Skip to main content
  • Research article
  • Open access
  • Published:

An analysis of lecture video utilization in undergraduate medical education: associations with performance in the courses

Abstract

Background

Increasing numbers of medical schools are providing videos of lectures to their students. This study sought to analyze utilization of lecture videos by medical students in their basic science courses and to determine if student utilization was associated with performance on exams.

Methods

Streaming videos of lectures (n = 149) to first year and second year medical students (n = 284) were made available through a password-protected server. Server logs were analyzed over a 10-week period for both classes. For each lecture, the logs recorded time and location from which students accessed the file. A survey was administered at the end of the courses to obtain additional information about student use of the videos.

Results

There was a wide disparity in the level of use of lecture videos by medical students with the majority of students accessing the lecture videos sparingly (60% of the students viewed less than 10% of the available videos. The anonymous student survey revealed that students tended to view the videos by themselves from home during weekends and prior to exams. Students who accessed lecture videos more frequently had significantly (p < 0.002) lower exam scores.

Conclusion

We conclude that videos of lectures are used by relatively few medical students and that individual use of videos is associated with the degree to which students are having difficulty with the subject matter.

Peer Review reports

Background

Computer technologies have increasingly impacted medical education [1, 2], most recently through the electronic distribution of videos, which are used extensively for a wide range of educational activities including demonstrating anatomical dissections [3], clinical procedures [4], assessments [4, 5], providing access to online lectures [6] for use in asynchronous learning [6–10], as well as videoconferencing of patient scenarios [11]. In 2007, the Stritch School of Medicine instituted a policy that all lectures for the first two years of medical school would be provided online through secure networks using video streaming technology. The rationale for this policy was to provide additional asynchronous web-based resources for students to use for independent learning.

Several studies have investigated student satisfaction of lecture videos [12], attendance issues [7, 13, 14], educational efficiencies of videos [8, 9, 12, 15], the effectiveness of videos as an instructional tool [8, 9, 15–17], as well as technical aspects [6, 18]. The present study sought to provide additional information on student utilization of lecture videos in the undergraduate medical curriculum based on server log files supplemented by results from a student survey. To date, there is little detailed information on the use of lecture videos by medical students and the impact on their education.

The goal was to capture data on student use with minimal interventions under real-time curricular conditions. Specific questions included: How frequently do individual students view on-line videos of lectures? Are there differences between classes (freshman vs. sophomores) in the frequency of video viewing? To what degree do students view videos away from campus? To what degree are individual lectures viewed? Is there an association of the frequency of video viewing with performance on exams?

Methods

The data were collected from first-year (M1; n = 143) and second-year (M2; n = 139) medical students at the Loyola University Chicago Stritch School of Medicine during the initial year that videos were made available for all lectures in the basic science courses.

Collection and distribution of lecture videos

Collection of lecture videos in each room occurs through a dedicated workstation operating under Linux (Fedora version 8). The workstation contains an inexpensive video capture card (NTSC) which receives composite video and audio feeds from the lecture hall audiovisual equipment. A simple linux cron script uses video4linux to continuously capture video/audio in 30 minute segments daily from 7 a.m. to 9 p.m. Captured files are natively stored in an audio video interleave (AVI) format. A second cron script reprocesses all captured AVI files into corresponding Microsoft Windows Video (WMV) and MP3 audio files. Reprocessing of AVI files into WMV and MP3 files is accomplished using FFmpeg. FFmpeg is an open source software package that allows for the capture and conversion of video and audio files. In addition to conversion of the AVI files, the second cron script also transfers all WMV and MP3 files to the school's central video servers. Video servers (two) were Dell 2950s attached to 8TBs of storage operating under Microsoft Windows 2003 and Microsoft Media Services.

Access and distribution of the video occurs through the school's LUMEN http://www.lumen.luc.edu/lumen/ website. LUMEN's online course calendar was modified to provide direct hypertext links to captured videos and audios. Access to captured materials is restricted and users are required to provide their unique user id and password before files are made available. Detailed usages statistics are captured automatically.

Data collection and analysis

Users must be authenticated to receive access to video and audio files which allows the system to capture detailed usage statistics. For each access the system collects user information (e.g., user name, workstation IP address, and browser type), session details (e.g., actual lecture date, time and faculty member) as well as actuall access date and time. This information is stored in a relational database that is utilized for usage analysis. Associations between the number of lectures viewed by individual students and their grade in the course were tested using the Student's t-test.

Student survey

All students were offered an opportunity to respond to a survey (see Appendix), which was administered shortly after the study period was completed.

The study was exempted by the Institutional Review Board (IRB), Stritch School of Medicine.

Results

The majority of students viewed relatively few videos. Figure 1 shows that the distribution of the percent lectures viewed by students was highly skewed for both classes. The data revealed that 60% of M1 and M2 students viewed less than 10% of the available lectures. Only 5% of M1 and 9% of M2 students viewed more than 40% of the lectures and no student viewed more than 76% of the lectures in any course (Table 1). The data were converted to percent because the total number of lectures differed between classes (M1 = 49 lectures; M2 = 100 lectures).

Figure 1
figure 1

Distribution of students in both classes according to the percent of lectures viewed.

Table 1 Metrics (means and ranges) for utilization of lecture videos from server log files.

The average number of lectures viewed per student, based on percent of total lectures, was similar for both classes (12.6% vs. 13.6%) (Table 1). M2 students tended to view any individual lecture about 2.5 times more often than M1 students (5.3 vs. 2.0 videos viewed per lecture per student) (Table 1). M2 students also tended to view more lectures from campus (33% of the time) compared to M1 students (24% of the time). Daily counts of the number of videos viewed showed that students tended to view videos over the weekend and prior to exams (Figure 2). The number of students viewing individual lectures was also relatively small (an average of 17–18 students viewed each lecture, Table 1), and 30% of all lectures were viewed by 10 students or less.

Figure 2
figure 2

Daily counts of videos viewed by MS2 students over the 10-week pathology/therapeutics course. Exams dates are circled. The last exam was a separate final lab exam. Black bars indicate weekends (large black bar indicates Thanksgiving weekend).

A total of 79 M1 students (53%) and 69 M2 students (47%) responded to the survey, which further elucidated how students used the videos (questions and student responses are provided in Appendix 1). Even with this 52% return (combined for both classes), there was generally good agreement between the student responses and the server log files regarding the frequency with which they viewed videos (i.e., 72% said they viewed 10 or fewer videos – Appendix 1) and the location where they viewed the videos (i.e., 33% stated they viewed videos from campus – Appendix 1). Students tended to view videos by themselves (82%) and used the videos primarily to fill in class notes and review for exams. The videos also were not used extensively by students to replace going to lectures (97% of respondents indicated that they used videos to replace going to less than 5 lectures). Reasons for using videos to replace going to lectures included the subject matter (17%), the lecturer (23%) and a larger number of "other" reasons (83%; e.g., car troubles, family issues, appointments, etc).

Another goal of our study was to determine if there were any associations between the level of video use and the performances of students related to grades in their courses. Since the total number of lectures differed between the two classes (M1 = 49 lectures; M2 = 100 lectures), we standardized the data to percent of lectures viewed (see Table 1). Because the means of final grades were similar for both classes (M1 = 85.1; M2 = 84.4; p = 0.42), the data were pooled and final grades divided into two groups according to the median percent of lectures viewed. Those students viewing the fewest lectures (0–7% of lectures; n = 136) had significantly (t = 3.17; p < 0.002) higher grades than those students viewing the most lectures (> 7% of lectures; n = 146). Similar trends were observed for each of the classes separately (M1; p = 0.03) (M2; p = 0.008). The availability of videos did not affect overall performance because average course grades did not differ significantly from the previous year when videos were unavailable for the same courses taken by M1's (t = 0.78; p = 0.43) and M2's (t = 0.53; p = 0.59).

Discussion

An important finding from this study is that the majority of medical students utilized on-line lecture videos sparingly. Analysis of usage of lecture audio recordings in another study also showed that a relatively small subset of medical students used the resources extensively, while the majority (> 70%) accessed the audio files infrequently or not at all [19]. This wide disparity in student use of lecture files confirms earlier reports of high variability in student use of computer-aided instructional (CAI) applications [20–22]. In one study, as many as 45% of the students did not access supplemental CAI specifically developed for the curriculum [21].

A second important finding from our study was that student use of lecture videos appeared to be more closely associated with the degree to which students were having difficulty with the subject matter. It is noteworthy that in a another study, there was an inverse correlation between performance on in-course exams and length of time students logged into the server [23]. However, when specific supplemental CAI were evaluated, there were direct correlations between the degree to which computer resources were utilized by individual students and their performances on exams [21, 24]. An important difference is that CAI typically supplements the curriculum whereas use of on-line videos evaluated in the present study duplicate the curriculum.

Aggregate analyses obviously do not address benefits that individual students may have received from the video resources, which is a limitation of the study. In one study designed to compare test performance of video vs. live lectures the authors found that students who were provided video lectures had better or similar exam scores compared to students who attended live lectures [16]. Although our study did not directly address the effects of lecture videos on performances in the courses, there appears to have been no effect because average grades in the courses were not statistically different from the prior year when lecture videos were not available.

By combining server log files with student surveys we were able to glean information on the nature of student usage of video files. Our finding that students tended not to use videos to replace going to lectures was consistent with a recent study [7] revealing that medical students made deliberate decisions about lecture attendance (e.g., experiences with particular teachers, subject of lecture), and their attendance was not influenced by the availability of electronic resources. The present study has extended our understanding of how medical students use lecture videos by showing that students tend to view the videos alone for clarifying their notes on weekends and/or reviewing for exams. However, another limitation of the study is the large number of students who elected not to participate in the survey. Accordingly, we were unable to accurately determine the degree to which student attendance at lectures had changed.

Literature addressing the pedagogy of implementing and evaluating computer technologies in medical education increasingly emphasizes the need to better understand how learners are interacting with the applications [1, 2, 25]. Anticipating that videos will continue to play a role in paradigm shifts of medical curricula, several questions still remain. Does the level of individual student use of videos vary from course to course? Will utilization increase as videos become further integrated within the curriculum? How frequently do students review lecture videos from earlier classes in preparing for board exams? In addition, can video logs be used for curricular revisions by identifying specific content areas that need to be expanded or eliminated? To what extent are faculty reviewing lectures, and can videos be used effectively for faculty development?

Conclusion

The results of our study demonstrated that significant use of lecture videos in the medical curriculum was limited to a relatively small percentage of students, who tended to view videos by themselves to fill in notes and review. Attendance at lectures did not seem to be significantly affected. The frequency with which individual students viewed videos was inversely associated with their grades in the courses.

Appendix

Appendix 1. Responses of students to survey about lecture videos.

How frequently did you view videos for lectures?

   Never               12%

   1–5 lectures            31%

   6–10 lectures            33%

   11–20 lectures            12%

   More than 20 lectures         12%

If you viewed videos of lectures, (check all that apply)

   It replaced going to lecture      42%

   I used it to complete my notes   86%

   I used it to review for exams.   64%

If you used videos to review for exams, how useful were they?

   Not useful            0%

   Somewhat useful         52%

   Very useful            48%

If you used the videos to replace going to lecture, how many lectures did they replace?

   Not applicable         53%

   1–5 lectures            44%

   6–10 lectures            2%

   11–20 lectures            1%

   More than 20 lectures         1%

If you used the videos to replace going to lecture, it was because: (check all that apply):

   The subject matter could be learned by reading and/or handouts   17%

   The lecturer was bad         23%

   Other reason            83%

Where did you mostly view the videos?

   Home               67%

   School               33%

   Other               0%

How many videos did you view with other students?

   None               82%

   1–5 videos            15%

   6–10 videos            2%

   11–20 videos            1%

   > 20 videos            0%

Do you think you will use the lecture videos to study/review for boards?

   Yes               44%

   No               56%

Was the quality of video adequate?

   Terrible            9%

   OK, but could be improved      62%

   Fine               26%

Great               3%

References

  1. Cook DA: The research we still are not doing: an agenda for the study of computer-based learning. Acad Med. 2005, 80 (6): 541-548. 10.1097/00001888-200506000-00005.

    Article  Google Scholar 

  2. Ruiz JG, Mintzer MJ, Leipzig RM: The impact of E-learning in medical education. Acad Med. 2006, 81 (3): 207-212. 10.1097/00001888-200603000-00002.

    Article  Google Scholar 

  3. Nieder GL, Nagy F: Analysis of medical students' use of web-based resources for a gross anatomy and embryology course. Clin Anat. 2002, 15: 409-418. 10.1002/ca.10067.

    Article  Google Scholar 

  4. Kneebone R, Kidd J, Nestel D, Asvall S, Paraskeva P, Darzi A: An innovative model for teaching and learning clinical procedures. Med Ed. 2002, 36 (7): 628-634. 10.1046/j.1365-2923.2002.01261.x.

    Article  Google Scholar 

  5. Humphris GM, Kaney S: The objective structured video exam for assessment of communication skills. Med Ed. 2000, 34 (11): 939-945. 10.1046/j.1365-2923.2000.00792.x.

    Article  Google Scholar 

  6. Latchman HA, Latchman SM: Lectures on demand in ALN: enhancing the online learning experience. JALN. 2001, 5 (1): 85-98.

    Google Scholar 

  7. Billings-Gagliardi S, Mazor KM: Student decisions about lecture attendance: do electronic course materials matter?. Acad Med. 2007, 82 (10 Suppl): S573-S576.

    Google Scholar 

  8. Solomon DJ, Ferenchick GS, Laird-Fick HS, Kavanaugh K: A randomized trial comparing digital and live lecture formats. BMC Med Educ. 2004, 27-10.1186/1472-6920-4-27. 4

  9. Spickard AI, Alrajeh N, Cordray D, Gigante J: Learning about screening using an online or live lecture. J Gen Int Med. 2002, 17: 540-545. 10.1046/j.1525-1497.2002.10731.x.

    Article  Google Scholar 

  10. Tello R, Davison BD, Blickman JG: The virtual course: delivery of live and recorded continuing medical education over the Internet. AJR Am J Roentgenol. 2000, 174 (6): 1519-1521.

    Article  Google Scholar 

  11. Wildinson TJ, Smith JD, Margolis SA, Gupta TS, Prideaux DJ: Structure assessment using multiple patient scenarios by videoconference in rural settings. Med Ed. 2008, 42: 480-487. 10.1111/j.1365-2923.2008.03011.x.

    Article  Google Scholar 

  12. Callas PW, Bertsch TF, Caputo MP, Flynn BS, Doheny-Farina S, Ricci MA: Medical student evaluations of lectures attended in person or from rural sites via interactive videoconferencing. Teach Learn Med. 2004, 16 (1): 46-50. 10.1207/s15328015tlm1601_10.

    Article  Google Scholar 

  13. Mattick K, Crockr G, Bligh J: Medical student attendance at non-compulsory lectures. Adv Health Sci Ed. 2007, 12: 201-210. 10.1007/s10459-005-5492-1.

    Article  Google Scholar 

  14. Terrell M: Podcasting anatomy lectures increases content accessibility and learning. FASEB: 2008; San Diego. 2008

    Google Scholar 

  15. Nazian SJ, Nicolosi GR: The use of web-bsed video files in lieu of face-to-face lectures in a medical physiology course – one year's experience. FASEB: 2008; San Diego. 2008

    Google Scholar 

  16. Paegle RD, Wilkinson EJ, Donnelly MB: Videotaped vs traditional lectures for medical studens. Med Educ. 1980, 14 (6): 387-393. 10.1111/j.1365-2923.1980.tb02389.x.

    Article  Google Scholar 

  17. Pessina MA, Whitney : Does the availability of lecture video recordings change in-class attention and learning by first medical students? Data on use and perceived benefits. FASEB: 2008; San Diego. 2008

    Google Scholar 

  18. Hurst W, Gotz G: Interface issues for interactive navigation and browsing of recorded lectures and presentations. Proc ED-MEDIA. 2004

    Google Scholar 

  19. Burke C, Lovett M, Mayfield C: Evaluation of usage of audio recorded lectures during the essential core. WGEA/WGSA Regional Conference: 2008, Pacific Grove, CA. 2008

    Google Scholar 

  20. Coates D, Humphreys BR: Evaluation of computer-assisted instruction in principles of economics. Ed Tech Soc. 2001, 4 (2): 133-144.

    Google Scholar 

  21. McNulty JA, Halama J, Espiritu B: Evaluation of computer-assisted instruction in the medical gross anatomy curriculum. Clin Anat. 2004, 17: 73-78. 10.1002/ca.10188.

    Article  Google Scholar 

  22. McNulty JA, Espiritu B, Halsey M, Mendez M: Personality preference influences medical student use of specific computer-aided instruction (CAI). BMC Med Educ. 2006, 6: 7-10.1186/1472-6920-6-7.

    Article  Google Scholar 

  23. McNulty JA, Halama J, Dauzvardis MF, Espiritu B: Evaluation of web-based compuer-aided instruction in a basic science course. Acad Med. 2000, 75 (1): 59-65. 10.1097/00001888-200001000-00016.

    Article  Google Scholar 

  24. Rizolo LJ, Aden M, Steart WB: Correlations of web usage and exam performance in a human anatomy and development course. Clin Anat. 2002, 15: 351-355. 10.1002/ca.10045.

    Article  Google Scholar 

  25. Clark D: Psychological myths in e-learning. Med Teacher. 2002, 24 (6): 598-604. 10.1080/0142159021000063916.

    Article  Google Scholar 

Pre-publication history

Download references

Author information

Authors and Affiliations

Authors

Corresponding author

Correspondence to John A McNulty.

Additional information

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

JAM originated the idea for the research, oversaw the collection and analysis of data, and wrote the manuscript. AH assisted with the collection and analysis of data and helped revise the manuscript. GG helped with interpretation of data and writing the manuscript. AC assisted with collection of data and revising the manuscript. BE contributed to the manuscript. RP coordinated collection of the data and helped revise the paper. RN developed applications for collecting the data. All authors have read and approved the final manuscript.

Authors’ original submitted files for images

Below are the links to the authors’ original submitted files for images.

Authors’ original file for figure 1

Authors’ original file for figure 2

Rights and permissions

This article is published under license to BioMed Central Ltd. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Reprints and permissions

About this article

Cite this article

McNulty, J.A., Hoyt, A., Gruener, G. et al. An analysis of lecture video utilization in undergraduate medical education: associations with performance in the courses. BMC Med Educ 9, 6 (2009). https://0-doi-org.brum.beds.ac.uk/10.1186/1472-6920-9-6

Download citation

  • Received:

  • Accepted:

  • Published:

  • DOI: https://0-doi-org.brum.beds.ac.uk/10.1186/1472-6920-9-6

Keywords