Association MCQs With Answer is a focused collection designed for B.Pharm students to master key concepts in biostatistics and epidemiology relevant to pharmacy practice. This guide covers measures of association such as correlation coefficients, odds ratio, relative risk, hazard ratio, chi-square tests, and regression analysis, with clear explanations and application-based questions. It emphasizes interpretation, assumptions, confounding, effect modification and appropriate statistical tests for different data types. Ideal for exam preparation and quick revision, these well-structured MCQs reinforce both theory and clinical research interpretation. Now let’s test your knowledge with 50 MCQs on this topic.
Q1. Which measure is most appropriate to quantify strength and direction of a linear relationship between two continuous variables?
- Pearson correlation coefficient
- Chi-square statistic
- Odds ratio
- Kaplan-Meier estimate
Correct Answer: Pearson correlation coefficient
Q2. In a case-control study, which measure of association is typically calculated?
- Relative risk
- Odds ratio
- Hazard ratio
- Correlation coefficient
Correct Answer: Odds ratio
Q3. An odds ratio of 1.0 indicates what kind of association between exposure and outcome?
- Positive association
- Negative association
- No association
- Confounding present
Correct Answer: No association
Q4. Relative risk is most appropriately used in which study design?
- Case-control study
- Cohort study
- Cross-sectional study
- Ecological study
Correct Answer: Cohort study
Q5. Which statistic assesses association between two categorical variables in a contingency table?
- Pearson correlation
- Chi-square test
- T-test
- ANOVA
Correct Answer: Chi-square test
Q6. Spearman’s rank correlation is preferred over Pearson’s when:
- Both variables are normally distributed
- Data are ordinal or not normally distributed
- Sample size is extremely large only
- Variables are binary
Correct Answer: Data are ordinal or not normally distributed
Q7. Which measure quantifies the proportion of variance in the dependent variable explained by an independent variable in linear regression?
- Correlation coefficient (r)
- Coefficient of determination (R-squared)
- Odds ratio
- Standard error
Correct Answer: Coefficient of determination (R-squared)
Q8. In logistic regression, the exponentiated regression coefficient represents:
- Relative risk
- Odds ratio
- Correlation coefficient
- Hazard ratio
Correct Answer: Odds ratio
Q9. Which measure is best to describe association for a 2×2 table with small expected cell counts?
- Pearson’s chi-square without correction
- Fisher’s exact test
- t-test
- Mann-Whitney U test
Correct Answer: Fisher’s exact test
Q10. A correlation coefficient of -0.85 indicates:
- A weak positive linear relationship
- A strong negative linear relationship
- No relationship
- A causal effect
Correct Answer: A strong negative linear relationship
Q11. Which statistic measures association strength for two binary variables and is symmetric for table orientation?
- Pearson’s r
- Phi coefficient
- Spearman rho
- Kendall’s tau
Correct Answer: Phi coefficient
Q12. Effect modification (interaction) differs from confounding because effect modification:
- Is a bias that should always be controlled
- Indicates a true difference in effect across strata
- Results from measurement error
- Is eliminated by randomization
Correct Answer: Indicates a true difference in effect across strata
Q13. Which measure indicates strength of association for nominal variables with more than two categories?
- Pearson correlation
- Cramer’s V
- Spearman correlation
- Odds ratio
Correct Answer: Cramer’s V
Q14. In time-to-event studies, which measure expresses association between exposure and hazard of event?
- Relative risk
- Hazard ratio
- Odds ratio
- Correlation coefficient
Correct Answer: Hazard ratio
Q15. A 95% confidence interval for an odds ratio that includes 1 implies:
- Statistically significant association
- No statistically significant association at 5% level
- Strong positive association
- Wide variability only
Correct Answer: No statistically significant association at 5% level
Q16. Which test assesses trend across ordered categories for association?
- Cochran-Armitage trend test
- Fisher’s exact test
- Student’s t-test
- Log-rank test
Correct Answer: Cochran-Armitage trend test
Q17. Partial correlation measures association between two variables while:
- Ignoring any other variables
- Controlling for one or more additional variables
- Assuming causation
- Only applicable for nominal data
Correct Answer: Controlling for one or more additional variables
Q18. A spurious correlation arises due to:
- Random high precision measurement
- Chance or presence of an unmeasured confounder
- Proper experimental control
- High sample size only
Correct Answer: Chance or presence of an unmeasured confounder
Q19. Which of these indicates a strong association but not necessarily causation?
- High correlation between two variables
- Randomized controlled trial result
- Temporal precedence with confounding controlled
- Biological plausibility
Correct Answer: High correlation between two variables
Q20. McNemar’s test is used to analyze association for:
- Two independent samples of continuous data
- Paired binary data in a before-after design
- Multiple groups with ordinal outcomes
- Time-to-event outcomes
Correct Answer: Paired binary data in a before-after design
Q21. Which measure compares incidence rates between exposed and unexposed groups?
- Odds ratio
- Relative risk (risk ratio)
- Pearson’s r
- Cramer’s V
Correct Answer: Relative risk (risk ratio)
Q22. In linear regression, the regression coefficient (slope) represents:
- The change in dependent variable per unit change in independent variable
- The correlation squared
- The p-value of association
- The odds of outcome
Correct Answer: The change in dependent variable per unit change in independent variable
Q23. When assessing association between drug dose (ordinal) and response (ordinal), the appropriate correlation is:
- Pearson correlation
- Spearman rank correlation
- Chi-square goodness of fit
- Kaplan-Meier estimator
Correct Answer: Spearman rank correlation
Q24. Which criterion helps support causation beyond statistical association in pharmacoepidemiology?
- Bradford Hill criteria
- Central limit theorem
- Fisher’s exact criteria
- Pearson’s assumptions
Correct Answer: Bradford Hill criteria
Q25. Confounding occurs when a third variable is associated with both exposure and outcome and:
- Is on the causal pathway between exposure and outcome
- Distorts the true exposure-outcome association
- Always strengthens the observed association
- Is independent of both exposure and outcome
Correct Answer: Distorts the true exposure-outcome association
Q26. Which method can control confounding during study design?
- Restriction and matching
- Post-hoc subgroup analysis only
- Increasing sample size only
- Using Fisher’s exact test
Correct Answer: Restriction and matching
Q27. The phi coefficient value of 0.6 suggests:
- No association
- Moderate to strong association between two binary variables
- Perfect association
- Negative association
Correct Answer: Moderate to strong association between two binary variables
Q28. In a 2×2 table, Yates correction for continuity is applied to:
- Reduce bias when expected counts are large
- Adjust chi-square for small sample size in dichotomous data
- Compute odds ratio directly
- Estimate hazard ratios
Correct Answer: Adjust chi-square for small sample size in dichotomous data
Q29. Which association measure is preferred when outcome is rare (<10%) and study is cohort?
- Odds ratio approximates relative risk
- Use Pearson’s r
- Use Cramer’s V
- Spearman correlation is required
Correct Answer: Odds ratio approximates relative risk
Q30. Multicollinearity affects measures of association in multivariable regression by:
- Increasing precision of coefficients
- Inflating standard errors and destabilizing estimates
- Eliminating all associations
- Converting logistic regression to linear regression
Correct Answer: Inflating standard errors and destabilizing estimates
Q31. Which test is used to compare two correlation coefficients from independent samples?
- Fisher’s z-transformation
- Chi-square test
- Paired t-test
- McNemar’s test
Correct Answer: Fisher’s z-transformation
Q32. An odds ratio of 0.5 implies:
- Exposure doubles the odds of outcome
- Exposure halves the odds of outcome
- No association
- Perfect association
Correct Answer: Exposure halves the odds of outcome
Q33. Which of the following best describes ecological association studies?
- Individual-level exposure and outcome data
- Aggregate data used to assess associations across populations
- Randomized participant allocation
- Time-to-event analysis
Correct Answer: Aggregate data used to assess associations across populations
Q34. The Mantel-Haenszel method is used to:
- Estimate a pooled measure of association across strata controlling for confounding
- Compute Pearson correlation for paired data
- Calculate Kaplan-Meier survival curves
- Perform principal component analysis
Correct Answer: Estimate a pooled measure of association across strata controlling for confounding
Q35. In a cohort study, absolute risk reduction (ARR) provides information about:
- Relative magnitude only
- The difference in incidence between exposed and unexposed groups
- Correlation between variables
- Statistical power
Correct Answer: The difference in incidence between exposed and unexposed groups
Q36. Which of the following is TRUE about correlation and causation?
- Correlation always proves causation
- Causation implies correlation but not vice versa
- No causal inference can ever be made from longitudinal data
- High correlation eliminates confounding
Correct Answer: Causation implies correlation but not vice versa
Q37. Which measure quantifies agreement between two raters for categorical outcomes, beyond chance?
- Kappa statistic
- Pearson correlation
- Odds ratio
- Chi-square test
Correct Answer: Kappa statistic
Q38. In logistic regression, a 95% CI for OR of 1.5 to 4.0 indicates:
- Non-significant association at 5% level
- Statistically significant positive association
- Negative association
- Insufficient sample size
Correct Answer: Statistically significant positive association
Q39. Which method helps detect nonlinear association between two continuous variables?
- Scatter plot and nonparametric smoothing
- Only Pearson correlation
- Chi-square test
- McNemar’s test
Correct Answer: Scatter plot and nonparametric smoothing
Q40. When assessing association in a cross-sectional study, which limitation is most relevant?
- Cannot measure prevalence
- Temporal ambiguity between exposure and outcome
- Always more expensive than cohort studies
- Cannot measure associations at all
Correct Answer: Temporal ambiguity between exposure and outcome
Q41. Which statistic is appropriate to assess association between two ordinal variables considering ties?
- Kendall’s tau
- Pearson’s r without adjustment
- Chi-square test for trend only
- Hazard ratio
Correct Answer: Kendall’s tau
Q42. In a clinical trial, intention-to-treat analysis affects measures of association by:
- Potentially diluting treatment effect but preserving randomization
- Always increasing apparent association
- Eliminating all confounders
- Converting odds ratios to relative risks
Correct Answer: Potentially diluting treatment effect but preserving randomization
Q43. Which of the following indicates a statistically significant association if p-value = 0.03?
- No, because p must be below 0.01
- Yes, at the 5% significance level
- No, because p must be above 0.05
- Only if confidence interval includes null
Correct Answer: Yes, at the 5% significance level
Q44. Which approach is best to visualize association between a categorical and continuous variable?
- Histogram only
- Box plot of continuous variable by category
- Scatter plot without grouping
- Kaplan-Meier curve
Correct Answer: Box plot of continuous variable by category
Q45. In pharmacoepidemiology, disproportionality analysis (e.g., PRR) assesses association between:
- Drug exposure and population incidence rates
- Specific drug and reported adverse event in spontaneous reports
- Correlation between two continuous lab values
- Survival time and treatment arm
Correct Answer: Specific drug and reported adverse event in spontaneous reports
Q46. Which transformation may normalize right-skewed continuous data before assessing association?
- Square of the variable
- Logarithmic transformation
- Converting to ranks always worsens normality
- Adding a constant only
Correct Answer: Logarithmic transformation
Q47. Which concept explains reduced observed association due to non-differential misclassification of exposure?
- Bias towards the null
- Bias away from the null always
- Confounding by indication only
- Effect modification
Correct Answer: Bias towards the null
Q48. The attributable risk percent among the exposed indicates:
- Proportion of disease in total population due to exposure
- Proportion of disease among exposed attributable to that exposure
- Relative risk squared
- Odds ratio adjusted for confounding
Correct Answer: Proportion of disease among exposed attributable to that exposure
Q49. In survival analysis, the log-rank test compares:
- Means of continuous variables between groups
- Survival distributions between two or more groups
- Correlation coefficients over time
- Odds ratios at a single time point
Correct Answer: Survival distributions between two or more groups
Q50. When reporting an association, which elements are essential for clear interpretation?
- Measure of association, confidence interval, p-value, and study design context
- Only the p-value is needed
- Only sample size and mean
- Just the direction of association without magnitude
Correct Answer: Measure of association, confidence interval, p-value, and study design context

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