Evidence Summary
A Review of:
Lund, B. D., & Maurya, S. K. (2022). How older adults in the USA and
India seek information during the COVID-19 pandemic: A comparative study of
information behavior. IFLA Journal, 48(1), 205–215. https://doi.org/10.1177/03400352211024675
Reviewed by:
Christine Fena
Undergraduate Success
Librarian
Stony Brook University
Libraries
Stony Brook, New York,
United States of America
Email: christine.fena@stonybrook.edu
Received: 25 Nov. 2022 Accepted: 26 Jan. 2023
2023 Fena.
This is an Open Access article distributed under the terms of the Creative
Commons‐Attribution‐Noncommercial‐Share Alike License 4.0
International (http://creativecommons.org/licenses/by-nc-sa/4.0/),
which permits unrestricted use, distribution, and reproduction in any medium,
provided the original work is properly attributed, not used for commercial
purposes, and, if transformed, the resulting work is redistributed under the
same or similar license to this one.
DOI: 10.18438/eblip30257
Objective – To investigate and compare the information-seeking
behaviors of older adults in one developing and one developed country during
the COVID-19 pandemic.
Design – Structured interviews via Zoom (video), telephone,
or email.
Setting – Two towns with moderately large populations (about
300,000), one in eastern India and one in the Midwest of the USA.
Subjects – Sixty adults ages 65 and older, 35 in the India
cohort and 25 in the USA cohort.
Methods – The researchers recruited participants from the communities
in which their respective institutions are located by using online
advertisements in Facebook groups, local (print) advertisements/flyers, and
word of mouth. The ten interview questions were informed by Dervin’s (1998)
sense-making methodology and sought to identify a specific information need,
behavior to address the need, and the influences on and outcomes of the
behavior. They conducted the interviews in July and August of 2020, translated
the questions into Hindi for Hindi-speaking participants, and analyzed
responses using qualitative content analysis. Within each of the resulting
themes and categories, the researchers compared the responses of American and
Indian participants.
Main Results – The researchers found many significant differences between
the information behaviors of Indian and American participants. Some of the
biggest differences were in the information needs expressed by the
participants, as well as the sources consulted and the reasons for consulting
those sources. For example, when asked about the types of information needed,
77% of Indians focused on a “COVID and health-related” information need, as
opposed to only 33% of Americans. And 37% of Americans indicated information
needs related to “political and economic issues,” especially the upcoming 2020
election, as opposed to only 3% of Indians. When asked about sources, 28% of
Indians consulted television, compared to only 6% of Americans. Web-based
sources were generally used more by Americans, with 31% of Americans consulting
websites, compared to 13% of Indians. In regard to their reasons for consulting
a source, 28% of Indians chose a source based on availability, compared to only
9% of Americans. And 32% and 36% of Americans chose information based on ease
and familiarity (“I know how to find it”), compared to only 18% and 13% of
Indians, respectively. Only 3% of Indians met all their information needs, as
opposed to 43% of Americans, and Indians were more likely to stop searching
after encountering barriers. Americans had more confidence in their information
behavior overall, and only 32% of Americans were interested in taking a class
on how to find information, as opposed to 97% of Indians.
Conclusion – Older adults in developing and developed countries
described very different information-seeking experiences. The disparities
between the types of information sought, sources consulted, and barriers
encountered highlight not only cultural differences, but also systemic
inequities that exist between the information infrastructure of the two
countries, especially as concerns access to computers and the Internet. The
study points to areas for future improvement, including the need for
interventions such as information literacy instruction.
Many research areas contextualize this study,
including the digital divide, the impact of socioeconomic status, the issues
facing older adults as a population, and the role of information access in
mitigating a global pandemic and creating communities that are health literate
and achieve mental wellness. Xie et al. (2020) recognized the interconnected
relationship between information crises and global health crises. Those most
vulnerable to a lack of information access also become vulnerable to the health
crisis. Research on information behaviors of older adults demonstrates a unique
set of challenges, including willingness to adapt to new technologies
(Berkowsky et al., 2017) and the role of Internet use in reducing depression
(Cotten et al., 2012). Furthermore, Hargittai and Dobransky (2017) point to the
role of socioeconomic status in one’s Web-using skills.
This study was appraised using “The CAT: A generic
critical appraisal tool” (Perryman & Rathbun-Grubb, 2014), and has many
strengths. The authors have expertise in information behavior and are
affiliated with the University of North Texas and BRM Government Model College,
respectively. The methodology and objective are well matched. The methods used
– Dervin’s (1998) sense-making approach, interview questions, and content analysis
– address the complexity of the diverse research contexts well, since they are
flexible ways to qualitatively investigate information behavior and identify
gaps in individual information seeking. Another strength of the study is that
the authors are transparent in locating themselves within the towns from which
the participants were recruited; one of the authors lives in the American town
and the other lives in the Indian town. Finally, the authors adequately
represent the Hindi-speaking population by ensuring the interview questions
were translated into Hindi. They included the interview questions in both
English and Hindi within an appendix.
As the authors point out in their discussion of the
study’s limitations, however, the sample size was not broad-based or the
results statistically strong. Although the authors do list their methods of
recruitment, they do not include their selection criteria for the 60
participants. They also leave out more detailed information about preparatory
actions related to the study and development and execution of the interviews,
such as whether they obtained IRB approval, methods of writing and piloting the
interview questions, whether they considered the cultural relevance of the
interview questions for both locations, and how many participants were
interviewed within each modality (video, telephone, email). In the reporting of
the results, they leave out demographic information beyond whether the
participants were Indian or American. Additionally, as information and conditions
change throughout the COVID-19 pandemic one might expect responses to the
interview questions would also change, and thus these results only represent a
“snapshot in time” (Lund & Maurya, 2022, p. 213).
Despite these weaknesses, the study demonstrates the
extent to which information access impacted two groups of older adults
differently in India and the U.S. at a specific historical moment. Practice
implications include the potential desire and need for information literacy
instruction within the Indian community studied, and the need for further
research to determine the desire for instruction in similar communities.
Finally, the authors point to the importance of library administrators’
understanding of how cultural differences and infrastructure constraints impact
the delivery of services and resources.
Berkowsky, R., Sharit, J., & Czaja, S. (2017). Factors predicting
decisions about technology adoption among older adults. Innovation in Aging, 1(3). https://doi.org/10.1093/geroni/igy002
Cotten, S., Ford, G., Ford, S., & Hale, T. (2012). Internet use and
depression among older adults. Computers
in Human Behavior, 28(2): 496–499. https://doi.org/10.1016/j.chb.2011.10.021
Dervin, B. (1998) Sense-making theory and practice: An overview of user
interests in knowledge seeking and use. Journal
of Knowledge Management 2(2): 36–46. https://doi.org/10.1108/13673279810249369
Hargittai, E., & Dobransky, K. (2017). Old dogs, new clicks: Digital
inequality in skills and uses among older adults. Canadian Journal of Communication, 42(2): 195–212. https://doi.org/10.22230/cjc.2017v42n2a3176
Lund, B. D., & Maurya, S. K. (2022). How older adults in the USA and
India seek information during the COVID-19 pandemic: A comparative study of
information behavior. IFLA Journal, 48(1), 205–215. https://doi.org/10.1177/03400352211024675
Perryman, C., & Rathbun-Grubb, S. (2014). The CAT: A generic critical appraisal tool. http://www.jotform.us/cp1757/TheCat
Xie, B., He, D., Mercer, T., Want, Y., Wu, D., Fleischmann, K., Zhang,
Y., Yoder, L., Stephens, K., Mackert, M., & Kyung Lee, M. (2020). Global
health crises are also information crises: A call to action. Journal of the Association for Information
Science and Technology, 71(12): 1419–1423. https://doi.org/10.1002/asi.24357