Background: Hand hygiene compliance is important for the prevention of healthcare-associated infections. The conventional method of measuring hand disinfection guidelines involves an external observer watching the staff personnel, which introduces bias, and observations are only made for a set period of time. An unbiased, non-invasive automated system for assessing hand sanitization actions can provide a better estimate of compliance.
Aim: To develop an automated detector to assess hand hygiene compliance in hospitals, without bias from an external observer, capable of making observations at different times of the day, as non-invasive as possible by using only one camera, and collecting as much information as possible from two-dimensional video footage.
Methods: Video footage with annotations from various sources was collected to determine when staff performed hand disinfection with gel-based alcohol. The frequency response of wrist movement was used to train a support vector machine to identify hand sanitization events.
Findings: This system detected sanitization events with an accuracy of 75.18%, a precision of 72.89%, and a recall of 80.91%. These metrics provide an overall estimate of hand sanitization compliance without bias due to the presence of an external observer while collecting data over time.
Conclusion: Investigation of these systems is important because they are not constrained by time-limited observations, are non-invasive, and they eliminate observer bias. Although there is room for improvement, the proposed system provides a fair assessment of compliance that the hospital can use as a reference to take appropriate action.
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http://dx.doi.org/10.1016/j.jhin.2023.01.021 | DOI Listing |
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