Design of experiments (DOE) introduces systematic planning and analysis of tests to understand how factors and their levels influence responses in pharmaceutical research. For B.Pharm students, DOE covers key concepts — factors, levels, treatments, experimental units, randomization, replication, blocking, factorial and fractional designs, interactions, ANOVA and response-surface methods — with practical objectives: identify critical process variables, quantify effects, detect interactions, reduce variability and optimize formulations or processes. Mastery of DOE improves study efficiency, robustness and reproducibility in formulation development, stability studies and process optimization. Now let’s test your knowledge with 30 MCQs on this topic.
Q1. What is the primary objective of Design of Experiments (DOE) in pharmaceutical studies?
- To conduct single uncontrolled trials to collect observations
- To systematically study factors and interactions to optimize responses
- To replace statistical analysis with expert judgment
- To minimize documentation during formulation
Correct Answer: To systematically study factors and interactions to optimize responses
Q2. In DOE terminology, what is a “factor”?
- The measured outcome or response from an experiment
- A background noise source affecting results
- An experimental variable deliberately changed during the study
- The number of replicates used in the study
Correct Answer: An experimental variable deliberately changed during the study
Q3. What does “level” mean in the context of DOE?
- The number of responses measured
- A specific value or setting of a factor
- The statistical power of the experiment
- The randomization sequence number
Correct Answer: A specific value or setting of a factor
Q4. Which term best describes the measured outcome in an experiment?
- Factor
- Level
- Response (or dependent variable)
- Block
Correct Answer: Response (or dependent variable)
Q5. What is a “treatment” in an experimental design?
- A method of randomization
- A specific combination of factor levels applied to experimental units
- An error term in ANOVA
- The baseline control only
Correct Answer: A specific combination of factor levels applied to experimental units
Q6. What is an experimental unit?
- The replicate number assigned to each run
- The smallest physical entity to which a treatment is applied
- The statistical test used for analysis
- The overall mean of all observations
Correct Answer: The smallest physical entity to which a treatment is applied
Q7. Why is randomization important in DOE?
- To ensure the same treatment is always applied first
- To eliminate the need for replication
- To reduce systematic bias by randomly assigning treatments to experimental units
- To guarantee normality of data
Correct Answer: To reduce systematic bias by randomly assigning treatments to experimental units
Q8. What is the purpose of replication in experiments?
- To increase the number of factors
- To estimate experimental error and improve precision
- To eliminate interactions
- To reduce the number of required runs
Correct Answer: To estimate experimental error and improve precision
Q9. How does blocking help an experiment?
- By increasing the number of factors tested
- By grouping similar experimental units to reduce variability due to known nuisance factors
- By eliminating the need for randomization
- By guaranteeing orthogonality of factors
Correct Answer: By grouping similar experimental units to reduce variability due to known nuisance factors
Q10. What is a main effect in factorial experiments?
- The combined effect of all factors together
- The effect of changing one factor averaged over levels of other factors
- An unimportant interaction term
- The residual error after fitting the model
Correct Answer: The effect of changing one factor averaged over levels of other factors
Q11. What defines an interaction between two factors?
- When the combined effect equals the sum of individual effects
- When one factor has no effect at any level
- When the effect of one factor depends on the level of another factor
- When randomization is not performed
Correct Answer: When the effect of one factor depends on the level of another factor
Q12. How many runs are required for a full two-level factorial design with 4 factors?
- 4
- 8
- 16
- 32
Correct Answer: 16
Q13. What is a fractional factorial design used for?
- To increase experimental runs beyond full factorial
- To reduce the number of runs while estimating main effects and some interactions
- To remove all interactions from the model
- To guarantee normal distribution of responses
Correct Answer: To reduce the number of runs while estimating main effects and some interactions
Q14. What does “aliasing” or “confounding” refer to in fractional factorials?
- When factorial design is random
- When two or more effects cannot be separately estimated and are mixed together
- When responses are measured with perfect accuracy
- When replication is maximal
Correct Answer: When two or more effects cannot be separately estimated and are mixed together
Q15. Which property defines an orthogonal design?
- Factors are non-independent
- Factor effects can be estimated independently with uncorrelated estimates
- No replication is allowed
- Only one factor is studied at a time
Correct Answer: Factor effects can be estimated independently with uncorrelated estimates
Q16. What is the main purpose of ANOVA in DOE?
- To calculate medians only
- To compare means across multiple treatments and partition variance
- To randomize assignments
- To design the experimental runs
Correct Answer: To compare means across multiple treatments and partition variance
Q17. Which of the following is NOT an assumption of one-way ANOVA?
- Independence of observations
- Normal distribution of residuals
- Homogeneity of variances across groups
- All factors must have only two levels
Correct Answer: All factors must have only two levels
Q18. What is the primary use of a Central Composite Design (CCD)?
- Screening a large number of variables with minimal runs
- Estimating main effects only
- Fitting a quadratic (second-order) model for response surface optimization
- Ensuring orthogonality in fractional designs
Correct Answer: Fitting a quadratic (second-order) model for response surface optimization
Q19. What does a Latin square design control for?
- Only one blocking factor
- Two blocking factors (rows and columns) while testing treatments
- All possible interactions automatically
- No need for randomization
Correct Answer: Two blocking factors (rows and columns) while testing treatments
Q20. What is the Taguchi method mainly focused on?
- Maximizing run count for detailed estimates
- Robust parameter design to reduce variability and improve quality
- Replacing ANOVA with graphical methods only
- Eliminating the need for blocking
Correct Answer: Robust parameter design to reduce variability and improve quality
Q21. What is the role of center points in factorial experiments?
- To estimate interactions exclusively
- To detect curvature and assess nonlinearity in responses
- To increase aliasing intentionally
- To avoid randomization
Correct Answer: To detect curvature and assess nonlinearity in responses
Q22. What does a Resolution III fractional factorial design imply?
- Main effects are unconfounded with any interactions
- Main effects may be aliased with two-factor interactions
- All two-factor interactions are estimable
- No aliasing exists between any effects
Correct Answer: Main effects may be aliased with two-factor interactions
Q23. When is a split-plot design typically used?
- When all factors are easy to change between runs
- When some factors are hard or expensive to change and require whole-plot randomization
- Only for single-factor experiments
- To remove the need for error estimation
Correct Answer: When some factors are hard or expensive to change and require whole-plot randomization
Q24. In hypothesis testing, what does “power” refer to?
- The probability of rejecting the null hypothesis when it is true
- The probability of failing to detect an effect
- The probability of correctly rejecting the null hypothesis when a true effect exists
- The significance level chosen by the researcher
Correct Answer: The probability of correctly rejecting the null hypothesis when a true effect exists
Q25. What is a Type I error (alpha) in the context of DOE?
- Failing to reject a false null hypothesis
- Incorrectly accepting an alternative hypothesis
- Rejecting a true null hypothesis (false positive)
- The variability due to blocking factors
Correct Answer: Rejecting a true null hypothesis (false positive)
Q26. How does a randomized block design (RBD) improve experiments?
- By ignoring nuisance variability
- By reducing within-treatment variability through blocking similar units
- By increasing the number of factors studied
- By eliminating the need for replication
Correct Answer: By reducing within-treatment variability through blocking similar units
Q27. When is a nested design appropriate?
- When all factor levels are crossed with each other
- When levels of one factor exist only within specific levels of another factor
- When there is only one experimental unit
- When interactions are impossible
Correct Answer: When levels of one factor exist only within specific levels of another factor
Q28. In a Latin square of order n, how many treatments and levels are there?
- n treatments and n levels for rows and columns
- n^2 treatments only
- 2n treatments and n levels only
- One treatment repeated n times
Correct Answer: n treatments and n levels for rows and columns
Q29. What is an orthogonal array commonly used for in Taguchi experiments?
- To ensure non-randomized assignment of runs
- To provide a balanced and reduced set of runs that assess factor effects independently
- To maximize aliasing between factors
- To eliminate the need for statistical analysis
Correct Answer: To provide a balanced and reduced set of runs that assess factor effects independently
Q30. What is the main goal of screening designs such as Plackett-Burman?
- To precisely estimate quadratic response surfaces
- To identify the few important factors among many potential variables with minimal runs
- To provide full interaction estimation for all factors
- To completely randomize across multiple blocks
Correct Answer: To identify the few important factors among many potential variables with minimal runs

I am a Registered Pharmacist under the Pharmacy Act, 1948, and the founder of PharmacyFreak.com. I hold a Bachelor of Pharmacy degree from Rungta College of Pharmaceutical Science and Research. With a strong academic foundation and practical knowledge, I am committed to providing accurate, easy-to-understand content to support pharmacy students and professionals. My aim is to make complex pharmaceutical concepts accessible and useful for real-world application.
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