Imagine you are serving on the board of a for-profit educational services company. Staff communicate to the board their concerns about the transition from foster care to independence for youn
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Topic 2 DQ 1
Imagine you are serving on the board of a for-profit educational services company. Staff communicate to the board their concerns about the transition from foster care to independence for young adults who have reached the age of 18. These individuals are no longer eligible to be in the foster care system. Of particular concern is their self-esteem through this transition. There is extensive quantitative research in the scholarly literature regarding the function of self-esteem in such a transition, but a dearth of qualitative research on the topic. You want to assist staff in providing adequate support for this client population by commissioning an internal qualitative study to better understand the phenomenon and improve their transitions. Develop a problem statement for this query using a qualitative descriptive design. What would be the purpose of the study? What research questions would you ask? Justify each response in reference to the nature of qualitative descriptive design.
Topic 2 DQ 2
You have just been assigned as a project lead to a research team that is tasked with framing a potential qualitative descriptive study. Using your expert understanding of qualitative descriptive research, what would you suggest to the principal investigator (PI) regarding the use of a qualitative descriptive design? What are some of the considerations that would determine if a qualitative descriptive research design would be appropriate for a given study? What are strengths and limitations of this type of research design?
,
Methods
Qualitative Descriptive Methods in Health Science Research
Karen Jiggins Colorafi, PhD, MBA, RN1, and Bronwynne Evans, PhD, RN, FNGNA, ANEF, FAAN1
Abstract Objective: The purpose of this methodology paper is to describe an approach to qualitative design known as qualitative descriptive that is well suited to junior health sciences researchers because it can be used with a variety of theoretical approaches, sampling techniques, and data collection strategies. Background: It is often difficult for junior qualitative researchers to pull together the tools and resources they need to embark on a high-quality qualitative research study and to manage the volumes of data they collect during qualitative studies. This paper seeks to pull together much needed resources and provide an overview of methods. Methods: A step-by-step guide to planning a qua- litative descriptive study and analyzing the data is provided, utilizing exemplars from the authors’ research. Results: This paper presents steps to conducting a qualitative descriptive study under the following headings: describing the qualitative descriptive approach, designing a qualitative descriptive study, steps to data analysis, and ensuring rigor of findings. Conclusions: The qualitative descriptive approach results in a summary in everyday, factual language that facilitates understanding of a selected phenomenon across disciplines of health science researchers.
Keywords qualitative descriptive, qualitative methodology, rigor, qualitative design, qualitative analysis
There is an explosion in qualitative methodolo-
gies among health science researchers because
social problems lend themselves toward thought-
ful exploration, such as when issues of interest are
complex, have variables or concepts that are not
easily measured, or involve listening to popula-
tions who have traditionally been silenced (Cres-
well, 2013). Creswell (2013, p. 48) suggests
qualitative research is preferred when health
science researchers seek to (a) share individual
stories, (b) write in a literary, flexible style, (c)
understand the context or setting of issues, (d)
explain mechanisms or linkages in causal theories,
(e) develop theories, and (f) when traditional
quantitative statistical analyses do not fit the prob-
lem at hand. Typically, qualitative textbooks pres-
ent learners with five approaches for qualitative
inquiry: narrative, phenomenological, grounded
theory, case study, and ethnography. Yet eminent
1 College of Nursing & Health Innovation, Arizona State
University, Phoenix, AZ, USA
Corresponding Author:
Karen Jiggins Colorafi, PhD, MBA, RN, College of Nursing &
Health Innovation, Arizona State University, 550N. 3rd
Street, Phoenix, AZ 85004, USA.
Email: [email protected]
Health Environments Research & Design Journal
2016, Vol. 9(4) 16-25 ª The Author(s) 2016
Reprints and permission: sagepub.com/journalsPermissions.nav
DOI: 10.1177/1937586715614171 herd.sagepub.com
researcher Margarete Sandelowski argues that in
‘‘the now vast qualitative methods literature, there
is no comprehensive description of qualitative
description as a distinctive method of equal stand-
ing with other qualitative methods, although it is
one of the most frequently employed methodologi-
cal approaches in the practice disciplines’’ (Sande-
lowski, 2000). Qualitative description is especially
amenable to health environments research because
it provides factual responses to questions about
how people feel about a particular space, what
reasons they have for using features of the space,
who is using particular services or functions of
a space, and the factors that facilitate or hinder use.
Qualitative description is especially
amenable to health environments research
because it provides factual responses to
questions about how people feel about a
particular space, what reasons they have
for using features of the space, who is
using particular services or functions of
a space, and the factors that facilitate
or hinder use.
The purpose of this methodology article is
to define and outline qualitative description for
health science researchers, providing a starter
guide containing important primary sources for
those who wish to become better acquainted with
this methodological approach.
Describing the Qualitative Descriptive Approach
In two seminal articles, Sandelowski promotes
the mainstream use of qualitative description
(Sandelowski, 2000, 2010) as a well-developed
but unacknowledged method which provides a
‘‘comprehensive summary of an event in the
every day terms of those events’’ (Sandelowski,
2000, p. 336). Such studies are characterized
by lower levels of interpretation than are high-
inference qualitative approaches such as phe-
nomenology or grounded theory and require
a less ‘‘conceptual or otherwise highly abstract
rendering of data’’ (Sandelowski, 2000, p.
335). Researchers using qualitative description
‘‘stay closer to their data and to the surface of
words and events’’ (Sandelowski, 2000, p. 336)
than many other methodological approaches.
Qualitative descriptive studies focus on low-
inference description, which increases the likeli-
hood of agreement among multiple researchers.
The difference between high and low inference
approaches is not one of rigor but refers to the
amount of logical reasoning required to move from
a data-based premise to a conclusion. Researchers
who use qualitative description may choose to use
the lens of an associated interpretive theory or con-
ceptual framework to guide their studies, but
they are prepared to alter that framework as nec-
essary during the course of the study (Sande-
lowski, 2010). These theories and frameworks
serve as conceptual hooks upon which hang
study procedures, analysis, and re-presentation.
Findings are presented in straightforward lan-
guage that clearly describes the phenomena of
interest.
Other cardinal features of the qualitative
descriptive approach include (a) a broad range
of choices for theoretical or philosophical orien-
tations, (b) the use of virtually any purposive
sampling technique (e.g., maximum variation,
homogenous, typical case, criterion), (c) the use
of observations, document review, or minimally
to moderately structured interview or focus group
questions, (d) content analysis and descriptive
statistical analysis as data analysis techniques,
and (e) the provision of a descriptive summary
of the informational contents of the data orga-
nized in a way that best fits the data (Neergaard,
Olesen, Andersen, & Sondergaard, 2009; Sande-
lowski, 2000, 2001, 2010).
Designing a Qualitative Descriptive Study
Methodology
Unlike traditional qualitative methodologies such
as grounded theory, which are built upon a partic-
ular, prescribed constellation of procedures and
techniques, qualitative description is grounded
in the general principles of naturalistic inquiry.
Lincoln and Guba suggest that naturalistic
inquiry deals with the concept of truth, whereby
Jiggins Colorafi and Evans 17
truth is ‘‘a systematic set of beliefs, together with
their accompanying methods’’ (Lincoln & Guba,
1985, p. 16). Using an often eclectic compilation
of sampling, data collection, and data analysis
techniques, the researcher studies something in its
natural state and does not attempt to manipulate
or interfere with the ordinary unfolding of events.
Taken together, these practices lead to ‘‘true
understanding’’ or ‘‘ultimate truth.’’ Table 1
describes design elements in two exemplar quali-
tative descriptive studies and serves as guide to
the following discussion.
Unlike traditional qualitative
methodologies such as grounded theory,
which are built upon a particular,
prescribed constellation of procedures
and techniques, qualitative description is
grounded in the general principles of
naturalistic inquiry.
Theoretical Framework
Theoretical frameworks serve as organizing
structures for research design: sampling, data col-
lection, analysis, and interpretation, including
coding schemes, and formatting hypothesis
for further testing (Evans, Coon, & Ume, 2011;
Miles, Huberman, & Saldana, 2014; Sande-
lowski, 2010). Such frameworks affect the way
in which data are ultimately viewed; qualitative
description supports and allows for the use of vir-
tually any theory (Sandelowski, 2010). Cres-
well’s chapter on ‘‘Philosophical Assumptions
and Interpretative Frameworks’’ (2013) is a use-
ful place to gain understanding about how to
embed a theory into a study.
Sampling
Sampling choices place a boundary around the
conclusions you can draw from your qualitative
study and influence the confidence you and others
place in them (Miles et al., 2014). A hallmark of
the qualitative descriptive approach is the accept-
ability of virtually any sampling technique (e.g.,
maximum variation where you aim to collect as
many different cases as possible or homogenous
whereby participants are mostly the same). See
Miles, Huberman, and Saldana’s (2014, p. 30)
‘‘Bounding the Collection of Data’’ discussion
to select an appropriate and congruent purposive
sampling strategy for your qualitative study.
Data Collection
In qualitative descriptive studies, data collection
attempts to discover ‘‘the who, what and where
of events’’ or experiences (Sandelowski, 2000,
p.339). This includes, but is not limited to focus
groups, individual interviews, observation, and
the examination of documents or artifacts.
Table 1. Example of Study Design Elements for Two Studies.
Design Element Patient engagement with the plan of carea Mexican American caregiversb
Theory Individual and family self-management theory Life course perspective Sampling strategy Multiple case purposive sampling Stratified purposeful sampling Data collection 40 Observations with semistructured
interviews/standardized instruments at clinical encounter
6 Semistructured interviews/standardized instruments at 10-week intervals for 15 months
Data analysis Directed content analysis, descriptive statistics
Conventional content analysis, descriptive and inferential statistics
Data re-presentation
Ideas derived from interviews and observations lead to the creation of recommendations, written in the voice of the patient, and presented according to the theoretical framework
Several data cuts and secondary analyses using verbatim data, its relationship with the theoretical framework, and a primarily qualitative format
aAdapted from Jiggins Colorafi (2015). bAdapted from Evans, Belyea, Coon, and Ume (2012); Evans, Belyea, and Ume (2011)
18 Health Environments Research & Design Journal 9(4)
Data Analysis
Content analysis refers to a technique commonly
used in qualitative research to analyze words or
phrases in text documents. Hsieh and Shannon
(2005) present three types of content analysis,
any of which could be used in a qualitative
descriptive study. Conventional content analysis
is used in studies that aim to describe a phenom-
enon where exiting research and theory are
limited. Data are collected from open-ended
questions, read word for word, and then coded.
Notes are made and codes are categorized.
Directed content analysis is used in studies where
existing theory or research exists: it can be used to
further describe phenomena that are incomplete
or would benefit from further description. Initial
codes are created from theory or research and
applied to data and unlabeled portions of text are
given new codes. Summative content analysis is
used to quantify and interpret words in context,
exploring their usage. Data sources are typically
seminal texts or electronic word searches.
Quantitative data can be included in qualita-
tive descriptive studies if they aim to more
adequately or fully describe the participants or
phenomenon of interest. Counting is conceptua-
lized as a ‘‘means to and end, not the end itself’’
by Sandelowski (2000, p. 338) who emphasizes
that careful descriptive statistical analysis is an
effort to understand the content of data, not sim-
ply the means and frequencies, and results in
a highly nuanced description of the patterns
or regularities of the phenomenon of interest
(Sandelowski, 2000, 2010). The use of validated
measures can assist with generating dependable
and meaningful findings, especially when the
instrument (e.g., survey, questionnaire, or list
of questions) used in your study has been used
in others, helping to build theory, improve pre-
dictions, or make recommendations (Miles
et al., 2014).
Data Re-Presentation
In clear and simple terms, the ‘‘expected outcome
of qualitative descriptive studies is a straight for-
ward descriptive summary of the informational
contents of data organized in a way that best
fits the data’’ (Sandelowski, 2000, p. 339). Data
re-presentation techniques allow for tremendous
creativity and variation among researchers and
studies. Several good resources are provided to
spur imagination (Miles et al., 2014; Munhall &
Chenail, 2008; Wolcott, 2009).
Steps to Data Analysis
It is often difficult for junior health science
researchers to know what to do with the volumes
of data collected during a qualitative study and
formal course work in traditional qualitative
methods courses are typically sparse regarding
the specifics of data management. It is for those
reasons that this section of our article will pro-
vide a detailed description of the data analysis
techniques used in qualitative descriptive metho-
dology. The following steps are case examples of
a study undertaken by one author (K.J.C.) after
completing a data management course offered
by another author (B.E.). Examples are offered
from the two studies noted in Table 1. It is
offered in list format for general readability, but
the qualitative researcher should recognize that
qualitative analyses are iterative and recursive
by nature.
1. Prior to initiating data collection, a coding
manual containing a beginning list of codes
(Fonteyn, Vettese, Lancaster, & Bauer-Wu,
2008; Hsieh & Shannon, 2005; Miles et al.,
2014) derived from the theoretical frame-
work, literature, and the analysis of pre-
liminary data, was developed. Codes are
action-oriented words or labels assigned
to designated portions (chunks or meaning
units) of text reflecting themes or topics
that occur with regularity (Miles et al.,
2014, p. 71). In the coding manual (see
example in Table 2), themes which were
conceptually similar were grouped together
using an ethnographic technique of domain
analysis (Spradley, 1980). A domain analy-
sis contains a series of themes, a semantic
relationship such as ‘‘is a component of’’
or ‘‘is a type of,’’ and the name of the
domain. It is read from the bottom up,
hence, ‘‘Acknowledging the importance
Jiggins Colorafi and Evans 19
of la familia’’ ‘‘is a result of’’ ‘‘cultural
expectation.’’ Between the semantic rela-
tionship (is a result of) and the domain
name, we inserted a definition of the
domain itself (values, beliefs, and activities
seen as normative by members of the cul-
ture who learn, share, and transmit this
knowledge to others).
Reading from the left in Table 2, codes were
given a number and letter for use in marking sec-
tions of text. Next, the code name indicating a
theme was entered in boldface type with a defini-
tion in the code immediately under it. The second
column provided an exemplar of each code, along
with a notation indicating where it was found in
the data, so that coders could recognize instances
of that particular code when they saw them.
The coding manual was tested against data
gathered in a preliminary study and was revised
as codes found to overlap or be missing entirely.
We continued to revise it iteratively during the
study as data collection and analysis proceeded
and then used it to recode previously coded data.
Using this procedure, it was used to revisit the
data several times.
2. Each transcribed document was formatted
with wide right margins that allowed the
investigator to apply codes and generate
marginal remarks by hand. Marginal
remarks are handwritten comments entered
by the investigator. They represent an
attempt to stay ‘‘alert’’ about analysis, form-
ing ideas and recording reactions to the
meaning of what is seen in the data. Mar-
ginal remarks often suggest new interpreta-
tions, leads, and connections or distinctions
with other parts of the data (Miles et al.,
2014). Such remarks are preanalytic and add
meaning and clarity to transcripts.
3. The investigator took sentences or para-
graphs in the transcripts and divided them
into meaning units, which are segments of
text that contain a single idea (Table 3).
One or more codes were applied to each
meaning unit during first-level coding,
which is highly descriptive in nature. In
Table 2. Example of a Coding Manual.
1. Cultural expectation (values, beliefs, and activities seen as normative by members of the culture who learn, share, and transmit this knowledge to others) ^ is a result of ^
1A Acknowledging the importance of la familia: Expressing strong support and intergenerational reliance (family is main source of social interaction; transcends SES or gender)
We were raised to take care of la familia. . . . We don’t put them in a nursing home facility. Like a lot of my gringo friends have done that. It’s so sad. I couldn’t live if I did that. It’s not in me. SabanaT1/2, p. 5 Her mother took care of her grandmother, and my mother took care of my grandmother and both took care of her mother, both had some help taking care of my dad when he was sick, and I know that it was inbred in me, not really inbred, but something I saw; you follow suit by example. SalT1, p. 9
1B Reciprocating for past care: Feeling strong familial and moral obligation to unconditionally help and care for elders who cared for you
When you were little, your parents changed your diapers. Now that they are older it’s up to you take care of them, Honor Your Father and Mother by taking care of them, now that they need from you because you needed from them when you were growing up. CalandriaT1, p. 10
1C Living out the precepts of marianismo: Acting with saintliness and goodness of Virgin Mary; a sense of nobility and dignity; self-sacrifice, faithfulness, and subordination to husband (father, brothers)
My wife fell right in along beside me [for caregivingg, yes. SalT1, p. 8 This is the mother of my husband, and the grandmother of my children. So this is the message that I give. Because it is the saddest thing for a person to become a senior and find themselves forgotten, abandoned, uncared for, hungry, dirty, exiled. This is most grievous . . . NevaT1, p. 4
Note. SES ¼ socioeconomic status.
20 Health Environments Research & Design Journal 9(4)
Table 3, reading from left to right, the first
column contains text that has been separated
into meaning units by color. The second col-
umn lists codes that were applied to each
meaning unit, also color coded for clarity.
First-level codes are in gerund form: a verb
with an ‘‘ing’’ ending that denotes action.
Gerunds are used to help the researcher
focus on participant behaviors and actions
in the transcript. Table 3 is an example of
first-level or coarse coding (applying fewer
codes to bigger ‘‘chunks’’ of material).
Alternatively, individual researchers may
choose to code finely (applying more codes
to smaller ‘‘chunks’’ of material). Coding is
a form of analysis; they ‘‘are prompts or trig-
gers for deeper reflection’’ (Miles et al.,
2014, p. 73). Because coding is a way to
condense data, the researcher may choose
to put ‘‘chunks’’ of coded material in large
or small groupings, effectively slicing the
data in a fine or coarse manner.
4. Conceptually similar codes were organized
into categories (coding groups of coded
themes that were increasingly abstract)
through revisiting the theory framing the
study (asking, ‘‘does this system of coding
make sense according to the chosen the-
ory?’’). Miles et al. (2014) provide many
examples for creating, categorizing, and
revising codes, including highlighting a
technique used by Corbin and Strauss (Cor-
bin & Strauss, 2015) that includes growing
a list of codes and then applying a slightly
more abstract label to the code, creating
new categories of codes with each revision.
This is often referred to as second-level or
pattern coding, a way of grouping data into
a smaller number of sets, themes, or con-
structs. During the analysis of data, patterns
were generated and the researcher spent
significant amounts of time with different
categorizations, asking questions, checking
relationships, and generally resisting the
urge to be ‘‘locked too quickly into naming
a pattern’’ (Miles et al., 2014, p. 69).
5. During this phase of analysis, pattern
codes were revised and redefined in the
coding manual and exemplars were used
to clarify the understanding of each code.
Miles et al. (2014) suggest that software
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