Assessment of spontaneous movements can predict the long-term developmental disorders in high-risk infants. In order to develop algorithms for automated prediction of later disorders, highly precise localization of segments and joints by infant pose estimation is required. Four types of convolutional neural networks were trained and evaluated on a novel infant pose dataset, covering the large variation in 1 424 videos from a clinical international community. The localization performance of the networks was evaluated as the deviation between the estimated keypoint positions and human expert annotations. The computational efficiency was also assessed to determine the feasibility of the neural networks in clinical practice. The best performing neural network had a similar localization error to the inter-rater spread of human expert annotations, while still operating efficiently. Overall, the results of our study show that pose estimation of infant spontaneous movements has a great potential to support research initiatives on early detection of developmental disorders in children with perinatal brain injuries by quantifying infant movements from video recordings with human-level performance.
翻译:对自发运动的评估可以预测高风险婴儿的长期发育紊乱。为了发展自动预测后期紊乱的算法,需要对婴儿的部位和关节进行高度精确的本地化估算。四类神经神经网络接受了新颖的婴儿成形数据集的培训和评价,涵盖了临床国际社会1 424个视频的巨大差异。这些网络的本地化表现被评价为估计关键位置与人类专家说明之间的偏差。计算效率也进行了评估,以确定神经网络在临床实践中的可行性。最有效果的神经网络与人类专家说明的跨行传播有相似的本地化错误,同时仍然有效运行。总体而言,我们研究结果显示,对婴儿自发运动的估计具有巨大潜力,通过将婴儿运动与人类水平表现的视频记录进行量化,支持早期发现围产期脑损伤儿童发育紊乱的研究举措。