Effects of the reading medium on the text comprehension of university students

Main Article Content

Ángel-Javier Tabullo
Pablo-Yoshin Teruya
Johanna Casado
Enrique-Salvador Puliafito-Hamann
Natasha Bertaina-Lucero

Abstract

Argentinian university students face serious difficulties in text comprehension. In addition, screen reading has become more popular, but there is evidence of worse comprehension outcomes. The aim of the study was to compare the comprehension of an expository text read on paper, PC, or smartphone among first-year students of Engineering and Health Sciences. In addition, we aimed to explore the effects of their study field, reading habits and vocabulary skills on comprehension, as well as potential interactions with the reading medium. The study had an experimental design, and the sample consisted of 128 students (average age: 18.6 ± 2.61 years). They read an expository text in three experimental conditions: paper, PC, or smartphone. Vocabulary skills and reading habits were also assessed. Comprehension performance was worse for those reading on smartphone (compared to PC). Engineering freshmen with lower vocabulary performed worse on smartphones than on PC and paper. Engineering freshmen performed better in all reading media, which could not be attributed to their vocabulary or reading habits. Our results suggest higher cognitive costs, distractions, or a lesser reading depth on smartphones. The observed advantage in engineering students could be explained by differences in their educational trajectory or cognitive abilities.

Article Details

How to Cite
Tabullo, Ángel-J., Teruya, P.-Y., Casado, J., Puliafito-Hamann, E.-S., & Bertaina-Lucero, N. (2025). Effects of the reading medium on the text comprehension of university students. Ocnos. Journal of reading research, 25(1). https://doi.org/10.18239/ocnos_2026.25.1.583
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Artículos
Tabullo, Teruya, Casado, Puliafito-Hamann, and Bertaina-Lucero: Effects of the reading medium on the text comprehension of university students

INTRODUCTION

Text comprehension is a complex cognitive skill that requires the coordination of linguistic, cognitive, and meta-cognitive processes (). The “Simple View of Reading” () proposes that comprehension is the result of two components: word recognition (detection and decoding of orthographic information) and language comprehension (access to meaning and integration with prior knowledge). A recent update to this model suggests that two pivotal skills act as a bridge between these components: reading fluency and vocabulary. As experience increases, recognition processes become more automatic, and comprehension processes are managed more strategically, leading to a more efficient reading process and more successful comprehension (). On the other hand, the multicomponent approach () examines the linguistic and metacognitive processes that take place during the comprehension of texts of various genres. It postulates the interaction of a series of components that allow the hierarchy of text information and the construction of a mental model of its meaning: processes related to content (basic text schema, facts and sequences, and lexical semantics), elaboration (syntactic structure, cohesion, inferences), and metacognition (identification of text genre, flexible reading strategies, and detection of inconsistencies).

Despite the importance of text comprehension for academic success (), international assessments describe a complex scenario for adolescents and university students in Latin America and Argentina. According to a meta-analysis of studies conducted in Latin America, text comprehension in most university students does not exceed the literal level (), while according to the latest PISA assessment, 54.5% of the Argentine adolescents studied have serious comprehension difficulties (). In this context, the PISA study found a growing massification of digital reading media, which are gradually replacing books as the preferred format (). The assessment not only found better comprehension of texts presented on paper but also noted that students who prefer reading in this format spend more time reading for recreation and have better reading skills ().

Various lines of research agree on the possible negative impact of digital reading on comprehension but also indicate considerable variability of this effect depending on contextual, individual, and text properties. Two meta-analyses observed a significant advantage for reading expository texts on paper (but not for narrative texts) over reading on screens (; ). These effects have been attributed to a less attentive and more superficial reading mode induced by screens (). On the other hand, it has been observed that these effects increase with the length of the text () and time pressure () or can be reduced by promoting deeper semantic processing through task instructions (such as summarizing or making keyword lists) (). It is worth noting that most of these studies have considered reading on PC screens, laptops, tablets, or e-books, while reading on smartphones has been relatively understudied. Recently, it was observed that reading on a smartphone generates a higher cognitive demand when comparing brain activity with that recorded during reading on paper (), and a study conducted in Argentina found poorer comprehension of expository texts when read on smartphones (compared to computers) ().

Considering the difficulties found in reading among students, and the increasing use of digital reading media, we aimed to study its possible negative impact on comprehension. Additionally, we took into account previously reported differences in text comprehension according to the area of knowledge chosen by university students (). Therefore, the objectives were: 1) to compare the comprehension of an expository text in three reading media: paper, computer screen, and smartphone, in freshmen university students, 2) to examine the effects of vocabulary and the students’ chosen field of study, and their possible relationship with the effects of the reading medium on reading comprehension, 3) to examine the effects of reading habits and screen use, preferred reading medium for study and recreation and their possible relationship with the effects of the reading medium on reading comprehension.

METHODS

Design

The present study had a transversal experimental design.

Participants

One-hundred and twenty-eight students (43.7% women) participated in the study. They were freshmen from the university careers of Engineering (52.3%) and Health Sciences (47.7%) from the University of Mendoza (Age = 18.6 years, SD = 2.61 years). We defined the presence of developmental, psychological, neurological, learning or reading disorders as exclusion criteria. The convenience sampling method was applied.

Instruments

  • Definitions Subtest of the Kaufman Brief Intelligence Test (K-BIT) (). To assess vocabulary, a computerized version of the K-BIT definitions test was applied. It consists of 37 items, in which the subject has to discover a word from which some letters have been removed, using a clue (e.g., “A _ EN _ _ DO”, clue: “a type of crime”, answer: “ATENTADO” – “terrorist attack” –). The test was administered through a Google form. Performance was operationalized as the number of correct answers.
  • Expository Text Comprehension Test (). A standard test previously applied in studies on the comprehension of texts presented on screen, conducted in the local population (; ), was used. Participants were presented with the expository text “Mathematics, Brain, and Dyscalculia” by Valeria Abusamra. The text has 1113 words and explains the relationship between child brain development and mathematical skills. It is written for a non-specialized audience. Using the INFLESZ scale (), the difficulty of the text was rated as “somewhat difficult”. Comprehension is assessed through 12 multiple-choice questions (including one correct answer and three semantically related alternatives), constructed to examine the most relevant components of the multicomponent model of reading comprehension (). The test showed adequate psychometric properties (internal consistency: α = .67).
  • Ad hoc Reading Habits Survey. Students completed a survey about their reading habits used in previous studies (e.g., ), where they were asked about the weekly frequency of activities involving screen exposure (television/streaming, video games, internet), reading for study, and recreational reading. They responded on a Likert scale (0 = Does not do it or almost never does it, 1 = does it a couple of days a week, 2 = daily, less than an hour per day, 3 = daily, 1 to 2 hours per day, 4 = daily, 2 to 3 hours per day, 5 = daily, 3 to 4 hours per day, 6 = daily, 4 to 5 hours per day, 7 = daily, more than 5 hours per day). Additionally, students indicated their preferred medium for recreational reading and study (paper, PC or laptop screen, smartphone).

Procedure

Before starting the study, students gave their informed consent to participate. The anonymous and voluntary nature of their participation was explained, as well as the possibility of suspending the activity at any time without negative consequences. The tasks were administered in the faculty classrooms. Participants were assigned to three groups according to the reading medium: 1) reading on PC, 2) reading on paper, 3) reading on smartphone. Reading on PC screens was done on LED monitors, while reading on smartphones was done on the students’ devices. The vocabulary test was conducted on a computer in all cases, as well as the reading survey (which was administered through a Google form).

This study complied with the ethical guidelines 5344/99 of the National Council for Scientific and Technical Research, as well as the 1975 Helsinki Declaration and its subsequent amendments, and was approved by a CONICET committee.

Statistical Analysis

The associations between the study variables were examined through Spearman correlations (considering that reading habits had an ordinal level of measurement). The effects of the reading medium, chosen field of study, and vocabulary were analyzed using a 2 × 2 factorial ANOVA, including age as a covariate. The Shapiro-Wilk test was used to check the normality assumption, and type I error was reduced by applying the Bonferroni adjustment for multiple comparisons. The effect size was reported using the partial eta-squared coefficient.

RESULTS

Descriptive statistics and associations between variables

Performance in text comprehension was relatively low among engineering students (M = 51.4%, SD = 17.9%) and very low among Health Sciences students (M = 36.2%, SD = 14.7%) (see the next section for a comparison). Their vocabulary scores, however, were similar (Engineering: M = 13.9, SD = 4.49; Health: M = 14, SD = 4.78) (T(130) = -0.115, p = .909). Regarding their reading habits and screen use, most members of both groups reported watching television and playing video games for less than an hour per day (Engineering: 83.71% and 73.77% respectively; Health: 75% and 82.14%, respectively), while internet use was more frequent (more than three hours per day, Engineering: 42.6%, Health: 58.9%). As for recreational and study reading, most do it for less than an hour per day (Engineering: 55.74% and 90.16%, respectively; Health: 44.64% and 85.71%, respectively). The most chosen medium for recreational reading was paper among Engineering freshmen (39.3%) and the smartphone among Health Sciences students (44.6%); while for study reading, they preferred the computer in Engineering (47.5%) and paper in Health Sciences (51.8%). This last difference was statistically significant ( χ 2 (2) = 7.54, p = .023). It is noteworthy that 21.4% of students indicated the smartphone as their preferred study medium (18% in Engineering, 25% in Health). The correlation matrix is described in table 1. The only significant predictor of text comprehension was vocabulary (rho = .198, p = .023).

Table 1Spearman correlation matrix 
Variable 1 2 3 4 5 6 7 8
1. Comprehension
2. age -0.194
3. Vocabulary 0.198* -0.147
4. TV -0.15 -0.005 -0.111
5. Videogames 0.07 -0.013 0.004 0.086
6. Internet -0.117 -0.212* 0.095 0.326*** 0.125
7. Sreading -0.096 0.074 -0.035 0.193* 0.15 0.52***
8. LReading -0.034 -0.048 0.098 -0.03 -0.08 0.011 0.21*

Note TV: weeky TV/streaming use. Videogames: weekly videogames use. Internet: weekly internet use. Sreading: study reading frequency. Rreading: weekly leisure reading frequency.

* p < .05

** p < .01

*** p < .001

Effects of Reading Medium and Chosen Field of Study on Text Comprehension

Text comprehension scores were analyzed based on the students’ reading medium and their chosen field of study using an ANCOVA, including the subjects’ vocabulary as a covariate. Main effects were found for the reading medium (F(2.123) = 3.13, p = .048, η p 2 = .026), the chosen field of study (F(1.123) = 40.14, p < .001, η p 2 = .239), and vocabulary (F(1.123) = 4.41, p = .038, η p 2 = .021), with no significant interactions observed. Engineering freshmen comprehended the text better than Health Sciences students, regardless of the reading medium. Post hoc comparisons indicated that comprehension of the text read on a smartphone was lower than that of the text read on a computer screen (p = .048) (see table 2).

Table 2Reading comprehension by Field of Study and Reading Medium 
Medium Engineering Health Sciences
N M (DE) N M (DE)
PC 19 57.9% (11.9%) 25 40.3% (15.3%)
Paper 24 52.4% (20.9%) 18 32.9% (15.3%)
Smartphone 24 45.1% (17.2%) 18 33.8% (12.6%)

Effects of Preferred Reading Medium on Text Comprehension

The previous ANCOVA was repeated, adding as factors: the preferred medium for study reading and the preferred medium for recreational reading, in separate models. No main effects or interactions were found for any of these variables (F < 1.395, p > .218). Two additional analyses were conducted, considering whether the medium in which they read in our study matched their preferred medium for studying or recreational reading. No main effects or interactions with these variables were observed either (F < 1.078, p > .373).

Effects of Vocabulary Level on Text Comprehension

To examine in more detail the effects of students’ vocabulary level and its possible interaction with the reading medium, a new variable was created to classify them according to their performance on the vocabulary K-BIT test. The sample was divided into two groups with vocabulary scores above the median (“high group”, n = 49) or below (“low group”, n = 58), while scores equal to the median (n = 20) were excluded from the analysis. The previous ANOVAs were repeated, but this time the vocabulary level was not included as a covariate but as an additional factor. Main effects of the reading medium (F(2.98) = 3.603, p = .031, η p 2 = .068) and the field of study (F(1,98) = 38.04, p < .001, η p 2 = .280) were again observed, but there was also a medium × field × vocabulary interaction (F(2.98) = 3.553, p = .032, η p 2 = .068). Post hoc comparisons indicated that comprehension was worse when reading on a smartphone compared to a PC screen (p = 0.004) and paper (p = .043) for engineering students with low vocabulary levels. Additionally, comprehension in this group was also lower than that of engineering students with high vocabulary levels who read on a smartphone (p = .002) (see figure 1).

Figure 1Reading comprehension by reading medium, field of study and vocabulary score Note. Estimated marginal means and their corresponding 95% confidence intervals are shown. Comprehension: Percentage of correct responses in the comprehension task. Vocabulary: Vocabulary score group.
Figure 1. Reading comprehension by reading medium, field of study and vocabulary score

DISCUSSION

Our study is the first to examine the comprehension of an expository text presented in three different media (PC, smartphone, and paper), comparing Argentine students entering different university majors. Overall, low comprehension performance was observed for all students and reading formats. The effects of vocabulary and reading medium were relatively small, while large differences were observed according to the chosen major. Comprehension was consistently better among engineering freshmen, better in subjects with higher vocabulary scores, and worse on smartphones compared to reading on a PC. Additionally, engineering students with lower vocabulary levels exhibited poorer comprehension when reading on smartphones compared to paper or PC. Contrary to our hypotheses, no effects of reading habits or preferred reading medium on comprehension were found. These results are discussed in detail in the following paragraphs.

Effects of vocabulary, reading habits and medium

The contribution of vocabulary to the comprehension of expository text is considered in the most widely disseminated theoretical model, the Simple View of Reading (), and its most recent version, the Active View of Reading (), which identifies it as a pivotal skill between the processes of decoding and accessing the meaning of written text. Additionally, it has been found that expository texts, in particular, present greater demands in terms of specialized lexicon and general world knowledge (), skills closely linked to the vocabulary test. In this line, we find convergent evidence of the importance of vocabulary for comprehension in other studies conducted in the local adolescent () and university () populations.

The effects of the reading medium should be considered within the framework of the accumulated evidence over the past decades. While two meta-analyses agree on indicating a relatively small advantage in the comprehension of expository texts (but not narrative texts) read on paper compared to digital media (; ), others found no significant differences at a general level (; ). However, the authors did observe better comprehension on paper for texts longer than a thousand words () or of a more technical nature (). These effects have been linked to less attentive and more superficial reading favored by screens, or to interference effects related to the demands of navigating digital texts (; ). These conclusions are supported by neuroimaging studies that found a higher metabolic cost at the prefrontal cortex level for reading on screens (), and indications of less deep semantic processing for digital reading, inferred from its effects on the N400 potential (). Additionally, an eye-tracking study indicated a more strategic rereading pattern focused on relevant content in subjects who read on paper (compared to tablets), and better performance in recalling a scientific text (). While the mentioned reviews mainly focused on reading on computer or laptop screens, or did not discriminate by device type, another recent meta-analysis that examined handheld devices (tablet, e-book) () found similar effects, but of lesser magnitude than on larger screens. The authors interpreted that this format might be offering a reading experience more similar to that of a book, thus reducing the performance gap. It is worth noting that a recent study, also conducted in Argentina, found no differences in the comprehension of the same expository text when comparing its reading on screen and on paper (). It is also important to note that the differences between digital and paper reading can be reduced or exacerbated by contextual factors, such as time pressure () or the goals and instructions of the task (; ) and the level of supervision of the activity (). On the other hand, none of these works considered reading on smartphones.

Various studies suggest that extensive use of smartphones (characterized by quick interactions, for entertainment purposes, and oriented towards immediate gratification) is associated with a decrease in concentration, reflective thinking, and cognitive effort in daily life. This phenomenon would also affect reading on these devices. A large-scale national study found significantly worse performance in the comprehension of an expository text when comparing reading on smartphones and computer/laptop screens (). Another neuroimaging study, which compared reading on smartphones and on paper, found evidence of greater cognitive load at the level of prefrontal activity and respiratory frequency in subjects who read on smartphones, as well as greater difficulty in comprehension (). Unexpectedly, we could not observe this difference with respect to the group of students who read on paper in the general analysis, but this effect did manifest when considering the subjects’ verbal abilities. It is worth noting that no effects were found for the preferred reading medium for study or recreation, nor for the match between this preference and the study medium. On the contrary, a previous study that analyzed reading the same text on a computer found better performance for students who usually study on those screens compared to those who preferred paper ().

The effect of the reading medium was moderated by the subjects’ verbal ability and also by the chosen major. Among engineering freshmen, subjects with lower vocabulary performance exhibited poorer comprehension when reading on smartphones (compared to paper and PC) and compared to those with better vocabulary reading on the same device. This result suggests that the potentially disruptive effects of the smartphone are amplified for those subjects whose more limited vocabulary constitutes an additional difficulty when approaching the text (as it does not facilitate lexical-semantic access). Subjects with better vocabulary, on the other hand, could compensate for the additional difficulty of the device. A previous study conducted on university students also found an interaction between verbal abilities and reading medium, although in this case, no differences were seen in low-scoring subjects; rather, it was those with higher vocabulary who benefited the most from the digital format (). Crucially, the medium in this case was the ebook, whose size and mode of use make it more similar to a book and which lacks the potential sources of distraction inherent to the smartphone (). Interestingly, Health Science students did not exhibit any of these effects. Given their systematically lower comprehension performance (see the following section), it could be concluded that a floor effect obscured the possible differences related to smartphone use.

Finally, we did not find effects of reading habits on comprehension, as has occurred in previous studies (; ); which should probably be interpreted as a limitation of self-report measures to adequately describe the reading experiences of the subjects. In contrast, when more objective measures of text exposure are applied, such as the Author Recognition Test, robust and consistent effects are observed throughout development (for a meta-analysis, see ).

Differences between freshmen from different Majors

The effect of the chosen university major on text comprehension was surprising, especially because it far exceeded the effects of vocabulary and reading medium in magnitude. The closest precedent we could find in the literature was the work of , who compared the comprehension of advanced Mexican university students from different majors. While the authors observed relatively low performance in general terms, they also found a small advantage in the critical level of comprehension for Health Science students (and also for Engineering students, although to a lesser extent) compared to other majors. This effect was attributed to greater exposure to scientific and social literature in their curricula. In contrast, our study differs not only in the effect (since the advantage was observed for those who chose Engineering) but also in the sample, as it was conducted with incoming students who could not yet have been influenced by the literature of their majors. The explanation for the effect should therefore be sought in their prior educational trajectory, which was not considered in this work. In relation to this, a recent study conducted in five Latin American countries found that the socioeconomic level of schools was one of the main predictors of secondary students’ performance in comprehension tests similar to the PISA assessment (). In this study, the socioeconomic level of the school was defined based on the characteristics of the student community, the material and pedagogical resources of the school, its infrastructure, and sanitary conditions. This variable was a more robust predictor than the socioeconomic level measured at the household level or the management of the school (public or private), and therefore constitutes a possible candidate to explain the differences observed among the freshmen to our majors. Another interesting predictor of comprehension (with an effect independent of socioeconomic level) was the fluid intelligence of the students, measured with the Raven’s Progressive Matrices test. Similarly, a study conducted on 10-year-old children also found that fluid intelligence is a significant predictor of reading comprehension (). We can hypothesize then that the effect of the chosen major on text comprehension could be explained at least partially by a better average performance in fluid intelligence among the group of engineering freshmen. This hypothesis is supported by previous results from a local study, which indicate superior performance in the Raven test, as well as in calculation and analogical reasoning tests, for students of natural sciences majors (Exact and Engineering) compared to social sciences (Psychology and Sociology); which can be detected as early as the first year and increases throughout the majors (). On the other hand, the effect of the major cannot be attributed to differences in verbal abilities, because: 1) we controlled for the effect of vocabulary, and yet the effect of the major remained significant, and 2) vocabulary scores were not significantly different between the groups of Engineering and Health Science freshmen.

Study limitations

As limitations of the present study, we must first point out the relatively small sample size, which affects the generalizability of our results. Since it has been noted that the level of supervision of the activity can obscure potential differences between reading media (), future studies could include a control condition in which students perform the activity in private (e.g., at home), thus increasing exposure to potential sources of interference such as internet browsing or social media use (when reading is done on screens). Although we controlled the contribution of verbal abilities to comprehension, general cognitive domain variables, such as fluid intelligence or executive functions, were not considered. Including these measures could explain the unexpected advantage observed among Engineering freshmen. On the other hand, the use of self-report measures may have prevented us from adequately describing the actual reading habits of the students, so future studies would benefit from applying more precise and less subjective measures, such as the Author Recognition Test or the use of reading diaries. Finally, although individual preferences regarding the reading medium were considered, other potentially relevant variables, such as attitude or motivation towards reading, as well as the interest aroused by the text and emotional responses during the task, were not included.

CONCLUSION

In line with PISA assessments, low performances in the comprehension of an expository text among freshmen from the University of Mendoza, which was considerably lower in Health Science students. Although vocabulary was a significant predictor of comprehension, this variable did not explain the advantage observed in Engineering freshmen, which could be attributed to their educational trajectory or previous differences in cognitive abilities, such as fluid intelligence. Regarding the reading medium, poorer comprehension was observed when comparing smartphones with PCs (in the general sample) and with paper (in engineering students with low vocabulary). These differences may be linked to higher cognitive demands and a more superficial reading process induced by smartphones. The relevance of our findings becomes evident when considering the advancement of digital reading in the academic field and the increase in electronic reading driven by the COVID-19 pandemic. In this sense, we recommend discouraging the use of smartphones for studying, particularly among university students. On the other hand, future studies should delve deeper into the analysis of cognitive and socio-educational factors associated with individual differences in reading comprehension among freshmen from different university majors.

Future research should explore several promising avenues such as measures of fluid intelligence, executive functions, and other general cognitive abilities to better understand their role in reading comprehension and interaction with reading media. Additionally, contextual and motivational variables could be important for enriching the understanding of the reading process. On the other hand, investigating factors involving culture, environment and educational trajectories would be fundamental as well. Finally, all this could present promising results for increasing comprehension about reading skills and processes if longitudinal studies are done among diverse groups of students.

DATA AVAILABILITY

The datasets generated and/or analyzed during the current study are available from the corresponding author upon reasonable request.

FUNDING

This work was supported by a grant from the University of Mendoza under the PIUMO project: “Text comprehension on paper and screens in university students: relationship with linguistic, cognitive variables, and reading habits.”

COMPLIANCE WITH ETHICAL STANDARDS

Conflict of Interest Statement: All authors declare that they have no conflict of interest.

Ethical Approval: All procedures performed in studies involving human participants were in accordance with the ethical standards of the CONICET research committee (REF.: C03-2024) and with the 1964 Helsinki declaration and its later amendments or comparable ethical standards.

Informed Consent: Informed consent was obtained from the parents of all individual participants included in the study.

AUTHORS’ CONTRIBUTIONS

Ángel J. Tabullo: Formal analysis; Conceptualisation; Data curation; Writing – original draft; Writing – review and editing; Research; Methodology; Visualisation.

Pablo-Yoshin Teruya: Project management; Conceptualisation; Writing – original draft; Writing – review and editing; Research; Methodology; Resources; Supervision; Fund acquisition.

Johanna Casado: Project management; Conceptualisation; Writing – original draft; Writing – review and editing; Research; Methodology; Resources.

Enrique-Salvador Puliafito-Hamann: Conceptualisation; Writing – original draft; Writing – review and editing; Research; Methodology.

Natasha Bertaina-Lucero: Conceptualisation; Writing – original draft; Writing – review and editing; Research; Methodology.

NOTE

[5] Author Ángel J. Tabullo is affiliated with Centro de Investigaciones en Humanidades y Ciencias Económicas" (CIHUCE), Pontificia Universidad Católica Argentina, Facultad de Humanidades y Ciencias Económicas (Sede Mendoza); Instituto de Ciencias Humanas, Sociales y Ambientales (INCIHUSA), CCT-Mendoza and Consejo Nacional de Investigaciones Científicas y Técnicas (CONICET).

REFERENCES

1 

Abusamra, V., Cartoceti, R., Ferreres, A., De-Beni, R., & Cornoldi, C. (2009). La comprensión de textos desde un enfoque multicomponencial. El Test “Leer para comprender”. Ciencias Psicológicas, 3(2), 193-200. https://doi.org/10.22235/cp.v3i2.151

2 

Abusamra, V., Difalcis, M., Martínez, G., Low, D. M., & Formoso, J. (2020). Cognitive skills involved in reading Comprehension of adolescents with low educational opportunities. Languages, 5(3), 34. https://doi.org/10.3390/languages5030034

3 

Acheson, D. J., Wells, J. B., & MacDonald, M. C. (2008). New and updated tests of print exposure and reading abilities in college students. Behavior Research Methods, 40(1), 278-289. https://doi.org/10.3758/BRM.40.1.278

4 

Ackerman, R., & Lauterman, T. (2012). Taking reading comprehension exams on screen or on paper? A metacognitive analysis of learning texts under time pressure. Computers in Human Behavior, 28(5), 1816-1828. https://doi.org/10.1016/j.chb.2012.04.023

5 

Amavizca-Montaño, S., & Álvarez-Flores, E. P. (2022). Comprensión lectora en universitarios: Comparativo por áreas de conocimiento. Revista Electrónica de Investigación Educativa, 24, 1-13. https://doi.org/10.24320/redie.2022.24.e20.3986

6 

Barrio-Cantalejo, I. M., Simón-Lorda, P., Melguizo, M., Escalona, I., Marijuán, M. I., & Hernando, P. (2008). Validación de la Escala INFLESZ para evaluar la legibilidad de los textos dirigidos a pacientes. Anales del Sistema Sanitario de Navarra, 31(2), 135-152. https://recyt.fecyt.es/index.php/ASSN/article/view/1953/1390

7 

Clinton-Lisell, V. (2019). Reading from paper compared to screens: A systematic review and meta‐analysis. Journal of Research in Reading, 42(2), 288-325. https://doi.org/10.1111/1467-9817.12269

8 

Clinton-Lisell, V., Taylor, T., Carlson, S. E., Davison, M. L., & Seipel, B. (2022). Performance on reading comprehension assessments and college achievement: A meta-analysis. Journal of College Reading and Learning, 52(3), 191-211. https://doi.org/10.1080/10790195.2022.2062626

9 

Cotton, A., Benedetti, P., & Abusamra, V. (2023). Reading comprehension on smartphones, A comparison with computers. Cuadernos de Lingüística Hispánica, 41, 1-18. https://doi.org/10.19053/0121053X.n41.2023.16032

10 

De-la-Peña, C., & Luque-Rojas, M. J. (2021). Levels of reading comprehension in higher education: Systematic review and meta-analysis. Frontiers in Psychology, 12. https://doi.org/10.3389/fpsyg.2021.712901

11 

Delgado, P., Vargas, C., Ackerman, R., & Salmerón, L. (2018). Don’t throw away your printed books: A meta-analysis on the effects of reading media on reading comprehension. Educational Research Review, 25, 23-38. https://doi.org/10.1016/j.edurev.2018.09.003

12 

Duke, N. K., & Cartwright, K. B. (2021). The science of reading progresses: Communicating advances beyond the simple view of reading. Reading Research Quarterly, 56(S1). https://doi.org/10.1002/rrq.411

13 

Flores-Mendoza, C., Ardila, R., Gallegos, M., & Reategui-Colareta, N. (2021). General intelligence and socioeconomic status as strong predictors of student performance in Latin American schools: Evidence From PISA Items. Frontiers in Education, 6, 632289. https://doi.org/10.3389/feduc.2021.632289

14 

Fontaine, G., Zagury-Orly, I., Maheu-Cadotte, M. A., Lapierre, A., Thibodeau-Jarry, N., Denus, S. D., Lordkipanidzé, M., Dupont, P., & Lavoie, P. (2021). A meta-analysis of the effect of paper versus digital reading on Reading Comprehension in Health Professional Education. American Journal of Pharmaceutical Education, 85(10), 8525. https://doi.org/10.5688/ajpe8525

15 

Froud, K., Levinson, L., Maddox, C., & Smith, P. (2024). Middle-schoolers’ reading and lexical-semantic processing depth in response to digital and print media: An N400 study. PLOS ONE, 19(5), e0290807. https://doi.org/10.1371/journal.pone.0290807

16 

González, G., Castro, A., & González, F. (2008). Perfiles aptitudinales, estilos de pensamiento y rendimiento académico. Anuario de Investigaciones, 15, 33-41.

17 

Honma, M., Masaoka, Y., Iizuka, N., Wada, S., Kamimura, S., Yoshikawa, A., Moriya, R., Kamijo, S., & Izumizaki, M. (2022). Reading on a smartphone affects sigh generation, brain activity, and comprehension. Scientific Reports, 12(1), 1589. https://doi.org/10.1038/s41598-022-05605-0

18 

Hoover, W. A., & Tunmer, W. E. (2018). The simple view of reading: Three assessments of its adequacy. Remedial and Special Education, 39(5), 304-312. https://doi.org/10.1177/0741932518773154

19 

Jian, Y. C. (2021). The immediate and delayed effects of text–diagram reading instruction on reading comprehension and learning processes: Evidence from eye movements. Reading and Writing, 34(3), 727-752. https://doi.org/10.1007/s11145-020-10089-3

20 

Kaufman, A. S., & Kaufman, N. L. (2000). K-BIT. Test Breve de Inteligencia de Kaufman (K-BIT) (2ª edición). Madrid: TEA Ediciones.

21 

Lauterman, T., & Ackerman, R. (2014). Overcoming screen inferiority in learning and calibration. Computers in Human Behavior, 35, 455-463. https://doi.org/10.1016/j.chb.2014.02.046

22 

Lee, S. A., Hong, J. H., Kim, N. Y., Min, H. M., Yang, H. M., Lee, S. H., Choi, S. J., & Park, J. H. (2024). Unveiling neurocognitive disparities in encoding and retrieval between paper and digital tablet-based learning. Brain Sciences, 14(1), 76. https://doi.org/10.3390/brainsci14010076

23 

Li, Y., & Yan, L. (2024). Which reading comprehension is better? A meta-analysis of the effect of paper versus digital reading in recent 20 years. Telematics and Informatics Reports, 14, 100142. https://doi.org/10.1016/j.teler.2024.100142

24 

Mar, R. A., Li, J., Nguyen, A. T. P., & Ta, C. P. (2021). Memory and comprehension of narrative versus expository texts: A meta-analysis. Psychonomic Bulletin y Review, 28(3), 732-749. https://doi.org/10.3758/s13423-020-01853-1

25 

Mol, S. E., & Bus, A. G. (2011). To read or not to read: A meta-analysis of print exposure from infancy to early adulthood. Psychological Bulletin, 137(2), 267-296. https://doi.org/10.1037/a0021890

26 

OECD (2021). 21st-Century Readers: Developing literacy skills in a digital world. PISA, OECD Publishing. https://doi.org/10.1787/a83d84cb-en

27 

OECD (2023), PISA 2022 Results (Volume I): The state of learning and equity in education, PISA, OECD Publishing. https://doi.org/10.1787/53f23881-en

28 

Piovano, S., Irrazabal, N., & Burin, D. I. (2018). Comprensión de textos expositivos académicos en e-book Reader y en papel: Influencia del conocimiento previo de dominio y la aptitud verbal. Ciencias Psicológicas, 12(2), 177-185. https://doi.org/10.22235/cp.v12i2.1680

29 

Salmerón, L., Altamura, L., Delgado, P., Karagiorgi, A., & Vargas, C. (2024). Reading comprehension on handheld devices versus on paper: A narrative review and meta-analysis of the medium effect and its moderators. Journal of Educational Psychology, 116(2), 153-172. https://doi.org/10.1037/edu0000830

30 

Sidi, Y., Shpigelman, M., Zalmanov, H., & Ackerman, R. (2017). Understanding metacognitive inferiority on screen by exposing cues for depth of processing. Learning and Instruction, 51, 61-73. https://doi.org/10.1016/j.learninstruc.2017.01.002

31 

Singer, L. M., & Alexander, P. A. (2017). Reading across mediums: Effects of reading digital and print texts on comprehension and calibration. The Journal of Experimental Education, 85(1), 155-172. https://doi.org/10.1080/00220973.2016.1143794

32 

Tabullo, A. J., Pithod, M., & Moreno, C. B. (2020). Associations between reading, comprehension, print exposure, executive functions, and academic achievement in Argentinean university students. Revista Neuropsicología, Neuropsiquiatría y Neurociencias, 20(2), 15-48. http://revistaneurociencias.com/index.php/RNNN/article/view/117

33 

Tabullo, Á. J., & Pulifiato-Hamann, E. S. (2024). Lectura digital en estudiantes universitarios: contribuciones del funcionamiento ejecutivo y hábitos lectores. Ocnos, 23(2). https://doi.org/10.18239/ocnos_2024.23.2.424

34 

Vernucci, S., Aydmune, Y., Andrés, M. L., Burin, D. I., & Canet-Juric, L. (2021). Working memory and fluid intelligence predict reading comprehension in school-age children: A one-year longitudinal study. Applied Cognitive Psychology, 35(4), 1115–1124. https://doi.org/10.1002/acp.3841