Next Article in Journal
Associations between Coping Profile and Work Performance in a Cohort of Japanese Employees
Next Article in Special Issue
Problematic Social Media Use and Depressive Outcomes among College Students in China: Observational and Experimental Findings
Previous Article in Journal
The Role of Surface Acting in the Relationship between Job Stressors, General Health and Need for Recovery Based on the Frequency of Interactions at Work
Previous Article in Special Issue
Perspective of Teachers and Students towards the Education Process during COVID-19 in Romanian Universities
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Association of Health and Psychological Factors with Academic Achievement and Non-Verbal Intelligence in University Students with Low Academic Performance: The Influence of Sex

by
Aniel Jessica Leticia Brambila-Tapia
1,*,†,
Aris Judit Miranda-Lavastida
2,†,
Nancy Araceli Vázquez-Sánchez
2,
Nancy Lizbeth Franco-López
2,
Martha Catalina Pérez-González
3,
Gonzalo Nava-Bustos
1,
Francisco José Gutiérrez-Rodríguez
1 and
Francisco Fabián Mora-Moreno
2,*
1
Departamento de Psicología Básica, Centro Universitario de Ciencias de la Salud (CUCS), Universidad de Guadalajara, Guadalajara 44100, Mexico
2
Centro de Estudios sobre Aprendizaje y Desarrollo (CEAD), Departamento de Psicología Básica, Centro Universitario de Ciencias de la Salud (CUCS), Universidad de Guadalajara, Guadalajara 44100, Mexico
3
Centro de Evaluación e Investigación en Psicología (CEIP), Departamento de Psicología Básica, Centro Universitario de Ciencias de la Salud (CUCS), Universidad de Guadalajara, Guadalajara 44100, Mexico
*
Authors to whom correspondence should be addressed.
These authors contributed equally to this work.
Int. J. Environ. Res. Public Health 2022, 19(8), 4804; https://doi.org/10.3390/ijerph19084804
Submission received: 3 March 2022 / Revised: 11 April 2022 / Accepted: 12 April 2022 / Published: 15 April 2022
(This article belongs to the Special Issue University Students' Health and Academic Achievement)

Abstract

:
Academic achievement, measured with the grade point average (GPA), is a stable characteristic that has been associated with many sociodemographic and psychological variables; however, the relation of these variables with GPA has not been totally elucidated. The objective of this study was to perform an association of health, psychological and personal variables with GPA and non-verbal intelligence in low-academic performance population according to sex. We invited health sciences university students who had failed the same subject twice to complete a set of sociodemographic and psychological variables and a non-verbal intelligence test. The GPA, admission exam test and preparatory GPA were obtained. We included 124 students, and found that GPA was associated with non-verbal intelligence in women but not in men; in whom, having a job and having a romantic partner, were more correlated. In women, positive relations with others, emotion perception and weekly physical activity hours were marginally correlated with GPA; while in men, emotion regulation and self-motivation had a tendency of correlation with GPA. In addition, we found that non-verbal intelligence was associated somatization and the number of diseases in women. Academic achievement is regulated by different variables in each sex; therefore, intervention programs addressed by sex are needed to increase it.

1. Introduction

Academic achievement, usually measured with the grade point average (GPA), is a very stable and heritable characteristic that remains constant over time [1]; however, it has been associated with a variety of sociodemographic, psychological and intellectual factors including positive associations with non-verbal intelligence, academic motivation, academic self-efficacy, emotional intelligence, task-oriented coping strategies, physical activity, sleep-related factors, conscientiousness and female sex, and negative associations with stressful life events, alcohol use, depression, stress, delinquent activity and avoidance coping [2,3,4,5,6,7,8,9]. In addition, intelligence has shown negative correlations with psychosocial adversities and low income, and positive correlations with maternal education [10]; as well as with specific personality traits [11]. To date, the socio-ecological outcomes model was the only found theoretical model related with academic achievement [12]; this suggests that interactions, among many factors including societal, environmental, intrapersonal and campus-based factors can influence the student success outcomes. In line with this model, a meta-analysis that investigated the influence of psychosocial factors in college students’ success, identified that some psychological variables, including motivation, self-perception, attribution and self-regulation contributed with a small but significant effect in academic achievement of college students [13]
However, few studies have measured a comprehensive number of these variables, including non-verbal intelligence, health, psychological and personal ones, in order to associate them with GPA and non-verbal intelligence, and, to the best of our knowledge, no study has performed these associations in students with low academic performance. Therefore, the objective of this study is to identify the variables most associated, with bivariate and multivariate analyses, to GPA and non-verbal intelligence according to sex in a subgroup of health sciences university students with low academic performance, in order to detect which variables could be modified to increase academic achievement in this population.
Therefore, as an initial hypothesis, we suggest that non-verbal intelligence and previous academic variables (including the admission exam test and preparatory GPA) are the most associated ones with current GPA; however, we also suggest that personal variables (mainly having a job, having children, maternal and parental schooling) are negatively and positively related with GPA (for the 2 first and the 2 last, respectively); that specific behavioral variables (including exercise, sleep quality, smoking and alcoholism), are positively and negatively associated with GPA, (for the 2 first and the 2 last, respectively), and finally, we hypothesize that specific psychological variables (mainly self-motivation and conscientiousness) are positively related with GPA. Finally, the inclusion of the health variables (somatization and the number of diseases) was performed in order to detect a possible association with GPA and non-verbal intelligence.

2. Participants and Methods

Study population: Students of the health sciences university center and who had failed the same subject twice (these students represent around 1% of the university center population by semester and therefore, are considered with “low academic performance” by the research team) were invited to participate. Those who accepted, signed an informed consent and filled out a questionnaire with sociodemographic, behavioral and psychological variables, and afterwards, they performed a non-verbal intelligence test. All the information obtained was kept/held as confidential and used only for this research.
Sociodemographic, health and behavioral variables: Age, sex, schooling, maternal and paternal schooling, number of siblings, whether they have a romantic partner, whether they have a job, whether they have children, number of daily study hours, monthly extra money, excluding necessary expenses (5 ordered ranges of extra money), number of daily free hours, number of daily recreative hours, weekly hours of physical activity, frequency of smoking, alcoholism and 6 types of drug consumption (marijuana, hashish, ecstasy, cocaine/crack, heroin, amphetamines): these frequencies were measured with 6 categories: never, 2–4 times a year, once in the month, many times in the month, once a week and many times in the week; the presence of 16 different diseases (diabetes, hypertension, overweight, thyroid problems, allergies, asthma, gastritis/gastric ulcer, colitis/irritable colon, migraine, acne, neurodermatitis, sinusitis, kidney/bladder problems, anorexia/bulimia, anxiety and depression problems that require medication) and any additional ones; somatization was measured with the Patient Health Questionnaire 15 (PHQ-15) [14]; self-reported weight and height to obtain the body max index (BMI), sleep satisfaction and sleep quality which were measured with the first item and the next 3 items (7 items in total because item 2 consists of 5 items) of the OVIEDO sleep questionnaire, respectively [15], and finally, we measured the quality of food intake with the Mini-ECCA scale [16].
Psychological variables: We measured academic stress with the academic stressor subscale of the SISCO scale [17], which was validated in Chilean student population [18]; depression with the Patient Health Questionnaire 9 (PHQ-9) [19]; anxiety with the Generalized Anxiety Disorder test (GAD-7) [20]; positive and negative emotions with the positivity-self scale (PSS) [21]; the 6 subscales of the shortened version of psychological well-being (PWB) scale (self-acceptance, autonomy, environmental mastery, personal growth, positive relations with others and purpose in life) [22]; optimism with the Life Orientation Test (LOT-R) [23]; personality with the reduced version of the NEO-FFI scale, which includes 5 subscales: neuroticism, openness, agreeableness, conscientiousness and extraversion [24], and finally, we measured 5–6 items of 3 subscales of the Trait Emotional Intelligence Questionnaire (TEIQUE): self-motivation (5 items), emotion perception (5 items) and emotion regulation (6 items) (these items are described in Supplementary File S1) [25].
Academic variables and non-verbal intelligence: The GPAs and the university entrance score (UES) were obtained from the university database. The UES was composed by the sum of the preparatory grades (preparatory GPA) and the admission exam test (college board exam) which includes: math and verbal reasoning and indirect redaction. Finally, non-verbal intelligence was measured with the Beta-4 test, which measures non-verbal intelligence (fluid and spatial non-verbal intelligence) and includes: coding, picture completion, clerical checking, picture absurdities and matrix reasoning [26].

Statistical Analysis

Descriptive data were presented with means and standard deviations for continuous variables and frequencies and percentages for binary/categorical ones. Continuous variables were associated with Pearson and Spearman tests for parametric and non-parametric distribution, respectively, while t-test for independent samples was used to compare continuous variables between 2 different categories. Finally, a multivariate analysis was carried out with the multiple regression tests, using the stepwise method for academic achievement (GPA) and non-verbal intelligence as dependent variables (the emotions were not included separately in this analysis). The Cronbach’s alpha test was performed for all the subscales measured. All statistical analyses were carried out with the software SPSS v. 25.0 and a p-value ≤ 0.05 was considered as significant.

3. Results

3.1. Descriptive Results

A total of 175 students that failed the same subject twice attended in a student support service program. All of them were invited to participate, however, from these, 124 students (70.86%) accepted the invitation to participate and completed all the measurements. From these, 65 (52.41%) were men, the mean age ± SD (range) was: 23.12 ± 3.75 (18–45) years old, the majority of them (69.40%) had a job, did not have children (81.46%) and had a romantic partner (53.20%). According to the university study programs, they were studying 7 health sciences degrees: physical culture and sport (28%), nursing (21%), psychology (14.5%), medicine (14.5%), 4 different technician careers (11%), dentistry (7%) and nutrition (4%). The descriptive statistics of personal, psychological and academic variables are presented in Table 1.

3.2. Bivariate Correlations

In the comparison of GPA and non-verbal intelligence between sex (t-test), we did not find significant differences; likewise, no differences were found between the group of students with or without a romantic partner, neither for those who have versus who do not have children, neither for those who have a job versus who do not have it (p > 0.05); although for these 2 last variables, borderline differences were found in non-verbal intelligence, being higher for the students who do not have children compared with those who have them (85.43 ± 9.30 vs. 82.96 ± 6.37, p = 0.076), and for those students who have a job compared with those who do not have it (86.17 ± 9.16 vs. 82.24 ± 7.56, p = 0.092).
In the bivariate correlations, including both sexes, between all the variables included and GPA and non-verbal intelligence, and including the above referenced variables (codified as continuous variables), we observed that GPA presented low but significant positive correlations with non-verbal intelligence, preparatory GPA, the admission exam test, having a romantic partner and number of diseases. Additionally, non-verbal intelligence presented a positive moderate correlation with the admission exam test and low but significant positive correlations with preparatory GPA, GPA, age, having a job, schooling, maternal schooling, monthly extra money, somatization, openness and autonomy (Table 2). A low but significant negative correlation was observed between non-verbal intelligence and the number of siblings and agreeableness as a personality trait. In addition, non-verbal intelligence presented a tendency of a positive correlation with the number of diseases (r = 0.165, p = 0.07), and depression (r = 0.169, p = 0.06) and a tendency of a negative correlation with sleep satisfaction (r = −0.166, p = 0.06) and sleep quality (r = −0.156, p = 0.09).

3.3. Correlations in Women

When we correlated the variables by sex (Table 2), we observed that women presented a significant positive correlation between GPA and non-verbal intelligence (r = 0.535), admission exam test (r = 0.445) and preparatory GPA (r = 0.381), and also had tendencies of positive correlations with weekly physical activity hours (r = 0.209, p = 0.113), positive relations with others (r = 0.248, p = 0.06) and emotion perception (r = 0.224, p = 0.09). In addition, non-verbal intelligence presented a significant positive correlation with the admission exam test (r = 0.660), preparatory GPA (r = 0.366), maternal schooling (r = 0.430), monthly extra money (r = 0.328), number of diseases (r = 0.331), weekly physical activity hours (r = 0.271), somatization (r = 0.312), anxiety (r = 0.265), and positive tendencies with age (r = 0.229, p = 0.08), paternal schooling (r = 0.216, p = 0.10) academic stress (r = 0.218, p = 0.09), depression (r = 0.223, p = 0.09) and openness (r = 0.247, p = 0.06). A significant negative correlation was observed between non-verbal intelligence and agreeableness (r = −0.260).
In the multivariate analysis for GPA, we found that non-verbal intelligence and preparatory GPA were the only significant associated variables included (Table 3) that showed a moderate R of the model = 0.624. The multivariate analysis for non-verbal intelligence in women included the admission exam test (β = 0.699), monthly extra money (β = 0.305) and smoking frequency (negatively) (β = −0.189) (data not shown in tables), with a R of the model = 0.754.

3.4. Correlations in Men

In the case of men, positive significant correlations were observed between GPA and having a romantic partner (r = 0.275), and positive tendencies were observed with having a job (r = 0.224, p = 0.08), emotion regulation (r = 0.201, p = 0.108), self-motivation (r = 0.189, p = 0.132) and neuroticism (r = 0.180, p = 0.151). In the case of non-verbal intelligence, positive significant correlations were found with the admission exam test (r = 0.546), having a job (r = 0.292) and autonomy (r = 0.261), and positive tendencies were found with daily study hours (r = 0.228, p = 0.06) and depression (r = 0.181, p = 0.149). A significant negative correlation was observed between non-verbal intelligence and agreeableness (r = −0.262) and a negative tendency with the number of siblings (r = −0.238, p = 0.06).
In the multivariate analysis for GPA in men, we found that the most associated variables were the admission exam test, self-motivation, neuroticism, having a romantic partner, having children (negatively) and weekly physical activity hours (negatively), shown in Table 4, which showed a moderate multivariate r = 0.603. The multivariate analysis for non-verbal intelligence in men included the admission exam test (β = 0.589) and maternal schooling (β = 0.231), with a moderate multivariate r = 0.576, data not shown in tables.

4. Discussion

To the best of our knowledge, this is the first study that associates a wide number of variables, including psychological and academic ones, with the current GPA and non-verbal intelligence in university students and specifically, in students with low academic performance. In the descriptive values, we observed that the mean of the percentile of non-verbal intelligence was low (19.33), which in part explains the constant failing in this group of students.
When we analyze the bivariate associations with GPA, we observed that women presented a higher correlation between non-verbal intelligence and GPA than men (r = 0.535 vs. r = 0.163), in whom, other variables, such as having a romantic partner (r = 0.275) or having a job (r = 0.224) were more correlated. This suggests that in men, non-verbal intelligence is not the highest predictor of GPA in university students and other factors are more relevant. In this regard, it is important to consider that, contrary to the expected, having a job was positively associated with GPA in both sexes, being higher in men than in women. As non-verbal intelligence, preparatory GPA and the admission exam test were also more correlated with GPA in women than in men. In general, these results coincide with other studies performed in children that showed that non-verbal intelligence has been the strongest associated variable to GPA [5,6]; however, no differences by sex were reported.
Different to the expected, sleep satisfaction and sleep quality did not show a correlation or tendency with GPA; however, we observed that a previous report [6] did not show an association between sleep efficiency and GPA in children (r = 0.05), and another report only showed associations between GPA and morningness chronotype (r = 0.14) and an earlier midpoint of sleep (r = −0.22), but not with the average sleep length (r = 0.04) in children [5]. This suggests that sleep satisfaction or sleep quality are not associated with GPA in these populations (children and university), however, other variables associated to sleep, as previously mentioned, could be associated.
On the other hand, although frequency of alcohol consumption did not show association or tendency with GPA in any sex, the smoking frequency showed a tendency of a very low correlation, but only in women (r = −0.158, p = 0.231).
With respect to the psychological variables studied, we observed that for women, the emotional variables: emotion perception (r = 0.224, p = 0.09) and positive relation with others (r = 0.248, p = 0.06) presented positive tendencies in the correlation with GPA that were not observed in men, in whom, self-motivation (r = 0.189, p = 0.132) and emotion regulation (r = 0.201, p = 0.108) showed a positive tendency of correlation with GPA; self-motivation was also included in the multivariate analysis for GPA in men. These differences are important in order to perform intervention programs to increase GPA in this population, considering that different programs should be performed depending on the sex of the students. These results coincide with other reports that showed low but significant positive associations between emotional intelligence and learning strategies [27] and examinations [28] in health sciences university students; however, these reports did not perform analyses by sex. In addition, contrary to a previous report in children [5], we did not find an association between conscientiousness and GPA in any sex.
In the multivariate models for GPA performed by sex, we observed that, in women, only 2 intellectual variables were included: non-verbal intelligence and preparatory GPA. In men, many variables were part of the model, including positive associations with the admission exam test, self-motivation, neuroticism, having a romantic partner and negative associations with having children and weekly physical activity hours, which confirms the influence of many variables in GPA (including personal, psychological and behavioral) in men compared with women. In this sense, intervention programs addressing emotion perception and positive relations with others, as well as healthy lifestyle habits may be more useful for women, and programs addressing self-motivation and emotion regulation could be more useful for men in order to increase GPA. However, longitudinal studies are needed in order to corroborate these possible causal associations.
In the case of non-verbal intelligence, the correlation with having a job is related with the monthly extra money and is an expected association, considering that higher non-verbal intelligence increases the opportunity of getting a job and earning more money. Again, we observed that the correlation between non-verbal intelligence and monthly extra money was much higher (and only significant) in women than in men.
In addition, as previously mentioned, we observed a positive correlation between physical activity hours and non-verbal intelligence only in women; in this regard, although aerobic fitness has shown to improve cognitive functions in young adults [29], another study showed that sedentary time predicted higher values of fluid non-verbal intelligence in children, while physical activity diminished them [30]. In addition, a third study showed that specific sedentary activities (watching television and driving) are related with lower scores of fluid non-verbal intelligence, but computer-use time is related with higher ones [31]. In this sense, future longitudinal studies that specify the type of physical and sedentary activities of the students are needed in order to relate them with the modification of non-verbal intelligence.
As an unexpected finding, we observed a correlation between non-verbal intelligence and somatization (r = 0.194), which was higher and significant in women (r = 0.312), as well as a tendency with the number of diseases (r = 0.165, p = 0.07) that reached significance in women (r = 0.331). This could be related with the tendencies (not significant) to a negative correlation between non-verbal intelligence and sleep satisfaction (r = −0.166, p = 0.06) and sleep quality (r = −0.156, p = 0.09), and a tendency of a positive correlation with depression (r = 0.169, p = 0.06) which was higher in women (0.223, p = 0.09). This was considering that these variables had a correlation with somatization and the number of diseases: sleep satisfaction: r = −0.384, p < 0.01 and r = −0.212, p < 0.05; sleep quality: r = −0.563, p < 0.01 and r = −0.328, p < 0.01, and depression: r = 0.620, p < 0.01 and r = 0.452, p < 0.01, respectively (data not shown in tables). In addition, women had a positive significant correlation between non-verbal intelligence and anxiety (r = 0.265) and a positive tendency with academic stress (r = 0.218, p = 0.10) which was not found in men. These correlations also explain the higher correlations between non-verbal intelligence with somatization and the number of diseases in women than in men.
These results coincide with a previous report showing a negative correlation between sleep duration on weekends and non-verbal intelligence scores in healthy children [32]. On the other hand, although a meta-analysis showed a negative correlation between cognitive functions and subsequent self-reported depression [33], another report found a higher number of psychological and physical diseases including depression and psychiatric and self-immune diseases in individuals with high intelligence when compared to the general population [34]. Interestingly, we found similar results but with the low intelligence population. In this case, more studies that differentiate men from women and use specific instruments to measure depression are needed.
With respect to the psychological variables, according to the hypothesis, the positive correlations between non-verbal intelligence and the subscale of personality: openness (r = 0.210), mainly in women (r = 0.247), and a low negative correlation with the subscale of personality: agreeableness (r = −0.266), coincide with a previous report in the German adult population, where the authors found a positive correlation between fluid and crystallized non-verbal intelligence with openness (curiosity for fluid intelligence and aesthetic sensitivity for crystallized intelligence), and a negative correlation between crystallized intelligence and agreeableness [11].
The main limitation of this study was the lack of a control group with normal academic performance that could have permitted us to perform comparisons of the studied variables between groups and identify the differences in the variables related with academic performance; likewise, the inclusion of different study programs and stages on which the students were currently studying formed a more heterogeneous group that could have biased the results obtained. Nevertheless, the high number of variables, which included the analysis by sex and the poorly investigated population, permitted us to find new and potentially useful associations that can lead to further research and intervention programs in this population, in order to improve their academic achievement.

5. Conclusions

In conclusion, we found that academic performance was mainly associated with non-verbal intelligence in women but not in men, in whom, other variables, including having a romantic partner and having a job, were more associated. Other sex differences were found: in women, the positive relations with others and emotion perception were marginally correlated with GPA; while in men, emotion regulation and self-motivation showed a tendency of correlation with GPA. In addition, in the multivariate analysis for men, many variables were included: admission exam test, self-motivation, neuroticism, having a romantic partner, having children (negatively) and weekly physical activity hours (negatively); while in women only 2 variables were included: non-verbal intelligence and preparatory GPA. Globally, these results emphasize the contribution of psychological variables to GPA in both genders, being of special interest, the social support provided by others or by a romantic partner; as well as the contribution of emotional abilities to GPA, including the emotion perception, self-motivation and emotion regulation. These results indicate that these associated variables can be increased in further studies in order to increase GPA.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/ijerph19084804/s1, Supplementary File S1: items included for emotional intelligence subscales measurement (TIEQUE scale).

Author Contributions

Conceptualization, A.J.L.B.-T., A.J.M.-L., M.C.P.-G., G.N.-B., F.J.G.-R. and F.F.M.-M.; Formal analysis, A.J.L.B.-T.; Investigation, A.J.M.-L., N.A.V.-S., N.L.F.-L. and F.F.M.-M.; Methodology, A.J.L.B.-T.; Project administration, A.J.M.-L.; Validation, N.A.V.-S. and N.L.F.-L.; Writing—original draft, A.J.L.B.-T. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

This study was conducted according to the guidelines of the Declaration of Helsinki and approved by the Institutional Review Board of the CUCS-UDG (CUCS/CINV/069/21, date: 14 June 2021).

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

Data that support the findings of the study are available from the corresponding author upon reasonable request.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Kovas, Y.; Haworth, C.M.A.; Dale, P.S.; Plomin, R. The genetic and environmental origins of learning abilities and disabilities in the early school years. Monogr. Soc. Res. Child Dev. 2007, 72, 1–144. [Google Scholar] [CrossRef]
  2. Dixson, D.D.; Worrell, F.C.; Olszewski-Kubilius, P.; Subotnik, R.F. Beyond perceived ability: The contribution of psychosocial factors to academic performance. Ann. N. Y. Acad. Sci. 2016, 1377, 67–77. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  3. Fedewa, A.L.; Ahn, S. The Effects of Physical Activity and Physical Fitness on Children’s Achievement and Cognitive Outcomes. Res. Q. Exerc. Sport 2011, 82, 521–535. [Google Scholar] [CrossRef] [PubMed]
  4. Windle, M.; Windle, R.C. Coping strategies, drinking motives, and stressful life events among middle adolescents: Associations with emotional and behavioral problems and with academic functioning. J. Abnorm. Psychol. 1996, 105, 551–560. [Google Scholar] [CrossRef] [PubMed]
  5. Arbabi, T.; Vollmer, C.; Dörfler, T.; Randler, C. The influence of chronotype and non-verbal intelligence on academic achievement in primary school is mediated by conscientiousness, midpoint of sleep and motivation. Chronobiol. Int. 2014, 32, 349–357. [Google Scholar] [CrossRef] [PubMed]
  6. Erath, S.A.; Tu, K.M.; Buckhalt, J.A.; El-Sheikh, M. Associations between children’s non-verbal intelligence and academic achievement: The role of sleep. J. Sleep Res. 2015, 24, 510–513. [Google Scholar] [CrossRef] [Green Version]
  7. El Hangouche, A.J.; Jniene, A.; Aboudrar, S.; Errguig, L.; Rkain, H.; Cherti, M.; Dakka, T. Relationship between poor quality sleep, excessive daytime sleepiness and low academic performance in medical students. Adv. Med. Educ. Pract. 2018, 9, 631–638. [Google Scholar] [CrossRef] [Green Version]
  8. Kusurkar, R.A.; Croiset, G.; Galindo-Garré, F.; Ten Cate, O. Motivational profiles of medical students: Association with study effort, academic performance and exhaustion. BMC Med. Educ. 2013, 13, 87. [Google Scholar] [CrossRef] [Green Version]
  9. Park, J.; Chung, S.; An, H.; Park, S.; Lee, C.; Kim, S.Y.; Lee, J.-D.; Kim, K.-S. A Structural Model of Stress, Motivation, and Academic Performance in Medical Students. Psychiatry Investig. 2012, 9, 143. [Google Scholar] [CrossRef]
  10. Madhushanthi, H.J.; Wimalasekera, S.W.; Goonewardena, C.S.E.; Amarasekara, A.T.D.; Lenora, J. Socioeconomic status is a predictor of neurocognitive performance of early female adolescents. Int. J. Adolesc. Med. Health 2018, 32. [Google Scholar] [CrossRef]
  11. Rammstedt, B.; Lechner, C.; Danner, D. Relationships between Personality and Cognitive Ability: A Facet-Level Analysis. J. Non-Verbal Intell. 2018, 6, 28. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  12. Harris, F.W.; Wood, J.L. Applying the Socio-Ecological Outcomes Model to the Student Experiences of Men of Color. New Dir. Community Coll. 2016, 2016, 35–46. [Google Scholar] [CrossRef]
  13. Fong, C.J.; Davis, C.W.; Kim, Y.; Kim, Y.W.; Marriott, L.; Kim, S. Psychosocial Factors and Community College Student Success. Rev. Educ. Res. 2016, 87, 388–424. [Google Scholar] [CrossRef]
  14. Ros-Montalbán, S.; Comas Vives, A.; Garcia-Garcia, M. Validation of the Spanish version of the PHQ-15 questionnaire for the evaluation of physical symptoms in patients with depression and/or anxiety disorders: DEPRE-SOMA study. Actas Españolas Psiquiatr. 2010, 38, 345–357. [Google Scholar]
  15. Bobes-García, J.; González G-Portilla, P.; Sáiz-Martínez, D.A.; Bascarán-Fdez, M.; Iglesias-Álvarez, G.; Fdez-Dominguez, J.M. Propiedades psicométricas del cuestionario de Oviedo de sueño. Psicothema 2000, 12, 107–112. [Google Scholar]
  16. Bernal-Orozco, M.; Badillo-Camacho, N.; Macedo-Ojeda, G.; González-Gómez, M.; Orozco-Gutiérrez, J.; Prado-Arriaga, R.; Márquez-Sandoval, F.; Altamirano-Martínez, M.; Vizmanos, B. Design and Reproducibility of a Mini-Survey to Evaluate the Quality of Food Intake (Mini-ECCA) in a Mexican Population. Nutrients 2018, 10, 524. [Google Scholar] [CrossRef] [Green Version]
  17. Barraza, A. Propiedades Psicométricas del Inventario SISCO del Estrés Académico. En la Biblioteca Virtual de Psicología científica.com. 2007. Available online: https://www.psicologiacientifica.com/sisco-propiedades-psicometricas/ (accessed on 13 August 2021).
  18. Castillo, A.G.; Saez, K.; Perez, C.; Castillo Navarrete, J.L. Validity and reliability of SISCO inventory of academic stress among health students in Chile. J. Pak. Med. Assoc. 2018, 68, 1759–1762. [Google Scholar]
  19. Baader, M.T.; Molina, F.J.L.; Venezian, B.S.; Rojas, C.C.; Farías, S.R.; Fierro-Freixenet, C.; Backenstrass, M.; Mundt, C. Validación y utilidad de la encuesta PHQ-9 (Patient Health Questionnaire) en el diagnóstico de depresión en paccientes usuarios de atención primaria en Chile. Rev. Chil. Neuro-Psiquiatr. 2012, 50, 10–22. [Google Scholar] [CrossRef]
  20. Garcia-Campayo, J.; Zamorano, E.; Ruiz, M.A.; Pardo, A.; Perez-Paramo, M.; Lopez-Gomez, V.; Freire, O.; Rejas, J. Cultural adaptation into Spanish of the generalized anxiety disorder-7 (GAD-7) scale as a screening tool. Health Qual. Life Outcomes 2010, 8, 8. [Google Scholar] [CrossRef] [Green Version]
  21. Cortina-Guzmán, L.G.; Berenzon-Gom, S. Traducción al español y propiedades picométricas del instrumento “positivity self test”. Psicol. Iberoam. 2013, 21, 53–64. [Google Scholar] [CrossRef]
  22. Diaz, D.; Rodriguez-Carvajal, R.; Blanco, A.; Moreno-Jimenez, B.; Gallardo, I.; Valle, C.; Van Dierendonck, D. Adaptación española de las escalas de bienestar psicológico de Ryff. Psicothema 2006, 18, 572–577. [Google Scholar] [PubMed]
  23. Ferrando, P.J.; Chico, E.; Tous, J.M. Propiedades psicométricas del test de Optimismo Life Orientation Test. Psicothema 2002, 14, 673–680. [Google Scholar]
  24. Meda-Lara, R.M.; Moreno-Jimenez, B.; García, L.F.; Palomera-Chávez, A.; Mariscal de Santiago, M.V. Validez factorial del NEO-FFI en una muestra mexicana: Propuesta de una versión reducida. Rev. Mex. Psicol. 2015, 32, 57–67. [Google Scholar]
  25. Chirumbolo, A.; Picconi, L.; Morelli, M.; Petrides, K.V. The Assessment of Trait Emotional intelligence: Psychometric Characteristics of the TEIQue-Full Form in a Large Italian Adult Sample. Front. Psychol. 2019, 9, 2786. [Google Scholar] [CrossRef] [Green Version]
  26. Kellogg, C.E.; Morton, N.W. BETA-4, 1st ed.; Manual Moderno: Mexico City, Mexico, 2018. [Google Scholar]
  27. Fernandez, R.; Salamonson, Y.; Griffiths, R. Emotional intelligence as a predictor of academic performance in first-year accelerated graduate entry nursing students. J. Clin. Nurs. 2012, 21, 3485–3492. [Google Scholar] [CrossRef]
  28. Wood, T.J.; Humphrey-Murto, S.; Moineau, G.; Forgie, M.; Puddester, D.; Leddy, J.J. Does Emotional intelligence at medical school admission predict future licensing examination performance? Can. Med. Educ. J. 2020, 11, e35–e45. [Google Scholar] [CrossRef]
  29. Talukdar, T.; Nikolaidis, A.; Zwilling, C.E.; Paul, E.J.; Hillman, C.H.; Cohen, N.J.; Kramer, A.F.; Barbey, A.K. Aerobic Fitness Explains Individual Differences in the Functional Brain Connectome of Healthy Young Adults. Cereb. Cortex 2017, 28, 3600–3609. [Google Scholar] [CrossRef]
  30. Wickel, E.E. Sedentary Time, Physical Activity, and Executive Function in a Longitudinal Study of Youth. J. Phys. Act. Health 2017, 14, 222–228. [Google Scholar] [CrossRef]
  31. Bakrania, K.; Edwardson, C.L.; Khunti, K.; Bandelow, S.; Davies, M.J.; Yates, T. Associations Between Sedentary Behaviors and Cognitive Function: Cross-Sectional and Prospective Findings From the UK Biobank. Am. J. Epidemiol. 2017, 187, 441–454. [Google Scholar] [CrossRef] [Green Version]
  32. Geiger, A.; Achermann, P.; Jenni, O.G. Association between sleep duration and non-verbal intelligence scores in healthy children. Dev. Psychol. 2010, 46, 949–954. [Google Scholar] [CrossRef]
  33. Scult, M.A.; Paulli, A.R.; Mazure, E.S.; Moffitt, T.E.; Hariri, A.R.; Strauman, T.J. The association between cognitive function and subsequent depression: A systematic review and meta-analysis. Psychol. Med. 2016, 47, 1–17. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  34. Karpinski, R.I.; Kinase Kolb, A.M.; Tetreault, N.A.; Borowski, T.B. High non-verbal intelligence: A risk factor for psychological and physiological overexcitabilities. Non-Verbal Intell. 2018, 66, 8–23. [Google Scholar] [CrossRef]
Table 1. Personal, psychological and academic/intellectual variables of the participants.
Table 1. Personal, psychological and academic/intellectual variables of the participants.
VariableAll Students (n = 124)Women (n = 59)Men (n = 65) Possible Range
Academic and intellectual variables
GPA, mean ± SD84.46 ± 4.9484.76 ± 4.9484.19 ± 4.96≤100
Preparatory GPA, mean ± SD84.09 ± 6.9984.44 ± 7.5583.77 ± 6.47 ≤100
Admission exam test, mean ± SD61.14 ± 16.4858.90 ± 16.3763.17 ± 16.43≤100
University Entrance Score (UES), mean ± SD145.24 ± 20.02143.34 ± 20.68146.95 ± 19.39≤200
Non-verbal intelligence (BETA-4 IQ), mean ± SD84.97 ± 8.86 84.12 ± 8.5585.74 ± 9.13≤155
Non-verbal intelligence percentile, mean ± SD19.34 ± 15.2917.83 ± 14.57 20.71 ± 15.89≤100
Personal variables
Male sex, n (%)65 (52.41)---
Age, mean ± SD (range)23.15 ± 3.75 (18–45) 22.25 ± 3.7523.96 ± 3.57-
With romantic partner, n (%) 66 (53.20)29 (49.20)37 (56.90)-
With children, n (%) 23 (18.54)11 (18.60)12 (18.46)-
With job, n (%)86 (69.40)38 (64.40)48 (73.84)-
Schooling, n (%) -
- Secondary6 (4.80)4 (6.80)2 (3.08)
- Preparatory77 (62.10) 39 (66.10)38 (58.46)
- University (Bachelor’s degree)41 (33.10)16 (27.10) 25 (38.46)
Maternal Schooling, n (%) -
- Elementary school 11 (8.87)3 (5.10)8 (12.30)
- Secondary38 (30.65)18 (30.50)20 (30.80)
- Preparatory31 (25.00)14 (23.70)17 (26.15)
- University (Bachelor´s degree)38 (30.65)23 (39.00) 15 (23.07)
- Master in Science4 (3.22) 1 (1.70)3 (4.61)
- Ph.D. degree2 (1.61) 0 (0.00)2 (3.07)
Paternal Schooling, n (%) -
- Elementary school16 (12.90)8 (13.60)8 (12.30)
- Secondary34 (27.42)16 (27.10)18 (27.70)
- Preparatory34 (27.42)16 (27.10)18 (27.70)
- University (Bachelor´s degree)29 (23.39)15 (25.40) 14 (21.50)
- Master in Science10 (8.06)3 (5.10)7 (10.80)
- Ph.D. degree1 (0.81)1 (1.70) 0 (0.00)
Siblings, mean ± SD (range)2.28 ± 1.39 (0–7) 2.39 ± 1.212.18 ± 1.54-
Monthly extra money, mean ± SD2.05 ± 0.601.94 ± 0.572.13 ± 0.610–5
Daily study hours, mean ± SD (range) 5.21 ± 3.11 (1–15)5.40 ± 3.175.03 ± 3.07-
Daily free hours, mean ± SD (range) 3.13 ± 2.05 (0–12)3.12 ± 2.033.12 ± 2.08-
Daily recreative hours, mean ± SD (range) 1.33 ± 1.02 (0–6) 1.14 ± 0.951.49 ± 1.06 -
Number of diseases, mean ± SD (range)2.22 ± 2.04 (0–9) 3.17± 2.04 1.35 ± 1.61 0–17
Behavioral variables
Weekly physical activity hours, mean ± SD (range)4.70 ± 4.69 (0–28)3.33 ± 3.381.35 ± 1.61-
Frequency of drug consumption, mean ± SD1.10 ± 0.261.09 ± 0261.10 ± 0.261–6
Frequency of smoking, mean ± SD2.19 ± 1.962.32 ± 1.992.07 ± 1.931–6
Frequency of alcoholism, mean ± SD3.36 ± 1.993.18 ± 2.05 3.52 ± 1.94 1–6
Quality of food intake (Mini-ECCA), mean ± SD6.31 ± 2.617.08 ± 2.695.61 ± 2.331–12
Self-reported BMI, mean ± SD (range) 25.15 ± 5.44 (15.06–40.82) 25.09 ± 5.3825.21 ± 5.53 -
Sleep satisfaction (OVIEDO scale), mean ± SD3.98 ± 1.40 3.83 ± 1.414.11 ± 1.381–7
Sleep quality (OVIEDO scale), mean ± SD3.43 ± 1.043.30 ± 1.17 3.54 ± 0.90 1–5
Psychological variables
Somatization (PHQ-15), mean ± SD1.58 ± 0.361.71 ± 0.37 1.46 ± 0.301–3
Academic stress (SISCO), mean ± SD2.34 ± 0.672.41 ± 0.712.28 ± 0.641–5
Depression (PHQ-9), mean ± SD1.91 ± 0.69 2.10 ± 0.73 1.75 ± 0.60 1–4
Personality (NEO-FFI), mean ± SD 1–5
- Neuroticism2.34 ± 0.87 2.56 ± 0.912.14 ± 0.77
- Extraversion3.34 ± 0.853.10 ± 0.753.54 ± 0.89
- Agreeableness3.51 ± 0.69 3.59 ± 0.733.44 ± 0.65
- Openness3.55 ± 0.773.59 ± 0.713.52 ± 0.82
- Conscientiousness3.63 ± 0.70 3.60 ± 0.763.67 ± 0.65
Emotional intelligence (TEIQUE), mean ± SD 1–7
- Self-motivation5.11 ± 1.165.00 ± 1.235.21 ± 1.08
- Emotion regulation4.45 ± 1.204.29 ± 1.16 4.59 ± 1.22
- Emotion perception 4.86 ± 1.384.69 ± 1.42 5.02 ± 1.34
Psychological well-being (PWB), mean ± SD 1–6
- Self-acceptance4.34 ± 1.21 4.06 ± 1.30 4.59 ± 1.07
- Positive relations with others4.30 ± 1.14 4.14 ± 1.214.43 ± 1.06
- Environmental mastery 4.20 ± 0.964.13 ± 0.984.27 ± 0.94
- Personal growth4.70 ± 0.97 4.72 ± 1.074.68 ± 0.87
- Purpose in life4.43 ± 1.214.32 ± 1.354.54 ± 1.06
- Autonomy4.24 ± 0.994.05 ± 1.064.41 ± 0.89
Positive and negative emotions (PSS), mean ± SD 1–5
- Positive emotions3.77 ± 0.633.64 ± 0.623.88 ± 0.62
- Negative emotions2.51 ± 0.702.70 ± 0.702.34 ± 0.66
Anxiety (GAD-7), mean ± SD2.02 ± 0.70 2.16 ± 0.721.90 ± 0.671–4
Optimism (LOT-R), mean ± SD3.53 ± 0.693.50 ± 0.733.55 ± 0.651–5
GPA: Grade point average, IQ: intellectual quotient, BMI: body mass index. Monthly extra money was measured with 5 ordered categories from 1 = nothing to 5 = more than USD 150. Frequency of drug consumption, smoking and alcoholism were measured from 1 = never to 6 = many times in the week. Quality of food intake (Mini-ECCA scale) was measured from 1 = very low quality to 12 = very high quality; sleep satisfaction (OVIEDO scale) was measured from 1 = very unsatisfied to 7 = very satisfied; sleep quality (OVIEDO scale) was measured from 1 = very low quality to 5 = very high quality; somatization (PHQ-15) was measured from 1 = without disturbance to 3 = much disturbance; academic stress (SISCO) was the mean of the 8 academic stressors that were measured from 1 = never to 5 = always, depression (PHQ-9) was measured from 1 = no day to 4 = almost all the days; the 5 personality subscales (NEO-FFI) were measured from 1 = totally disagree to 5 = totally agree; the 3 subscales of emotional intelligence (TEIQUE) were measured from 1 = totally disagree to 7 = totally agree; the 6 subscales of PWB scale were measured from 1 = totally disagree to 6 = totally agree; positive and negative emotions (PSS) were measured from 1 = totally disagree to 6 = totally agree; anxiety (GAD-7) was measured from 1 = not at all to 4 = almost all the days; optimism (LOT-R) was measured from 1 = totally disagree to 5 = totally agree.
Table 2. Correlations of studied variables with non-verbal intelligence and GPA.
Table 2. Correlations of studied variables with non-verbal intelligence and GPA.
VariableIncluding All the Students (n = 124)Women (n = 59)Men (n = 65)
Non-Verbal IntelligenceGPANon-Verbal IntelligenceGPA Non-Verbal Intelligence GPA
Sex (Female = 1, Male = 2)0.102−0.110----
Age0.274 **0.1070.2290.1380.277 **0.168
With romantic partner (No = 0, Yes = 1)0.0910.220 *0.2110.167 −0.0560.275 *
With children (No = 0, Yes = 1)−0.108−0.085−0.150−0.041−0.091−0.175
Number of children (n = 23, women = 11, men = 12)−0.123−0.084−0.358−0.1620.0340.130
With job (No = 0, Yes = 1)0.220 *0.1660.1480.1350.292 *0.224
Schooling0.193 *0.1030.2000.1220.1620.123
Maternal Schooling0.237 **−0.0020.430 **0.1090.087−0.130
Paternal Schooling0.108−0.0310.2160.059 −0.007−0.014
Siblings−0.205 *−0.038−0.1290.054 −0.238−0.160
Monthly extra money0.200 *−0.0220.328 *−0.0390.0550.019
Daily study hours0.1380.0800.048 −0.0150.228 0.158
Daily free hours−0.036 −0.1090.037−0.068 −0.128−0.136
Daily recreative hours−0.011−0.0350.070−0.002−0.126−0.035
Number of diseases0.1650.195 *0.331 *0.1660.0940.168
Weekly physical activity hours0.0460.0290.271 *0.209−0.071−0.198
Frequency of drug consumption−0.058−0.0100.051−0.0150.0620.028
Frequency of smoking0.041−0.122 −0.014−0.1580.112−0.088
Frequency of alcoholism−0.032−0.028−0.009−0.081−0.0530.019
Quality of food intake0.0240.0320.1730.122−0.068−0.146
Self-reported BMI0.0710.0850.158 0.0270.0000.140
Sleep satisfaction−0.166−0.045−0.214−0.080−0.1400.000
Sleep quality−0.1560.005−0.158 0.011 −0.135−0.034
Somatization (PHQ−15)0.194 * 0.1640.312 *0.1860.1640.108
Academic stress (SISCO)0.1230.0410.218−0.0410.0450.108
Depression (PHQ−9)0.1690.0400.223 −0.0360.1810.105
Neuroticism0.0890.093 0.142−0.0080.0910.180
Extraversion−0.079 0.041 −0.1920.105 −0.0510.018
Agreeableness−0.266 **−0.052 −0.260 *−0.048−0.262 *−0.076
Openness0.210 * 0.077 0.2470.1560.120−0.064
Conscientiousness−0.0850.060 −0.0860.113−0.0670.045
Self-motivation0.0070.1270.0180.079 −0.0190.189
Emotion regulation0.171 0.1270.1820.0590.1440.201
Emotion perception0.0990.065 0.1230.2240.096−0.129
Self-acceptance−0.0760.021−0.1020.124−0.090 −0.057
Positive relations with others0.1330.1590.172 0.2480.0690.078
Environmental mastery−0.027−0.040−0.085−0.0120.004−0.063
Personal growth0.0550.0440.0620.0680.0480.009
Purpose in life−0.115−0.011−0.0850.029−0.1670.043
Autonomy0.183 *0.0590.0860.1080.261 *0.038
Positive emotions0.0380.146 0.0110.1930.0320.132
Negative emotions0.048−0.032 0.172−0.093−0.014−0.007
Anxiety (GAD−7)0.112−0.0040.265 *0.0230.021−0.047
Optimism (LOT-R)0.0870.1090.0010.1970.1610.024
GPA0.326 **-0.535 **-0.163-
Non-verbal intelligence-0.326 **-0.535 **-0.163
Preparatory GPA0.241 **0.191 *0.366 **0.381 **0.131−0.013
Admission exam test0.602 **0.323 **0.660 **0.445 **0.546 **0.233
* p-value < 0.05 and ** <0.01. p-values calculated with Spearman and Pearson correlation tests.
Table 3. Multiple regression analysis for GPA in women.
Table 3. Multiple regression analysis for GPA in women.
VariableBetaBeta Coefficientp-ValueChange in R2
Constant45.33-0.000-
Non-verbal intelligence0.2790.463 0.000 0.326
Preparatory GPA0.1860.273 0.0140.063
GPA: Grade point average. R of the model: 0.624.
Table 4. Multiple regression analysis for GPA in men.
Table 4. Multiple regression analysis for GPA in men.
VariableBetaBeta Coefficientp-ValueChange in R2
Constant64.94- 0.000-
Admission exam test0.083 0.277 0.0110.087
Self-motivation1.8460.399 0.0010.055
Neuroticism1.9390.2940.0160.079
With romantic partner3.543 0.348 0.0030.048
With children−3.343 −0.254 0.025 0.049
Physical activity−0.227−0.2250.040 0.047
GPA: Grade point average. R of the model: 0.603.
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Brambila-Tapia, A.J.L.; Miranda-Lavastida, A.J.; Vázquez-Sánchez, N.A.; Franco-López, N.L.; Pérez-González, M.C.; Nava-Bustos, G.; Gutiérrez-Rodríguez, F.J.; Mora-Moreno, F.F. Association of Health and Psychological Factors with Academic Achievement and Non-Verbal Intelligence in University Students with Low Academic Performance: The Influence of Sex. Int. J. Environ. Res. Public Health 2022, 19, 4804. https://doi.org/10.3390/ijerph19084804

AMA Style

Brambila-Tapia AJL, Miranda-Lavastida AJ, Vázquez-Sánchez NA, Franco-López NL, Pérez-González MC, Nava-Bustos G, Gutiérrez-Rodríguez FJ, Mora-Moreno FF. Association of Health and Psychological Factors with Academic Achievement and Non-Verbal Intelligence in University Students with Low Academic Performance: The Influence of Sex. International Journal of Environmental Research and Public Health. 2022; 19(8):4804. https://doi.org/10.3390/ijerph19084804

Chicago/Turabian Style

Brambila-Tapia, Aniel Jessica Leticia, Aris Judit Miranda-Lavastida, Nancy Araceli Vázquez-Sánchez, Nancy Lizbeth Franco-López, Martha Catalina Pérez-González, Gonzalo Nava-Bustos, Francisco José Gutiérrez-Rodríguez, and Francisco Fabián Mora-Moreno. 2022. "Association of Health and Psychological Factors with Academic Achievement and Non-Verbal Intelligence in University Students with Low Academic Performance: The Influence of Sex" International Journal of Environmental Research and Public Health 19, no. 8: 4804. https://doi.org/10.3390/ijerph19084804

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop