1 / 35

Simple Cross – over Design (แผนการทดลองแบบเปลี่ยนสลับอย่างง่าย)

Simple Cross – over Design (แผนการทดลองแบบเปลี่ยนสลับอย่างง่าย). By Mr.Wuttigrai Boonkum Dept.Animal Science, Fac. Agriculture KKU. Simple Cross-Over Design. Other name “Simple Change-over Design” or “Reversal design” Look like Repeated Measurement Exp.

derick
Download Presentation

Simple Cross – over Design (แผนการทดลองแบบเปลี่ยนสลับอย่างง่าย)

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Simple Cross – over Design(แผนการทดลองแบบเปลี่ยนสลับอย่างง่าย) By Mr.Wuttigrai Boonkum Dept.Animal Science, Fac. Agriculture KKU

  2. Simple Cross-Over Design • Other name “Simple Change-over Design” or “Reversal design” • Look like Repeated Measurement Exp. • About 3 factors are treatments, Animal and time. • Researcher must change – over all treatments in each animal. • Response measured of treatment effect in each animal and each time.

  3. Step by Step of Cross-over Design Classify Factors Consideration of number of Animal, Treatment and Time Statistical model, Hypothesis setting, Lay out ANOVA analysis using SAS program Interpretation and Conclusion

  4. Statistical model

  5. Hypothesis setting • Look like Latin Square Design such as: • Trt = 2, hypothesis is:

  6. Lay out A1 A2 A3 A5 A6 A4 Period1 Transition period Period2 Resting period 12 EU.; A = Animal Period1 Period2

  7. SAS output

  8. ANOVATable Interpretation is likely LSD P-value > 0.05 non-significant; ns P-value < 0.05 significant; * P-value < 0.01 highly significant; **

  9. Advantages • Have efficiency more than CRD • Good for budget limitation • Increase precision for Experimental design

  10. Switch-back Design • Look like cross-over design. • But turn around 1st treatment when cross-over each treatments. • This design is appropriate for high effect of time on treatment • The example this design such as: lactation trait, growth trait, traits about time period etc.

  11. A B A B A B Example Sequence A  B  A Sequence B  A  B

  12. Lay out Animal 1 Animal 2 Animal 3 Animal 4 Animal 6 Animal 5 Period1 Period2 Period3 18 EU. Sequence A  B  A This lay out have 2 sequence: Sequence B  A  B

  13. Statistical model

  14. + - = H : ( B B ) / 2 A 0 H : ( A A ) / 2 B 0 0 0 + - ¹ + - ¹ H : ( B B ) / 2 A 0 H : ( A A ) / 2 B 0 A A or or - = - = H : B 2 ( A ) 0 H : A 2 ( B ) 0 0 0 - ¹ - ¹ H : B 2 ( A ) 0 H : A 2 ( B ) 0 A A Hypothesis setting • Look like Cross-over Design such as: • Trt = 2, hypothesis is: Sequence B  A  B Sequence A  B  A + - =

  15. ANOVA Note: Animal(sq) = Animal within sequence error; P = Period (is regression)

  16. SAS output

  17. Interpretation Check P-value of adjusted p * sequence interaction Check P-value of adjusted period and sequence respectively Check P-value of treatment effect ns * , ** conclusion Treatment mean analysis

  18. Advantages • Precision morn than cross-over design • Appropriate for time period traits

  19. Replicated Latin Square Design • Use case more than 2 treatment • Researcher want to change-over trt. • To decrease error of sequence so must have a square. • Each square must difference of sequence so may be called “balanced square” or “orthogonal square”.

  20. Replicated Latin Square Design There are 3 types of Replicated Latin Square 1. Type I: originally animal set, time difference.

  21. 2. Type II: new animal set, same time.

  22. 3. Type III: new animal set, time difference.

  23. Orthogonal or balanced square Example : A, B, C and D are treatments A B C D B C D A D A B C B C D A

  24. Orthogonal or balanced square Example : A, B, C, D and E are treatments A A A A A

  25. ANOVA Type:A Type:C Type:B

  26. SAS outputType A

  27. SAS outputType B

  28. SAS outputType C

  29. Latin square Design to Estimate Residual Effects • Transition period limited. • Some treatments may have residual effects. • Sometime Researcher interested in residual effects. • Example residual effects such as antibiotic, hormones etc.

  30. SAS data set X Data; input sq anim period trt $ milk Resid; Cards; 1 1 1 A 38 X 1 1 2 B 25 A 1 1 3 C 15 B 1 2 1 B 109 X 1 2 2 C 86 B 1 2 3 A 39 C 1 3 1 C 124 X 1 3 2 A 72 C 1 3 3 B 27 A 2 4 4 A 86 X 2 4 5 C 76 A 2 4 6 B 46 C 2 5 4 B 75 X 2 5 5 A 35 B 2 5 6 C 34 A 2 6 4 C 101 X 2 6 5 B 63 C 2 6 6 A 1 B ; A B

  31. Graeco Latin Square Design • Researcher can separate a variable later (greek letter) • Level of effects equal row effect, column effect and treatment effect.

  32. Statistical model

  33. Lay out

  34. ANOVAof Graeco Latin Square Design

  35. The End

More Related