CC BY 4.0 · Eur J Dent 2022; 16(02): 437-442
DOI: 10.1055/s-0041-1735932
Original Article

The Efficiency of a Learning Software Compared to e-Books in Dental Education

Philipp Luhrenberg#
1   Department of Oral and Maxillofacial Surgery, University Medical Center of the Johannes Gutenberg University, Mainz, Germany
,
Roman Kia Rahimi-Nedjat#
1   Department of Oral and Maxillofacial Surgery, University Medical Center of the Johannes Gutenberg University, Mainz, Germany
,
Kawe Sagheb
2   Department of Prosthodontics, University Medical Center of the Johannes Gutenberg University, Mainz, Germany
,
Keyvan Sagheb
1   Department of Oral and Maxillofacial Surgery, University Medical Center of the Johannes Gutenberg University, Mainz, Germany
,
Bilal Al-Nawas
1   Department of Oral and Maxillofacial Surgery, University Medical Center of the Johannes Gutenberg University, Mainz, Germany
› Author Affiliations
Funding None.
 

Abstract

Objectives Due to time-consuming curricular and extracurricular activities, students in dentistry and medicine can profit from efficient learning strategies. One strategy could be the preparation with individually designed educational software that embed different multimedia sources. The aim of this study was to determine the efficiency of such a program compared with an e-book similar to a traditional textbook.

Materials and Methods Dentistry students of the Johannes Gutenberg-University of Mainz passed an entrance multiple-choice test on the topic of odontogenic tumors and were then randomized into two groups. Afterward, both groups had 14 days to study on the topic of odontogenic tumors either with a learning software or an e-book. A final exam was then taken and the two groups were compared.

Statistical Analysis A least significant difference post hoc analysis comparing the group average values was performed. The level of significance was p <0.05.

Results Seventy-one students took part in the study. While students from the first and second clinical semester showed significantly better results and improvements with the e-book, an opposite effect was observed in students from the third and fifth clinical semester with significantly better results and improvements with the software.

Conclusion Depending on the clinical experience and knowledge, a multimedia educational software can help students in dentistry to enhance efficiency in the preparation for exams.


#

Introduction

During the COVID-19 pandemic, dental curricula had to change their teaching method from face-to-face to online learning in a surreal time, the so-called “emergency remote teaching”[1] [2]. Compared with traditional lecture, this “new” medium is not dependent on place, time, or topic which makes it much more flexible and scholar oriented,[3] [4] [5] and nowadays due to necessity to avoid dispensable contacts, e-learning is discussed as a healthy and safe alternative.[6] [7] [8]

However, even though e-learning has been present for almost two decades and offers many possibilities, the integration in dental or medical education is dragging behind.[9] Taking into consideration, the short time to develop new modules, e-learning modules should be easy to create for trainers as well as efficient for trainees. Woelber et al demonstrated impressively that an easy-to-use software can overall lead to better test results as complex e-learning environments, which are more expensive and time-consuming during development.[10] In accordance with cognitive load theory, the question is how to only focus on the learners need and his or her preferred learning style. In 1987, Fleming et al developed the visual, auditory, reading/writing, and kinesthetic (VARK) model, a simplified learning theory which tries to declare how learner perceive and receive information from its learning environment: “visual,” “aural,” “read and write” and “kinesthetic” and their combination in a learners individuum.[11] Based on this understanding, every person has his or her own unique learning style (unimodal or multimodal), which in turn is one of the main challenges for a designed tool to interact and to deal with this diversity and to improve learning results.[12] Unfortunately, the distribution of VARK learning styles varies widely and depends on many variables such as gender, age, educational level, marital status, or sociocultural status varying in terms of number of modality (unimodal vs. multimodal) as well as the distribution of preferred learning styles themselves.[12] [13] [14] [15] Subsequently, new learning tools should be investigated on students' academic performance periodically before implementing a new learning design in dental curriculum to guarantee its efficiency and motivation for dental students.

Hence, the aim of our study was to investigate whether an easy-and-quick-to-create software used for exam preparation could be more effective compared with a traditional e-book in general and to observe students in different academic years how to deal with different learning tools.


#

Materials and Methods

Different methods were evaluated to create a software-like solution, which could be viewed on all devices (mobile or desktop and independent from the operating system) and contain embedded media. An intuitive User-Interface with clear arrangement and compact bundled information to make the word-count as low as possible were of paramount importance. For these reasons, we chose to create a multimedia PDF as this format offered all of our requirements. Furthermore, the topic odontogenic tumors was chosen as it is relevant for dental students and challenging to learn at the same time because of its infrequency and complexity.[16] [17]

A pretest and posttest procedure with one control group was performed ([Fig. 1]). Students from four different semesters of the dentistry school of the Johannes Gutenberg-University of Mainz were included in the study (the first, second, third, and fifth semester of the clinical part of dental curriculum), and informed that participation was voluntarily and would not affect their course credits in any way.

Zoom Image
Fig. 1 Study design.

After the pretest which consisted of 15 multiple choice questions about odontogenic tumors, all students were randomized into two groups. One group had access to download the software (e-learning tool [EL]) and the control group was able to download an e-book chapter about odontogenic tumors from the most frequently used textbook which was provided by the university library. It was important to offer the control group an e-book (EB) to eliminate the factors “time” and “place” which would be affected if the students had to carry around a traditional bound book. Both groups were given 14 days to spent time with the learning tool on their own, respectively and to prepare for the posttest which took place at the exact weekday and daytime (after 2 weeks). The posttest also consisted of 15 questions. Immediately after the posttest, a questionnaire was used to evaluate the students' learning styles, habits, and their opinion on the presented software.

In both tests, every correct answer was rated with one point so that the maximum number was 15 (only one answer was correct). False answers were not subtracted. Besides absolute numbers, we calculated the differences between the reached points from the posttest minus the reached points from the pretest to evaluate the absolute individual improvement. On one hand the results were calculated for all students according to the two learning groups. But on the other hand as the participants were from four different semesters reaching different “academic level,” the first two semesters were considered as those with less prior knowledge and the students from the last two semesters as those with better prior knowledge. These two groups were compared as well. Results were correlated by using the t-test or the Mann-Whitney U-test. A global significance level was chosen to be 0.05.


#

Results

Seventy-one students took part in our study with a mean age of 25.1 years (±4.49 years; 35.2% males, 64.8% females) and completed pre- and posttest; initially, 91 participants passed the pretest (response rate 78.0%; for group assignment; [Table 1]). None of the students was able to reach the maximum number in each test (test 1: 1–12 and test 2: 3–14).

Table 1

Randomized group assignment

Academic level

group

EL

EB

Σ

1 + 2 clinical semester

23

17

40

3 + 5 clinical semester

15

16

31

Σ

38

33

71

Abbreviations: EB, e-book; EL, e-learning tool.


For all groups, the difference of the test results from the pre- to the posttest were moderately positive without a significant difference ([Fig. 2]; [Table 2]). Moreover, the results were similar for the software group as well as for the e-book-group ([Fig. 2]; [Table 2]). In tendency, test results were better for students who prepared with the software in the first and second clinical semester versus the participants from the third and fifth clinical semester. In fact, those tendencies for students learning with the software seem to be contrary to those learning with an e-book. To continue these inverse results amongst their academic level, students from the first and second clinical semester spent more time to prepare with the e-book in contrast to the remaining participants from the third and fifth clinical semester, considering the 15.5% of the entire cohort who did not answer this question ([Fig. 3]; [Table 3]). Apart from their group assignment, students from the first and second clinical semester took more time (1.03 ± 1.98 hours) than their fellow students from the third and fifth clinical semester (0.70 ± 0.68 hours; p = 0.79).

Zoom Image
Fig. 2 Boxplots showing the test difference between post- and pretest.
Zoom Image
Fig. 3 Boxplots showing the distribution of the learning time.
Table 2

Test results as the difference between the points from the post- to the pretest

Academic level

group

n

Mean test points test 1 (points) (±SD)

Mean test points test 2 (points) (±SD)

p-Value[a]

Mean test difference (points) (±SD)

p-Value[b]

All together

71

7.46 (±2.40)

7.90 (±2.46)

0.24

0.44 (±3.11)

EL

38

7.13 (±2.17)

7.66 (±2.71)

0.303

−0.53 (±3.11)

0.968

EB

33

7.85 (±2.62)

8.18 (±2.13)

0.547

−0.33 (±3.15)

1 + 2 clinical semester

EL

23

6.96 (±2.06)

6.65 (±2.15)

0.009

−0.30 (±2.03)

0.015

EB

17

6.24 (±2.39)

8.06 (±2.61)

0.518

1.82 (±3.23)

3 + 5 clinical semester

EL

15

7.40 (±2.38)

9.20 (±2.83)

0.517

1.80 (±4.02)

0.013

EB

16

9.56 (±1.59)

8.31 (±1.54)

0.985

−1.25 (±2.21)

Abbreviations: EB, e-book; EL, e-learning tool; SD, standard deviation.


a p-Value for the difference between both tests.


b p-Value for the difference between both groups.


Table 3

Learning time (hours; students self-evaluation)

Academic level

group

n

Mean learning time (h) (±SD)

p-Value

1 + 2 clinical semester

EL

21

0.95 (±2.00)

0.378

EB

17

1.29 (±1.99)

3 + 5 clinical semester

EL

12

0.69 (±0.59)

0.974

EB

10

0.73 (±0.80)

All together

60

0.96 (±1.63)

Abbreviations: EB, e-book; EL, e-learning tool; SD, standard deviation.


The questionnaires showed that over 70% of the participants used lectures or traditional utensils such as scripts and textbooks to prepare for an exam. Modern tools such as internet research (65.3%) or educational videos (22.5%) were used far less and mostly described as additional support. Their own home was the preferred learning environment for most students (78.9%), and only one quarter of the students stated that they like to learn in a group (26.8%). However, most students prepare their own learning material (93%), as these offer them adequate overview and preciseness. Apart from 2 weeks, students spent their time to prepare themselves immediately before the posttest, predominantly (67.7%). Both desktop computers and mobile devices were used equally often to perform internet research ([Fig. 4]).

Zoom Image
Fig. 4 Distribution of media devices amongst dental students.

Self-evaluation according to the VARK model by Fleming et al showed that most participants had more than one learning style (71.8%, n = 71). Interestingly, those who prepared with the e-book most frequently chose “read and write” as their preferred style while students from the software group described themselves as multimodal learners. Overall, the students who had access to the software said that they would wish to use the software more frequently and for further topics.


#

Discussion

Aim of our prospective, randomized clinical study was to evaluate the effect of a software on the learning efficiency in dental students from different semesters. The sample size in this study is comparable to similar studies or even higher.[18] [19] [20]

In absolute numbers, students overall reached higher test points compared with the first test (positive results). Nevertheless, some students had lower test points in the posttest. The reason for that could be multifactorial. First, the learning topic for our trial were the odontogenic tumors who occur much less frequently than odontogenic cysts.[21] In accordance with cognitive load theory, the topic of the odontogenic tumors itself remains complex and takes a large amount from intrinsic cognitive load and is an unchangeable, but limiting factor for knowledge acquisition.[22] Second, it is possible that the questions in the second test were of higher difficulty (although the degree of the difficulty was assessed by two independent docents prior the study). Using a four-answer multiple choice test with one correct answer, there is a statistical probability approximately 25% to choose the right answer without prior knowledge.[23] Despite the likelihood for correct answering pre- and posttest without background knowledge, these data should be discussed comparing the groups among each other.[24]

Interestingly, students with advanced knowledge show to some extent that they were able to improve significantly better by using the software than the e-book-chapter, while students with less prior knowledge performed significantly better by using the e-book. These findings are in accordance to most studies on computer-based learning as most study groups showed positive effects from the use of modern learning tools.[25] The influence of the individual knowledge is crucial to understand the benefit of these tools. Recent studies showed a significant difference in the results of participants from different educational levels. For example, Browne et al observed this effect between young dentists and well experienced post docs in a continuous professional development in health service[26] and Jager et al between medical students from different semesters when performing cases with virtual patients and their various diseases such as hepatitis or pneumothorax.[27] However, our study is the first to describe this finding for students from dentistry school.

Inverse effects like these could be explained with the adaption of learning styles, which can adapt due to educational time as the learning environment and lead to different student satisfaction.[28] [29] Additionally, various learning tools and environments differently engage students satisfaction and influence individuals motivation to be willing to invest more learning time dealing with the offered learning content.[30] This explanation might be underlined by the outliners in [Fig. 3]. Less time for preparation with the e-learning software could be due to the fact that one of our main demands for the software was to be precise in content with a low word count. While a running text from a book usually does not reveal all the information immediately, this is a true benefit of the software. Additionally, considering the fact that the reading speed on a screen is 25% less compared with a normal textbook puts the effectiveness of the software in terms of time saving in the right perspective.[23]

Additionally, the learning program was commonly used on mobile devices as in general the use of mobile technologies seems to be a fundamental requirement to enhance and exploit all advantages of e-learning.[31] Although the participants specified that they had a positive effect from the use of the software most of the students indicated that visiting lectures would be the most preferred way to prepare for exams. However, with a lack of different opportunities lectures frankly still have to be the predominant didactic educational path[32] [33] which is why e-learning unfortunately still plays a minor or subsidiary role in education[34] and students remain to be used to make paper-based notes of important information. This eventually explains the high portion of “read and write” as the preferred learning style in our questionnaire.

The fact that humans are used to adapt their learning style to their habits and offered opportunities can also be seen by the contrary answers from students, who had access to the software as they indicated to have different preferred learning styles more frequently.[33]

Besides the above mentioned considerations, it is recommendable to further investigate learning environments. The limitation of our study are the small subgroups of different academic levels, lack of control to check the students information about their learning time (although some students frankly commented their low learning time), which could be eliminated—for example—to base on the data rate from the online platform the content is uploaded.[31] [35] The strength of this study is the moment to place the study within the semester dissociated from exam phase and relevance to pass a test to guarantee the possibility to participate in a free and informal atmosphere.

This indeed shows that e-learning necessarily has to handle different learning styles and levels to be able to function as a unique tool for students from different semesters.

In conclusion, it can be said that the strength of e-learning tools is their versatility. With the inclusion of different media and contents, it is possible to generate a tool that can support students from many semesters and different learning styles.

Expressed with caution, it can be said, that learning with an e-book or a modified learning tool can lead to better test results and its use is a profitable medium. Before implementation of a new learning tool, its efficiency has to be proved to ensure individual learner's satisfaction and his or her learning outcome.


#
#

Conflict of Interest

None declared.

Note

The ethics committee Rheinland-Pfalz, Germany approved this study (2018-13345-epidemiology).


# These authors contributed equally to this study.


  • References

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  • 2 Charles B, Hodges SM, Barbara B. Lockee, Torrey Trust, and M. Aaron Bond. The Difference Between Emergency Remote Teaching and Online Learning; 2020
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  • 4 Jham BC, Duraes GV, Strassler HE, Sensi LG. Joining the podcast revolution. J Dent Educ 2008; 72 (03) 278-281
  • 5 Boulos MN, Maramba I, Wheeler S. Wikis, blogs and podcasts: a new generation of Web-based tools for virtual collaborative clinical practice and education. BMC Med Educ 2006; 6: 41
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  • 14 AlQahtani N, AlMoammar K, Taher S, AlBarakati S, AlKofide E. Learning preferences among dental students using the VARK questionnaire: a comparison between different academic levels and gender. J Pak Med Assoc 2018; 68 (01) 59-64
  • 15 Aldosari MA, Aljabaa AH, Al-Sehaibany FS, Albarakati SF. Learning style preferences of dental students at a single institution in Riyadh, Saudi Arabia, evaluated using the VARK questionnaire. Adv Med Educ Pract 2018; 9: 179-186
  • 16 Mukherjee D, Das C, Chatterjee P. Odontogenic tumours of jaw: a prospective study on clinico-pathological profile and their management. Indian J Otolaryngol Head Neck Surg 2017; 69 (02) 181-186
  • 17 Jing W, Xuan M, Lin Y. et al. Odontogenic tumours: a retrospective study of 1642 cases in a Chinese population. Int J Oral Maxillofac Surg 2007; 36 (01) 20-25
  • 18 Kolcu MİB, Öztürkçü ÖSK, Kaki GD. Evaluation of a distance education course using the 4C-ID model for continuing endodontics education. J Dent Educ 2020; 84 (01) 62-71
  • 19 Moazami F, Bahrampour E, Azar MR, Jahedi F, Moattari M. Comparing two methods of education (virtual versus traditional) on learning of Iranian dental students: a post-test only design study. BMC Med Educ 2014; 14: 45
  • 20 Soltanimehr E, Bahrampour E, Imani MM, Rahimi F, Almasi B, Moattari M. Effect of virtual versus traditional education on theoretical knowledge and reporting skills of dental students in radiographic interpretation of bony lesions of the jaw. BMC Med Educ 2019; 19 (01) 233
  • 21 Johnson NR, Gannon OM, Savage NW, Batstone MD. Frequency of odontogenic cysts and tumors: a systematic review. J Investig Clin Dent 2014; 5 (01) 9-14
  • 22 Lau KH. Computer-based teaching module design: principles derived from learning theories. Med Educ 2014; 48 (03) 247-254
  • 23 Reynolds PA, Harper J, Mason R, Cox MJ, Eaton K. An intricate web - designing and authoring a web-based course. Br Dent J 2008; 204 (09) 519-524
  • 24 Knapp TR. Why is the one-group pretest-posttest design still used?. Clin Nurs Res 2016; 25 (05) 467-472
  • 25 Taveira-Gomes T, Ferreira P, Taveira-Gomes I, Severo M, Ferreira MA. What are we looking for in computer-based learning interventions in medical education? A systematic review. J Med Internet Res 2016; 18 (08) e204
  • 26 Browne L, Mehra S, Rattan R, Thomas G. Comparing lecture and e-learning as pedagogies for new and experienced professionals in dentistry. Br Dent J 2004; 197 (02) 95-97
  • 27 Jäger F, Riemer M, Abendroth M, Sehner S, Harendza S. Virtual patients: the influence of case design and teamwork on students' perception and knowledge - a pilot study. BMC Med Educ 2014; 14: 137
  • 28 Gurpinar E, Bati H, Tetik C. Learning styles of medical students change in relation to time. Adv Physiol Educ 2011; 35 (03) 307-311
  • 29 Gurpinar E, Alimoglu MK, Mamakli S, Aktekin M. Can learning style predict student satisfaction with different instruction methods and academic achievement in medical education?. Adv Physiol Educ 2010; 34 (04) 192-196
  • 30 Choe RC, Scuric Z, Eshkol E. et al. Student satisfaction and learning outcomes in asynchronous online lecture videos. CBE Life Sci Educ 2019; 18 (04) ar55
  • 31 Schulz P, Sagheb K, Affeldt H, Klumpp H, Taylor K, Walter C. et al. Acceptance of e-learning devices by dental students. Med 2 0. 2013; 2 (02) e6
  • 32 Cutler CW, Parise M, Seminario AL, Mendez MJ, Piskorowski W, Silva R. Should attendance be required in lecture classrooms in dental education? Two viewpoints: viewpoint 1: attendance in the lecture classroom should be required and viewpoint 2: attendance should not be required in the lecture classroom. J Dent Educ 2016; 80 (12) 1474-1478
  • 33 Ojeh N, Sobers-Grannum N, Gaur U, Udupa A, Majumder MAA. Learning style preferences: a study of pre-clinical medical students in Barbados. J Adv Med Educ Prof 2017; 5 (04) 185-194
  • 34 McCann AL, Schneiderman ED, Hinton RJ. E-teaching and learning preferences of dental and dental hygiene students. J Dent Educ 2010; 74 (01) 65-78
  • 35 Ariana A, Amin M, Pakneshan S, Dolan-Evans E, Lam AK. Integration of traditional and e-learning methods to improve learning outcomes for dental students in histopathology. J Dent Educ 2016; 80 (09) 1140-1148

Address for correspondence

Philipp Luhrenberg, DMD
Department of Oral and Maxillofacial Surgery, University Medical Center of the Johannes Gutenberg University
Augustusplatz 2, 55131 Mainz
Germany   

Publication History

Article published online:
14 December 2021

© 2021. The Author(s). This is an open access article published by Thieme under the terms of the Creative Commons Attribution License, permitting unrestricted use, distribution, and reproduction so long as the original work is properly cited. (https://creativecommons.org/licenses/by/4.0/)

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  • References

  • 1 Tolks DRB, Ehlers J, Kuhn S. et al. The online inverted classroom model (oICM). A blueprint to adapt the inverted classroom to an online learning setting in medical and health education. MedEdPublish 2020; 9 (01) 113
  • 2 Charles B, Hodges SM, Barbara B. Lockee, Torrey Trust, and M. Aaron Bond. The Difference Between Emergency Remote Teaching and Online Learning; 2020
  • 3 Faraone KL, Garrett PH, Romberg E. A blended learning approach to teaching pre-clinical complete denture prosthodontics. Eur J Dent Educ 2013; 17 (01) e22-e27
  • 4 Jham BC, Duraes GV, Strassler HE, Sensi LG. Joining the podcast revolution. J Dent Educ 2008; 72 (03) 278-281
  • 5 Boulos MN, Maramba I, Wheeler S. Wikis, blogs and podcasts: a new generation of Web-based tools for virtual collaborative clinical practice and education. BMC Med Educ 2006; 6: 41
  • 6 Bains M, Reynolds PA, McDonald F, Sherriff M. Effectiveness and acceptability of face-to-face, blended and e-learning: a randomised trial of orthodontic undergraduates. Eur J Dent Educ 2011; 15 (02) 110-117
  • 7 Triola MM, Huwendiek S, Levinson AJ, Cook DA. New directions in e-learning research in health professions education: report of two symposia. Med Teach 2012; 34 (01) e15-e20
  • 8 Lotfi M, Hamblin MR, Rezaei N. COVID-19: Transmission, prevention, and potential therapeutic opportunities. Clin Chim Acta 2020; 508: 254-266
  • 9 Aly M, Elen J, Willems G. Instructional multimedia program versus standard lecture: a comparison of two methods for teaching the undergraduate orthodontic curriculum. Eur J Dent Educ 2004; 8 (01) 43-46
  • 10 Woelber JP, Hilbert TS, Ratka-Krüger P. Can easy-to-use software deliver effective e-learning in dental education? A randomised controlled study. Eur J Dent Educ 2012; 16 (03) 187-192
  • 11 Fleming ND. VARK - a guide to learning styles. Accessed 2021 at: http://vark-learn.com/
  • 12 Nasiri Z, Gharekhani S, Ghasempour M. Relationship between learning style and academic status of babol dental students. Electron Physician 2016; 8 (05) 2340-2345
  • 13 Mozaffari HR, Janatolmakan M, Sharifi R, Ghandinejad F, Andayeshgar B, Khatony A. The relationship between the VARK learning styles and academic achievement in dental students. Adv Med Educ Pract 2020; 11: 15-19
  • 14 AlQahtani N, AlMoammar K, Taher S, AlBarakati S, AlKofide E. Learning preferences among dental students using the VARK questionnaire: a comparison between different academic levels and gender. J Pak Med Assoc 2018; 68 (01) 59-64
  • 15 Aldosari MA, Aljabaa AH, Al-Sehaibany FS, Albarakati SF. Learning style preferences of dental students at a single institution in Riyadh, Saudi Arabia, evaluated using the VARK questionnaire. Adv Med Educ Pract 2018; 9: 179-186
  • 16 Mukherjee D, Das C, Chatterjee P. Odontogenic tumours of jaw: a prospective study on clinico-pathological profile and their management. Indian J Otolaryngol Head Neck Surg 2017; 69 (02) 181-186
  • 17 Jing W, Xuan M, Lin Y. et al. Odontogenic tumours: a retrospective study of 1642 cases in a Chinese population. Int J Oral Maxillofac Surg 2007; 36 (01) 20-25
  • 18 Kolcu MİB, Öztürkçü ÖSK, Kaki GD. Evaluation of a distance education course using the 4C-ID model for continuing endodontics education. J Dent Educ 2020; 84 (01) 62-71
  • 19 Moazami F, Bahrampour E, Azar MR, Jahedi F, Moattari M. Comparing two methods of education (virtual versus traditional) on learning of Iranian dental students: a post-test only design study. BMC Med Educ 2014; 14: 45
  • 20 Soltanimehr E, Bahrampour E, Imani MM, Rahimi F, Almasi B, Moattari M. Effect of virtual versus traditional education on theoretical knowledge and reporting skills of dental students in radiographic interpretation of bony lesions of the jaw. BMC Med Educ 2019; 19 (01) 233
  • 21 Johnson NR, Gannon OM, Savage NW, Batstone MD. Frequency of odontogenic cysts and tumors: a systematic review. J Investig Clin Dent 2014; 5 (01) 9-14
  • 22 Lau KH. Computer-based teaching module design: principles derived from learning theories. Med Educ 2014; 48 (03) 247-254
  • 23 Reynolds PA, Harper J, Mason R, Cox MJ, Eaton K. An intricate web - designing and authoring a web-based course. Br Dent J 2008; 204 (09) 519-524
  • 24 Knapp TR. Why is the one-group pretest-posttest design still used?. Clin Nurs Res 2016; 25 (05) 467-472
  • 25 Taveira-Gomes T, Ferreira P, Taveira-Gomes I, Severo M, Ferreira MA. What are we looking for in computer-based learning interventions in medical education? A systematic review. J Med Internet Res 2016; 18 (08) e204
  • 26 Browne L, Mehra S, Rattan R, Thomas G. Comparing lecture and e-learning as pedagogies for new and experienced professionals in dentistry. Br Dent J 2004; 197 (02) 95-97
  • 27 Jäger F, Riemer M, Abendroth M, Sehner S, Harendza S. Virtual patients: the influence of case design and teamwork on students' perception and knowledge - a pilot study. BMC Med Educ 2014; 14: 137
  • 28 Gurpinar E, Bati H, Tetik C. Learning styles of medical students change in relation to time. Adv Physiol Educ 2011; 35 (03) 307-311
  • 29 Gurpinar E, Alimoglu MK, Mamakli S, Aktekin M. Can learning style predict student satisfaction with different instruction methods and academic achievement in medical education?. Adv Physiol Educ 2010; 34 (04) 192-196
  • 30 Choe RC, Scuric Z, Eshkol E. et al. Student satisfaction and learning outcomes in asynchronous online lecture videos. CBE Life Sci Educ 2019; 18 (04) ar55
  • 31 Schulz P, Sagheb K, Affeldt H, Klumpp H, Taylor K, Walter C. et al. Acceptance of e-learning devices by dental students. Med 2 0. 2013; 2 (02) e6
  • 32 Cutler CW, Parise M, Seminario AL, Mendez MJ, Piskorowski W, Silva R. Should attendance be required in lecture classrooms in dental education? Two viewpoints: viewpoint 1: attendance in the lecture classroom should be required and viewpoint 2: attendance should not be required in the lecture classroom. J Dent Educ 2016; 80 (12) 1474-1478
  • 33 Ojeh N, Sobers-Grannum N, Gaur U, Udupa A, Majumder MAA. Learning style preferences: a study of pre-clinical medical students in Barbados. J Adv Med Educ Prof 2017; 5 (04) 185-194
  • 34 McCann AL, Schneiderman ED, Hinton RJ. E-teaching and learning preferences of dental and dental hygiene students. J Dent Educ 2010; 74 (01) 65-78
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Fig. 1 Study design.
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Fig. 2 Boxplots showing the test difference between post- and pretest.
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Fig. 3 Boxplots showing the distribution of the learning time.
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Fig. 4 Distribution of media devices amongst dental students.