| Literature DB >> 32292792 |
Luke Trinity1,2, Scott C Merrill1,3,4, Eric M Clark1,2, Christopher J Koliba1,4,5, Asim Zia1,4,5, Gabriela Bucini1,3, Julia M Smith6.
Abstract
Disease outbreaks in U.S. animal livestock industries have economic impacts measured in hundreds of millions of dollars per year. Biosecurity, or procedures intended to protect animals against disease, is known to be effective at reducing infection risk at facilities. Yet, to the detriment of animal health, humans do not always follow biosecurity protocols. Human behavioral factors have been shown to influence willingness to follow biosecurity protocols. Here we show how social cues may affect cooperation with a biosecurity practice. Participants were immersed in a simulated swine production facility through a graphical user interface and prompted to make a decision that addressed their willingness to comply with a biosecurity practice. We tested the effect of varying three experimental variables: (1) the risk of acquiring an infection, (2) the delivery method of the infection risk information (numerical vs. graphical), and (3) the behavior of an automated coworker in the facility. We provide evidence that participants changed their behavior when they observed a simulated worker making a choice to follow or not follow a biosecurity protocol, even though the simulated worker had no economic effect on the participants' payouts. These results advance the understanding of human behavioral effects on biosecurity protocol decisions, demonstrating that social cues need to be considered by livestock facility managers when developing policies to make agricultural systems more disease resilient.Entities:
Keywords: biosecurity; compliance; psychological distance; risk; social cue
Year: 2020 PMID: 32292792 PMCID: PMC7120031 DOI: 10.3389/fvets.2020.00130
Source DB: PubMed Journal: Front Vet Sci ISSN: 2297-1769
Figure 1Screenshot of a game round showing infection risk delivered as a numerical (Numeric) message, the participant-controlled worker, automated coworker, coins (internal tasks), the shower biosecurity practice (blue arrow) and emergency exit (red arrow).
Experiment treatments.
| Infection Risk: 1% (Very Low) | 648 (6 rounds * 108 participants) |
| Infection Risk: 5% (Low) | 648 (6 rounds * 108 participants) |
| Infection Risk: 15% (Medium) | 648 (6 rounds * 108 participants) |
| Message Delivery Method: | 972 (9 rounds * 108 participants) |
| Message Delivery Method: | 972 (9 rounds * 108 participants) |
| Social Cue: | 648 (6 rounds * 108 participants) |
| Social Cue: | 648 (6 rounds * 108 participants) |
| Social Cue: | 648 (6 rounds * 108 participants) |
Figure 2Start-of-round infection risk delivered as a graphical (Graphical) message; two arrows, one fixed, the other moving, were used to convey a best estimate and uncertainty around that estimate (A). Start-of-round infection risk delivered as a numerical (Numeric) message (B).
Candidate models reordered by AIC value, with the best AIC-selected models listed first.
| 1 | 1495 | 0 | ||||||||
| 3 | 1495 | 0.280 | ||||||||
| 2 | 1498 | 3.081 | ||||||||
| 7 | 1499 | 3.383 | ||||||||
| 4 | 1502 | 6.764 | ||||||||
| 5 | 1505 | 10.195 | ||||||||
| 6 | 1506 | 10.523 |
Independent variables: Psychological Distance (PD), Message Delivery Method (M), Infection Risk (IR), Play Order (PO), and Social Cue (SC). Interaction terms, e.g., Message Delivery Method by Infection Risk, are denoted as (M*IR).
Results of the selected best fit mixed-effect logistic regression model (Model 1; see Table 2).
| Intercept (Graphical Message, Infection Risk @ 5%) | 66.536 | 22.729 | 194.774 | |
| Psychological Distance | 0.120 | 0.048 | 0.299 | |
| Numeric Message | 0.095 | 0.068 | 0.134 | |
| Infection Risk @ 15% | 20.100 | 12.885 | 31.353 | |
| Infection Risk @ 1% | 0.116 | 0.081 | 0.165 | |
| Play Order | 0.976 | 0.949 | 1.004 | 0.090 |
Depicted here are the odds ratios for fixed effects describing relationships with the binary response variable: compliance with the biosecurity practice. Bold values indicate significance at α = 0.05.
Figure 3Summary results of the main treatment effects. Box plot of the probability of using the shower biosecurity practice by the main effects, Infection Risk and Message Delivery Method. Lower and upper box boundaries are 25th and 75th percentiles, respectively, line inside box is the median, and overlaid on model-predicted data values.
Figure 4Violin plots with inlaid box-plots of individuals' changes in average compliance between coworker treatments. Lower and upper box boundaries are the 25th and 75th percentiles, respectively, and the line inside the box is the median.
Variance of changes in average compliance between the three combinations of social cue treatments.
| Compliance by Coworker vs. Non-Compliance by Coworker | 0.040 | 1.496 | 1.680 |
| Compliance by Coworker vs. Coworker Control | 0.027 | 1 | 1.123 |
| 0.027 | 0.024 | ||
| Compliance by Coworker vs. Coworker Control | Non-Compliance by Coworker vs. Coworker Control | ||
Ratios of variances quantify the relative change in variance between two distributions.
Results of F-test to calculate ratio of variances (Table 4) confidence intervals.
| (SC1 vs. SC2) / (SC1 vs. Control) | 1.496 | 1.022 | 2.190 | |
| (SC1 vs. SC2) / (SC2 vs. Control) | 1.680 | 1.148 | 2.459 | |
| (SC1 vs. Control) / (SC2 vs. Control) | 1.123 | 0.767 | 1.643 | 0.550 |
SC1 corresponds with Compliance by Coworker treatments, SC2 corresponds with Non-Compliance by Coworker treatments, Control corresponds with Coworker Control treatments. Bold indicates statistical significance, α = 0.05.
Change in observed frequency of use of the shower biosecurity practice between original analogous treatments and current experiment treatments by infection risk.
| 1 | 23.6 | 33.6 | 10.0 |
| 5 | 56.0 | 60.3 | 4.3 |
| 15 | 80.9 | 88.7 | 7.8 |
| Average | 53.5 | 60.9 | 7.4 |
Δ frequency of compliance quantifies the change between the original and current average compliance; positive values correspond to an increase in the current-study average compliance.