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Chi-Square Analysis

Chi-Square Analysis. Goodness of Fit. "Linkage Studies of the Tomato" (Trans. Royal Canad. Inst. (1931)). We will develop the use of the distribution through an example from biology.

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Chi-Square Analysis

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  1. Chi-Square Analysis Goodness of Fit "Linkage Studies of the Tomato" (Trans. Royal Canad. Inst. (1931))

  2. We will develop the use of the distribution through an example from biology. Consider two different characteristics of tomatoes, leaf shape and plant size. The leaf shape may be potato-leafed or cut-leafed, and the plant may be tall or dwarf. If we cross a tall cut-leaf tomato with a dwarf potato-leaf tomato and examine the progeny we will discover a uniform F1 generation. The traits tall and cut-leaf are each dominant, while dwarf and potato-leaf are recessive. We use the letter T for height, and C for leaf shape, so the alleles are T, t, C, and c.

  3. We will examine a Punnett square to illustrate this dihybrid cross. Tall cut-leaf tomato Dwarf potato-leaf tomato Notice the uniformity among the offspring, all are TtCc.

  4. Now we cross the F1 among themselves to produce the F2:

  5. Now we identify the tall cut-leaf tomatoes:

  6. Now we identify the tall potato-leaf tomatoes:

  7. Next we identify the dwarf cut-leaf tomatoes:

  8. Finally, the last type of tomato is dwarf potato-leaf:

  9. So now we have four phenotypes (different physical forms) of tomatoes originating from the single phenotype of the F1 generation. They are, along with their genotypes and expected frequencies:

  10. If our understanding of genetics is correct and we have constructed the crosses we believe we have, we expect the proportions of the four phenotypes to fit our calculations. With the distribution, we are able to test to see if groups of individuals are present in the same proportions as we expect. This is rather like conducting multiple Z-tests for proportions, all at once. In this example we carry out the dihybrid cross to produce an F1 generation, and, as expected, the F1 are all of the same phenotype, tall and cut-leaf. Further, the F1 are crossed among themselves to produce the F2 generation. We record the numbers of individuals in each category.

  11. The following table gives the observed numbers of each category.

  12. Step 1: To make a test for “goodness of fit” we start as with all other tests of significance, with a null hypothesis. H0: The F2 generation is comprised of four phenotypes in the proportions predicted by our calculations (based on Mendelian genetics). Ha: The F2 generation is not comprised of four phenotypes in the proportions predicted by our calculations. Another way of saying this is that for the null hypothesis the population fits our expected pattern, and for the alternate hypothesis, it does not fit our pattern.

  13. Step 2: Assumptions: Our first assumption is that our data are counts. (We cannot use proportions or means.) With , we do not always have a sample of a population, and sometimes examine an entire population, as with this example. We must ensure that we have a representative sample, when we work from a sample. In order to check assumptions for this goodness of fit test we must calculate the expected counts for each category. Then we must meet two criteria: 1. All expected counts must be one or more. 2. No more than 20% of the counts may be less than 5.

  14. We calculate the expected counts by finding the total number of observations and multiplying that by each expected frequency.

  15. Step 3: As you can see, all expected counts are greater than 5, so all assumptions are met. The formula for the test statistic is: where o = observed counts, and e = expected counts This calculation needs to be made in the graphing calculator. Enter the observed counts in L1. Enter the expected frequencies in L2, as exact numbers. (Enter numbers like 1/3, directly, as fractions, never round to just .3 or .33.)

  16. In L3 multiply L2 by 1611. This will give the expected counts. The sum of L1 can be found using 1-Var Stats. Now in L4, enter , this will give you the contribution for each category. Finally, is the sum of L4. For this problem, the statistic is 1.4687. In , we always need to know and report the degrees of freedom. The degrees of freedom are the number of categories minus one. Here we have 3 degrees of freedom.

  17. Step 4:

  18. Step 5: Step 7: Step 6: The area can also be found with cdf(1.4687,10^99,3). Fail to reject H0, a test statistic this large may occur by chance alone almost 70% of the time. We lack strong evidence that the pattern of tomato phenotypes is different from the expected. That is, the F2 generation are present in the expected proportions.

  19. THE END

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