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Two Treatment Factors in a Randomized Complete Block Design Example: An anesthesiologist made a comparative study of the effects of two factors, acupuncture and codeine, on postoperative dental pain in male subjects. The four treatment combinations were as follows: 1. ________________________ treatment (a sugar pill and two inactive acupuncture points) 2. ________________________ treatment (a codeine pill and two inactive acupuncture points) 3. ________________________ only (a sugar pill and two active acupuncture points) 4. _____________________________________ (a codeine pill and two active acupuncture points) Thirty-two subjects were grouped into 8 blocks (each of size 4) according to an initial evaluation of their pain tolerance. The subjects in each block were randomly assigned to the four treatment combinations. The pain relief scores were obtained for all subjects two hours after dental treatment (data were collected on a double-blind basis). The data are given in the file Dental.jmp on the course website. A portion of the data is shown below. Questions: 1. Identify the response variable. 2. Why do you think pain tolerance was used as a blocking variable? 1 Statistical model for two treatment factors in a RCBD yijk = μ + αi + β j + αβij + ρk + εijk i = 1, 2, …, a; j = 1, 2, …, b; k = 1, 2, …,n where yijk = the response value in the kth block with the ith level of Factor A and the jth level of Factor B are used µ = the overall mean αi = the effect of the ith level of Factor A βj = the effect of the jth level of Factor B αβij = the effect due to the interaction of the ith level of Factor A and the jth level of Factor B ρk = the effect of the kth block εijk = the random error associated with the observation in the kth block that received the ith level of Factor A and jth level of Factor B Model Assumptions 1. The error terms are independent and normally distributed. 2. The error terms have constant variance. 3. The treatment and block effects are assumed to be additive (i.e. there is no block*treatment interaction). Fitting the model in JMP To fit this model in JMP, choose Analyze Fit Model and enter the following: 2 Click Run and JMP should return the following output: Questions: 3. What does the test for interaction indicate? 4. How should we proceed with the analysis? Explain. We can investigate the significant main effects in JMP by clicking on the red drop-down arrows next to Pill and Acupuncture and selecting the following: Investigating the main effect of pill: Investigating the main effect of acupuncture: Note: The Tukey HSD method is NOT available because both factors only have two levels, so pairwise comparisons for each factor only involve one test and Tukey’s adjustment is not needed. 3 Output for comparing the two levels of pill: Output for comparing two levels of acupuncture: Summarize the results of this study, using confidence intervals in your discussion. 4 Checking model assumptions First, we can examine the plot of the residuals versus the predicted values. This plot is automatically given when we fit the model. Additionally, we can look at the plot of the residuals against the treatment combinations. First, we need to obtain the residuals. Click on the red drop-down arrow next to Response score and choose Save Columns Residuals. Next, choose Chart Graph Builder. Then put the residuals in the Y zone and then put one treatment factor in the X zone and the remaining treatment factor in the Group X zone. You should then get a graph like the one given below. 5 Lastly, select Analyze Distribution and place Residual score in the Y,Columns box. Then click on the red drop-down arrow and choose Normal Quantile Plot. Questions: 5. Does the assumption of constant variance appear to be violated? Explain. 6. Does the assumption of normality appear to be violated? Explain. 6 Investigating the predicted values and residuals Using the output given below, verify the predicted value and residual for the two observations highlighted. 7