2025.1549220. eCollection 2025.
Attention Deficit Hyperactivity Disorder (ADHD) among children younger than 6 years is quite impairing, nearly half these youth with ADHD experience school exclusion from mainstream preschool classes due to related emotional and behavioral outbursts. While a range of behavior rating scales and subjective measures are used to assess these youth, objective methods of assessment and prediction derived from technology have potential to improve therapeutic and academic interventions outcomes for these youths. We hypothesized that biometric sensors would provide objective, highly sensitive and specific information regarding the physiological status of children prior to an impulsive outburst and could be feasibly implemented using a wearable device in the special education classroom.
We recruited two whole classrooms ( = 5 youth in the pre-K class and = 5 youth from the first grade) of a specialized therapeutic day-school for youth with ADHD and other psychiatric and developmental disorders to examine feasibility of obtaining continuous physiological data associated with behavioral and emotional outbursts through smartwatch use. Children wore a sensor watch during their daily classroom activities for two weeks and trained observers collected data using behavioral logs. Using Ecological Momentary Assessment methodology, to examine correlations between objective sensor data and observer observation. Data collected from parents regarding prior night's sleep was also examined.
All participants completed the study. With a few tolerability or palatability issues. Associations were found between physiological and behavioral/questionnaire data. The methodology holds promise for reliably measuring behavioral and emotional outbursts in young children.
This is the first study to use a bio-marker device among severely dysregulated pre-school aged youth throughout a full school day. This study established the feasibility of utilizing sensor derived physiological data as an objective biomarker of ADHD within the special education therapeutic classroom. Further research with larger samples is required to build a more robust and personalized AI predictive model.
6岁以下儿童的注意力缺陷多动障碍(ADHD)具有相当大的损害性,近一半患有ADHD的儿童因相关的情绪和行为爆发而被主流学前班排除。虽然使用了一系列行为评定量表和主观测量方法来评估这些儿童,但源自技术的客观评估和预测方法有可能改善这些儿童的治疗和学业干预效果。我们假设生物识别传感器能够在冲动爆发前提供有关儿童生理状态的客观、高度敏感和特异的信息,并且可以在特殊教育课堂中使用可穿戴设备切实可行地实施。
我们招募了一所专门治疗ADHD及其他精神和发育障碍儿童的日间治疗学校的两个完整班级(学前班5名儿童,一年级5名儿童),以检验通过使用智能手表获取与行为和情绪爆发相关的连续生理数据的可行性。孩子们在日常课堂活动中佩戴传感器手表两周,训练有素的观察员使用行为日志收集数据。采用生态瞬时评估方法,以检验客观传感器数据与观察员观察结果之间的相关性。还检查了从家长那里收集的有关前一晚睡眠的数据。
所有参与者均完成了研究,存在一些耐受性或适口性问题。在生理数据与行为/问卷调查数据之间发现了关联。该方法有望可靠地测量幼儿的行为和情绪爆发。
这是第一项在严重失调的学龄前儿童中,在整个上学日使用生物标志物设备的研究。本研究确立了在特殊教育治疗课堂中利用传感器衍生的生理数据作为ADHD客观生物标志物的可行性。需要进一步开展更大样本量的研究,以建立更强大、个性化的人工智能预测模型。