Evaluates published study methodology in plain language — identifying strengths, weaknesses, and what claims the design can support — so journalists can report accurately without overstating or understating significance.
How this skill is triggered — by the user, by Claude, or both
Slash command
/autopunk-media-skills:study-methodology-evaluatorThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Evaluates the methodology of a published study in plain language — identifying its strengths, weaknesses, and the specific claims the study design can and cannot support — so a journalist can report on the research without overstating or understating its significance.
Evaluates the methodology of a published study in plain language — identifying its strengths, weaknesses, and the specific claims the study design can and cannot support — so a journalist can report on the research without overstating or understating its significance.
Required: The study's methodology section (or a detailed description of the study design, sample size, population, measures, and analytical approach). The more methodological detail you provide, the more specific the evaluation.
Optional: The claims being made about the study in media coverage or press releases (helps evaluate whether the methodology supports those specific claims); the specific methodological concerns you have; the field or discipline (statistical conventions vary between fields); whether you need a quick assessment or a detailed evaluation.
Classifies the study design. Identifies the study type — randomised controlled trial, cohort study, case-control study, cross-sectional survey, meta-analysis, qualitative study, case study — and explains in plain language what this design can and cannot demonstrate (particularly regarding causation vs. correlation).
Evaluates the sample. Assesses sample size (adequate for the effect being measured?), selection method (random, convenience, self-selected?), population characteristics (who was studied and who was excluded), and representativeness (can findings be generalised beyond the study population?).
Assesses the measures. Evaluates what was actually measured (the operationalisation of the key concepts), whether the measures are validated and reliable, and whether what was measured matches the claims being made. A study measuring "self-reported happiness" is not measuring "wellbeing" in the same way a study measuring cortisol levels is.
Examines the analytical approach. Evaluates whether the statistical or analytical methods are appropriate for the study design and data type. Flags specific concerns: multiple comparisons without correction, subgroup analyses presented as primary findings, p-hacking indicators, and inappropriate use of causal language for observational data.
Delivers a plain-language verdict. Provides a clear, jargon-free assessment of what the study can legitimately claim and where the methodology limits the conclusions. Rates the overall methodological strength as strong, moderate, or weak — with specific justification.
500–800 words. Five labelled sections: Study Design (classification and what it can demonstrate), Sample Assessment (size, selection, representativeness), Measurement Assessment (what was measured and how well), Analytical Concerns (statistical or methodological issues), and Bottom Line (plain-language verdict on what the study can and cannot claim). Tone: fair, precise, educational. Does not dismiss weak studies as worthless or praise strong studies uncritically — every study has strengths and limitations.
Study description: A cross-sectional online survey of 1,200 adults in a single country, examining the relationship between social media use (measured as self-reported daily hours) and anxiety symptoms (measured using the GAD-7 validated scale). The researchers found that participants reporting more than 3 hours of daily social media use had significantly higher anxiety scores (mean GAD-7 score 9.8 vs. 6.2, p<0.001). They controlled for age, gender, and income. The study was published in a peer-reviewed psychology journal.
Claims being made: A press release from the university states: "Heavy social media use causes anxiety, study finds." Several news articles have picked up this framing.
Study Design
This is a cross-sectional survey — it collected data from participants at a single point in time. This design can identify associations (people who use more social media also report more anxiety) but cannot establish causation. The press release claim that social media "causes" anxiety is not supported by this study design.
Why not? A cross-sectional study cannot determine the direction of the relationship. Three explanations are equally consistent with the data:
To establish causation, you would need a longitudinal study (tracking the same people over time to see which comes first) or an experimental study (randomly assigning people to different levels of social media use).
Sample Assessment
Measurement Assessment
Analytical Concerns
Bottom Line
This is a methodologically moderate study. It has a reasonable sample size and uses a validated anxiety measure, which are genuine strengths. However, its cross-sectional design means it cannot support causal claims, and the self-reported social media use measure is a significant weakness.
The press release claim that "heavy social media use causes anxiety" is not supported by this study design. Accurate framing: "Adults who report spending more than three hours daily on social media also report higher levels of anxiety symptoms, according to a survey of 1,200 people — but the study could not determine whether social media use drives anxiety, anxiety drives social media use, or both are driven by other factors."
If an editor asks "should we cover this?" — the study is publishable as a finding about association, but only if the article avoids causal language and includes the design limitations. It is not strong enough to anchor a "social media causes anxiety" headline.
npx claudepluginhub ur-grue/autopunk-media-skills --plugin autopunk-media-skillsEvaluates scientific claims and evidence quality using GRADE and Cochrane Risk of Bias frameworks, assessing experimental design, biases, and confounders for critical analysis.
Performs structured peer review of research methodology, experimental design, and manuscript quality. Use for manuscripts, preprints, proposals, or thesis chapters.
Evaluates scientific claims and evidence quality using GRADE and Cochrane Risk of Bias frameworks. Assesses experimental design, biases, confounders, and statistical validity.