Literature DB >> 35982433

Alcohol use and family-related factors among Spanish university students: the unHicos project.

Esperanza Romero-Rodríguez1, Carmen Amezcua-Prieto2,3,4, María Morales-Suárez-Varela2,5,6, Carlos Ayán Pérez7, Ramona Mateos-Campos8, Alba Marcos-Delgado9,10, Rocío Ortíz-Moncada11, Susana Redondo Martín12, Carmen Rodríguez-Reinado13, Miguel Delgado-Rodríguez2,14, Gemma Blázquez Abellán15, Jessica Alonso Molero2,16, Sandra Martín-Peláez2,4, José M Cancela-Carral7, Luis F Valero Juan8, Virginia Martínez-Ruiz2,3,4, Tania Fernández-Villa2,16,17.   

Abstract

BACKGROUND: During adolescence and youth there are relevant changes in the consolidation, gain or loss of consumption habits and lifestyles and the family factors has a fundamental role to development these habits. The study of the consumption of toxins, such as alcohol intake, is crucial at this stage due to the repercussions that said consumption presents in adulthood. Therefore, the objective of our study was to evaluate the associations between alcohol consumption patterns and related family factors (family functioning, family history of alcohol consumption) in Spanish university students.
METHODS: Observational, descriptive, cross-sectional, multicenter study, carried out in first-year university students from 11 Spanish universities. Through an online questionnaire, alcohol consumption (risky consumption and intensive consumption or binge drinking), family functioning and history of alcohol in the family were evaluated. Risky alcohol consumption and binge drinking were assessed using the AUDIT test, and family functioning was assessed using the family APGAR questionnaire. A descriptive analysis of the data was performed, as well as the Chi-Square test and Student's T-Test, and non-conditional logistic regression models were carried out to examine this association.
RESULTS: The prevalence of risky alcohol consumption identified in the 10,167 respondents was 16.9% (95% CI = 16.2-17.6), and that of BD was 48.8% (95% CI = 47.9-48.8). There is a significant association between risky alcohol consumption and family functioning in students of both sexes, with greater consumption in the face of severe dysfunctional support (men OR = 1.72; p < 0.001 and women OR = 1.74; p < 0.001) and family history of consumption (p = 0.005). Regarding the binge drinking pattern, no statistically significant differences were observed.
CONCLUSIONS: Risky alcohol consumption in university students is associated with dysfunctional family support, unlike the binge drinking pattern, where there is no such association. The findings of this study show the importance of creating prevention programs focused on the family approach in university students, which include alcohol screening in the population with a family history of this substance, and greater social support from health services.
© 2022. The Author(s).

Entities:  

Keywords:  AUDIT; Alcohol; Binge Drinking; University Student

Mesh:

Substances:

Year:  2022        PMID: 35982433      PMCID: PMC9389699          DOI: 10.1186/s12889-022-13900-8

Source DB:  PubMed          Journal:  BMC Public Health        ISSN: 1471-2458            Impact factor:   4.135


Introduction

Alcohol consumption is one of the risk factors for death and disability [1]. The World Health Organization (WHO) estimates that 5.3% of deaths and 5.1% of morbidity worldwide are due to alcohol [2]. According to the latest Survey on Alcohol and Drugs in Spain (EDADES), 85.1% of the population between 15 and 24 years old reported having consumed alcohol at some point in their life and 59.7% stated that they had ingested alcohol in the last month, the consumption more prevalent in men (64.4%) than in women (54.8%) [3]. During adolescence and youth there are relevant changes in the reinforcement, gain or loss of consumption habits and lifestyles. The study of consuming toxins, such as alcohol intake, is crucial at this stage due to the repercussions that this consumption presents in adulthood [4-6]. The process of personal maturation, entering university or the employment world and the family or social environment are determining factors in strengthening these habits. Specifically, familial socialization makes up the basis of an individual’s personality, attitude, values and self-concept development [7]. A functional family is one that offers safety, cohesion, communication and routine expression of positive affection and is based on a shared set of cultural norms and values [8]. Good family functioning allows adaptation to the changes that occur during growth [9]. Families who use drugs substances such as alcohol tend to be characterized by low levels of cohesion, low tolerance for frustration, unrealistic expectations of children, role reversal, isolation, and poor parenting skills, characteristics associated with adverse consequences for the families [7]. Some international studies have linked family history of alcohol consumption and the history of a dysfunctional family with a greater probability of risky alcohol consumption in the young population [10-14]. However, despite the relevance of the family in the approach to alcohol consumption in the population and in an individual’s development, especially in university students, there is little evidence of the association that family factors have regarding the patterns of alcohol consumption in university students. Therefore, the objective of our study was to examine the associations between alcohol consumption patterns and associated family factors (family functioning and history of alcohol consumption) in first-year university students.

Methods

Design and study sample

This study is an observational, cross-sectional analysis of a dynamic cohort of university students enrolled in different degrees in the first year of study from eleven Spanish public universities (Alicante, Cantabria, Castilla la Mancha, Granada, Huelva, Jaén, León, Salamanca, Valladolid, Valencia and Vigo) that are part of the uniHcos (University, Life Habits, Follow-up Cohort) project [15], which aims to evaluate the habits and lifestyles of Spanish university students. The study received approval from the Ethics Committee of the University of León (Code: ETICA-ULE-007–2016). Selection criteria: 1) Be a first-year university student enrolled in a Spanish university included in the uniHcos project; 2) Complete the self-administered form and grant informed consent for participation in the study. Since the uniHcos project is a dynamic cohort, we did not determine a minimum sample size for this study.

Data collection

Students who met the selection criteria received an email through their university account that included information about the uniHcos project and a link to a mandatory informed consent form that had to be completed before answering the study questionnaire. Students interested in participating completed a self-reported ad-hoc online questionnaire between October 2011 and March 2018 using the SphinxOnline® platform. The questionnaire included questions on alcohol consumption from the National Health Survey (ENS) [16] and the EDADES survey [3]. Two patterns of alcohol consumption were analyzed: risky consumption and intensive consumption or binge drinking (BD). Both patterns were assessed using the Alcohol Use Disorders Identification Test (AUDIT) [17]. This questionnaire has been validated in this population by Kokotailo et al. [18] and Verhoog et al. [19]. Heavy alcohol consumption, or BD, was defined as the intake of 6 or more alcoholic beverages in a single session, for both men and women. Patients with an AUDIT score ≥ 8 were considered to have risky alcohol consumption. This score determines the risk of developing alcohol consumption problems. Family functioning was assessed using the family APGAR questionnaire [20], a 5-item questionnaire that measures five domains: "Adaptation", "Partnership", "Growth", "Affection" and "Resolve". Each item is scored on a 3-point scale: almost always (0 points), sometimes (1 point), and almost never (2 points). The sum can be from zero to ten points and families can be characterized as: a functional family (7–10) or a dysfunctional family (≤ 6). The dysfunctional family can be classified as mild (> 2 and < 7) or severely dysfunctional (≤ 2). The questionnaire was validated in Spanish by the Bellon et al. group [21].

Data analysis

A descriptive analysis was performed where measures of central tendency (mean and median) and dispersion (standard deviation and range) of the quantitative variables and prevalence of the qualitative variables were calculated. To evaluate the relationship between the factors associated with alcohol consumption and the dependent variables (risky consumption and BD), we used the Chi-Square test and T-Student Test, as well as unconditional logistic regression analysis. Odds Ratio (OR) values and their respective 95% confidence interval (CI) were found for each variable. All models were stratified by sex and adjusted for age, occupation, type of residence, family support, and family history of alcohol consumption. Statistical analysis was performed using the IBM Statistic SPSS 20 program with a significance level of 95% (p = 0.05).

Results

A total of 10,167 participants completed the questionnaire, 72.2% of which were women (95% CI: 70.9–77.2). The mean age of the subjects was 22.1 years (SD: 4.5; limits: 17–63; 95% CI 20.0–20.2). Students made up 66.2% (95% CI: 65.3–67.2) of the respondents, 10.7% (95% CI: 10.1–11.3) combined study and work, and 23.1% (95% CI: 22.3–24.0) were students and looking for work. Of those surveyed, 48% live in the family home or in their own home and 39% in a rented apartment. Table 1 shows the main sociodemographic and occupational characteristics of the participants by sex, with significant differences observed in relation to age (p < 0.001), occupation (p < 0.001), place of residence (p < 0.001), university degree (p < 0.001), first-choice degree (p < 0.001), and university location (p < 0.001). The overall response rate obtained was 4.0%.
Table 1

Sociodemographic and occupational characteristics of the sample (n = 10,167)

Socioeconomic and occupational characteristicsMen (n = 2823)n (%)Women (n = 7344)n (%)p
Age (years)17–202073 (73.4)5737 (78.1) < 0.001
21–24443 (15.7)1053 (14.3)
 ≥ 25307 (10.9)554 (7.5)
UniversityAlicante245 (8.7)609 (8.3) < 0.001
Cantabria29 (1.0)59 (0.8)
Castilla La Mancha61 (2.2)131 (1.8)
Granada806 (28.6)2130 (29.0)
Huelva107 (3.8)321 (4.4)
Jaén75 (2.7)215 (2.9)
León224 (7.9)676 (9.2)
Salamanca353 (12.5)858 (11.7)
Valencia346 (12.3)1106 (15.1)
Valladolid204 (7.2)412 (5.6)
Vigo373 (13.2)827 (11.3)
FieldArt and Humanities261 (9.2)964 (13.1) < 0.001
Science515 (18.2)1041 (14.2)
Health Sciences506 (17.9)1762 (24.0)
Social and Legal Sciences900 (31.9)3161 (43.0)
Engineering and Architecture641 (22.7)416 (5.7)
University degreeYes565 (20.0)1717 (23.4) < 0.001
No2258 (80.0)5627 (76.6)
ResidenceUniversity housing326 (11.5)971 (13.2) < 0.001
Family /own home1470 (52.1)3407 (46.4)
Rented apartment1027 (36.4)2966 (40.4)
OccupationStudent580 (20.5)1772 (24.1) < 0.001
Student and employed344 (12.2)741 (10.1)
Student looking for work1899 (67.3)4831 (65.8)
Characteristics and patterns of alcohol consumptionMen n (%)Women n (%)p
 Age at start of consumption (years) < 13348 (13.2)922 (13.4)0.003
14–151040 (39.4)2978 (43.2)
16–171020 (38.6)2411 (35.0)
 ≥ 18234 (8.9)587 (8.5)
 Drinking placePublic place0.113
Bar/Restaurant948 (33.6)2395 (32.6)
University celebration1246 (44.1)3249 (44.2)
Public street88 (3.1)307 (4.2)
Private place
Private celebration174 (6.2)480 (6.5)
Other367 (13.0)913 (12.4)
 Risky alcohol consumptionNo2188 (77.5)6262 (85.3) < 0.001
Yes635 (22.5)1082 (14.7)
 Binge drinkingNo1484 (52.6)3719 (50.6)0.082
Yes1339 (47.4)3625 (49.4)
 Family history of alcohol use02088 (74.0)5333 (72.6) < 0.001
1 or more735 (26.0)2011 (27.4)
Sociodemographic and occupational characteristics of the sample (n = 10,167) The prevalence of risky alcohol consumption in the surveyed population was 16.9% (95% CI = 16.2–17.6), 22.5% (95% CI = 21.0–24.0) in men and 14.7% (95% CI = 13.9–15.5) in women. The prevalence of BD was 48.8% (95% CI = 47.9–48.8), 47.4% (95% CI = 45.6–49.3) in men and 49.4% (95% CI = 48.2–50.5) in women. Table 2 shows the prevalence of the respondents’ family history in terms of the socio-demographic and occupational variables, stratified by sex. Significant differences are observed in risky alcohol consumption and the family history of alcohol in the father (0.034), the mother (< 0.001), the child (0.002), the partner (0.017), the uncle (0.013) and the number of relatives overall (p = 0.005). In terms of BD consumption, significant differences were only obtained if there was a history of consumption in the couple (0.025).
Table 2

Alcohol consumption patterns and family history of alcohol in Spanish university students

Students with risky alcohol consumptionStudents with Binge drinking
Family members with alcohol consumptionNo (n = 8450)n (%)Yes (n = 1717)n (%)PNo (n = 5203)n (%)Yes (n = 4964)n (%)P
FatherNo7832 (92.7)1566 (91.2)0.0344800 (92.3)4598 (92.6)0.478
Yes618 (7.3)151 (8.8)403 (7.7)366 (7.4)
MotherNo8346 (98.8)1686 (98.2) < 0.0015140 (98.8)4892 (98.5)0.291
Yes104 (1.2)31 (1.8)63 (1.2)72 (1.5)
Son/DaughterNo8449 (100)1714 (99.8)0.0025200 (99.9)4963 (100.0)0.340
Yes1 (0.0)3 (0.2)3 (0.1)1 (0.0)

Grandfather/

Grandmother

No7873 (93.2)1577 (91.8)0.0514836 (92.9)4614 (92.9)0.996
Yes577 (6.8)140 (8.2)367 (7.1)350 (7.1)
SiblingNo8352 (98.8)1690 (98.4)0.1575142 (98.8)4900 (98.7)0.593
Yes99 (1.2)27 (1.6)61 (1.2)64 (1.3)
PartnerNo8441 (99.9)1711 (99.7)0.0175197 (99.8)4961 (99.9)0.025
Yes9 (0.1)6 (0.3)12 (0.2)3 (0.1)
Uncle/AuntNo7459 (88.3)1481 (86.3)0.0194584 (88.1)4356 (87.8)0.587
Yes991 (11.7)236 (13.7)619 (11.9)608 (12.2)
Number of family members06215 (73.6)1206 (70.2)0.0053789 (72.8)3632 (73.2)0.697
1 or more family members2235 (26.4)511 (29.8)1414 (27.2)1332 (26.8)
Alcohol consumption patterns and family history of alcohol in Spanish university students Grandfather/ Grandmother Table 3 shows the relationship between risky alcohol consumption and the family support received by the participants. Significant differences were obtained regarding adaptation (p < 0.001; greater consumption with less adaptation), partnership (p < 0.001; greater consumption with less partnership), growth (p < 0.001, greater consumption with less growth), affection (p < 0.001; higher consumption with less affection), resolve (p < 0.001; higher consumption with lower resolution), and the family APGAR questionnaire score (p < 0.001; higher consumption in the presence of severe dysfunctional family support).
Table 3

Patterns of alcohol consumption and family functioning among Spanish university students

Family functioning(Family APGAR questionnaire)Risky alcohol consumptionBinge drinking
No (n = 8450)n (%)Yes (n = 1717)n (%)PNo (n = 5203)n (%)Yes (n = 4964)n (%)P
AdaptationAlmost never482 (5.7)421 (24.5) < 0.0011129 (21.7)1060 21.4)0.230
Sometimes1768 (20.9)139 (8.1)337 (6.5)284 (5.7)
Almost always6200 (73.4)1157 (67.4)3737 (71.8)3620 (72.9)
PartnershipAlmost never1269 (15.0)337 (19.6) < 0.0011595 (30.7)1704 (34.3) < 0.001
Sometimes2678 (31.7)621 (36.2)835 (16.0)771 (15.5)
Almost always4503 (53.3)759 (44.2)2773 (53.3)2489 (50.1)
GrowthAlmost never1391 (16.5)650 (37.9) < 0.0011768 (34.0)1870 (37.7) < 0.001
Sometimes2988 (35.4)404 (23.5)893 (17.2)902 (18.2)
Almost always4071 (48.2)663 (38.6)2542 (48.9)2192 (44.2)
AffectionAlmost never1226 (14.5)736 (42.9) < 0.0012052 (39.4)2061 (41.5) < 0.001
Sometimes3377 (40.0)326 (19.0)770 (14.8)782 (15.8)
Almost always3847 (45.5)655 (38.1)2381 (45.8)2121 (42.7)
ResolveAlmost never147 (1.7)239 (13.9) < 0.001620 (11.9)542 (10.9)0.014
Sometimes923 (10.9)35 (2.0)109 (2.1)73 (1.5)
Almost always7380 (87.3)1143 (84.0)4474 (86.0)4349 (87.6)

Total score on the Family APGA

Questionnaire

Normal functioning6160 (72.9)1120 (65.20) < 0.0013721 (71.5)3559 (71.7)0.308
Mild dysfunction1615 (19.1)395 (23.0)1013 (19.5)997 (20.1)
Severe dysfunction675 (8.0)202 (11.8)469 (9.0)408 (8.2)
Patterns of alcohol consumption and family functioning among Spanish university students Total score on the Family APGA Questionnaire Table 4 shows the results of the unadjusted and the adjusted logistic regression analyses between risky alcohol consumption and sociodemographic, occupational and family characteristics, stratified by sex. The adjusted analysis shows that risky alcohol consumption in men was significantly related to age (aOR = 1.67; p = 0.007; with higher consumption in respondents aged 21–24 years), place of residence (aOR = 0.58; p < 0.001 lower consumption in those in a rented apartment), occupation (aOR = 1.64; p = 0.001; higher consumption in those studying and working), and family functioning (aOR = 1.72; p < 0.001; higher consumption in those with severe family dysfunction). In addition, the adjusted analysis reveals that risky alcohol consumption in women was related to age (aOR = 1.72; p = 0.001; with higher consumption in respondents aged 17–21 years), place of residence (aOR = 0.54; p < 0.001; lower consumption in those in a rented apartment), occupation (aOR = 1.64; p = 0.001; higher consumption in those studying and looking for work) and family functioning (aOR = 1.72; p < 0.001; higher consumption in those with severe family dysfunction).
Table 4

Association between risky alcohol consumption and sociodemographic, occupational and family characteristics, stratified by sex

VariablesUnadjusted OR95% CIpaORa95% CIp
MEN
 Age17–201.471.19–1.82 < 0.0011.661.18–2.350.004
21–241.481.16–1.880.0021.671.15–2.430.007
 > 2511
 Type of residenceUniversity housing1.100.94–1.290.2431.000.75–1.340.972
Rented apartment0.600.53–0.67 < 0.0010.580.48–0.70 < 0.001
Family / own home11
 OccupationStudying and looking for work1.260.97–1.650.0851.311.04–1.660.020
Studying and employed1.271.02–1.380.0321.641.21–2.220.001
Studying11
 Family functioningMild Dysfunction1.291.04–1.590.0191.311.05–1.620.014
Severe Dysfunction1.691.23–2.320.0011.721.25–2.37 < 0.001
Normal Functioning11
 Family history of alcoholYes1.251.03–1.520.0261.190.97–1.460.091
WOMEN
 Age17–201.801.34–2.42 < 0.0011.721.26–2.370.001
21–241.581.12–2.210.0081.380.97–1.950.069
 > 2511
 Type of residenceUniversity housing1.170.96–1.410.1121.010.84–1.220.904
Rented apartment0.570.49–0.65 < 0.0010.540.47–0.63 < 0.001
Family / own home11
 OccupationStudying and looking for work1.120.96–1.300.0451.201.16–1.610.026
Studying and employed0.780.62–0.990.1350.981.02–1.400.862
Studying11
 Family functioningMild Dysfunction1.351.15–1.59 < 0.0011.370.76–1.26 < 0.001
Severe Dysfunction1.691.38–2.07 < 0.0011.741.41–2.14 < 0.001
Normal Functioning11
 Family history of alcoholYes1.161.01–1.330.0411.120.97–1.300.119

aAdjusted Odd Ratio for age, type of residence, occupation, functioning family and family history of alcohol. 95%CI = Confidence Interval 95%

Association between risky alcohol consumption and sociodemographic, occupational and family characteristics, stratified by sex aAdjusted Odd Ratio for age, type of residence, occupation, functioning family and family history of alcohol. 95%CI = Confidence Interval 95% Regarding the factors associated with BD, the logistic regression model reveals that BD consumption in men was significantly related to the place of residence (aOR = 0.64; p < 0.001; with lower consumption in those in a rented apartment), occupation (aOR = 1.37; p = 0.002; higher consumption in those studying and looking for work) (Table 5). The adjusted analysis also shows that BD consumption in women was related to age (aOR = 1.58; p = 0.001; with higher consumption in respondents aged 17–21 years), place of residence (aOR = 0.54; p < 0.001; with lower consumption in those in a rented apartment), and occupation (aOR = 1.21; p = 0.001; higher consumption in those studying and working).
Table 5

Association between binge drinking and sociodemographic, occupational and alcohol-related characteristics, stratified by sex

VariablesUnadjusted OR95% CIpaORa95% CIp
MEN
 Age17–201.361.18–1.57 < 0.0011.280.98–1.690.074
21–241.471.24–1.74 < 0.0011.290.95–1.750.101
 > 2511
 Type of residenceUniversity housing0.950.83–1.080.4110.820.63–1.050.117
Rented apartment0.580.53–0.63 < 0.0010.640.54–0.748 < 0.001
Family / own home11
 OccupationStudying and looking for work1.331.10–1.600.0031.371.12–1.660.002
Studying and employed1.100.87–1.380.4401.280.99–1.670.061
Studying11
 Family functioningMild Dysfunction1.120.93–1.340.2211.130.94–1.350.199
Severe Dysfunction0.950.71–1.270.7320.950.71–1.270.745
Normal Functioning11
 Family history of alcoholYes1.020.867–1.220.7720.990.83–1.170.898
WOMEN
 Age17–201.571.28–1.94 < 0.0011.581.30–1.920.001
21–241.491.25–1.78 < 0.0011.511.21–1.870.069
 > 2511
 Type of residenceUniversity housing1.000.86–1.160.9920.910.79–1.060.904
Rented apartment0.550.50–0.61 < 0.0010.540.49–0.60 < 0.001
Family / own home1
 OccupationStudying and looking for work1.060.91–1.240.4361.211.07–1.360.001
Studying and employed1.090.98–1.220.1071.361.15–1.610.000
Studying11
 Family functioningMild Dysfunction0.990.76–1.050.9460.990.88–1.120.934
Severe Dysfunction0.890.76–1.050.1650.910.77–1.070.270
Normal Functioning11
 Family history of alcoholYes0.970.87–1.070.5090.990.88–1.120.538

aAdjusted Odd Ratio for age, type of residence, occupation, functioning family and family history of alcohol. 95%CI = Confidence Interval 95%

Association between binge drinking and sociodemographic, occupational and alcohol-related characteristics, stratified by sex aAdjusted Odd Ratio for age, type of residence, occupation, functioning family and family history of alcohol. 95%CI = Confidence Interval 95%

Discussion

The results of this study show that the pattern of risky alcohol consumption in university students is significantly associated with severe dysfunctional family structures, although no significant association is observed between risky alcohol consumption, binge drinking pattern and the presence of a family history of alcohol consumption mentioned by these students, when it is adjusted by sociodemographic and occupational factors. Differences were observed when analyzing risky alcohol consumption stratified by sex: male students between 17 and 24 years of age who studied and worked or were looking for a job and who had a moderate or severe dysfunctional family structure had higher risky alcohol consumption. Female students between 17 and 20 years old who studied and looked for work and who had a moderate or severe dysfunctional family structure presented a higher risky alcohol consumption. Greater use of the binge drinking pattern was identified in male students who were also looking for work and in female students between 17 and 20 years old, who studied and worked or were in search of employment. Although there is no information available related to the pattern of alcohol consumption in private universities, our results could be extrapolable to Spanish private universities since the sociodemographic and occupational factors defined in our sample are similar to the results obtained in Spanish private universities (higher percentage of students between 21–24 years old, female, enrolled in careers in Social and Legal Sciences, followed by students who are pursuing careers in Health Sciences) [22]. There are multiple factors that influence college students’ alcohol consumption: demographic factors, personality type, personal drinking history, expectations when drinking, reasons for drinking alcohol, type of activity, academic participation, and family and social influence [23, 24]. In this article we focus primarily on the study of family influence and social support, personal history of alcohol, demographic factors and the type of activity performed by students. In general, an environment in which alcohol consumption is encouraged and perceived as positive and normal tends to have more drinkers than peer groups where excessive alcohol consumption is not encouraged [7]. The relationship between family and alcohol consumption is not limited to the already established causality; there is another aspect, no less important that refers to the importance of this pathology in family interactions, and to the dysfunctional relationship dynamics that are created due to this problem [7]. Unstable and incoherent family and living environment factors (for example, transitional living conditions, inconsistent care, violence) resulting from substance use that caregivers have linked to the incidence of psychological and emotional development problems among their children [7]. There is a correlation between family functioning and the presence of addiction, such as alcohol consumption, showing the need for family support [25]. Similarly, Sánchez Queija et al., [26] point out that affective family relationships play a significant role in the prevention of substance use, like alcohol or tobacco, in adolescence and young adults. Thus, individuals who have received care and support during childhood, and enjoy a more cohesive family environment during adolescence and adulthood, showed less substance use. Individuals who start using in those years do not reach the level of substance use observed among those who have grown up in less favorable family contexts. Severe family dysfunction is related to an increase in standard drinking units of alcohol / week, an increase in smoking, and in the use of illegal drugs [27]. Like the literature, our results show that there is a significant association between students' risky alcohol consumption pattern and dysfunctional family structure, with no such significance observed in the binge drinking pattern. There is mixed scientific evidence on the association of family history of alcohol consumption with alcohol consumption, among which is intensive consumption [28-30]. and alcohol dependence [31]. A meta-analysis carried out in university students reveals that family history appears to have significant small to medium effects on the consequences of alcohol, symptoms of alcohol use disorder, and the participation of other drugs in samples of higher education students [32]. In contrast, small effects (many not significant) were found for consumption alone. This suggests that college students with a family history may not drink more overall, but those who use alcohol or drugs may be more susceptible to problematic use. The current study has some limitations: the questionnaire used has not yet been validated. However, this questionnaire consists of validated questions and scales from previously validated national questionnaires, like the Spanish National Health Survey [16] or the EDADES [3] survey, among others. The participation rate is around 3–5% depending on the university, taking into account that the project is a dynamic cohort that involves not only a baseline survey but also a follow-up over time and that participation is entirely voluntary, with no financial or other compensation for the collaboration. Another limitation of our study is its design. Although cross-sectional studies can determine prevalence, they cannot establish causality between alcohol consumption patterns and the other variables considered, especially family support. However, based on biological plausibility and the results of previous longitudinal studies, the observed trend, at least in the case of family support, could be correct.

Conclusion

Risky alcohol consumption in university students is associated with family dysfunction, unlike the binge drinking pattern, where there is no such association. The findings of the study show the importance of creating prevention programs focused on the family approach in university students, which include alcohol screening in the population with a family history of this substance, as well as greater social support from the health services. Additional file 1: Suplemmentary Table. UniHcos Project raw data.
  17 in total

Review 1.  Does family history of alcohol problems influence college and university drinking or substance use? A meta-analytical review.

Authors:  Jennifer C Elliott; Kate B Carey; Katherine E Bonafide
Journal:  Addiction       Date:  2012-05-08       Impact factor: 6.526

2.  Family history of alcohol abuse associated with problematic drinking among college students.

Authors:  Joseph W Labrie; Savannah Migliuri; Shannon R Kenney; Andrew Lac
Journal:  Addict Behav       Date:  2010-03-16       Impact factor: 3.913

3.  [UNIHCOS Project: dynamic cohort of Spanish college students to the study of drug and other addictions].

Authors:  Tania Fernández Villa; Juan Alguacil Ojeda; Carlos Ayán Pérez; Aurora Bueno Cavanillas; José María Cancela Carral; Rocío Capelo Álvarez; Miguel Delgado Rodríguez; Eladio Jiménez Mejías; José Juan Jiménez Moleón; Javier Llorca Díaz; Ramona Mateos Campos; Antonio José Molina de la Torre; Luis Félix Valero Juan; Vicente Martín Sánchez
Journal:  Rev Esp Salud Publica       Date:  2013 Nov-Dec

Review 4.  College students and problematic drinking: a review of the literature.

Authors:  Lindsay S Ham; Debra A Hope
Journal:  Clin Psychol Rev       Date:  2003-10

5.  The Use of the Alcohol Use Disorders Identification Test - Consumption as an Indicator of Hazardous Alcohol Use among University Students.

Authors:  Sanne Verhoog; Jolien M Dopmeijer; Jannet M de Jonge; Claudia M van der Heijde; Peter Vonk; Rob H L M Bovens; Michiel R de Boer; Trynke Hoekstra; Anton E Kunst; Reinout W Wiers; Mirte A G Kuipers
Journal:  Eur Addict Res       Date:  2019-09-27       Impact factor: 3.015

6.  [Validity and reliability of the family Apgar family function test].

Authors:  J A Bellón Saameño; A Delgado Sánchez; J D Luna del Castillo; P Lardelli Claret
Journal:  Aten Primaria       Date:  1996-10-15       Impact factor: 1.137

7.  Development of the Alcohol Use Disorders Identification Test (AUDIT): WHO Collaborative Project on Early Detection of Persons with Harmful Alcohol Consumption--II.

Authors:  J B Saunders; O G Aasland; T F Babor; J R de la Fuente; M Grant
Journal:  Addiction       Date:  1993-06       Impact factor: 6.526

8.  Validity of the alcohol use disorders identification test in college students.

Authors:  Patricia K Kokotailo; Judith Egan; Ronald Gangnon; David Brown; Marlon Mundt; Michael Fleming
Journal:  Alcohol Clin Exp Res       Date:  2004-06       Impact factor: 3.455

9.  Interrelationship between family history of alcoholism and generational status in the prediction of alcohol dependence in US Hispanics.

Authors:  K G Chartier; N S Thomas; K S Kendler
Journal:  Psychol Med       Date:  2016-09-29       Impact factor: 7.723

10.  Social, economic and family factors associated with binge drinking in Spanish adolescents.

Authors:  Ana Magdalena Vargas-Martínez; Marta Trapero-Bertran; Toni Mora; Marta Lima-Serrano
Journal:  BMC Public Health       Date:  2020-04-17       Impact factor: 3.295

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.