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picture1_Anova Ppt 69149 | 8 9 19 Anova Updated


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File: Anova Ppt 69149 | 8 9 19 Anova Updated
what test should you use first what type of data do you have examples of continuous data examples of discrete data can can t be counted be counted fluorescence intensity ...

icon picture PPTX Filetype Power Point PPTX | Posted on 29 Aug 2022 | 3 years ago
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       What test should you use? First, what 
       type of data do you have?
       Examples of Continuous Data       Examples of Discrete Data (can 
       (can’t be counted)                be counted)
       • Fluorescence Intensity          • Sides on a dice
       • Protein Concentration           • Number of melanosomes in a 
       • Cell Size                        melanocyte
       Most data I work with is continuous data, meaning there are an infinite 
       number of values that a measurement can take.  
    ANOVA (Analysis Of Variance)
    • An ANOVA uses the F test – comparison of variance
    • Significance test used to compare >2 means
    • Reveals if a difference is present
      • Does NOT reveal which sample means are different
        • If there is no significance found, the test is concluded
        • If there is a difference  Post-hoc test (Tukey or Scheffe test)
    Post-hoc pairwise comparison tests
    • “Rule of thumb”: Use Tukey test when samples are equal in size and 
     Scheffe’s test if samples differ in size. 
    • These tests are similar to a T test in that they do pairwise 
     comparisons, but are adjusted so that they account for the fact that 
     more than 2 means are compared. 
    One Way vs Two Way ANOVA
    • One way used if you are only comparing one variable
      • Example: Bacteria strain influence on recombinant protein yield
    • Two way used if you are testing two independent variables in the 
     same experiment.
      • Example: Bacteria strain AND media type influence on protein yield
        • Does not only determine if each has an influence independently, but if there is 
         interaction effect…Maybe strain has no influence on protein yield in LB Broth, but in 
         2XYT strain has a major influence.  In other words, it tests whether the independent 
         variables are truly independent or if they are somehow connected.
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...What test should you use first type of data do have examples continuous discrete can t be counted fluorescence intensity sides on a dice protein concentration number melanosomes in cell size melanocyte most i work with is meaning there are an infinite values that measurement take anova analysis variance uses the f comparison significance used to compare means reveals if difference present does not reveal which sample different no found concluded post hoc tukey or scheffe pairwise tests rule thumb when samples equal and s differ these similar they comparisons but adjusted so account for fact more than compared one way vs two only comparing variable example bacteria strain influence recombinant yield testing independent variables same experiment media determine each has independently interaction effect maybe lb broth xyt major other words it whether truly somehow connected...

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