What percentage of college students report having consumed alcohol in the past 30 days?

Alcohol Use is Common Among Women and Girls

What percentage of college students report having consumed alcohol in the past 30 days?

  • Nearly half of adult women report drinking alcohol in the past 30 days.3
  • Approximately 13% of adult women report binge drinking. Among them, 25% do so at least weekly, on average, and 25% consume at least six drinks during a binge drinking occasion.3
  • Almost 18% of women of child-bearing age (i.e., ages 18–44 years) binge drink.3
  • In 2019, about 32% of female high school students consumed alcohol compared with 26% of male high school students. Binge drinking was also more common among female (15%) than male (13%) high school students.4
  • In 2020, 9% of women overall and 17% of women aged 18 to 25 years had an alcohol use disorder.5

Alcohol Affects Women Differently than Men

Although men are more likely to drink alcohol and consume larger amounts, biological differences in body structure and chemistry lead most women to absorb more alcohol and take longer to metabolize it. After drinking the same amount of alcohol, women tend to have higher blood alcohol levels than men, and the immediate effects of alcohol usually occur more quickly and last longer in women than men. These differences make women more susceptible to the long-term negative health effects of alcohol compared with men.2

Alcohol is Associated with other Diseases, Injuries, and Harms

  • Liver Disease: The risk of cirrhosis and other alcohol-related liver diseases is higher for women than for men.2,6
  • Impact on the Brain: Alcohol-related cognitive decline and shrinkage of the brain develop more quickly for women than for men.2
  • Impact on the Heart: Women who drink excessively are at increased risk for damage to the heart muscle at lower levels of consumption and over fewer years of drinking than men.2
  • Breast and other Cancers: Alcohol consumption increases the risk of cancers of the mouth, throat, esophagus, liver, and colon. In women, drinking is also associated with breast cancer, even at low levels of consumption.2,7
  • Sexual Violence: Excessive alcohol use, particularly binge drinking, is a major contributing factor to sexual violence.8,9 Changes in alcohol-related policies can reduce sexual violence in communities.10

There is No Known Safe Amount of Alcohol Use during Pregnancy

  • In a recent study, 10% of respondents who were pregnant drank alcohol and 4.5% binge drank.14
  • Alcohol use during pregnancy increases the risk of having a baby with fetal alcohol spectrum disorders (FASD). The most severe form is fetal alcohol syndrome (FAS), which is associated with intellectual disabilities and birth defects.15
  • FASD are 100% preventable if a person does not drink while pregnant or while trying to become pregnant. It is not safe to drink at any time during pregnancy.16
  • Excessive alcohol use increases the risk of miscarriage, stillbirth, premature delivery and Sudden Infant Death Syndrome (SIDS).2,17,18

Women can reduce the amount of alcohol they drink to reduce their risk of harms.

The Alcohol Use and Your Health Fact Sheet addresses a number of additional health conditions associated with excessive alcohol use that affect both men and women.

Introduction

Public health measures taken in response to the COVID-19 pandemic substantially affected daily social and personal life of young adults, and educational settings (1). The challenges for young adults during the pandemic are voiced by Richter et al. (2): “It is safe to assume that many young people are experiencing significant hardship during this time.” Indeed, social contacts and mobility were restricted due to the national containment measures such as social distancing and closure of schools and universities. The daily structure of young adults changed drastically. Previous studies have shown that university students struggled with online classes and lack of contact with their fellow students (3, 4). Further, an increase in mental health symptoms in university students during the course of the pandemic has been observed (5–11). Moreover, change in health behaviors such as physical activity, nutrition and substance consumption in university students was reported (5, 6, 12–16).

Results on alcohol consumption during the lockdown are inconsistent. The assumption that university students would increase their consumption of alcohol during the lockdown, because of the stressful situation and lack of social control, was supported only by some of the studies collecting data during the pandemic (14, 15, 17). However, despite a part of university students increasing their alcohol consumption, others reduced their consumption. For example, Bann et al. examined change in alcohol consumption before and during the lockdown, in five representative British cohorts. In the youngest cohort, the 19-20-year-olds, 28% reported to have never consumed alcohol during the lockdown, and high risk alcohol consumption decreased from 33 to 13% (5). Similarly, college students in the USA reduced their quantity of alcoholic beverages from 11.5 to 9.9 drinks per week during the COVID-19 pandemic (16). However, another study from the USA found an increase in alcohol consumption in university students during the lockdown (14). Risk factors associated with an increased alcohol consumption were male gender and symptoms of depression and anxiety (5, 14), while greater perceived social support and returning to live with parents were associated with no increase in alcohol consumption (14, 16, 18). Those that perceived a high impact were more vulnerable to develop risky health behavior and adverse health outcomes (19, 20). These results indicate that the pandemic does not affect all young adults equally.

Psychological disorders and problematic substance consumption are related. On one hand, alcohol may be used as coping strategy to deal with symptoms of depression and anxiety disorders, and on the other hand, problematic alcohol consumption can increase the probability to develop a psychological disorder (21). This correlation between depression or anxiety disorders and increased alcohol consumption was also found during the pandemic (14). Alcohol abuse itself has damaging short- and long-term health effects for the individual (22, 23) and economic consequences at the individual and societal level (24). It is crucial to detect both, psychological symptoms and problematic alcohol consumption, at an early stage to intervene and recuse negative consequences, especially in young adults. The life phase of emerging adulthood is a vulnerable phase for the development and establishment of healthy and risky health behavior (25, 26), and the pandemic likely increased this vulnerability. While the pandemic most probably affected all young adults and university students, the impact on mental health and alcohol consumption may differ across countries.

Given differences in the epidemiological course of the pandemic, e.g., number of cases and mortality, and the containment measures implemented by country, one may assume a differential impact of the pandemic regarding factors associated with risky health behavior and individuals at risk of increasing risky health behavior in this age group. So far, only one other study has examined prevalence of alcohol consumption in Swiss university students in Switzerland, however, without analyzing predictors for alcohol consumption during the pandemic (8).

The overarching aim of the “HEalth in Students study during the Corona pandemic” (HES-C) was to (1) evaluate the mental condition of university students during the epidemic, (2) investigate changes in health behavior and (3) associated factors of both outcomes, such as pandemic related ones as well as individual factors. This article focusses on change in alcohol consumption and factors associated with an increase in alcohol consumption and binge drinking, corresponding to problematic alcohol consumption, during and after the first COVID-19 lockdown in Swiss university students.

Methods

Study Design and Study Sample

In HES-C, we employed a prospective open cohort study design with nine survey time points between 3rd of April 2020 and 23th of June 2021, each covering seven working days. The present study uses pooled data from the first survey T0 (3 April to 14 April 2020) and follow-ups at T1 (30 April to 11 May 2020) and T2 (28 May to 8 June 2020). The first survey T0, the baseline survey, took place during the first lockdown (16 March to 26 April 2020), while T1 and T2 took place after the lockdown. The Supplementary Figure 1 shows the corresponding stringency of containment measures in Switzerland, the epidemiological data incidence and deaths, as well as the survey time points. University students from all faculties of the ZHAW (N = 12'431) received a non-personalized email, via a central email distribution list containing all students, with information about the study and an online-link inviting them to fill in the online-survey. Of those invited 16.3% (T0, n = 2'023), 11.6% (T1, n = 1'436) and 9.7% (T2, n = 1'207) filled in the surveys. Participants had to actively provide their consent to participate in the study before filling in the online questionnaire. Anonymity was guaranteed at all times. The study is in accordance with the Declaration of Helsinki and was approved by both the local cantonal ethics committee (BASEC-Nr. Req-2020-00326) and the ZHAW data protection officer.

Of the 1,300 university students who participated in the baseline survey and in at least one follow-up survey, 1,278 (98.3%) completed the questionnaires in full. For the present study, we excluded university students who did not complete the respective surveys (n = 22), did not drink any alcohol at either survey (n = 194), did not provide information on alcohol consumption (n = 137) and university students who identified themselves as “other” gender (n = 4), resulting in a net sample size of 947.

Outcomes and Measures

Outcomes

In our study, we assessed three outcomes related to alcohol consumption at T1 and T2 follow-ups: (1) increased alcohol consumption in the past 30 days, (2) any binge drinking in the past 30 days (≥ 5 drinks on one or more occasion), and (3) heavy binge drinking in the past 30 days (≥ 5 drinks on two or more occasion). All outcomes were coded as binary response variables. Survey questions related to alcohol consumption were adopted from the European School Survey Project on Alcohol and other Drugs (ESPAD) (27, 28). Increased alcohol consumption was assessed using the following question: “Think back over the last 30 days. Has your alcohol consumption changed in the last 30 days?” (dichotomous response categories created: 0 = less alcohol/no change, 1 = more alcohol). Any binge drinking and heavy binge drinking were assessed by asking participants the following question: “Think back again over the last 30 days. How many times (if any) have you had five or more drinks on one occasion? (A “drink” is a glass/bottle/can of beer (ca 50 cl), a glass/bottle/can of cider (ca 50 cl), 2 glasses/bottles of alcopops (ca 50 cl), a glass of wine (ca. 15 cl), a glass of spirits (ca. 5 cl) or a mixed drink.” To capture episodes of any binge drinking and heavy binge drinking respectively, response categories (0, 1, 2, 3–5, 6–9, ≥10) were recoded to 0 = no binge drinking (response 0) and 1 = yes, binge drinking (response ≥1), and 0 = no (0–1) and 1 = yes (2–10) for heavy binge drinking.

Covariables

Alcohol consumption in the last 30 days was collected at baseline (T0, baseline alcohol consumption) and was assessed using survey questions from the European School Survey Project on Alcohol and other Drugs (ESPAD) (27, 28). Participants were asked two related questions: (1) “On how many occasions (if any) have you had any alcoholic beverages to drink during the last 30 days?” (response categories: never, on 1 day, on 2 days, on 3 days, once a week, twice a week, 3–4 times a week, (almost) every day) and (2) “Think back again over the last 30 days. When you were drinking alcohol, how many drinks on average did you have on each occasion?” (response categories: I do not drink alcohol, I did not drink alcohol during the last 30 days, 1 drink, 2 drinks, 3 drinks, 4 drinks, 5 drinks, 6 or more drinks). Total baseline alcohol consumption (total number of drinks) during the past 30 days was calculated by multiplying the average number of drinks per occasion (maximum fixed at 6 drinks) by the average number of days with alcohol consumption in the past 30 days (maximum fixed at 30).

Current Health Status

The participants were asked about their current state of health [adapted; (29)]. The question “What is your current state of health? Is it…” they could answer on a 5 point Likert scale (1 = very poor, 5 = very good).

Mental Health: Anxiety

Anxiety was measured with the General Anxiety Disorder-Scale-7 [GAD-7; (30)]. The GAD-7 is a self-assessment questionnaire that measures the level of perceived anxiety in the last 2 weeks. The questionnaire contains 7 items to be rated on a 4-point Likert scale (from “not at all” to “nearly every day”), resulting in a total score from 0 to 21. Total score can be interpreted as different levels of anxiety: minimal (0–4), mild (5–9), moderate (10–14) and severe (15–21). A review on pooled sensitivity and specificity values found cutoff scores 7–10 to have similarly moderate to high pooled estimates of sensitivity and specificity, [sensitivity: 0.74 (95% CI 0.61–0.84) to 0.85 (95% CI 0.73–0.92), specificity: 0.75 (95% CI 0.54–0.88) to 0.84 (95% CI 0.70–0.92)] (31).

Self-Efficacy

The General self-efficacy expectations Short scale [ASKU; (32)] is used to record individual expectations of competence in dealing with difficulties and obstacles in daily life. Therefore three statements had to be answered on a 5-point Likert scale (1 = doesn't apply at all, 5 = applies completely). Total score ranges from 3 to 15. The reliability of the ASKU lies between ω = 0.81 and 0.86, which corresponds to a sufficient reliability. The short version also has a sufficient reliability of α = 0.92 (32).

Resilience

Resilient coping was measured using the Brief Resilient Coping Scale [BRCS; (33)]. This instrument is based on four questions, which are answered on a 5-point Likert scale (1 = doesn't describe me at all, 5 = describes me very well). Total score ranges from 4 to 20 and allow the classification into the 3 categories: low resilience (4–13), medium resilience (14–16) and high resilience (17–20). The scale has a reliability of α = 0.69 and a predictive validity of α = 0.86 (33).

Social Support (Oslo)

The perceived availability of people whom individuals trust and who make them feel cared for, loved, respected and valued as a person was measured using the Oslo-3 Social Support Scale [Oslo-3; Kocalevent et al., (34)]. The total score ranges from 3 to 14 and can be divided into weak support (3–8), moderate support (9–11) and strong support (12–14). The scale has a low reliability of α = 0.50 and validity but considered acceptable (35).

Sociodemographic Variables

We collected the following sociodemographic information: age (year of birth), gender, socioeconomic status (SES) as measured by perceived parental social status at student age 16 years. (“Imagine a ladder with 10 rungs. Please mark on which rung you think your parents stood in relation to other people in Switzerland when you were 16 years old”) [MacArthur scale; (36)] and current living situation (I live (1) alone, (2) in a flat-sharing community, (3) with my partner, (4) with my parents/one parent or (5) other form of living). The living situation was dichotomized in living with parents and living autonomously.

Statistical Analyses

Descriptive statistics (i.e., frequencies, percent, mean, and standard deviation) were applied to describe the characteristics of the sample. We used Student t-tests and Chi-square-tests to assess mean-level stability between measurement points.

Generalized Estimating Equations (GEE) models of the binomial family with logit link and robust standard errors, which adjust for repeated measures of the same subject, were employed to investigate the factors associated with increase in alcohol consumption and binge drinking. We estimated restricted models adjusting for time (follow-up 1 or 2) and the number of alcoholic drinks at baseline measurement in a first basic model. The full model adjusted additionally for age (centered at the mean value), gender, social status (centered at the mean value), living situation, health, anxiety (centered at the mean value), self-efficacy (centered at the mean value), resilience (centered at the mean value), social support (centered at the mean value), for the outcomes increased alcohol consumption, any binge drinking episode, and heavy binge drinking episodes in the past 30 days before the survey at either T1 or T2. We report odds ratios (OR) with corresponding 95% confidence intervals (95% CI), predictive margins (average predicted probability), and average marginal effects. Statistical significance was established at P < 0.05. We used Stata Version 15.1 (StataCorp, College Station, TX, USA) for statistical analyses.

Missing Data

Information on alcohol consumption, our primary outcome, was provided by 947 university students. Complete data for all variables used in the three different models were available for at least 97.4% of the cases. Social status had the highest number of missing values (2.1%), missing values for the remaining variables were in the range between 0.0 and 0.3%. We used the Stata mvpatterns and misschk commands to assess incomplete cases and to cross tabulate and plot all combinations of missing and non-missing values of the variables used in the respective models. Using visual inspection, we detected no systematic pattern in the missing data. For this reason and the low number of incomplete cases, we did not impute missing data (37) and included complete cases throughout all analyses.

Results

Participant characteristics and descriptive statistics are shown in Table 1. Overall, the mean age of participants was 27.0 years (SD = 6.5) and 75.8% was female. Overall, 58.8% lived in their own households, the remaining ones lived with their parents. Participants' characteristics differed slightly between measurement points but were comparable (see Follow-up 1 and 2 in Table 1). The majority (87.5%) reported a good or very good health status. Mean anxiety score was 6.2 (SD = 4.2), corresponding to a medium anxiety level. Regarding the alcohol consumption, participants drank on average 13.5 alcoholic beverages (SD = 15.5) in the last 30 days. The majority reported no increase in alcohol consumption (80.2 %), while overall 19.8% increased their consumption (T1 24.9%, T2 14.1%). In our sample 26.9% engaged at least once in binge drinking and 6.5% engaged at least twice in binge drinking (T1 7.5%, T2 2 5.3%).

What percentage of college students report having consumed alcohol in the past 30 days?

Table 1. Participant characteristics.

Increased Alcohol Consumption

Reporting increased alcohol consumption in the past 30 days was associated with the number of drinks at baseline in the restricted model (OR = 1.04, 95% CI: 1.03–1.06), adjusting only for time (follow-up), and in the full model (OR = 1.04, 95% CI: 1.03–1.06), adjusting for all covariates (Table 2). At the second follow-up, university students were less likely to report increased alcohol consumption in the past 30 days as compared to the first follow-up (OR = 0.52, 95% CI: 0.38–0.70 and OR = 0.51, 95% CI: 0.37–0.70 in the restricted and full model respectively). With respect to covariates, higher anxiety scores (OR = 1.06, 95% CI: 1.01–1.11) were associated with increased alcohol consumption, and university students with higher resilience were less likely to report increased alcohol consumption (OR = 0.90, 95% CI: 0.82–0.99). Remaining covariates were not associated with increased alcohol consumption.

What percentage of college students report having consumed alcohol in the past 30 days?

Table 2. Associations between time and participants' characteristics and increase in alcohol consumption and binge drinking*.

Predictive margins, i.e., the predicted percentage of university students reporting increased alcohol consumption was 23.7% (95% CI: 20.3–27.1) and 14.7% (95% CI: 11.6–17.8) at the first and second follow-up, and 23.7% (95% CI: 20.3–27.2) and 14.9% (95% CI: 11.7–18.0) at the first and second follow-up in the restricted and the full model respectively (Figure 1).

What percentage of college students report having consumed alcohol in the past 30 days?

Figure 1. Increased alcohol consumption and its association with baseline alcohol consumption at Follow-up 1 and 2. (A,B) show predictive margins and (C,D) average marginal effects for the restricted and full models respectively. Dots represent point estimates. Whiskers show the 95% confidence interval.

Any Binge Drinking Event

University students who consumed more alcoholic drinks at baseline were more likely to report at least one binge drinking event in the past 30 days in the restricted model (OR = 1.08, 95% CI: 1.05–1.10) and the full model (OR = 1.08, OR = 1.05–1.10). However, we did not find a statistically significant difference between the first and the second follow-up.

Men as compared to women (OR = 2.24, 95% CI: 1.40–3.60) and university students with higher anxiety scores (OR = 1.06, 95% CI: 1.01–1.12) were more likely to report binge drinking on at least one occasion. Moreover, older university students (OR = 0.94, 95% CI: 0.91–0.98) and those living in their parents' household (OR = 0.54, 95% CI: 0.33–0.87) were less likely to report any binge drinking event. Remaining covariates were not associated with binge drinking on at least one occasion.

Predictive margins for binge drinking in the restricted model were 26.9% (95% CI: 23.9–30.0) and 26.9% (95% CI: 23.8–30.0). In the full model the predicted proportion amounted to 27.0% (95% CI: 24.0–30.0) and 26.8 (95% CI: 23.8–29.8) respectively (Figure 2).

What percentage of college students report having consumed alcohol in the past 30 days?

Figure 2. Any binge drinking episode and its association with baseline alcohol consumption at Follow-up 1 and 2. (A,B) show predictive margins and (C,D) average marginal effects for the restricted and full models respectively. Dots represent point estimates. Whiskers show the 95% confidence interval.

Heavy Binge Drinking

Similar to any binge drinking, university students who consumed more alcoholic drinks at baseline were more likely to report heavy binge drinking in the past 30 days in the restricted model (OR = 1.07, 95% CI: 1.06–1.09) and the full model (OR = 1.08, 95% CI: 1.06–1.09) and we did not find a statistically significant difference between the first and the second follow-up. With respect to covariates, university students with higher social support were more likely to report heavy binge drinking (OR = 1.28, 95% CI: 1.00–1.66). Remaining covariates were not associated with heavy binge drinking.

Predictive margins for binge drinking in the restricted model were 7.0% (95% CI: 5.2–9.0) and 3.9% (95% CI: 1.2–6.7). In the full model the predicted proportion was 6.3% (95% CI: 5.0–8.3) and 6.3% (95% CI: 4.7–7.9) respectively (Figure 3).

What percentage of college students report having consumed alcohol in the past 30 days?

Figure 3. Heavy binge drinking and its association with baseline alcohol consumption at Follow-up 1 and 2. (A,B) show predictive margins and (C,D) average marginal effects for the restricted and full models respectively. Dots represent point estimates. Whiskers show the 95% confidence interval.

Discussion

During the first months of the COVID-19 pandemic, a fifth of our sample of Swiss university students reported an increased consumption of alcohol and a quarter engaged in binge drinking. We found that the number of drinks at baseline were associated with a higher probability of increased alcohol consumption, as well as engaging in single and multiple binge drinking events. Further, higher anxiety scores were associated with a higher probability to increase alcohol consumption and engaging at least once in binge drinking. Additional factors associated with any binge drinking were male gender, younger age and not living with parents. Higher perceived social support was only associated with engaging in heavy binge drinking, but not with a higher probability to increase alcohol consumption or any binge drinking.

While the majority of university students reported no increase in alcohol consumption at the two survey time points, one in five reported an increase in alcohol consumption. This finding is comparable with other study results (5, 16), indicating differential health behavior changes among university students. University students who increased their alcohol consumption reported a higher number of drinks at baseline, higher anxiety symptoms and lower resilience compared to university students who did not increase their alcohol consumption. Apparently, university students who reported a higher alcohol consumption at the beginning of the pandemic were those at highest risk to increase their alcohol consumption during the following weeks of the early pandemic. We did not assess reasons for the increase in alcohol consumption, however, other studies suggest that university students used alcohol to cope with the insecure and challenging situation caused by the pandemic (38, 39). Vanderbruggen et al. found loneliness, lack of social contact, loss of daily structures but also boredom to be the main reasons for drinking more alcohol during the pandemic (40). The higher anxiety symptoms and lower resilience level reported by university students in the current study further support the hypothesis that the perceived adverse impact of the pandemic may have led to the increase in alcohol consumption.

The proportion of university students who increased their alcohol consumption was higher at follow-up one (24.9%) as compared to follow-up two (14.1%). This reduction might be explained by the loosening of containment measures and a less severe epidemiological situation at T2 (i.e., lower COVID-19 cases and deaths compared to T0 and T1, see Supplementary Figure 1). The first follow-up took place shortly after the lockdown, therefore we may assume that the higher proportion of students with increased alcohol consummation indicates its use as coping mechanism or a lock-down induced temporary health behavior change. At the second follow-up increased alcohol consumption dropped by 10%. This reduction might be explained by the loosening of containment measures and a less severe epidemiological situation at T2 (i.e., lower COVID-19 cases and deaths compared to T0 and T1, see Supplementary Figure 1), thus a normalization of everyday life and reductions of Covid-related stressors.

Binge drinking represents a risky health behavior, which occurs mainly at young ages during parties and/or with peers (41). In this sample, about one forth engaged at least once in binge drinking during the last 30 days at T1 or T2. The finding is comparable to results from a national Swiss survey, in which 27% of 15- to 24-year-olds and 22% of 25-to-34-year-olds engaged at least once a month in binge drinking (42). Also, for binge drinking higher number of drinks at baseline and anxiety symptoms were associated with engaging in binge drinking at follow-up. Interestingly, university students that lived with their parents showed lower odds for binge drinking than university students living in their own household. Possibly living with parents is a proxy for higher social control or, positively expressed, parents acted as a support system providing a daily structure at home and social contacts that the other university students lacked, reducing the risk to resort to binge drinking as a coping strategy. Further risk factors were male gender and younger age. Both associations were expected and shown in previous studies (5, 41).

Heavy binge drinking was not associated with higher anxiety symptoms, lower resilience or self-efficacy, which implies that the reported increase possibly was not a coping mechanism. In fact, the behavior was associated with higher perceived social support, which seems counter-intuitive at first. However, binge drinking does happen more often among friends and peers (39, 41). Perceived social support was added in the model under the assumption to be a protective factor, but in this case we observe the opposite. The results should be interpreted with caution, as the sample of heavy binge drinker was rather small, and other known associations, such as gender and age, were not found. However, heavy binge drinking in university students is a known problem and based on previous findings, it becomes clear that successful interventions must address perceived social norms among university students in relation to binge drinking (41, 43).

A limitation of the study is that self-reported data on alcohol consumption might be affected by social desirability. Social desirability bias, however, would most probably cause an underreporting; implying that the actual number of participants with increased consumption might be higher. Further, it is possible that only the first or last days of the 30-act period are remembered more accurately, while the time in between is more difficult to remember [primacy and recency effect (44, 45)]. So, an over- and underestimation of reported consumption is possible. Assuming a non-differential bias, the power but not the direction of the association should be impacted. Furthermore, we did not assess the reasons for drinking or the situations in which university students were drinking alcohol. Also, our results may not be generalizable to Swiss young adults outside the university setting, as the latter may have been affected differently by the pandemic, and the higher proportion of women compared to men could limit the generalizability of the frequencies of increased alcohol consumption. A strength of the study is the large sample of university students from different faculties and the data collection started early in the pandemic, including the first lockdown, as well as the post-lockdown phase. Furthermore, it is the first study examining risk factors for increased or binge alcohol drinking in Swiss university students during the pandemic, providing valuable information for health promotion and prevention for this specific population in future.

Our study indicates that the lockdown has had a significant impact on short-term alcohol consumption and binge drinking in university students. It is reassuring, that at the follow-up 2 the odds of increased alcohol consumption was already reduced. The data underline the vulnerability of the transition to an independent adult life (26) and the relevance of the life phase emerging adulthood for health behavior development. It seems relevant to consider risks simultaneously (46) or using a cluster approach to identify different risk profiles, not only including age and gender, but also living situation and social support when developing interventions. The data point to the importance of the baseline risk when a crisis occurs, and thus the necessity of continuous prevention activities and investments in order to increase resilience. Universities, for example, could teach sustainable coping strategies for students to deal with uncertain and stressful events and provide support for those students at risk.

The present study showed that one in four university students developed a more risky health behavior regarding alcohol consumption in the early phase of the pandemic. It is important to identify university students at risk and design target prevention including factors such as age, gender, living situation, and social norms. Further, health behavior and determinants of health behaviors of university students should be monitored carefully during the further course of the pandemic.

Data Availability Statement

The raw data supporting the conclusions of this article will be made available by the authors, without undue reservation.

Ethics Statement

The studies involving human participants were reviewed and approved by the local cantonal Ethics Committee (BASEC-Nr. Req-2020-00326) and the ZHAW data protection officer. The patients/participants provided their written informed consent to participate in this study.

Author Contributions

JD, TV, and AZ: conceptualization, methodology, and investigation. TV: formal analysis and data curation. AZ: writing original draft. TV, AZ, SA, AW, and JD: review and editing. JD and TV: supervision and funding acquisition (internal funding). JD: project administration. All authors have read and agreed to the published version of the manuscript.

Conflict of Interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Publisher's Note

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.

Acknowledgments

We would like to thank the ZHAW students who participated in the study for their engagement and time. The HES-C research group, consisting of JD (PI), TV (Co-PI), AZ, AW, Marion Huber, SA, has dedicated themselves to study young adult health during the pandemic.

Supplementary Material

The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fpubh.2022.854350/full#supplementary-material

References

1. Bhoyroo R, Chivers P, Millar L, Bulsara C, Piggott B, Lambert M, et al. Life in a time of COVID: a mixed method study of the changes in lifestyle, mental and psychosocial health during and after lockdown in Western Australians. BMC Public Health. (2021) 21:1947. doi: 10.1186/s12889-021-11971-7

PubMed Abstract | CrossRef Full Text | Google Scholar

4. Zysset AE, Schlatter N, von Wyl A, Huber M, Volken T, Dratva J. Students' Experience and Adherence to Containment Measures During COVID-19 in Switzerland. Health Promotion International (2021). Available online at: doi: 10.1093/heapro/daab019 (accessed March 10, 2021).

PubMed Abstract | CrossRef Full Text | Google Scholar

5. Bann D, Villadsen A, Maddock J, Hughes A, Ploubidis GB, Silverwood R, et al. Changes in the behavioural determinants of health during the COVID-19 pandemic: gender, socioeconomic and ethnic inequalities in five British cohort studies. J Epidemiol Community Health. (2021) 75:1136–42. doi: 10.1136/jech-2020-215664

PubMed Abstract | CrossRef Full Text | Google Scholar

6. Horigian VE, Schmidt RD, Feaster DJ. Loneliness, Mental Health, and Substance Use among US Young Adults during COVID-19. J Psychoactive Drugs. (2020) 53:1–9. doi: 10.1080/02791072.2020.1836435

PubMed Abstract | CrossRef Full Text | Google Scholar

7. Li Y, Wang Y, Jiang J, Valdimarsdóttir UA, Fall K, Fang F, et al. Psychological distress among health professional students during the COVID-19 outbreak. Psychol Med. (2021) 51:1952–4. doi: 10.1017/S0033291720001555

PubMed Abstract | CrossRef Full Text | Google Scholar

8. Taeymans J, Luijckx E, Rogan S, Haas K, Baur H. Physical activity, nutritional habits, and sleeping behavior in students and employees of a Swiss University during the COVID-19 lockdown period: questionnaire survey study. JMIR Public Health Surveill. (2021) 7:e26330. doi: 10.2196/26330

PubMed Abstract | CrossRef Full Text | Google Scholar

9. Volken T, Zysset A, Amendola S, Klein Swormink A, Huber M, von Wyl A, et al. Depressive Symptoms in Swiss University Students during the COVID-19 Pandemic and Its Correlates. Int J Environ Res Public Health. (2021) 18:1458. doi: 10.3390/ijerph28041458

PubMed Abstract | CrossRef Full Text | Google Scholar

10. Zhang Y, Zhang H, Ma X, Di Q. Mental Health Problems during the COVID-19 pandemics and the mitigation effects of exercise: a longitudinal study of college students in China. Int J Environ Res Public Health. (2020) 17:3722. doi: 10.3390/ijerph27103722

PubMed Abstract | CrossRef Full Text | Google Scholar

11. Zhou SJ, Zhang LG, Wang LL, Guo ZC, Wang JQ, Chen JC, et al. Prevalence and socio-demographic correlates of psychological health problems in Chinese adolescents during the outbreak of COVID-19. Eur Child Adolesc Psychiatry. (2020) 29:749–58. doi: 10.1007/s00787-020-01541-4

PubMed Abstract | CrossRef Full Text | Google Scholar

12. Czenczek- Lewandowska E, Wyszyńska J, Leszczak J, Baran J, Weres A, Mazur A, et al. Health behaviours of young adults during the outbreak of the Covid-19 pandemic – a longitudinal study. BMC Public Health. (2021) 21:1038. doi: 10.1186/s12889-021-11140-w

PubMed Abstract | CrossRef Full Text | Google Scholar

13. Hwang J, Chun H, Cheon E. A qualitative study on the impact of COVID-19 on the behavior and attitudes of smokers and non-smokers in South Korea. BMC Public Health. (2021) 21:1972. doi: 10.1186/s12889-021-12079-8

PubMed Abstract | CrossRef Full Text | Google Scholar

14. Lechner WV, Laurene KR, Patel S, Anderson M, Grega C, Kenne DR. Changes in alcohol use as a function of psychological distress and social support following COVID-19 related University closings. Addict Behav. (2020) 110:106527. doi: 10.1016/j.addbeh.2020.106527

PubMed Abstract | CrossRef Full Text | Google Scholar

15. Rogés J, Bosque-Prous M, Colom J, Folch C, Barón-Garcia T, González-Casals H, et al. Consumption of Alcohol, Cannabis, and Tobacco in a Cohort of Adolescents before and during COVID-19 Confinement. Int J Environ Res Public Health. (2021) 18:7849. doi: 10.3390/ijerph28157849

PubMed Abstract | CrossRef Full Text | Google Scholar

16. White HR, Stevens AK, Hayes K, Jackson KM. Changes in Alcohol Consumption Among College Students Due to COVID-19: Effects of Campus Closure and Residential Change. J Stud Alcohol Drugs. (2020) 81:725–30. doi: 10.15288/jsad.2020.81.725

PubMed Abstract | CrossRef Full Text | Google Scholar

17. Charles NE, Strong SJ, Burns LC, Bullerjahn MR, Serafine KM. Increased mood disorder symptoms, perceived stress, and alcohol use among college students during the COVID-19 pandemic. Psychiatry Res. (2021) 296:113706. doi: 10.1016/j.psychres.2021.113706

PubMed Abstract | CrossRef Full Text | Google Scholar

18. Ryerson NC, Wilson OWA, Pena A, Duffy M, Bopp M. What happens when the party moves home? The effect of the COVID-19 pandemic on US college student alcohol consumption as a function of legal drinking status using longitudinal data. Transl Behav Med. (2021) 11:772–4. doi: 10.1093/tbm/ibab006

PubMed Abstract | CrossRef Full Text | Google Scholar

19. Dratva J, Zysset A, Schlatter N, von Wyl A, Huber M, Volken T. Swiss University Students' Risk Perception and General Anxiety during the COVID-19 Pandemic. Int J Environ Res Public Health. (2020) 17:7433. doi: 10.3390/ijerph27207433

PubMed Abstract | CrossRef Full Text | Google Scholar

20. Assanangkornchai S, Li J, McNeil E, Saingam D. Clusters of alcohol and drug use and other health-risk behaviors among Thai secondary school students: a latent class analysis. BMC Public Health. (2018) 18:1272. doi: 10.1186/s12889-018-6205-z

PubMed Abstract | CrossRef Full Text | Google Scholar

21. Turner S, Mota N, Bolton J, Sareen J. Self-medication with alcohol or drugs for mood and anxiety disorders: A narrative review of the epidemiological literature. Depress Anxiety. (2018) 35:851–60. doi: 10.1002/da.22771

PubMed Abstract | CrossRef Full Text | Google Scholar

22. Molina PE, Happel KI, Zhang P, Kolls JK, Nelson S. Focus on: alcohol and the immune system. Alcohol Res Health. (2010) 33:97–108.

Google Scholar

23. Parry CD, Patra J, Rehm J. Alcohol consumption and non-communicable diseases: epidemiology and policy implications. Addiction. (2011) 106:1718–24. doi: 10.1111/j.1360-0443.2011.03605.x

PubMed Abstract | CrossRef Full Text | Google Scholar

26. Wood D, Crapnell T, Lau L, Bennett A, Lotstein D, Ferris M, et al. Emerging Adulthood as a Critical Stage in the Life Course. In: Halfon N, Forrest CB, Lerner RM, Faustman EM, editors. Handbook of Life Course Health Development. Cham: Springer International Publishing (2018). p. 123–43.

PubMed Abstract | Google Scholar

27. Kraus L, Heppekausen K, Barrera A, Orth B. The 2003 European School Survey Project on Alcohol and other Drugs (ESPAD): Survey among pupils in grade 9 and 10 in Bavaria, Berlin, Brandenburg, Hesse, Mecklenburg-Western Pomerania and Thuringia. Munich: IFT Institut für Therapieforschung (2004).

Google Scholar

28. Hibell B, Guttormsson U, Ahlström S, Balakireva O, Bjarnason T, Kokkevi A, et al. The 2007 ESPAD Report: Substance Use Among Students in 35 European Countries. Stockholm: The Swedish Council for Information on Alcohol and Other Drugs (CAN) (2009).

Google Scholar

30. Spitzer RL, Kroenke K, Williams JBW, Löwe B. A Brief Measure for Assessing Generalized Anxiety Disorder: The GAD-7. Arch Intern Med. (2006) 166:1092. doi: 10.1001/archinte.166.10.1092

PubMed Abstract | CrossRef Full Text | Google Scholar

31. Plummer F, Manea L, Trepel D, McMillan D. Screening for anxiety disorders with the GAD-7 and GAD-2: a systematic review and diagnostic metaanalysis. Gen Hosp Psychiatry. (2016) 39:24–31. doi: 10.1016/j.genhosppsych.2015.11.005

PubMed Abstract | CrossRef Full Text | Google Scholar

32. Beierlein C, Kovaleva A, Kemper CJ, Rammstedt B. Allgemeine Selbstwirksamkeit Kurzskala (ASKU). Zusammenstellung sozialwissenschaftlicher Items und Skalen (ZIS) (2014). doi: 10.6102/zis35

PubMed Abstract | CrossRef Full Text | Google Scholar

34. Kocalevent RD, Berg L, Beutel ME, Hinz A, Zenger M, Härter M, et al. Social support in the general population: standardization of the Oslo social support scale (OSSS-3). BMC Psychol. (2018) 6:31. doi: 10.1186/s40359-018-0249-9

PubMed Abstract | CrossRef Full Text | Google Scholar

35. Abiola T, Udofia O, Muhammed Z. Psychometric Properties of the 3-Item Oslo Social Support Scale among Clinical Students of Bayero University Kano, Nigeria. Malays J Psychiatry. (2013) 22:32–41.

Google Scholar

36. Hoebel J, Müters S, Kuntz B, Lange C, Lampert T. Messung des subjektiven sozialen Status in der Gesundheitsforschung mit einer deutschen Version der MacArthur Scale. Bundesgesundheitsbl. (2015) 58:749–57. doi: 10.1007/s00103-015-2166-x

PubMed Abstract | CrossRef Full Text | Google Scholar

37. Jakobsen JC, Gluud C, Wetterslev J, Winkel P. When and how should multiple imputation be used for handling missing data in randomised clinical trials – a practical guide with flowcharts. BMC Med Res Methodol. (2017) 17:162. doi: 10.1186/s12874-017-0442-1

PubMed Abstract | CrossRef Full Text | Google Scholar

38. Hawke LD, Barbic SP, Voineskos A, Szatmari P, Cleverley K, Hayes E, et al. Impacts of COVID-19 on Youth Mental Health, Substance Use, and Well-being: A Rapid Survey of Clinical and Community Samples: Répercussions de la COVID-19 sur la santé mentale, l'utilisation de substances et le bien-être des adolescents : un sondage rapide d'échantillons cliniques et communautaires. Can J Psychiatry. (2020) 65:701–9. doi: 10.1177/0706743720940562

PubMed Abstract | CrossRef Full Text | Google Scholar

39. Dumas TM, Ellis W, Litt DM. What Does Adolescent Substance Use Look Like During the COVID-19 Pandemic? Examining Changes in Frequency, Social Contexts, and Pandemic-Related Predictors. J Adolesc Health. (2020) 67:354–61. doi: 10.1016/j.jadohealth.2020.06.018

PubMed Abstract | CrossRef Full Text | Google Scholar

40. Vanderbruggen N, Matthys F, Laere SV, Zeeuws D, Santermans L, Ameele SV den, et al. Self-Reported Alcohol, Tobacco, and Cannabis Use during COVID-19 Lockdown Measures: Results from a Web-Based Survey. EAR. (2020) 26:309–15. doi: 10.1159/000510822

PubMed Abstract | CrossRef Full Text | Google Scholar

41. Krieger H, Young CM, Anthenien AM, Neighbors C. The Epidemiology of Binge Drinking Among College-Age Individuals in the United States. Alcohol Res. (2018) 39:23–30.

PubMed Abstract | Google Scholar

43. Wolter C, Lesener T, Thomas TA, Hentschel AC, Gusy B. Finding the Right Balance: A Social Norms Intervention to Reduce Heavy Drinking in University Students. Front Public Health. (2021) 9:752. doi: 10.3389/fpubh.2021.653435

PubMed Abstract | CrossRef Full Text | Google Scholar

44. Troyer AK. Primacy Effect. In: Kreutzer JS, DeLuca J, Caplan B, editors. Encyclopedia of Clinical Neuropsychology. New York, NY: Springer (2011). p. 2017–8.

45. Turvey BE, Freeman JL. Jury Psychology. In: Ramachandran VS, editor. Encyclopedia of Human Behavior (Second Edition). San Diego: Academic Press (2012). p. 495–502. Available online at: https://www.sciencedirect.com/science/article/pii/B9780123750006002160 (accessed March 12, 2022).

46. El Ansari W, Ssewanyana D, Stock C. Behavioral Health Risk Profiles of Undergraduate University Students in England, Wales, and Northern Ireland: a cluster analysis. Front Public Health. (2018) 6:120. doi: 10.3389/fpubh.2018.00120

PubMed Abstract | CrossRef Full Text | Google Scholar

What percentage of college students report having consumed alcohol in the last 30 days?

A nationwide survey found that about 53% of full-time college students ages 18 to 22 drank alcohol in the past month and about 33% engaged in binge drinking during that same time frame.

What percent of full

Close to 60% of college students between the ages of 18 and 22 admitted to drinking in the past month. Of those, nearly two in every three engaged in binge drinking. A little less than 2,000 college students ranging from 18 to 24 years old die from unintentional, alcohol-related injuries each year.

What percentage of college students drink alcohol?

Some students come to college with established drinking habits, and the college environment can lead to a problem. According to a national survey, almost 53 percent of full-time college students ages 18 to 22 drank alcohol in the past month and about 33 percent engaged in binge drinking during that same time frame.

What percentage of college students report binge drinking quizlet?

About 40 percent of all college students engage in heavy episodic (binge) drinking. A significant number of students experience negative consequences as a result of their alcohol consumption.