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Automatic and Continuous Discomfort Detection for Premature Infants in a NICU Using Video-Based Motion Analysis

机译:使用基于视频的运动分析的NICU中早产儿的自动和连续不适检测

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Frequent pain and discomfort in premature infants can lead to long-term adverse neurodevelopmental outcomes. Video-based monitoring is considered to be a promising contactless method for identification of discomfort moments. In this study, we propose a video-based method for automated detection of infant discomfort. The method is based on analyzing facial and body motion. Therefore, motion trajectories are estimated from frame to frame using optical flow. For each video segment, we further calculate the motion acceleration rate and extract 18 time- and frequency-domain features characterizing motion patterns. A support vector machine (SVM) classifier is then applied to video sequences to recognize infant status of comfort or discomfort. The method is evaluated using 183 video segments for 11 infants from 17 heel prick events. Experimental results show an AUC of 0.94 for discomfort detection and the average accuracy of 0.86 when combining all proposed features, which is promising for clinical use.
机译:早产儿的频繁疼痛和不适可能导致长期不良神经发作的结果。基于视频的监测被认为是一个有前途的非接触式方法,用于识别不适的时刻。在本研究中,我们提出了一种基于视频的方法,用于自动检测婴儿不适。该方法基于分析面部和身体运动。因此,使用光学流量从帧估计运动轨迹。对于每个视频段,我们进一步计算了表征运动模式的运动加速率和提取18个时间和频域特征。然后将支持向量机(SVM)分类器应用于视频序列,以识别婴儿状态的舒适或不适。使用183个婴儿的183个视频段评估该方法,来自17个脚跟刺鼠。实验结果表明,在结合所有提出的特征时,不适检测和0.86的平均精度为0.94的AUC,这是对临床应用有前途的。

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