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Reliability of Machine and Human Examiners for Detection of Laryngeal Penetration or Aspiration in Videofluoroscopic Swallowing Studies

机译:用于检测血液荧光吞咽研究中喉渗透或吸入的机器和人类检查者的可靠性

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摘要

Computer-assisted analysis is expected to improve the reliability of videofluoroscopic swallowing studies (VFSSs), but its usefulness is limited. Previously, we proposed a deep learning model that can detect laryngeal penetration or aspiration fully automatically in VFSS video images, but the evidence for its reliability was insufficient. This study aims to compare the intra- and inter-rater reliability of the computer model and human raters. The test dataset consisted of 173 video files from which the existence of laryngeal penetration or aspiration was judged by the computer and three physicians in two sessions separated by a one-month interval. Intra- and inter-rater reliability were calculated using Cohen’s kappa coefficient, the positive reliability ratio (PRR) and the negative reliability ratio (NRR). Intrarater reliability was almost perfect for the computer and two experienced physicians. Interrater reliability was moderate to substantial between the model and each human rater and between the human raters. The average PRR and NRR between the model and the human raters were similar to those between the human raters. The results demonstrate that the deep learning model can detect laryngeal penetration or aspiration from VFSS video as reliably as human examiners.
机译:预计计算机辅助分析将提高荧光吞咽研究(VFSS)的可靠性,但其有用性有限。以前,我们提出了一种深入学习模型,可以在VFSS视频图像中完全自动地检测喉渗透或抽吸,但可靠性的证据不足。本研究旨在比较计算机模型和人类评估者的内部帧间间可靠性。测试数据集由173个视频文件组成,其中喉部穿透或愿望的存在由计算机和三个会话中的三个医生在一个月间隔分隔的情况下判断。使用Cohen的Kappa系数,阳性可靠性率(PRR)和负可靠性比(NRR)来计算帧内和帧间间可靠性。 Intraratter可靠性几乎是完美的计算机和两位经验丰富的医生。 Interriter可靠性在模型和每个人类评估者之间以及人类评估者之间是适度的。模型和人类评级之间的平均PRR和NRR与人类评估者之间的平均PRR和NRR类似。结果表明,深度学习模型可以像人类检查者那样可靠地检测从VFSS视频的喉渗透或抽吸。

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