| Literature DB >> 28438726 |
Allison A Lewinski1, Ruth A Anderson2, Allison A Vorderstrasse1, Edwin B Fisher3,4, Wei Pan1, Constance M Johnson5.
Abstract
BACKGROUND: Individuals with type 2 diabetes have an increased risk for comorbidities such as heart disease, lower limb amputations, stroke, and renal failure. Multiple factors influence development of complications in a person living with type 2 diabetes; however, an individual's self-management behaviors may delay the onset of, or lessen the severity of, these complications. Social support provides personal, informal advice and knowledge that helps individuals initiate and sustain self-management and adherence.Entities:
Keywords: Internet; adults; diabetes type 2; mixed methods; peer support; secondary analysis; self-management; social interaction; social support
Year: 2017 PMID: 28438726 PMCID: PMC5422658 DOI: 10.2196/resprot.7442
Source DB: PubMed Journal: JMIR Res Protoc ISSN: 1929-0748
Terms used in this study.
| Term | Definition for this study |
| Self-management behaviors | Daily activities completed by the individual living with T2D, which may include [ |
| Social interaction | A bidirectional, verbal, or written exchange between two or more individuals on a mutually shared, central topic [ |
| Social support | Personal, informal advice and knowledge that help individuals initiate and sustain T2D self-management behaviors, thus increasing adherence [ |
| Computer-mediated environment | A computer medium that mediates communication among individuals [ |
Figure 1Guiding framework for this secondary analysis of qualitative and quantitative data from adults living with type 2 diabetes who interacted in a virtual environment. The bolded lines indicate the focus of this secondary analysis.
Operationalization of social interaction, social support, and source of support for this secondary analysis.
| Variable | Operationalization in this study |
| Social interaction | Topic [ |
| Ties (strong/weak) [ | |
| Depth [ | |
| Breadth [ | |
| Participation (active/passive): present and talking; present, not talking | |
| Social support (4 categories as noted in the literature [ | Emotional: exchange of feelings of trust, caring, love, belongingness, and warmth when discussing T2D self-management or behaviors |
| Instrumental: exchange of tangible goods or services related to T2D self-management | |
| Informational: exchange of T2D-specific information among individuals | |
| Appraisal: exchange of praise for a T2D self-management behavior or action | |
| Emergent codes: to capture instances in the conversations not covered by the 4 categories of social support | |
| Source of support (providers of support and/or education within the CME) | Provider: nurse practitioners, certified diabetes educator, principal investigator of SLIDES |
| Peer: another individual with T2D |
Data analysis plan for the qualitative aims.
| Aim and steps | Plan | |
| Study Aim 1: Characterizing social interaction | To describe the characteristics of social interaction using six a priori categories: (1) topics discussed, (2) strong/weak ties, (3) depth, (4) breadth, (5) participation, (6) general engagement in the CME; and emergent codes that arise in a CME about self-management | |
| Study Aim 2: Characterizing social support | To describe the characteristics of social support using the four a priori categories of social support: (1) emotional, (2) instrumental, (3) informational, and (4) appraisal; and emergent codes as they arise in a CME about self-management | |
| Analysis Step 1: First level coding process (data-near coding process) | Determine appropriate coding unit for each a priori code | |
| Demographic coding (eg, conversation type, participant ID, participant study time, location in virtual environment, class type, conversation type) | ||
| Code data: | ||
| Social interaction: Use a priori codes ( | ||
| Social support: Use a priori codes ( | ||
| Team process: Code independently, gather together and debate definitions and coding, re-code documents following the meeting | ||
| Analysis Step 2: Second level coding process (increasing abstraction of codes) | When themes are created, create variables | |
| Create higher level, more abstract codes based on the first level codes: Social interaction and Social support | ||
| Team process: Same steps taken as in the first level coding process | ||
Data analysis plan for the mixed-method aim.
| Aim and steps | Plan |
| Study Aim 3: Mixed-methods aim | To describe the trends of social interaction and social support over time, and the longitudinal relationship between social support and social interaction with SLIDES outcome data including self-management behaviors, self-efficacy, diabetes knowledge, perceived support for T2D management, physiological data (HbA1c, body mass index), and activity data (number of logins, time spent online) |
| Analysis Step 3: mixing the data (identifying areas of convergence and divergence of these data) | Identify patterns that emerge that can be described with sample demographics (eg, race, duration of diabetes) |
Figure 2Sample of graphs for Aim 3, the mixed-methods aim for BMI and time. We first visually categorize the 20 trajectories of informational support into increased, unchanged, and decreased groups. Here shows a plot of the three subgroup’s BMI across the time points to see if the trajectories of BMI are correlated with the informational support: BMI decreased for the group of increased information support (filled line), BMI unchanged for the group of unchanged informational support (dotted line), and BMI increased for the group of decreased informational support (dashed line).