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picture1_Statistic Ppt 69638 | Rft 2013


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File: Statistic Ppt 69638 | Rft 2013
outline where are we up to part 1 hypothesis testing multiple comparisons vs topological inference smoothing part 2 random field theory alternatives conclusion part 3 spm example part 1 testing ...

icon picture PPTX Filetype Power Point PPTX | Posted on 29 Aug 2022 | 3 years ago
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                Outline
   • Where are we up to?
   Part 1
   • Hypothesis Testing
   • Multiple Comparisons vs Topological Inference
   • Smoothing
   Part 2
   • Random Field Theory
   • Alternatives
   • Conclusion
   Part 3
   • SPM Example
  
  Part 1:  Testing Hypotheses
                         Where are we up to?
 fMRI time-series        Kernel            Design matrix        Statistical Parametric Map
     Motion
    Correction         Smoothing        General Linear Model
 (Realign & Unwarp)
       •  Co-registration                           Parameter Estimates
       •  Spatial normalisation
                           Standard
                           template
     Hypothesis Testing
    To test an hypothesis, we construct “test statistics” and ask how likely that our 
    statistic could have come about by chance
          The Null Hypothesis H0 
          Typically what we want to disprove (no effect).
           The Alternative Hypothesis H  expresses outcome of interest.
                                    A
          The Test Statistic T
           The test statistic summarises evidence 
         about H0.
           Typically, test statistic is small in 
         magnitude when the hypothesis H0 is true 
         and large when false. 
            We need to know the distribution of T 
         under the null hypothesis                       Null Distribution of T
       Test Statistics                                                            
      An example (One-sample t-test):
       SE = /N                                                                     
       
      Can estimate SE using sample st dev, s:
                                                                            Population 
      SE estimated = s/ N                                                         
       t = sample mean – population mean/SE
      t gives information about differences                                         /N 
          expected under H (due to sampling error).
                                 0 
                                                                   Sampling distribution of mean x
                                                                              for large N
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...Outline where are we up to part hypothesis testing multiple comparisons vs topological inference smoothing random field theory alternatives conclusion spm example hypotheses fmri time series kernel design matrix statistical parametric map motion correction general linear model realign unwarp co registration parameter estimates spatial normalisation standard template test an construct statistics and ask how likely that our statistic could have come about by chance the null h typically what want disprove no effect alternative expresses outcome of interest a t summarises evidence is small in magnitude when true large false need know distribution under one sample se n can estimate using st dev s population estimated mean gives information differences expected due sampling error x for...

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