| Literature DB >> 30013707 |
Damian Roland1,2, Jesse Spurr3,4, Daniel Cabrera5.
Abstract
The use of social media platforms to disseminate information, translate knowledge, change clinical care and create communities of practice is becoming increasingly common in emergency and critical care. With this adoption come new lines and methods of inquiry for research in healthcare. While tools exist to standardize the reporting of clinical studies and systematic reviews, there is no agreed framework for examining social media-based research. This article presents a publication and appraisal checklist for such work and invites further collaboration in the form of a Delphi technique to clarify, expand, improve, and validate the proposal.Entities:
Mesh:
Year: 2018 PMID: 30013707 PMCID: PMC6040901 DOI: 10.5811/westjem.2018.3.36489
Source DB: PubMed Journal: West J Emerg Med ISSN: 1936-900X
FigureA matrix of data collection and analysis. Adapted from Edwards et al.11
Checklist for publication of social media–based research, the NOECO statement.
| Section/topic | No | Item | Page reported |
|---|---|---|---|
| Title | 1 | Identify manuscript as an analysis of social media data using specific analytical tools. | |
| Abstract | |||
| Summary | 2 | Report the background; objectives: including the data source and time frame; methods: including analytical engine to extract the data as well as data management tools; results: description of raw data, description of post-analysis data and limitations; conclusions: key findings. | |
| Introduction | |||
| Rationale | 3 | Describe what is already known about the topic and the rationale for the data extraction and analysis. | |
| Objectives | 4 | Provide an explicit statement of questions being addressed with reference to defining the network and what is being evaluated, compared, and observed ( | |
| Methods | |||
| Protocol | 5 | Indicate whether a protocol (i.e., a pre-defined method to undertake the evaluation of the social media data) exists, if it was created prior to the data extraction and analysis, and where it can be accessed (e.g. permalink at website). | |
| Data source | 6 | Describe the data source in terms of platform and type of data (e.g., raw data, filtered by the researchers, or managed by platform automatically). | |
| Data appropriateness | 7 | Describe theoretical frameworks, characteristics of the data, inferences about data, and inferences about users. (e.g., does the data that is suggested to be used have internal validity for the question that is being asked.) | |
| Data inclusion | 8 | Describe data to be included and search strategy to be used and rationale. | |
| Data exclusion | 9 | Describe data to be excluded, nodes or uses to be excluded, (e.g., suspected spam [automatic commercial offerings] or bots [automatic nodes designed to influence networks]), and data arguments to be excluded and rationale. | |
| Data extraction | 10 | Describe data extraction engine to be used, program interface version if available, output format, and corruption data percentage. Describe how data was filtered. | |
| Data analysis | 11 | Describe analytical tool used, cite pertinent papers describing methods of the tool, and describe the output format of the data. If analysis is performed by the data extraction engine itself, the underpinning (e.g., network centrality calculation – who/what are the most important people or nodes in a network) methodology should be described. | |
| Synthesis of results | 12 | Describe the statistical analysis tool (e.g., univariate analysis), specifically if using large datasets statistical tools (e.g., eigenvectors). | |
| Results | |||
| Data selection | 13 | Provide platform, dates, and magnitude of the data points and search strategy. | |
| Data corruption | 14 | Provide magnitude of data corruption, contamination (spam bots), unobtainable or missing data. Describe source of corruption/bias. | |
| Data quality | 15 | Describe whether the data quality is appropriate in terms of size, corruption and ability to make appropriate inferences. Describe whether the Objects and Engine (from NOECO) were appropriate. | |
| Analysis | 16 | Describe how the data analysis supports or disproves the original question. Describe whether end points or surrogate markers were met. Describe the Comparison and Outcomes from the NOECO question. | |
| Discussion | |||
| Summary | 17 | Describe the main findings in the dataset, i.e., how they do (or do not) answer the NOECO data question. | |
| Limitations | 18 | Describe data source, set, and analysis limitations. | |
| Conclusions | 19 | Provide a general interpretation of the data question after the data analysis. | |
| Disclosures | 20 | Describe sources of funding, support, and conflict of interest, particularly regarding proprietary data extraction and analysis tools. | |
Example of best practices for reporting and analysis on Branford OA, Kamali P, Rohrich RJ, et al. #PlasticSurgery. Plast Reconstr Surg. 2016;138(6):1354–65. Checklist items defined in Table 2.
| Checklist item | Description on the paper | Page |
|---|---|---|
| 1 | The manuscript identifies itself implicitly as an analysis of social media data using the hashtag symbol in the title; however, it fails to specify analytical tools | 1/1354 |
| 2 | The manuscript reports background, objectives, data source (Twitter), description of the raw data, description of post analysis and conclusions. The abstract does not describe time frame, analytical engine, management tools or limitations. | 1/1354 |
| 3 | The article describes a round rationale of what is already known, particularly for the field of social media and plastic surgery. | 1,2/1354–1355 |
| 4 | The manuscript describes the objectives using a clear framework:
Network: Twitter Object: Hashtag “Plastic-Surgery” (#Plastic-Surgery) and free text “plastic surgery” Analytical Engine: Not explicitly described, but appears to be Symplur Signals per citation in the references section. Comparison/Control: None apparent; this appears to be a descriptive netnographic analysis. Observation: Clearly described: hashtag-use description, subject matter, links to plastic surgery journals and self-promotion. | 2–3/1355–1356 |
| 5 | No description of protocol for data extraction. | |
| 6 | The manuscript describes network source, type of data and filters. | 2/1355 |
| 7 | The manuscript describes characteristics of the data, surrogate markers, inferences about producers and users. | 2/1355–1357 |
| 8 | Description of data inclusion is clear. | 2/1355 |
| 9 | Description of data exclusion is clear (e.g., bots and non-English). | 2/1355 |
| 10 | Not described, but inferred from references and figures to be Symplur Signals. No details on data corruption or refinement method. | |
| 11 | Not described. | |
| 12 | Not described. | |
| 13 | The manuscript describes platform, dates and data points clearly. | 3/1356 |
| 14 | Not described. | |
| 15 | NOECO statement described previously, and there is an implicit assertion that it was appropriate for the analysis. | |
| 16 | The manuscript contains a clear analysis about the data supporting the original study aim (description of the hashtag use). | 3–11/1356–1364 |
| 17 | The manuscript describes the main findings that answer the NOECO question. | 3–11/1356–1364 |
| 18 | No clear description on limitations. | |
| 19 | The manuscript provides a general interpretation of the data source, set and analysis. | 11–12/1364–1365 |
| 20 | The manuscript describes clear disclosures, including support and conflicts of interest. | 1/1354 |