By Maeve Conlin & Molly Ryan
Here at ICH, we
often use a mixed
methods design for
our research and evaluation projects. A mixed method approach acknowledges the
limitations of only using one type of data source. It involves collecting and
analyzing qualitative data, typically from interviews or surveys, and
quantitative data, like mortality rates.
Using multiple
data sources helps to create a more complete and compelling picture of the
data’s story. Mixed methods allow us to contextualize facts and figures,
grounding them in the programs, projects, and communities they summarize.
Perhaps most importantly, mixed methods facilitate a strength-based analysis,
allowing for an exploration of opportunities as well as challenges.
Visualization Techniques to Connect
Quantitative and Qualitative Data
Mixed methods
are essential for much of our work at ICH, including all of our needs
assessment
projects. To conduct a needs assessment, we collect and analyze both quantitative
data, like mortality causes, ED visits, and hospitalizations, along with
community feedback on local health needs and solutions to health challenges. The
result is A LOT of data! One strategy for helping your audience draw
connections between your data is to include
related quantitative and qualitative data side-by-side:
This same
method of showing quantitative and qualitative data together can also be used for
surveys, another tool we use frequently at ICH. For example, survey
participants may be asked to rate their satisfaction with a variety of topics
and explain their rating in a comment section. In this case, combining quantifiable participant
satisfaction data with related quotes grounds the
data and presents a fuller picture:
Making Qualitative Data Compelling
Within our qualitative data, we often look for
ways to visually demonstrate similarities and differences across data points. As
shown below, this can be done using a table format to display key themes. However,
because this approach essentially quantifies qualitative data, we also include
illustrative quotes so we do not to lose
the interviewees’ voices or the richness
of their comments.
Table
1: High-Risk Patient Definition by Site and Type of Respondent
Tailoring Data
Visualization to Meet Unique Needs
Understanding
data visualization processes and techniques helps us to present data that is not
only eye-catching but easily understood.
We can highlight important patterns and
findings within a larger data set so that stakeholders can easily draw conclusions and make decisions.
However,
having new and interesting ways to display data is not enough. Here at ICH, we
work with a wide array of partners, including academia, hospitals, schools and
community-based organizations. Exactly how and what data is presented, and to whom, are key
considerations in the data visualization process. Most stakeholders or partners
likely have different data needs, and it’s important to ensure you are presenting
the information in a way that is comprehensible
and useful for each unique project and audience!
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The views expressed on the Institute for Community Health blog page are solely those of the blog post author(s), and do not necessarily reflect the views of ICH, the author’s employer or other organizations with which the author is associated.
Nice combination of data source integration!
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