| Literature DB >> 28589120 |
Steven M Weisberg1, Daniel Badgio1, Anjan Chatterjee1.
Abstract
The potential to genetically modify human germlines has reached a critical tipping point with recent applications of CRISPR-Cas9. Even as researchers, clinicians, and ethicists weigh the scientific and ethical repercussions of these advances, we know virtually nothing about public attitudes on the topic. Understanding such attitudes will be critical to determining the degree of broad support there might be for any public policy or regulation developed for genetic modification research. To fill this gap, we gave an online survey to a large (2,493 subjects) and diverse sample of Americans. Respondents supported genetic modification research, although demographic variables influenced these attitudes-conservatives, women, African-Americans, and older respondents, while supportive, were more cautious than liberals, men, other ethnicities, and younger respondents. Support was also was slightly muted when the risks (unanticipated mutations and possibility of eugenics) were made explicit. The information about genetic modification was also presented as contrasting vignettes, using one of five frames: genetic editing, engineering, hacking, modification, or surgery. Despite the fact that the media and academic use of frames describing the technology varies, these frames did not influence people's attitudes. These data contribute a current snapshot of public attitudes to inform policy with regard to human genetic modification.Entities:
Keywords: CRISPR; Mechanical Turk; genetic modification; metaphor; online survey
Year: 2017 PMID: 28589120 PMCID: PMC5439143 DOI: 10.3389/fpubh.2017.00117
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
Hits (and percentages) on Google News and Google Scholar for uses of various metaphors to describe genetic modification.
| Google hits | Editing | Engineering | Hacking | Modification | Surgery |
|---|---|---|---|---|---|
| News | 91,800 (48.79%) | 73,900 (39.28%) | 92 (0.04%) | 22,200 (11.80%) | 157 (0.08%) |
| Scholar | 10,800 (22.34%) | 18,000 (37.23%) | 26 (0.05%) | 18,200 (37.76%) | 1,320 (2.73%) |
| News | 31,400 (62.20%) | 15,200 (30.11%) | 18 (0.04%) | 3,830 (7.59%) | 31 (0.06%) |
| Scholar | 3,500 (15.10%) | 13,400 (57.82%) | 2 (0.00%) | 6,220 (26.84%) | 52 (0.22%) |
Raw number of hits (and percentages) from Google News and Google Scholar all time and in 2016 alone. Results were obtained by searching Google for (“genetic [metaphor]” OR “gene [metaphor]”).
Figure 1Metaphor use in Google News and Google Scholar search results. The ratio of hits found on Google News compared to Google Scholar for all time (light blue bars) and for 2016 (dark blue bars). The metaphors used to describe genetic modification appear on the X-axis. Hits were obtained by searching Google News or Google Scholar using (“gene [metaphor]” OR “genetic [metaphor]”). Then, the ratio of News/Scholar was obtained and graphed. Journalists publish proportionally more articles using the editing metaphor. All other metaphors appear more often in academic writing or equally frequently. See Table 1 for the raw numbers of hits from Google News and Google Scholar (obtained from Google searches on 12/19/2016).
Figure 2Genetic modification vignette. The vignette shown to participants in the Modify + Risk condition from Study 1 (A). The Likert scale was displayed after the vignette had been on the screen by itself for 30 s. Words in bold were replaced by the corresponding words in the table (B) for participants in the other metaphor conditions. The words in italics were placed after the first sentence for the Study 2 Risk-before condition and were removed for the No Risk condition in Study 1. Bold and italic fonts are for emphasis only and were not seen by participants. See Supplementary Material for all vignettes for both studies in full.
Coding scheme for political affiliation.
| Coding | Participant responses |
|---|---|
| Left | Communist, D, Dem, Democrat, Left, Liberal, Progressive, Socialist |
| Right | Conservative, GOP, R, Republican, Rep, Right, Tea Party |
| Independent | Independent, Independent leaning [Democrat/Republican] |
| Moderate | Moderate |
| Blank | None, no affiliation, neutral, N/A, neither, unaffiliated, [no text] |
| Other | Green, libertarian, anarchist, [other] |
Common responses (separated by commas) given by participants to the question of their political affiliation, and how those responses were coded. Participant responses are non-exhaustive. See Data Sheets S1 and S2 in Supplementary Material to view actual participant responses.
Demographic variables by percentage.
| Demographics | Study 1 ( | Study 2 ( | United States ( |
|---|---|---|---|
| Males | 56.5 | 49.5 | 49.2 |
| Females | 43.5 | 50.5 | 50.8 |
| Asian | 8.0 | 7.5 | 5.6 |
| Black/African-American | 6.3 | 6.9 | 13.3 |
| Hispanic/Latino | 5.1 | 5.9 | 17.6 |
| White | 80.6 | 79.8 | 61.6 |
| Left | 43.2 | 40.2 | 48 |
| Right | 14.0 | 17.4 | 39 |
| Independent | 21.1 | 19.2 | 13 |
| Moderate | 2.2 | 3.0 | |
| Others | 2.9 | 4.1 | 6 |
| Blank | 16.7 | 16.1 | |
| High school or less | 12.0 | 13.4 | 41.5 |
| Some college | 31.3 | 31.0 | 31.3 |
| 4 years of college | 35.0 | 32.0 | 17.4 |
| >4 years of college | 21.7 | 23.7 | 9.8 |
| Age [mean(SD)] | 33.23 (12.29) | 35.20 (11.75) | Median = 37.2 |
We omitted 10 participants total who did not wish to report gender. We also omitted three categories of ethnicities, which constituted less than 3% (American Indian/Alaskan Native; Native Hawaiian or Pacific Islander; Other; and Do Not Wish to Say). US population statistics (except Politics) obtained using most recent available data on 1/6/2017 from .
Figure 3Proportions and raw numbers of survey responses. The proportions (left panel) and raw numbers (right panel) of responses to the question “Should we be actively be researching these technologies?” Data are presented so that positive (green) and negative (red) responses can be easily compared. Negative values represent negative responses. The top proportion graph is not reproduced in raw numbers, since participants were randomly and equally assigned into the No Risk, Risk-after (risks mentioned after vignette) Study 1, Risk-after Study 2, and Risk-before (risks mentioned before vignettes). The lower three graphs break down the responses by demographic variables—gender, ethnicities, and politics.