| Literature DB >> 29382140 |
Limin Buchanan1, Bridget Kelly2, Heather Yeatman3, Kishan Kariippanon4.
Abstract
The marketing of unhealthy commodities through traditional media is known to impact consumers' product attitudes and behaviors. Less is known about the impacts of digital marketing (online promotional activities), especially among young people who have a strong online presence. This review systematically assesses the relationship between digital marketing and young people's attitudes and behaviors towards unhealthy commodities. Literature was identified in June 2017 by searches in six electronic databases. Primary studies (both qualitative and quantitative) that examined the effect of digital marketing of unhealthy food or beverages, alcohol and tobacco products on young people's (12 to 30 years) attitudes, intended and actual consumption were reviewed. 28 relevant studies were identified. Significant detrimental effects of digital marketing on the intended use and actual consumption of unhealthy commodities were revealed in the majority of the included studies. Findings from the qualitative studies were summarized and these findings provided insights on how digital marketing exerts effects on young people. One of the key findings was that marketers used peer-to-peer transmission of messages on social networking sites (e.g., friends' likes and comments on Facebook) to blur the boundary between marketing contents and online peer activities. Digital marketing of unhealthy commodities is associated with young people's use and beliefs of these products. The effects of digital marketing varied between product types and peer endorsed marketing (earned media) may exert greater negative impacts than owned or paid media marketing.Entities:
Keywords: consumption behaviors; digital marketing; online marketing; systematic review; unhealthy commodities; young people
Mesh:
Year: 2018 PMID: 29382140 PMCID: PMC5852724 DOI: 10.3390/nu10020148
Source DB: PubMed Journal: Nutrients ISSN: 2072-6643 Impact factor: 5.717
Search parameters for Systematic Review of the digital marketing effects on young people: Example on Scopus.
| Operator | Definition | Hits |
|---|---|---|
Title, Abstract, Keywords | market* OR advert* OR promot* | 2,487,973 |
Title, Abstract, Keywords | online OR internet OR web OR “social media” OR “social network” OR “new media” OR “online game” OR advergam* | 1,156,990 |
Title, Abstract, Keywords | “young people” OR “young adults” OR “young generation” OR “university students” OR “college students” OR adolescents OR teenagers OR youths | 2,634,580 |
Title, Abstract, Keywords | child* | 2,898,753 |
Title, Abstract, Keywords | food OR beverage OR drink OR soda OR cola OR alcohol OR tobacco OR cigarette | 2,070,463 |
Boolean operator | #1 AND #2 AND #3 AND NOT #4 AND #5 | 931 |
Limit date range Limit language Limit document type | 1990–2017EnglishArticle | 780 |
Figure 1Flow chart of systematic review literature search.
Characteristics and results of the included quantitative studies.
| Author (Date) | Population (Country) | Study Aims | Data Collection (Study Design) | Study Factor | Outcome Measure | Results |
|---|---|---|---|---|---|---|
| Alhabash et al. (2015) | University students from introductory classes, mean age 21 years | To examine the effects of viral behavioral intentions (intentions to like, share and comment on) for status updates and display advertisements on social media users’ intentions to consume alcohol | Experimental Design: 2 (likes: low vs. high) × 2 (shares: low vs. high) × (display ad type: alcohol ad vs. anti-binge drinking Public Service Announcement (PSA) vs. local bank) × 6 (status update repetitions) | Likes and shares on Facebook | Attitudes and viral behavioral intentions towards the display advertisements and status updates | Attitude towards status updates ( |
| Buchanan et al. (2017) | Young adults aged 18–24 years | To assess the impact of online marketing on young adults’ perception and consumption behaviors, using energy drinks as an example | Pre-test/post-test experimental trial, followed by semi-structured interview | Experimental group: exposure to two energy drink brands website and social media sites | Attitudes towards, purchase intention and consumption intention of, the two exposed energy drinks brands and energy drinks products in general | Exposure to energy drinks online marketing content improved young adults’ attitudes towards ( |
| Carrotte et al. (2016) | Young people aged 15–29 years | To explore the relationship between alcohol marketing on social media and alcohol consumption among young people | Online survey | Alcohol marketing social media use “like/follow pages on Facebook, Instagram or Twitter” | Alcohol consumption (number of standard drinks consumed on a typical day of drinking and risky single occasion drinking) | Liking or following any alcohol marketing page was significantly associated with early age (10–14 years) of first alcohol consumption (AOR = 2.2, 95% CI = 1.6–3.0). |
| Critchlow et al. (2016) | Young people aged 18–25 years | To examine the relationship between awareness of traditional, digital marketing and young people’s frequency of high episodic drinking (HED) | Survey | Awareness of and participation with 11 digital marketing channels,’ awareness of nine traditional marketing channels | Frequency of high episodic drinking (HED) | Participation with digital marketing increased the frequency of HED ( |
| De Bruijn et al. (2016) | European youths, mean age 14 years | To examine the exposure to alcohol marketing through digital media and its association with initiation of alcohol use, recent binge drinking and volume of alcohol consumption | Survey | Frequency of exposure to alcohol marketing in online media. | Alcohol use | Exposure to online alcohol marketing was linked to an increase likelihood of beginning alcohol use and binge drinking in the past 30 days. The association was the strongest for: |
| Depue et al. (2015) | Connecticut residents aged 18–24 years | To assess the association between smoking behavior and the exposure to mass media depictions of smoking on social networking websites | Telephone surveys (wave 1 and wave 2–5 months apart) | See tobacco use on TV, in movies and in social media content such as Facebook or MySpace | Cigarette use in the past 30 days | Time 1 social media tobacco use was a significant predictor of smoking at Time 2 (OR = 1.6,
|
| Dunlop et al. (2016) | Young people in two Australian states aged 12–24 years | To assess the exposure of young Australians to online tobacco advertising and promotion and to determine whether exposure has changed in recent year in relation to the changes in tobacco promotion opportunities | Telephone surveys (four waves) | Exposure to Internet-based tobacco advertising and branding in the past month | Smoking behaviors: Current smoking (never-smokers; experimenters; current smokers; ex-smokers), smoking susceptibility | Current or ex-smokers had lower odds of being exposed to Internet-based advertising than experimenters or never-smokers (AOR = 0.4, 95% CI = 0.3–0.5) |
| Gordon et al. (2011) | Students attending schools in the West of Scotland, aged 12–14 years | To examine the cumulative impact of alcohol marketing communications on adolescents’ drinking behaviors | Survey | Awareness, appreciation and involvement with various forms of alcohol marketing including digital marketing, as measured by interview-administered questionnaire | Drinking status, future drinking intentions, age of initiation of drinking, as measured by self-completion questionnaire | Participation in electronic alcohol marketing increased the likelihood of being a drinker (OR = 4.0, 95% CI = 1.5–10.8) and associated with greater intention to drink alcohol in the next year ( |
| Hoffman et al. (2014) | Public and private university students, mean age 21.4 years | To examine the relationship between college students’ use of social media, their exposure to alcohol marketing messages through social media and their alcohol-related beliefs and behaviors | Online survey | Engage with alcohol related marketing on the websites and social media sites. | Drinking behaviors: problem drinking as measured by problem-drinking index, use in past 30 days, use in 1 occasion. | The use of alcohol-marketing applications on social media predicted: more drinking problems ( |
| Jones and Magee (2011) | Adolescents aged 12–17 years | To investigate the exposure level to different types of alcohol advertising and to examine the association between exposure to advertising and alcohol consumption | Survey | Exposure to alcohol advertisement across eight media including Internet | Alcohol consumption behaviors (initiation, recent consumption in the past 4 weeks and frequency of consumption in the previous 12 months) | Exposure to Internet alcohol advertising increased the likelihood of recent alcohol consumption (AOR = 1.4, 95% CI = 1.0–1.8) but not the alcohol initiation (AOR = 1.3, 95% CI = 0.9–1.7) or alcohol consumption in the past 12 months (AOR = 1.0, 95% CI = 0.7–1.3) |
| Jones et al. (2016) | Young people aged 16–24 years | To examine the association between Facebook users’ interactions with alcohol brands and alcohol consumption | Online survey | Recalled exposure to alcohol marketing on Facebook, interaction with alcohol brands on Facebook (e.g., liking, commenting) | Alcohol use amount (1–2 drinks, 3–4 drinks and more than 5 drinks), alcohol use frequency, binge drinking frequency as measured by AUDIT-C. | Respondents who had ever liked, posted, commented or uploaded/tagged alcohol brands on Facebook increased the alcohol use frequency (OR = 2.0, 95% CI = 1.2–3.5); increased alcohol amount use (OR = 3.7, 95% CI = 2.1–6.7), increased binge drinking frequency (OR = 2.4, 95% CI = 1.4–4.2) |
| Lin et al. (2012) | Students aged 13–14 years | To examine to association between awareness and engagement with a range of alcohol marketing channels and drinking behaviors | Computer assisted telephone interview | Awareness of and engagement with 15 of alcohol marketing channels including web based marketing, as measured by interview-administered questionnaire | Drinking status, drinking frequency, drinking quantity and future drinking intentions, as measured by interview-administered questionnaire | Those engaged with web-based alcohol marketing were: |
| MacFadyen et al. (2001) | Young people aged 15 and 16 years | To examine the association between young people’s awareness of and involvement with tobacco marketing and their smoking behavior | Survey | Exposure and involvement to all forms of tobacco marketing activities including Internet sites | Smoking status (non-smoker; tried smoking; current smoker) | There was a low number of participants (8%) who were aware of the Internet sites for cigarettes or smoking and their smoking status were not significantly different ( |
| McClure et al. (2016) | Youths aged 15–20 years | To examine the longitudinal association between Internet alcohol marketing engagement and alcohol use transitions among youth | Surveys were conducted at two time points (1 year apart) | Internet alcohol marketing receptivity: exposure to alcohol advertising on the Internet, visiting alcohol brand websites, being an online alcohol brand fan | Ever drinking and binge drinking (6 or more drinks per occasion) | Internet alcohol marketing receptivity increased the likelihood of initiating binge drinking, the higher the receptivity score, the greater the impact (score 1: OR = 1.8, 95% CI = 1.1–2.8; score 2: OR = 2.2, 95% CI = 1.1–4.4) |
| Perez et al. (2012) | Adolescents and young adults aged 12 to 24 years | To examine the level of exposure of New South Wales (NSW) adolescents and young adults to the promotion of tobacco through point-of-sale, Internet, entertainment media and venues and to identify young people who are at risk of exposure | Telephone survey | Perceived exposure to promotion or advertising of tobacco in the last month through various forms of marketing methods including Internet | Smoking status (current smokers, ex-smokers, experimenters, non-smokers) and susceptibility to smoking (susceptible non-smokers, non-susceptible non-smokers) | Participants who had ever smoke had lower odds of seeing cigarette brands, tobacco company names or logos on the Internet (OR = 0.6, 95% CI = 0.4–1.0) than those who never smoke. |
| Pinsky et al. (2010) | Subjects aged 14–25 years | To explore Brazilian adolescents and young adults’ exposure to alcohol advertising and to assess the relationship between the exposure to heavy alcohol consumption | Face-to-face interviews but quantitative questions | Perceived exposure to alcohol marketing in different media including Internet | Alcohol consumption: high intensity drinkers (drink at least once a week) vs. low intensity drinkers (drink less than once a week) | 91.6% declared they have not seen alcohol advertising on the Internet or visited a website related to alcohol beverages. Exposure to alcohol Internet sites was not included in the logistic models, due to low incidence of reported exposure |
| Reinhold et al. (2017) | Students at a large Midwestern university aged 18–24 years | To explore young adults’ perceptions of harm and acceptability of the use of e-cigarette and to examine whether e-cigarette advertising has an effect on perception of harm and acceptability of use | Online survey | E-cigarette advertising exposure through different media channels including Internet | Lifetime e-cigarette use, perception of harm, addictiveness and acceptability of e-cigarette use in places | Having seen an advertisement on the Internet was significantly associated with lower perceived harm of e-cigarette use (AOR = 1.2, 95% CI = 1.1–1.3) and also acceptability of e-cigarette use in various locations (all
|
| Salgado et al. (2014) | Current or recently graduated medical students aged 20–30 years | To examine the effects of tobacco industry Internet marketing strategies on young adults | Survey | Frequency of access to tobacco website (from “once a day or more” to “once a month or less”). | Ever smoke, never smoke, current smoker, former smoker | Former or current smokers were more likely to have accessed a tobacco brand website at least once (AOR = 2.5, 95% CI = 1.4–4.2; AOR = 8.1, 95% CI = 4.7–14.2, respectively) |
| Scully et al. (2012) | Secondary students aged 12–17 years | To determine the associations between exposure to various types of food marketing and adolescents’ food choices and food consumption | Online survey | Various types of food marketing exposure including Internet | Food choices, eating behaviors- frequency of consumption of fast food, sugary drinks and sweet snacks | Exposure to the digital food marketing increased the odds: |
| Singh et al. (2016) | Middle and high school students grades 6 to 12 (12–18 years) | To examine the association between e-cigarette advertising exposure (four sorts including Internet) and current e-cigarette use among US youth | Survey | Exposure to e-cigarette advertisement on Internet, newspaper/magazines, in retail stores, in TV/movies | Current cigarette use (in the past 30 days) | Among middle school students, greater exposure to e-cigarette Internet advertising increased the odds of being current e-cigarette users (most of the time/always AOR = 2.9, 95% CI = 1.9–4.5) |
| Weaver et al. (2016) | Young people aged 16–29 years | To investigate young people’s perception of alcohol advertising on Facebook and to investigate the perceived compliance of these advertising with the Alcohol Beverages Advertising Code (ABAC) | Focused group discussion (to inform development of online survey) | Exposed to six popular Australian alcohol brands’ Facebook pages | Perception and interpretation of specific alcohol-branded marketing on Facebook, as measured by open-ended questions (with and without prompts). | The focused group discussion revealed that participants preferred alcohol advertising that was ‘user-generated’, ‘casual’ and ‘subtle’ in appearance as it gives the impression that it was created by a ‘real person’ |
PSA: Public Service Announcement; B: Standardized regression coefficients; p: Level of marginal significance; AOR: Adjusted odds ratio; CI: Confidence Interval; SES: Socio-economic status.
Characteristics and results of the included qualitative studies.
| No. | Author (Date) | Population | Study Aim | Data Collection | Results |
|---|---|---|---|---|---|
| 1 | Atkinson et al. (2017) | Young people aged 16–21 years | To analyze the use and contents of alcohol marketing on the social network sites (SNS) and to explore young people’s perspectives and experiences on alcohol marketing on SNS | Stage 1: Content analysis of five alcohol brands’ interaction with users on social networking sites; both brand- and user-generated contents over 1-month period | Alcohol industry used social networking site particularly Facebook to engage consumers |
| 2 | Gaber and Wright (2014) | Young people aged 17–29 years | To explore the factors that influence young Egyptians’ attitudes towards fast-food advertising on Facebook. | Focus groups | Most of the participants had positive attitudes towards the advertising on Facebook and believed that Facebook advertising is informative and credible |
| 3 | Lyons et al. (2015) | 18–25 years old young people | To use an innovative qualitative methodology to explore the role of social networking site in drinking cultures and alcohol consumption practices among young adults(Alcohol) | Stage 1: Focus group discussion | Alcohol companies use social media to enhance identity displays; participants actively engaged with these marketing initiatives with many highlighted that alcohol brands and pages were integral part of their online identities; allowed them to present their tastes and preferences and socially interacted with the other Facebook users by sharing amusing alcohol-related content generated by alcohol companies |
| 4 | Moraes et al. (2014) | Young adults aged 18 to 24 years | To explore the use of Facebook to promote alcohol use among young people | Focus group | Facebook was used as a tool by alcohol brands and nightclub to communicate, co-produce and co-generate alcohol-related contents with young people that encourages alcohol use |
| 5 | Niland et al. (2017) | Young adults aged 18–25 years | To examine young adults’ interactions with alcohol marketing from within their own social networking practices and to examine participants’ meanings and understandings of the ways in which commercial alcohol interests interacted with their own online practices. | Go-along interviews- participants accessed and navigated through their Facebook accounts and took the researcher on a “tour” showing and elaborating their social networking practices (data screen- capture software to track participants’ online navigation and audio-visual recording of the conversation and non-verbal behaviors) | All participants viewed Facebook advertising as the sponsored sidebar ads on their Newsfeed pages, participants did not interpret ‘liking’ alcohol-related content or alcohol venue page photos and activities as a form of marketing |
| 6 | Purves et al. (2015) | 14–17 years young people | To explore the ways that alcohol marketers engage with consumers on the social media sites | Content analysis by netnographic approaches | Brand communicates their personality through social networking sites. Brand preference indicated the characteristics of young people. For example, males and females may prefer different alcohol brands |
| 7 | Waqa et al. (2015) | Students aged 14–17 years | To explore Fijian students’ view on tobacco and tobacco-related media depictions to gain insight into the drivers of smoking uptake and for potential direction for prevention intervention. | In-depth interviews | Internet was identified by the young Fijians as an important source of information about tobacco promotion that persuade young people to smoke via repeat screenings and interactive applications and platforms |