Abstract

Background: Thousands of people die every day around the world from infections acquired in a hospital. Hands are the main pathways of germ transmission during healthcare. Hand hygiene monitoring can be performed using various methods. One of the latest techniques that can combine all is a neural network-based hand hygiene monitoring system. Methods/Design: Each participant performed 3 hand-washing trials, each time receiving different type of feedback. The order in which each participant of the study used the developed applications was strictly defined, thus each hand-washing study session started with performing hand washing using application A, B and C accordingly. All captured videos of hand-wash episodes were saved and later analysed with neural networks. In the end, both evaluation results were compared and evaluated. Results show that when the participants use Application Type A, they perform hand washing much faster, as well as in comparison of Application Type A versus application type C. However, the longest time spent for the hand washing was detected while using the application type B. Conclusion: Study shows that structured guidance provided during the real time hand washing could be associated with better overall performance. The Application C has confirmed its effectiveness. Proving its advantage among other applications, the Application C can be integrated into the clinical environment

Highlights

  • According to the World Health Organization (WHO), thousands of people die every day around the world from infections acquired in hospitals

  • The Joint Commission International has postulated that a rate of at least 90% compliance to WHO guidelines in hand hygiene should be expected from healthcare providers [3], recent studies report that many institutions have still not reached this level [14, 15]

  • The aim of this study was to estimate an association of different types of real-time audio visual (AV) feedback from evaluation system of hand hygiene quality with its compliance to WHO guidelines, as well as with hand hygiene quality assessed with UV light

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Summary

Introduction

According to the World Health Organization (WHO), thousands of people die every day around the world from infections acquired in hospitals. Hand hygiene is the most important strategy for preventing healthcare-associated infections. This position is supported by the WHO and by the CDC and other institutions [3, 5, 19]. Hand hygiene monitoring can be performed using various methods. Methods/Design: Each participant performed 3 hand-washing trials, each time receiving different type of feedback. All captured videos of hand-wash episodes were saved and later analysed with neural networks. In the end, both evaluation results were compared and evaluated. Conclusion: Study shows that structured guidance provided during the real time hand washing could be associated with better overall performance. Proving its advantage among other applications, the Application C can be integrated into the clinical environment

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