Limited time75% off all plans
Get the app

Analytical Epidemiology

Analytical Epidemiology

Analytical Epidemiology

On this page

Overview of Analytical Epi - Hypothesis Hunters

  • Purpose: To test pre-defined hypotheses about relationships between exposures and outcomes.
  • Key Feature: Utilizes comparison groups (e.g., exposed vs. unexposed, cases vs. controls).
  • Goal: Quantify the association and infer causality.
  • Contrasts with descriptive epidemiology, which focuses on generating hypotheses by describing disease distribution.

⭐ Analytical studies are designed to test hypotheses, unlike descriptive studies which generate them.

  • Answers "Why?" and "How?" disease occurs.

Case-Control Studies - Past Probers

  • Retrospective: Start with outcome (cases vs. controls), look back for exposure. "Past Probers."
  • Selection:
    • Cases: Have the disease.
    • Controls: Don't have disease; from same source population.
  • Measure of Association: Odds Ratio (OR).
    • Calculated as $ad/bc$. (a=exposed cases, b=exposed controls, c=unexposed cases, d=unexposed controls)
    • OR > 1: ↑ risk; OR < 1: ↓ risk; OR = 1: No association.
  • Advantages: Good for rare diseases, quick, less expensive, studies multiple exposures.
  • Biases: 📌 People Selectively Remember (Selection, Recall), Berksonian bias. Case-Control Study Design: Cases, Controls, Exposure

⭐ Odds Ratio (OR) is the key measure of association in case-control studies. It's suitable for rare diseases.

Cohort Studies - Future Followers

  • Observational; subjects grouped by exposure, followed to assess outcome incidence.
  • Types: 📌 PAR
    • Prospective: Exposure → Future Outcome.
    • Retrospective (Historical): Past Exposure (records) → Outcome.
    • Ambidirectional: Combines past records & future follow-up.
  • Key measure: Relative Risk (RR).
    • Formula: $RR = [a/(a+b)] / [c/(c+d)]$.
  • Strengths: Establishes temporality, studies multiple outcomes, good for rare exposures, calculates incidence.
  • Weaknesses: Loss to follow-up bias, costly & lengthy (especially prospective). Cohort Study Design Diagram

⭐ Relative Risk (RR) is the key measure of association. A major strength is establishing temporality (exposure precedes outcome).

MeasureWhen Used (Study Type)Calculation (2x2 table: a,b,c,d)Interpretation
Odds Ratio (OR)Case-Control, Cross-sectional$ad/bc$Odds of exposure: cases vs. controls.
Relative Risk (RR)Cohort$(a/(a+b)) / (c/(c+d))$Risk of disease: exposed vs. unexposed.
- Attributable Risk (AR) / Risk Difference (RD): $I_e - I_u$
- Attributable Fraction (AF) for exposed ($AF_e$): $(AR / I_e) \times \textbf{100}\%$ or $((RR-1)/RR) \times \textbf{100}\%$
- Population Attributable Risk (PAR): $I_p - I_u$ or $AR \times P_e$ ($P_e$: exposure prevalence in pop.)
- Population Attributable Fraction (PAF) / PAR Percent ($PAF_p$): $(PAR / I_p) \times \textbf{100}\%$ or $(P_e(RR-1) / (P_e(RR-1)+1)) \times \textbf{100}\%$

⭐ Attributable Risk (AR) or Risk Difference ($I_e - I_u$) quantifies the excess risk in the exposed group directly attributable to the exposure.

Bias, Confounding & Causality - Truth Seekers

  • Bias: Systematic error in design/conduct leading to incorrect association.
    • Selection Bias: Distorted due to how subjects are selected (e.g., Berksonian, Neyman).
    • Information Bias (Misclassification): Errors in measuring exposure/outcome (e.g., Recall, Interviewer, Observer). 📌 RIO (Recall, Interviewer, Observer).
  • Confounding: Extraneous variable associated with exposure & outcome, distorts true relationship. Confounder, Mediator, and Collider in Epidemiology

    ⭐ Confounding can be controlled at design (randomization, restriction, matching) or analysis stage (stratification, multivariate analysis).

  • Causality (Bradford Hill): Key criteria: Temporality (E before O - essential!), Strength, Consistency, Biological gradient, Plausibility, Coherence.

High‑Yield Points - ⚡ Biggest Takeaways

  • Case-control studies: Effect to cause (disease → exposure). Metric: Odds Ratio (OR). For rare diseases.
  • Cohort studies: Cause to effect (exposure → disease). Metrics: Relative Risk (RR), Attributable Risk (AR). For rare exposures.
  • Odds Ratio (OR) = (ad/bc). Approximates RR if disease prevalence is low.
  • Relative Risk (RR) indicates strength of association. >1 means ↑ risk.
  • Attributable Risk (AR) represents excess risk due to exposure.
  • Key Biases: Selection bias, Recall bias (in case-control), Interviewer bias.
  • Control confounding with matching, stratification, or multivariate analysis.

Continue reading on Oncourse

Sign up for free to access the full lesson, plus unlimited questions, flashcards, AI-powered notes, and more.

CONTINUE READING — FREE

or get the app

Rezzy — Oncourse's AI Study Mate

Have doubts about this lesson?

Ask Rezzy, your AI Study Mate, to explain anything you didn't understand

Enjoying this lesson?

Get full access to all lessons, practice questions, and more.

START FOR FREE