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Introduction to Research Statistical Analysis: An Overview of the Basics

Christian vandever.

1 HCA Healthcare Graduate Medical Education

Description

This article covers many statistical ideas essential to research statistical analysis. Sample size is explained through the concepts of statistical significance level and power. Variable types and definitions are included to clarify necessities for how the analysis will be interpreted. Categorical and quantitative variable types are defined, as well as response and predictor variables. Statistical tests described include t-tests, ANOVA and chi-square tests. Multiple regression is also explored for both logistic and linear regression. Finally, the most common statistics produced by these methods are explored.

Introduction

Statistical analysis is necessary for any research project seeking to make quantitative conclusions. The following is a primer for research-based statistical analysis. It is intended to be a high-level overview of appropriate statistical testing, while not diving too deep into any specific methodology. Some of the information is more applicable to retrospective projects, where analysis is performed on data that has already been collected, but most of it will be suitable to any type of research. This primer will help the reader understand research results in coordination with a statistician, not to perform the actual analysis. Analysis is commonly performed using statistical programming software such as R, SAS or SPSS. These allow for analysis to be replicated while minimizing the risk for an error. Resources are listed later for those working on analysis without a statistician.

After coming up with a hypothesis for a study, including any variables to be used, one of the first steps is to think about the patient population to apply the question. Results are only relevant to the population that the underlying data represents. Since it is impractical to include everyone with a certain condition, a subset of the population of interest should be taken. This subset should be large enough to have power, which means there is enough data to deliver significant results and accurately reflect the study’s population.

The first statistics of interest are related to significance level and power, alpha and beta. Alpha (α) is the significance level and probability of a type I error, the rejection of the null hypothesis when it is true. The null hypothesis is generally that there is no difference between the groups compared. A type I error is also known as a false positive. An example would be an analysis that finds one medication statistically better than another, when in reality there is no difference in efficacy between the two. Beta (β) is the probability of a type II error, the failure to reject the null hypothesis when it is actually false. A type II error is also known as a false negative. This occurs when the analysis finds there is no difference in two medications when in reality one works better than the other. Power is defined as 1-β and should be calculated prior to running any sort of statistical testing. Ideally, alpha should be as small as possible while power should be as large as possible. Power generally increases with a larger sample size, but so does cost and the effect of any bias in the study design. Additionally, as the sample size gets bigger, the chance for a statistically significant result goes up even though these results can be small differences that do not matter practically. Power calculators include the magnitude of the effect in order to combat the potential for exaggeration and only give significant results that have an actual impact. The calculators take inputs like the mean, effect size and desired power, and output the required minimum sample size for analysis. Effect size is calculated using statistical information on the variables of interest. If that information is not available, most tests have commonly used values for small, medium or large effect sizes.

When the desired patient population is decided, the next step is to define the variables previously chosen to be included. Variables come in different types that determine which statistical methods are appropriate and useful. One way variables can be split is into categorical and quantitative variables. ( Table 1 ) Categorical variables place patients into groups, such as gender, race and smoking status. Quantitative variables measure or count some quantity of interest. Common quantitative variables in research include age and weight. An important note is that there can often be a choice for whether to treat a variable as quantitative or categorical. For example, in a study looking at body mass index (BMI), BMI could be defined as a quantitative variable or as a categorical variable, with each patient’s BMI listed as a category (underweight, normal, overweight, and obese) rather than the discrete value. The decision whether a variable is quantitative or categorical will affect what conclusions can be made when interpreting results from statistical tests. Keep in mind that since quantitative variables are treated on a continuous scale it would be inappropriate to transform a variable like which medication was given into a quantitative variable with values 1, 2 and 3.

Categorical vs. Quantitative Variables

Categorical VariablesQuantitative Variables
Categorize patients into discrete groupsContinuous values that measure a variable
Patient categories are mutually exclusiveFor time based studies, there would be a new variable for each measurement at each time
Examples: race, smoking status, demographic groupExamples: age, weight, heart rate, white blood cell count

Both of these types of variables can also be split into response and predictor variables. ( Table 2 ) Predictor variables are explanatory, or independent, variables that help explain changes in a response variable. Conversely, response variables are outcome, or dependent, variables whose changes can be partially explained by the predictor variables.

Response vs. Predictor Variables

Response VariablesPredictor Variables
Outcome variablesExplanatory variables
Should be the result of the predictor variablesShould help explain changes in the response variables
One variable per statistical testCan be multiple variables that may have an impact on the response variable
Can be categorical or quantitativeCan be categorical or quantitative

Choosing the correct statistical test depends on the types of variables defined and the question being answered. The appropriate test is determined by the variables being compared. Some common statistical tests include t-tests, ANOVA and chi-square tests.

T-tests compare whether there are differences in a quantitative variable between two values of a categorical variable. For example, a t-test could be useful to compare the length of stay for knee replacement surgery patients between those that took apixaban and those that took rivaroxaban. A t-test could examine whether there is a statistically significant difference in the length of stay between the two groups. The t-test will output a p-value, a number between zero and one, which represents the probability that the two groups could be as different as they are in the data, if they were actually the same. A value closer to zero suggests that the difference, in this case for length of stay, is more statistically significant than a number closer to one. Prior to collecting the data, set a significance level, the previously defined alpha. Alpha is typically set at 0.05, but is commonly reduced in order to limit the chance of a type I error, or false positive. Going back to the example above, if alpha is set at 0.05 and the analysis gives a p-value of 0.039, then a statistically significant difference in length of stay is observed between apixaban and rivaroxaban patients. If the analysis gives a p-value of 0.91, then there was no statistical evidence of a difference in length of stay between the two medications. Other statistical summaries or methods examine how big of a difference that might be. These other summaries are known as post-hoc analysis since they are performed after the original test to provide additional context to the results.

Analysis of variance, or ANOVA, tests can observe mean differences in a quantitative variable between values of a categorical variable, typically with three or more values to distinguish from a t-test. ANOVA could add patients given dabigatran to the previous population and evaluate whether the length of stay was significantly different across the three medications. If the p-value is lower than the designated significance level then the hypothesis that length of stay was the same across the three medications is rejected. Summaries and post-hoc tests also could be performed to look at the differences between length of stay and which individual medications may have observed statistically significant differences in length of stay from the other medications. A chi-square test examines the association between two categorical variables. An example would be to consider whether the rate of having a post-operative bleed is the same across patients provided with apixaban, rivaroxaban and dabigatran. A chi-square test can compute a p-value determining whether the bleeding rates were significantly different or not. Post-hoc tests could then give the bleeding rate for each medication, as well as a breakdown as to which specific medications may have a significantly different bleeding rate from each other.

A slightly more advanced way of examining a question can come through multiple regression. Regression allows more predictor variables to be analyzed and can act as a control when looking at associations between variables. Common control variables are age, sex and any comorbidities likely to affect the outcome variable that are not closely related to the other explanatory variables. Control variables can be especially important in reducing the effect of bias in a retrospective population. Since retrospective data was not built with the research question in mind, it is important to eliminate threats to the validity of the analysis. Testing that controls for confounding variables, such as regression, is often more valuable with retrospective data because it can ease these concerns. The two main types of regression are linear and logistic. Linear regression is used to predict differences in a quantitative, continuous response variable, such as length of stay. Logistic regression predicts differences in a dichotomous, categorical response variable, such as 90-day readmission. So whether the outcome variable is categorical or quantitative, regression can be appropriate. An example for each of these types could be found in two similar cases. For both examples define the predictor variables as age, gender and anticoagulant usage. In the first, use the predictor variables in a linear regression to evaluate their individual effects on length of stay, a quantitative variable. For the second, use the same predictor variables in a logistic regression to evaluate their individual effects on whether the patient had a 90-day readmission, a dichotomous categorical variable. Analysis can compute a p-value for each included predictor variable to determine whether they are significantly associated. The statistical tests in this article generate an associated test statistic which determines the probability the results could be acquired given that there is no association between the compared variables. These results often come with coefficients which can give the degree of the association and the degree to which one variable changes with another. Most tests, including all listed in this article, also have confidence intervals, which give a range for the correlation with a specified level of confidence. Even if these tests do not give statistically significant results, the results are still important. Not reporting statistically insignificant findings creates a bias in research. Ideas can be repeated enough times that eventually statistically significant results are reached, even though there is no true significance. In some cases with very large sample sizes, p-values will almost always be significant. In this case the effect size is critical as even the smallest, meaningless differences can be found to be statistically significant.

These variables and tests are just some things to keep in mind before, during and after the analysis process in order to make sure that the statistical reports are supporting the questions being answered. The patient population, types of variables and statistical tests are all important things to consider in the process of statistical analysis. Any results are only as useful as the process used to obtain them. This primer can be used as a reference to help ensure appropriate statistical analysis.

Alpha (α)the significance level and probability of a type I error, the probability of a false positive
Analysis of variance/ANOVAtest observing mean differences in a quantitative variable between values of a categorical variable, typically with three or more values to distinguish from a t-test
Beta (β)the probability of a type II error, the probability of a false negative
Categorical variableplace patients into groups, such as gender, race or smoking status
Chi-square testexamines association between two categorical variables
Confidence intervala range for the correlation with a specified level of confidence, 95% for example
Control variablesvariables likely to affect the outcome variable that are not closely related to the other explanatory variables
Hypothesisthe idea being tested by statistical analysis
Linear regressionregression used to predict differences in a quantitative, continuous response variable, such as length of stay
Logistic regressionregression used to predict differences in a dichotomous, categorical response variable, such as 90-day readmission
Multiple regressionregression utilizing more than one predictor variable
Null hypothesisthe hypothesis that there are no significant differences for the variable(s) being tested
Patient populationthe population the data is collected to represent
Post-hoc analysisanalysis performed after the original test to provide additional context to the results
Power1-beta, the probability of avoiding a type II error, avoiding a false negative
Predictor variableexplanatory, or independent, variables that help explain changes in a response variable
p-valuea value between zero and one, which represents the probability that the null hypothesis is true, usually compared against a significance level to judge statistical significance
Quantitative variablevariable measuring or counting some quantity of interest
Response variableoutcome, or dependent, variables whose changes can be partially explained by the predictor variables
Retrospective studya study using previously existing data that was not originally collected for the purposes of the study
Sample sizethe number of patients or observations used for the study
Significance levelalpha, the probability of a type I error, usually compared to a p-value to determine statistical significance
Statistical analysisanalysis of data using statistical testing to examine a research hypothesis
Statistical testingtesting used to examine the validity of a hypothesis using statistical calculations
Statistical significancedetermine whether to reject the null hypothesis, whether the p-value is below the threshold of a predetermined significance level
T-testtest comparing whether there are differences in a quantitative variable between two values of a categorical variable

Funding Statement

This research was supported (in whole or in part) by HCA Healthcare and/or an HCA Healthcare affiliated entity.

Conflicts of Interest

The author declares he has no conflicts of interest.

Christian Vandever is an employee of HCA Healthcare Graduate Medical Education, an organization affiliated with the journal’s publisher.

This research was supported (in whole or in part) by HCA Healthcare and/or an HCA Healthcare affiliated entity. The views expressed in this publication represent those of the author(s) and do not necessarily represent the official views of HCA Healthcare or any of its affiliated entities.

An Introduction to Data Analysis

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In this chapter, you begin to take the first steps in the world of data analysis, learning in detail about all the concepts and processes that make up this discipline. The concepts discussed in this chapter are helpful background for the following chapters, where these concepts and procedures will be applied in the form of Python code, through the use of several libraries that will be discussed in just as many chapters.

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Nelli, F. (2018). An Introduction to Data Analysis. In: Python Data Analytics. Apress, Berkeley, CA. https://doi.org/10.1007/978-1-4842-3913-1_1

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Data analysis and findings

Data analysis is the most crucial part of any research. Data analysis summarizes collected data. It involves the interpretation of data gathered through the use of analytical and logical reasoning to determine patterns, relationships or trends. 

Data Analysis Checklist

Cleaning  data

* Did you capture and code your data in the right manner?

*Do you have all data or missing data?

* Do you have enough observations?

* Do you have any outliers? If yes, what is the remedy for outlier?

* Does your data have the potential to answer your questions?

Analyzing data

* Visualize your data, e.g. charts, tables, and graphs, to mention a few.

*  Identify patterns, correlations, and trends

* Test your hypotheses

* Let your data tell a story

Reports the results

* Communicate and interpret the results

* Conclude and recommend

* Your targeted audience must understand your results

* Use more datasets and samples

* Use accessible and understandable data analytical tool

* Do not delegate your data analysis

* Clean data to confirm that they are complete and free from errors

* Analyze cleaned data

* Understand your results

* Keep in mind who will be reading your results and present it in a way that they will understand it

* Share the results with the supervisor oftentimes

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An Overview of Data Analysis and Interpretations in Research

Profile image of Dawit Dibekulu

Research is a scientific field which helps to generate new knowledge and solve the existing problem. So, data analysis is the crucial part of research which makes the result of the study more effective. It is a process of collecting, transforming, cleaning, and modeling data with the goal of discovering the required information. In a research it supports the researcher to reach to a conclusion. Therefore, simply stating that data analysis is important for a research will be an understatement rather no research can survive without data analysis. It can be applied in two ways which is qualitatively and quantitative. Both are beneficial because it helps in structuring the findings from different sources of data collection like survey research, again very helpful in breaking a macro problem into micro parts, and acts like a filter when it comes to acquiring meaningful insights out of huge data-set. Furthermore, every researcher has sort out huge pile of data that he/she has collected, before reaching to a conclusion of the research question. Mere data collection is of no use to the researcher. Data analysis proves to be crucial in this process, provides a meaningful base to critical decisions, and helps to create a complete dissertation proposal. So, after analyzing the data the result will provide by qualitative and quantitative method of data results. Quantitative data analysis is mainly use numbers, graphs, charts, equations, statistics (inferential and descriptive). Data that is represented either in a verbal or narrative format is qualitative data which is collected through focus groups, interviews, opened ended questionnaire items, and other less structured situations.

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what is analysis in research pdf

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The data available is growing at an exponential rate. The increase in data in itself is a minor problem, but the percentage of unstructured data in the overall data volume is what is concerning all. so it becomes a basic necessity to discover ways to process and transform complex, unstructured, or large amounts of data-into meaningful insights, This brief outline of data analysis will help us understand what is data analysis, the value it holds in many industries worldwide and how majority of the organizations in various sectors bank on data analysis to survive the ongoing market race. This paper maintains its focus on explaining the basic procedures followed in obtaining something immensely useful from the available disorganized facts and figures by analyzing them. Also discussed briefly are its applications in areas such as management, retail, healthcare, education and so on. This paper highlights important concepts of data analysis.

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"Data analysis is the process of bringing order, structure and meaning to the mass of collected data. It is a messy, ambiguous, time consuming, creative, and fascinating process. It does not proceed in a linear fashion; it is not neat. Data analysis is a search for answers about relationships among categories of data."-Marshall and Rossman, 1990:111 Hitchcock and Hughes take this one step further: "…the ways in which the researcher moves from a description of what is the case to an explanation of why what is the case is the case."-Hitchcock and Hughes 1995:295 IV.1 INTRODUCTION In Chapter three, researcher had discussed the research design and methodology, origin of the research, design of the research, variable of the research, population and sample of the research, tools for data collection, development stage of the CAI package, procedure for data collection, statistical analysis done in research work. Data analysis is considered to be important step and heart of the research in research work. In the beginning the data is raw in nature but after it is arranged in a certain format or a meaningful order this raw data takes the form of the information. The most critical and essential supporting pillars of the research are the analysis and the interpretation of the data. With the help of the interpretation step one is able to achieve a conclusion from the set of the gathered data. Interpretation has two major aspects namely establishing continuity in the research through linking the results of a given study with those of another and the establishment of some relationship with the collected data. Interpretation can be defined as the device through which the factors, which seem to explain what has been observed by the researcher in the course of the

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Data analysis is a critical stage in social research. Considering its primary audience—project students at the undergraduate level—the paper covers the basics approaches to analyzing data from social research. Using simple terms, as much as possible, it briefly traces the epistemological roots of the qualitative and quantitative data to subjectivism and positivism respectively. The paper treats some crosscutting issues in the analysis of data from social research. These issues are the role of research questions in analyzing data, developing data analysis algorithm, ethics of data analysis. Analyses of quantitative and qualitative data are treated separately. Under quantitative data analysis it provides basic information to understand the logic behind the main statistical tools and appreciate how and when to use them in actual research situations. It covers certain foundational concepts germane to the field of numerical analysis including scales of data, parametric and non-parametric data, descriptive and inferential statistics, kinds of variables, hypotheses, one-tailed and two-tailed tests, and statistical significance. Under qualitative data analysis, the paper provided a six-stage general procedure for analyzing qualitative data. These are organizing the data, finding and organizing ideas and concepts, building overarching themes in the data, ensuring reliability and validity in the data analysis and in the findings, finding possible and plausible explanations for findings; and the final steps. The paper provides Brief information on the use of computer technology in form of online services and computer software for data analysis. Keywords: algorithm, data analysis, ethics, quantitative data, qualitative data, statistics.

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Investigating the effectiveness of endogenous and exogenous drivers of the sustainability (re)orientation of family smes in slovenia: qualitative content analysis approach.

what is analysis in research pdf

1. Introduction

2. literature review, 2.1. legal framework on sustainable corporate governance (with a focus on smes), 2.1.1. corporate sustainability reporting directive, 2.1.2. corporate sustainability due diligence directive, 2.1.3. scope of the csddd for smes, 2.2. drivers of the family businesses’ (re)orientation towards sustainability, 2.3. endogenous drivers, 2.3.1. the protection of sew, 2.3.2. ownership and management composition, 2.3.3. values, beliefs and attitudes of family owner-managers, 2.3.4. transgenerational continuity and long-term orientation, 2.3.5. knowledge of sustainability, 2.4. exogenous drivers, 2.4.1. stakeholders pressure, 2.4.2. the impact of institutional environment and local communities, 3. empirical research, 3.1. institutional context of slovenia, 3.2. research method, 3.3. sampling and data collection, 3.4. data analysis, 4.1. results of the final coding of the family businesses’ sustainability (re)orientation, 4.2. references to responsibility, preserving (natural) environment and sustainability/sustainable development in the analysed statements, 4.3. family businesses with a higher level of sustainability awareness and orientation, 5. discussion, 5.1. sustainability awareness and readiness of investigated family smes to comply with the new eu legal framework, 5.2. the effectiveness of endogenous and exogenous drivers of family businesses’ sustainability (re)orientation, 6. conclusions, author contributions, institutional review board statement, informed consent statement, data availability statement, conflicts of interest.

  • Communication from the Commission to the European Parliament, the Council, the European Economic and Social Committee and the Committee of The Regions, An SME Strategy for a sustainable and digital Europe, COM/2020/103 final. Available online: https://eur-lex.europa.eu/legal-content/EN/TXT/?uri=COM%3A2020%3A103%3AFIN (accessed on 25 June 2024).
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No. of CategoryCategory Name and Its DefinitionNo. of Subcat.Subcategory
C1Vision
Describe what a firm would like to become.
C1.1Reference to sustainability/sustainable development
C1.2Reference to preserving (natural) environment
C1.3Reference to a position in market(s) and/or industry
C1.4Reference to the characteristics of products
C1.5Miscellaneous
C2 Mission
Defines the purpose and reason why a firm exists.
C2.1Reference to sustainability/sustainable development
C2.2Reference to preserving (natural) environment
C2.3Reference to the characteristics of products
C2.4Reference to the customers’ needs
C3Goals
The result of planned activities, can be quantified or open-ended statement with no quantification.
C3.1Reference to sustainability/sustainable development
C3.2Reference to a position in market(s) and/or industry
C3.3Miscellaneous
C4Values
Consider what should be and what is desirable.
C4.1Reference to sustainability/sustainable development
C4.2Reference to preserving (natural) environment
C4.3Reference to responsibility
C4.4Miscellaneous
C5Strategies or strategic directions
State how a company is going to achieve its vision, mission and goals.
C5.1Reference to sustainability/sustainable development
C5.2Reference to preserving (natural) environment
C5.3References to (expansion to) new markets
C6Specific of functioning
Activities, processes, behaviour.
C6.1Reference to sustainability/sustainable development
C6.2Reference to preserving (natural) environment
C6.3Reference to the characteristics of products
C6.4Reference to competitive strengths
C6.5Miscellaneous
Unit of Analysis
(A Family Business)
C1 VisionC2
Mission
C3
Goals
C4
Values
C5
Strategies or Strategic Directions
C6
Specifics of Functioning
U1C1.1C2.1C3.2 C5.1
U2 C5.3C6.4
U3 C6.2
U4 C2.4C3.2
U5C1.3 C3.2 C5.2
U6C1.3C2.4
U7 C3.2 C6.3
U8C1.1 C4.3 C6.1
U9C1.3C2.2 C5.3C6.2
U10C1.4
U11 C3.2
U12 C3.2C4.2 C6.2
U13 C4.1 C6.2
U14C1.2C2.3 C6.4
U15C1.4C2.3
U16C1.1 C6.1
U17 C6.4
U18C1.5 C4.2
U19C1.2 C3.3 C6.2
U20 C6.3
U21C1.3C2.4 C4.2
U22C1.3 C4.2 C6.2
U23C1.1 C4.4C5.1C6.1
U24C1.3 C4.3 C6.4
U25C1.1C2.2C3.1 C5.1C6.2
U26 C6.4
Family businesses with published statement (number)16888617
Family businesses with reference to sustainability and protection of natural environment, responsibility (number)7317410
U1U8U23U25
Family name in in the name of a companynononono
Ownership (generation, number of family owners, % of family ownership)first and second generation (father, two sons), 100%first generation
(founder), 100%
first generation
(husband and wife), 100%
first generation (founder), 100%
Management (generation, number of family managers)second generation
(two sons)
first generation
(founder’s wife)
first and second generation
(husband, wife, and both children)
first and second generation (founder—father, daughter)
Sizesmallmedium-sizedmedium-sizedmedium-sized
Main activity and marketswholesale and retail trade;
market: Slovenia
manufacturing;
markets: Slovenia, other countries
manufacturing;
markets: Slovenia, other countries
manufacturing;
markets: Slovenia, other countries
The year of establishment1990198919951992
Family Name in the Name of a CompanyOwnership
(Generation, % of Family Ownership)
Management
(Generation)
SizeMain ActivityThe Year of Establishment
U2nofirst and second, 100%secondsmallmanufacturing1993
U4yesthird, 100%thirdsmallmanufacturing1992
U6nosecond, 100%secondsmallmanufacturing1995
U7yesfirst, 100%firstsmallwholesale and retail trade1993
U10nofirst, 100%firstmicroservice activities2009
U11nothird, 100%thirdsmallwholesale and retail trade1960
U15nofirst and second, 100%first and secondsmallagriculture1991
U17nofirst, 100%first and secondmicroagriculture2007
U20yesfirst, 100%first and secondsmallmanufacturing1982
U26yesSecond, 100%secondmedium-sizedwholesale and retail trade1988
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Duh, M.; Primec, A. Investigating the Effectiveness of Endogenous and Exogenous Drivers of the Sustainability (Re)Orientation of Family SMEs in Slovenia: Qualitative Content Analysis Approach. Sustainability 2024 , 16 , 7285. https://doi.org/10.3390/su16177285

Duh M, Primec A. Investigating the Effectiveness of Endogenous and Exogenous Drivers of the Sustainability (Re)Orientation of Family SMEs in Slovenia: Qualitative Content Analysis Approach. Sustainability . 2024; 16(17):7285. https://doi.org/10.3390/su16177285

Duh, Mojca, and Andreja Primec. 2024. "Investigating the Effectiveness of Endogenous and Exogenous Drivers of the Sustainability (Re)Orientation of Family SMEs in Slovenia: Qualitative Content Analysis Approach" Sustainability 16, no. 17: 7285. https://doi.org/10.3390/su16177285

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