| Literature DB >> 29690876 |
Simone McCarthy1, Samantha L Thomas2, Melanie Randle3, Amy Bestman2, Hannah Pitt2, Sean Cowlishaw4,5, Mike Daube6.
Abstract
BACKGROUND: Women's participation in, and harm from gambling, is steadily increasing. There has been very limited research to investigate how gambling behaviour, product preferences, and perceptions of gambling harm may vary across subgroups of women.Entities:
Keywords: Electronic gambling machines; Gambling; Public health; Sports betting; Women
Mesh:
Year: 2018 PMID: 29690876 PMCID: PMC5916584 DOI: 10.1186/s12954-018-0227-9
Source DB: PubMed Journal: Harm Reduct J ISSN: 1477-7517
Socio-demographic and gambling behaviour of women (n = 509)
| Characteristic |
| Percentage of sample |
|---|---|---|
| Age | ||
| 16–34 (younger) | 171 | 33.6 |
| 35–54 (middle-aged) | 166 | 32.6 |
| 55+ (older) | 172 | 33.8 |
| State of residence | ||
| NSW | 254 | 49.9 |
| VIC | 255 | 50.1 |
| Education | ||
| Year 12 or below | 166 | 32.6 |
| Cert I, II, III, IV | 68 | 13.4 |
| Diploma/advanced | 72 | 14.1 |
| Bachelor’s degree | 135 | 26.6 |
| Graduate diploma/certificate | 22 | 4.3 |
| Post graduate | 46 | 9.0 |
| Employment | ||
| Working full-time | 149 | 29.3 |
| Working part-time or casually | 132 | 25.9 |
| Unemployed but looking for work | 19 | 3.7 |
| Homemaker | 54 | 10.6 |
| Retired | 108 | 21.2 |
| Full-time student | 42 | 8.3 |
| Other | 5 | 1.0 |
| Socio-economic area (SEIFA status)* | ||
| Low (1–3) | 83 | 16.3 |
| Middle (4–7) | 209 | 41.1 |
| High (8–10) | 215 | 42.2 |
| Gambling risk status | ||
| Non-gambling | 104 | 20.4 |
| Non-problem gambling | 235 | 46.2 |
| Low-risk gambling | 60 | 11.8 |
| Moderate-risk gambling | 48 | 9.4 |
| Problem gambling | 62 | 12.2 |
*Note: two postcodes did not have SEIFA scores assigned to them so were excluded from this table
Cross tabulation of age of women by gambling risk status
| Gambling risk status | Age | Significance | |||||
|---|---|---|---|---|---|---|---|
| 16–34 ( | 35–54 ( | 55+ ( | |||||
|
| % |
| % |
| % | ||
| Non-gambler | 40 | 23.4 | 27 | 16.3 | 37 | 21.5 | |
| Non-problem | 54 | 31.6 | 77 | 46.4 | 104 | 60.5 | |
| Low risk | 18 | 10.5 | 26 | 15.7 | 16 | 9.3 | |
| Moderate risk | 19 | 11.1 | 19 | 11.4 | 10 | 5.8 | |
| Problem | 40 | 23.4 | 17 | 10.2 | 5 | 2.9 | |
Note: n = actual number of participants and % = column percentages
Frequency of women’s gambling by age and gambling risk status (n = 324)
| Frequency | Significance | ||||||
|---|---|---|---|---|---|---|---|
| Low | Medium | High | |||||
| Age |
| % |
| % |
| % | |
| 16–34 | 24 | 22.0 | 36 | 33.0 | 49 | 45.0 | |
| 35–54 | 31 | 26.7 | 44 | 37.9 | 41 | 35.3 | |
| 55+ | 39 | 39.4 | 38 | 38.4 | 22 | 22.2 | |
| Gambling status | |||||||
| Non-problem | 74 | 44.3 | 69 | 41.3 | 24 | 14.4 | |
| Low risk | 12 | 21.1 | 28 | 49.1 | 17 | 29.8 | |
| Moderate risk | 6 | 14.6 | 15 | 36.6 | 20 | 48.8 | |
| Problem | 2 | 3.4 | 6 | 10.2 | 51 | 86.4 | |
Note: n = actual number of participants and % = row percentages
Women’s gambling product use by age and gambling risk status (n = 324)
| Gambling product | ||||||||
|---|---|---|---|---|---|---|---|---|
| EGMs | Horse betting | Casino | Sports betting | |||||
| Age |
| % |
| % |
| % |
| % |
| 16–34 | 86 | 34.4 | 69 | 33.5 | 73 | 44.0 | 62 | 50.8 |
| 35–54 | 92 | 36.8 | 77 | 37.4 | 57 | 34.3 | 44 | 36.1 |
| 55+ | 72 | 28.8 | 60 | 29.1 | 36 | 21.7 | 16 | 13.1 |
| Significance | ||||||||
| Gambling status |
| % |
| % |
| % |
| % |
| Non-problem | 117 | 46.8 | 100 | 48.5 | 63 | 38.0 | 30 | 24.6 |
| Low risk | 44 | 17.6 | 34 | 16.5 | 25 | 15.1 | 26 | 21.3 |
| Moderate risk | 36 | 14.4 | 24 | 11.7 | 25 | 15.1 | 18 | 14.8 |
| Problem | 53 | 21.2 | 48 | 23.3 | 53 | 31.9 | 48 | 39.3 |
| Significance | ||||||||
Note: n = actual number of participants and % = column percentages
Cross tabulation of age by number of gambling products used in the last 12 months (n = 324)
| Gambling product | Age | Significance | |||||||
| 16–34 | 35–54 | 55+ | |||||||
|
| % |
| % |
| % | ||||
| 1 product used | 26 | 23.9 | 34 | 29.3 | 48 | 48.5 | |||
| 2 products used | 26 | 23.9 | 36 | 31.0 | 26 | 26.3 | |||
| 3 products used | 16 | 14.7 | 20 | 17.2 | 16 | 16.2 | |||
| 4 products used | 41 | 37.6 | 26 | 22.4 | 9 | 9.1 | |||
| Total | 109 | 100.0 | 116 | 100.0 | 99 | 100.0 | |||
| Gambling product | Gambling risk status | Significance | |||||||
| Non-problem | Low risk | Moderate risk | Problem | ||||||
|
| % |
| % |
| % |
| % | ||
| 1 product used | 80 | 47.9 | 17 | 29.8 | 8 | 19.5 | 3 | 5.1 | |
| 2 products used | 45 | 26.9 | 20 | 35.1 | 14 | 34.1 | 9 | 15.3 | |
| 3 products used | 28 | 16.8 | 8 | 14.0 | 9 | 22.0 | 7 | 11.9 | |
| 4 products used | 14 | 8.4 | 12 | 21.1 | 10 | 24.4 | 40 | 67.8 | |
| Total | 167 | 100 | 57 | 100 | 41 | 100 | 59 | 100 | |
Note: n = actual number of participants and % = column percentages
Mean harm scores for gambling products by age and gambling risk status
| Gambling product (mean score) | ||||
|---|---|---|---|---|
| Casino | EGMs | Horse betting | Sports betting | |
| ( | ( | ( | ( | |
| Age | ||||
| 16–34 | 74.81 | 73.11 | 66.92 | 64.92 |
| 35–54 | 79.27 | 78.27 | 70.64 | 69.78 |
| 55+ | 80.31 | 76.70 | 73.35 | 74.52 |
| Gambling status | ||||
| Non-gambler | 81.70 | 78.88 | 76.35 | 75.17 |
| Non-problem | 79.34 | 77.47 | 72.11 | 72.02 |
| Low risk | 72.38 | 70.48 | 62.87 | 62.90 |
| Moderate risk | 76.56 | 74.23 | 63.75 | 63.52 |
| Problem | 74.26 | 72.34 | 65.60 | 63.50 |