Agent skill

epidemiology

Performs epidemiological analyses including disease modeling (SIR/SEIR), outbreak investigation, risk factor identification, incidence/prevalence estimation, and causal inference from observational data; trigger when users discuss disease spread, public health data, or population-level health patterns.

Stars 571
Forks 57

Install this agent skill to your Project

npx add-skill https://github.com/beita6969/ScienceClaw/tree/main/skills/epidemiology

SKILL.md

When to Trigger

Activate this skill when the user mentions:

  • SIR, SEIR, compartmental models, R0, reproduction number
  • Outbreak investigation, contact tracing, epidemic curves
  • Incidence, prevalence, mortality rates, case-fatality ratio
  • Risk factors, odds ratio, relative risk, hazard ratio
  • Cohort studies, case-control studies, cross-sectional surveys
  • DAGs (directed acyclic graphs), causal inference, confounding
  • Vaccine efficacy, herd immunity, attack rate

Step-by-Step Methodology

  1. Define the epidemiological question - Specify the disease/condition, population, time period, and geographic scope. Determine if descriptive, analytic, or modeling approach is needed.
  2. Data characterization - Identify data source (surveillance, registry, survey). Assess case definitions (confirmed, probable, suspected). Check completeness and reporting biases.
  3. Descriptive epidemiology - Characterize by person (age, sex, demographics), place (geographic distribution, mapping), and time (epidemic curves, secular trends, seasonality).
  4. Measure calculation - Compute incidence rate (person-time denominator), prevalence (point or period), attack rate, case-fatality ratio. Report with 95% confidence intervals.
  5. Analytic methods - For causal questions: draw a DAG to identify confounders and colliders. Use appropriate regression (logistic for OR, Poisson/negative binomial for rates, Cox for time-to-event). Apply propensity score methods if needed.
  6. Disease modeling - Build SIR/SEIR compartmental models. Estimate R0 from early epidemic growth rate or next-generation matrix. Conduct sensitivity analysis on key parameters (transmission rate, recovery rate, latent period).
  7. Interpretation and communication - Translate findings into public health actions. Present results with absolute and relative measures. Discuss Hills criteria for causation assessment.

Key Databases and Tools

  • WHO Global Health Observatory - International health statistics
  • CDC WONDER / MMWR - US disease surveillance data
  • Our World in Data - Pandemic and health metrics
  • GBD (Global Burden of Disease) - Comprehensive disease burden estimates
  • EpiEstim / R0 package - R0 estimation tools
  • DAGitty - DAG drawing and analysis

Output Format

  • Epidemic curves with proper time axis (onset date, not report date when possible).
  • Measures of association as tables: measure, point estimate, 95% CI, p-value.
  • Compartmental model diagrams with parameter definitions and values.
  • Geographic maps with rates (not raw counts) and appropriate denominators.

Quality Checklist

  • Case definition explicitly stated
  • Denominators appropriate (person-time for rates, population for prevalence)
  • Confidence intervals provided for all estimates
  • Confounders identified via DAG and adjusted for
  • Selection bias and information bias discussed
  • Model assumptions stated and sensitivity analysis performed
  • Absolute and relative measures both reported
  • Temporal relationship between exposure and outcome verified

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