Kulvicius Tomas, Zhang Dajie, Nielsen-Saines Karin, Bölte Sven, Kraft Marc, Einspieler Christa, Poustka Luise, Wörgötter Florentin, Marschik Peter B
Child and Adolescent Psychiatry and Psychotherapy, University Medical Center Göttingen, Göttingen, Germany.
Department for Computational Neuroscience, Third Institute of Physics-Biophysics, Georg-August-University of Göttingen, Göttingen, Germany.
Commun Med (Lond). 2023 Aug 16;3(1):112. doi: 10.1038/s43856-023-00342-5.
Aiming at objective early detection of neuromotor disorders such as cerebral palsy, we propose an innovative non-intrusive approach using a pressure sensing device to classify infant general movements. Here we differentiate typical general movement patterns of the "fidgety period" (fidgety movements) vs. the "pre-fidgety period" (writhing movements).
Participants (N = 45) were sampled from a typically-developing infant cohort. Multi-modal sensor data, including pressure data from a pressure sensing mat with 1024 sensors, were prospectively recorded for each infant in seven succeeding laboratory sessions in biweekly intervals from 4 to 16 weeks of post-term age. 1776 pressure data snippets, each 5 s long, from the two targeted age periods were taken for movement classification. Each snippet was pre-annotated based on corresponding synchronised video data by human assessors as either fidgety present or absent. Multiple neural network architectures were tested to distinguish the fidgety present vs. fidgety absent classes, including support vector machines, feed-forward networks, convolutional neural networks, and long short-term memory networks.
Here we show that the convolution neural network achieved the highest average classification accuracy (81.4%). By comparing the pros and cons of other methods aiming at automated general movement assessment to the pressure sensing approach, we infer that the proposed approach has a high potential for clinical applications.
We conclude that the pressure sensing approach has great potential for efficient large-scale motion data acquisition and sharing. This will in return enable improvement of the approach that may prove scalable for daily clinical application for evaluating infant neuromotor functions.
为了实现对脑瘫等神经运动障碍的客观早期检测,我们提出了一种创新的非侵入性方法,即使用压力传感设备对婴儿的一般运动进行分类。在此,我们区分了“不安运动期”(不安运动)与“不安运动前期”(扭动运动)的典型一般运动模式。
参与者(N = 45)来自一个发育正常的婴儿队列。在预产期后4至16周,每两周对每个婴儿进行一次前瞻性记录,共进行七次连续的实验室测试,记录多模态传感器数据,包括来自一个带有1024个传感器的压力传感垫的压力数据。从两个目标年龄段获取了1776个时长为5秒的压力数据片段用于运动分类。每个片段由人类评估员根据相应的同步视频数据预先标注为是否存在不安运动。测试了多种神经网络架构以区分存在不安运动和不存在不安运动的类别,包括支持向量机、前馈网络、卷积神经网络和长短期记忆网络。
我们发现卷积神经网络实现了最高的平均分类准确率(81.4%)。通过将其他旨在自动评估一般运动的方法与压力传感方法的优缺点进行比较,我们推断所提出的方法具有很高的临床应用潜力。
我们得出结论,压力传感方法在高效大规模运动数据采集和共享方面具有巨大潜力。这反过来将有助于改进该方法,使其可能适用于日常临床应用中评估婴儿神经运动功能的可扩展性。