name: bio-logic description: Evaluates scientific research rigor using systematic frameworks. Assesses methodology, statistics, biases, and evidence quality. Use when reviewing papers, critiquing claims, designing studies, rating evidence strength (GRADE/Cochrane ROB), checking study design, statistical critique, or risk of bias assessment.
Bio-Logic: Scientific Reasoning Evaluation
Instructions
- Identify the task using Quick Reference below
- Use the appropriate framework from this file or references
- Adapt depth to context - use full checklists for thorough reviews, key items for quick assessments
- Structure output using the Output Format template
Quick Reference
Navigate to the right tool for your task:
| Task | Location |
|---|---|
| Review a paper | Critique Checklist below |
| Evaluate a claim | Claim Assessment below |
| Assess evidence strength | references/evidence.md |
| Identify biases | references/biases.md |
| Spot statistical errors | references/stats.md |
| Detect logical fallacies | references/fallacies.md |
| Design/review a study | references/design.md |
Critique Checklist
Use relevant sections based on the review scope. Skip items not applicable to the study type.
## Methodology
- [ ] Design matches research question (causal claim → RCT needed)
- [ ] Sample size justified (power analysis reported)
- [ ] Randomization/blinding implemented where feasible
- [ ] Confounders identified and controlled
- [ ] Measurements validated and reliable
## Statistics
- [ ] Tests appropriate for data type
- [ ] Assumptions checked
- [ ] Multiple comparisons corrected
- [ ] Effect sizes + CIs reported (not just p-values)
- [ ] Missing data handled appropriately
## Interpretation
- [ ] Conclusions match evidence strength
- [ ] Limitations acknowledged
- [ ] Causal claims only from experimental designs
- [ ] No cherry-picking or overgeneralization
## Red Flags
- [ ] P-values clustered just below .05
- [ ] Outcomes differ from registration
- [ ] Correlation presented as causation
- [ ] Subgroups analyzed without preregistration
Claim Assessment
For any scientific claim:
- Identify claim type: Causal, associational, or descriptive?
- Match evidence to claim: Does study design support this claim type?
- Check logical connection: Do conclusions follow from data?
- Evaluate proportionality: Is confidence matched to evidence strength?
Causal claims require: Temporal precedence + covariation + alternative explanations ruled out (ideally experimental manipulation).
Claim strength ladder:
| Language | Requires |
|---|---|
| "Proves" / "Demonstrates" | Strong experimental evidence |
| "Suggests" / "Indicates" | Observational with controlled confounds |
| "Associated with" | Observational, no causal claim |
| "May" / "Might" | Preliminary or hypothesis-generating |
Output Format
Structure critiques as:
## Summary
[1-2 sentences: What was studied and main finding]
## Strengths
- [Specific methodological strengths]
## Concerns
### Critical (threaten main conclusions)
- [Issue + why it matters]
### Important (affect interpretation)
- [Issue + why it matters]
### Minor (worth noting)
- [Issue]
## Evidence Rating
[GRADE level: High/Moderate/Low/Very Low with justification]
## Bottom Line
[What can/cannot be concluded from this evidence]
Examples
Example 1: Quick Paper Critique
Input: "Review this RCT on vitamin D and depression"
Output:
## Summary
RCT of 200 adults testing vitamin D supplementation for depression over 12 weeks.
## Strengths
- Randomized, double-blind, placebo-controlled
- Validated depression scale (PHQ-9)
- Adequate power analysis
## Concerns
### Critical
- 35% dropout, differential by group (attrition bias)
- ITT analysis not performed
### Important
- Single-site limits generalizability
## Evidence Rating
Moderate (downgraded from high due to attrition bias)
## Bottom Line
Suggestive but not conclusive due to differential attrition.
Example 2: Claim Assessment
Input: "This study proves that coffee prevents Alzheimer's"
Assessment: Claim uses causal language ("prevents") but if based on observational data, this is a correlation→causation fallacy. Would need RCT or strong observational evidence (large effect, dose-response, controlled confounds) to support causal claim. Appropriate language: "Coffee consumption is associated with lower Alzheimer's risk."
Principles
- Be constructive - Identify strengths, suggest improvements
- Be specific - Quote problematic statements, cite specific issues
- Be proportionate - Match criticism severity to impact on conclusions
- Be consistent - Same standards regardless of whether you agree with findings
- Distinguish - Data vs interpretation, correlation vs causation, statistical vs practical significance
Reference Materials
Detailed frameworks for specific evaluation tasks:
- references/evidence.md - GRADE system, evidence hierarchy, validity types, Bradford Hill criteria
- references/biases.md - Bias taxonomy with detection strategies
- references/stats.md - Statistical pitfalls and correct interpretations
- references/fallacies.md - Logical fallacies in scientific arguments
- references/design.md - Experimental design checklist