| Literature DB >> 30462718 |
Indrani Saran1, Günther Fink2, Margaret McConnell3.
Abstract
While the importance of social networks for health behaviors is well-recognized, relatively little is known regarding the accuracy of anonymous online communication and its impact on health behavior. In 2012, we conducted a laboratory experiment in Boston, Massachusetts with 679 individuals to understand how anonymous online communication affects individual prevention decisions. Participants had to opt for or against investing in prevention over three sessions, each consisting of 15 experimental rounds. In the third session only, participants could share their experiences with a group of 1-3 other anonymous participants after each round. Groups exchanged an average of 16 messages over the 15 rounds of the third session. 70% of messages contained information about the subject's prevention decision and the resulting health outcome. Participants were more likely to communicate when they prevented than when they did not, with prevention failures resulting in the highest probability of sending a message. Nonetheless, receiving an additional message reporting prevention increased the odds a subject would prevent by 32 percent. We find that participants tend to adopt the prevention behavior reported by others, with less weight given to the reported outcomes of prevention, suggesting that social networks may influence behaviors through more than just information provision.Entities:
Mesh:
Year: 2018 PMID: 30462718 PMCID: PMC6248974 DOI: 10.1371/journal.pone.0207679
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Descriptive statistics of lab experiment participants (N = 679).
| No. | % or Mean ±SD | |
|---|---|---|
| Age | 31.2 ± 13.6 | |
| Male | 350 | 51.5% |
| Married | 76 | 11.2% |
| Has Children | 93 | 13.7% |
| Some High School or Less | 8 | 1.2% |
| Completed High School (or equivalent) | 41 | 6.0% |
| Some College | 276 | 40.6% |
| College Diploma | 151 | 22.2% |
| Some graduate school | 72 | 10.6% |
| Graduate Degree | 127 | 18.7% |
| Refused to Answer | 4 | 0.6% |
| African American | 95 | 14.0% |
| Hispanic | 40 | 5.9% |
| White/Caucasian | 365 | 53.8% |
| Asian American | 92 | 13.5% |
| Other | 63 | 9.3% |
| Refused to Answer | 24 | 3.5% |
| Student | 358 | 52.7% |
| Other | 237 | 34.9% |
| Retired | 14 | 2.1% |
| Unemployed | 58 | 8.5% |
| Refused to Answer | 12 | 1.8% |
| $0 | 91 | 13.4% |
| $1–19,999 | 319 | 47.0% |
| $20,000–39,999 | 119 | 17.5% |
| $40,000–59,999 | 61 | 9.0% |
| $60,000–79,999 | 30 | 4.4% |
| $80,000 or more | 25 | 3.7% |
| Refused to Answer | 34 | 5.0% |
| Takes Vitamins | 294 | 43.3% |
| Had Flushot in Last Year | 318 | 46.8% |
| Believes All Children should be Vaccinated | 599 | 88.2% |
| Times Saw Dentist in Last Year | 1.3 ± 1.2 | |
| Uses Suncreen Often/Always | 264 | 38.9% |
Predictors of message-sending using logistic regressions.
| Outcome: Odds of Sending a Message | |||
|---|---|---|---|
| (1) | (2) | (3) | |
| A. Received Public Health Message | 1.12 | 0.78 | 1.2 |
| [0.85,1.49] | [0.52,1.16] | [0.91,1.60] | |
| B. Received More Effective Prevention Technology | 1.06 | 0.92 | 1.03 |
| [0.81,1.38] | [0.63,1.35] | [0.79,1.35] | |
| C. Baseline Illness Rate = 0.30 | Ref. Group | Ref. Group | Ref. Group |
| D. Baseline Illness Rate = 0.50 | 2.91 | 2.11 | 1.75 |
| [2.08,4.09] | [1.28,3.48] | [1.26,2.44] | |
| E. Baseline Illness Rate = 0.70 | 4.61 | 3.82 | 2.01 |
| [3.27,6.48] | [2.33,6.27] | [1.42,2.85] | |
| F. Prevented | 0.83 | 1.47 | |
| [0.43,1.62] | [1.12,1.94] | ||
| G. Fell Sick | 0.62 | 0.88 | |
| [0.27,1.44] | [0.67,1.16] | ||
| H. Prevented X Fell Sick | 2.3 | 1.46 | |
| [0.89,5.96] | [1.06,2.00] | ||
| I. Number of Messages Received in Previous Round | 3.46 | ||
| [3.05,3.92] | |||
| Rounds | All | 1st Only | Rounds 2–15 |
| Mean of Dependent Variable in Reference Group (No Prevention, Not Sick) | 0.28 | 0.20 | 0.18 |
| P-value: G+H = 0 | 0.14 | 0.00 | |
| Number of Observations | 10185 | 679 | 9506 |
Notes: Table shows logistic regression results for predictors of messaging overall (Column 1) after the first round only (Column 2), and after rounds 2–15 (Column 3). All regressions include the following controls: the age, gender, marital status, ethnicity, occupation, parental status, education, income, and prevention behavior of the individual (takes vitamins had a flu shot in the past year, favors child vaccination, number of dentist visits in past year, sunscreen use). Coefficients are expressed in terms of odds ratios and 95% confidence intervals are in brackets. Standard errors are adjusted for clustering by individual.
*p<0.05
**p<0.01
Fig 1Message-sending by prevention decision and outcome.
Probability of sending a message by whether the individual prevented and whether they fell sick. Error bars indicate 95% confidence intervals.
Fig 2Types of messages sent by individuals over 15 rounds.
Messages either provided information about the prevention decision and result, encouraged or discouraged prevention, or were unrelated to the prevention decision (conversational message).
Fig 3Reported illness rate with and without prevention.
Figure shows the distribution, by group, of reported illness rates when not preventing (Panel A) and when preventing (Panel B). Reported illness rates were re-scaled so that the expected probability of falling sick is 0.5 in the absence of prevention and 0.34 with prevention. In Panel A, sample is limited to the 55/177 (31%) groups who reported on non-prevention outcomes at least once, and in Panel B the sample is limited to the 97/177 groups (55%) who reported on prevention outcomes at least once. Solid line indicates expected illness rate while dashed line indicates the median reported illness rate (lines are overlapping in Panel A).
Effect of messages received in previous round on prevention in current round.
| Outcome: Probability of Prevention in Current Round | ||||
|---|---|---|---|---|
| (1) | (2) | (3) | (4) | |
| A. Number of Messages Received in Previous Round | 1.09 | |||
| [0.98,1.21] | ||||
| B. Number of Messages in Previous Round Reporting Prevention Decision and Outcome | 1.14 | |||
| [1.01,1.29] | ||||
| C.Number of Successful Prevention Messages Received in Previous Round | 1.53 | |||
| [1.25,1.86] | ||||
| D. Number of Failed Prevention Messages Received in Previous Round | 1.1 | |||
| [0.91,1.33] | ||||
| E. Number of Successful Risk Messages Received in Previous Round | 0.57 | |||
| [0.42,0.79] | ||||
| F. Number of Failed Risk Messages Received In Previous Round | 0.94 | |||
| [0.69,1.27] | ||||
| G. Number of Messages Received in Previous Round Reporting Prevention | 1.32 | |||
| [1.15,1.52] | ||||
| H. Number of Messages Received in Previous Round Reporting Risk-Taking | 0.76 | |||
| [0.60,0.96] | ||||
| I. Number of All Other Messages Received in Previous Round | 1 | 1.01 | 1 | |
| [0.86,1.16] | [0.89,1.16] | [0.88,1.15] | ||
| P value: C = D | 0.01 | |||
| P value: E = F | 0.01 | |||
| P value: G = H | 0.00 | |||
| Mean of Dependent Variable | 0.71 | 0.71 | 0.71 | 0.71 |
| Number of Observations | 30555 | 30555 | 30555 | 30555 |
Notes: Results are from logit regressions estimating the association between messages and information received in the previous round and the odds of prevention in the current round, with a fixed effect for each individual (each observation consists of an individual-round). All regressions control for the effectiveness of the randomly assigned preventive technology. The sample includes observations from all sessions although individuals only had the opportunity to receive messages in the third session. The “All other Messages Received” category varies with each regression. Coefficients are in terms of odds ratios and 95% confidence intervals, based on standard errors clustered at the individual level, are in brackets.
*p<0.05
**p<0.01