通过深度学习评估洗手质量:监测医院和社区遵守情况和标准的建模研究

IF 4.4 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Intelligent medicine Pub Date : 2022-08-01 DOI:10.1016/j.imed.2022.03.005
Ting Wang , Jun Xia , Tianyi Wu , Huanqi Ni , Erping Long , Ji-Peng Olivia Li , Lanqin Zhao , Ruoxi Chen , Ruixin Wang , Yanwu Xu , Kai Huang , Haotian Lin
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引用次数: 3

摘要

背景手部卫生是一种简单、廉价、有效的预防传染病传播的方法。然而,在医疗机构内外寻找一种可靠和一致的方法来监测指南的遵守情况是一项挑战。本研究的目的是提供一种监测医院和社区洗手依从性和质量的方法。方法提出了一种由三维卷积神经网络(3D cnn)组成的深度学习算法,并使用230个医疗专业人员在医院或家中录制的标准洗手视频进行训练和内部验证。提出了一种基于概率平滑法的评估方案,优化神经网络的输出,以识别洗手步骤,测量准确的持续时间,并对识别步骤的标准水平进行分级。另一家医院医护人员录制的22段视频和社区平民录制的28段视频被用于外部验证。结果采用深度学习算法和评估方案,结合概率平滑法对各步骤的洗手行为进行了识别(医院的ACC范围为90.64% ~ 98.87%,社区为87.39% ~ 96.71%)。评估方案测量了每个步骤的确切持续时间,对于医院和社区的总视频持续时间,类内相关系数分别为0.98 (95% CI: 0.97-0.98)和0.91 (95% CI: 0.88-0.93)。此外,该系统对洗手质量进行了评估,与专家组评估结果相似(医院kappa = 0.79;Kappa = 0.65)。结论本研究开发了一种从视频中直接评估洗手依从性和质量的算法,有望在医疗机构和社区中应用,以减少病原体的传播。
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Handwashing quality assessment via deep learning: a modelling study for monitoring compliance and standards in hospitals and communities

Background

Hand hygiene can be a simple, inexpensive, and effective method for preventing the spread of infectious diseases. However, a reliable and consistent method for monitoring adherence to the guidelines within and outside healthcare settings is challenging. The aim of this study was to provide an approach for monitoring handwashing compliance and quality in hospitals and communities.

Methods

We proposed a deep learning algorithm comprising three-dimensional convolutional neural networks (3D CNNs) and used 230 standard handwashing videos recorded by healthcare professionals in the hospital or at home for training and internal validation. An assessment scheme with a probability smoothing method was also proposed to optimize the neural network's output to identify the handwashing steps, measure the exact duration, and grade the standard level of recognized steps. Twenty-two videos by healthcare professionals in another hospital and 28 videos recorded by civilians in the community were used for external validation.

Results

Using a deep learning algorithm and an assessment scheme, combined with a probability smoothing method, each handwashing step was recognized (ACC ranged from 90.64% to 98.87% in the hospital and from 87.39% to 96.71% in the community). An assessment scheme measured each step's exact duration, and the intraclass correlation coefficients were 0.98 (95% CI: 0.97–0.98) and 0.91 (95% CI: 0.88–0.93) for the total video duration in the hospital and community, respectively. Furthermore, the system assessed the quality of handwashing, similar to the expert panel (kappa = 0.79 in the hospital; kappa = 0.65 in the community).

Conclusions

This work developed an algorithm to directly assess handwashing compliance and quality from videos, which is promising for application in healthcare settings and communities to reduce pathogen transmission.

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来源期刊
Intelligent medicine
Intelligent medicine Surgery, Radiology and Imaging, Artificial Intelligence, Biomedical Engineering
CiteScore
5.20
自引率
0.00%
发文量
19
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