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   |  | This is the main output
   type: a so-called full genome interval map. 
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   |  | The X-axis represents all
   19 autosomes and the X chromosome as if they were laid end to end with short
   gaps between the telomere of one chromosome and the centromere of the next
   chromosome (mouse chromsomes only have a single long arm and the centromere represents
   the origin of each chromosome for numerical purpose: 0 centimorgans and
   almost 0 megabases). The blue labels along the bottom of the figure list a
   subset of markers that were used in mapping. We used 753 markers to perform
   the mapping but here we just list five markers per chromosome. 
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   |  | The thick blue wavy line
   running across chromsomes summarizes the strength of association between
   variation in the phenotype (App expression differences) and the two
   genotypes of 753 markers and the intervals between markers (hence, interval
   mapping).  The height of the
   wave (blue Y-axis to the left) provides the likelihood ratio statistic
   (LRS). Divide by 4.61 to convert these values to LOD scores.  Or you can read them as a
   chi-square-like statistic. 
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   |  | The red line and the red
   axis to the far right provides an estimate of the effect  that a QTL has on expression of App
   (this estimate of the addtive effect tends to be an overestimate). If the
   red line is below the X-axis then this means that the allele inherited from
   C57BL/6J (B6 or B) at a particular marker is associated with higher values.
   If the red line is above the X-axis then the DBA/2J allele (D2 or D) is
   associated with higher traits. Multiply the additive effect size by 2 to
   estimate the difference between the set of strains that have the B/B
   genotype and the D/D genotype at a specific marker. For example, on Chr 2
   the red line  peaks at a value  of about 0.25. That means that this
   region of chromosome 2 is responsible for a 0.5 unit expression difference
   between B/B strains and the D/D strains. Since the units are log base 2,
   this is 2^0.5, or about a 41% difference in expression with the D/D group
   being high. 
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   |  | The yellow histogram
   bars: These summarize the results of a whole-genome bootstrap of the trait
   that is performed 1000 times. What is a bootstrap? A bootstrap provides you
   a metho of evaluating whether results are robust. If we drop out one strain,
   do we still get the same results? When mapping quantitative traits, each
   strain normally gets one equally weighted vote. But inthe bootstrap
   procedure, we give each strain a random weighting factor of between 0 and
   1.  We then remap the trait and
   find THE SINGLE BEST LRS VALUE per bootstrap. We do this 1000 times. In this
   example, most bootstrap results cluster on Chr 2 under the LRS peak. That is
   somewhat reassuring. But notice that a substantial number of bootstrap
   results prefer Chr 7 or Chr 18. 
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   |  | The horizontal dashed
   lines at 9.6 and 15.9. These lines are the LRS values associated with the
   suggestive and significant false positive rates for genome-wide scans
   established by permuations of phenotypes across genotypes. We shuffle
   randomly 1000 times and obtain a distribution of peak LRS scores to generate
   a null distribution. Five percent of the time, one of these permuted data
   sets will have a peak LRS higher than 15.9. We call that level the 0.05
   significance threshold for a whole genome scan. The p = 0.67 point is the
   the suggestive level, and corresponds to the green dashed line.  These thresholds are conservative
   for transcripts that have expression variation that is highly heritable. The
   putative or suggestive QTL on Chr 2 is probably more than just suggestive. 
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   |  | One other point: the
   mapping procedure we use is computationally very fast, but it is relatively
   simple. We are not looking for gene-gene interactions and we are not fitting
   multiple QTLs in combinations. 
   Consider this QTL analysis a first pass that will highlight hot spots
   and warm spots that are worth following up on using more sophisticated
   models. 
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   |  | CLICKABLE REGIONS: 
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   |  | 1. If you click on the
   Chromosome number then you will generate a new map just for that chromosome. 
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   |  | 2. If you click on the
   body of the map, say on the blue line, then you will generate a view  on a 10 Mb window of that part of
   the genome from the UCSC Genome Browser web site. 
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   |  | 3. If you click on a
   marker symbol, then you will generate a new Trait data and editing window
   with the genotypes loaded into the window just like any other trait. More on
   this later. 
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   |  | NOTE: you can drag these
   maps off of the browser window and onto your desktop. The will be saved as
   PNG or PDF files. You can import them into Photoshop or other programs. 
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