| Literature DB >> 26732033 |
Robert Pellegrino1, Philip G Crandall1, Han-Seok Seo1.
Abstract
Lack of hand washing is a leading cause of food borne illnesses. To successfully increase hand hygiene compliance, interventions must have continual engagement with employees. This study used a real-time prospective memory (PM) scenario to measure the effectiveness of a control and sensory reminders of disgust to influence hand washing behavior and performance. First, a model of hand washing performance was built by having six participants' hands contaminated with GermGlo (a florescent micro-particle) and then washed their hands using predetermined protocols while monitored by an electronic hand hygiene verification (HHV) system. Next, eighty Hispanic/Latino participants, in a between-group experimental design, performed a PM experiment while one of four reminders were present (hand washing poster, disgusting image, disgusting sound, and disgusting odor) as the HHV recorded their hand washing performance. Visual cues, typical of hand washing campaigns, were not as effective at increasing hand hygiene compliance as disgust-induced sensory cues. Furthermore, olfactory disgust showed a significantly higher probability that individuals would engage in hand washing behaviors than all other conditions. This study provides new insight into the effectiveness of different senses and emotion to reduce the intention-behavior gap associated with modifying behaviors, and broadens current PM research to a real-time application.Entities:
Mesh:
Year: 2016 PMID: 26732033 PMCID: PMC4702082 DOI: 10.1038/srep18890
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Logistic regression analysis showed the probability for individuals to wash their hands was different across the four conditions: control, visual, auditory, and odor (p < 0.001).
Compared to the control, visual and auditory disgust conditions showed a significant increase in Prospective Memory (PM) task initiation (p < 0.05 each) while odor showed a larger significant increase (p < 0.001). Additionally, odor was significantly larger than both the visual and auditory disgust conditions (p < 0.01).
Variables monitored and recorded by the electronic hand washing machine.
| Parameter (unit) | Definition | Calculation Criteria |
|---|---|---|
| Soap Usage (drops) | The drops of soap used for current hand washing event | The microcontroller records the total number of soap drops. |
| Lathering Time (second) | Soap lathering time | Once system software detects the soap dispenser being activated, it will start a timer for this parameter. This timer adds an average frame time (1second/frame rate) for every processed frame, if only one hand is detected (lathering) and the system software detects hand under water running faucet over one second, the lathering timer will be stopped. |
| Paper Towel Usage (piece, gram) | The number and weight of the used paper towel (s). | The microcontroller on the Wi-Fi module inside the paper dispenser counts the total number of paper used through trigger signals from the motor inside the dispenser. A scale is placed under the waste receptacle measuring the weight of a used paper towel. |
| Water Temperature (°C) | Water temperature | The MCU reads the temperature sensor once per iteration and stores the reading in to a 128 elements temperature buffer. If water is being turned on, MCU will send an averaged buffer temperature reading once every two seconds. The server program monitors the serial communication data from MCU for message that contains “TEMP”, and extracts the water temperature data and puts it in to another buffer. One averaged temperature data from this buffer is recorded into the log file for one hand washing event. |
| Water Usage (liter) | The volume of water used during hand washing event | The MCU reads Hall Effect flow sensors (in both hot and cold water pipe lines) and calculates of water usage at the end of a hand washing event. |
| Hand Washing Duration (second) | Hand washing time including wetting time and rinsing time | The system software monitors the hand location. Once it detects the hand under a water running faucet, it will start a timer for this parameter. |
Figure 2Hand contaminated with GermGlo pre and post hand washing.
The picture on the screen was taken at the Food Science department building, Copyright Bob Pellegrino of University of Arkansas.
Figure 3Quadratic calibration curve for total hand illumination vs. concentration of GGP (N = 2).