PowerPoint Presentation Materials to accompany Genetics: Analysis and Principles Robert J. Brooker CHAPTER 24 QUANTITATIVE GENETICS Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24.1 QUANTITATIVE TRAITS A quantitative trait is any trait that varies measurably in a given species Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-3 Quantitative Traits Exhibit a Continuum of Phenotypic Variation Quantitative traits show a continuum of variation within a group of individuals Quantitative traits do not naturally fall into a small number of discrete categories Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-5 Quantitative traits can be described by using a frequency distribution The trait is divided arbitrarily into a number of discrete phenotypic categories Figure 24.1 Normal distribution of a quantitative trait 24-7 Statistical Methods Evaluate A Frequency Distribution Mean: SX X = N where X is the mean S X is the sum of all values in the group N is the number of individuals in the group Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-8 A more generalized form of this equation is used S fi Xi X = N where X is the mean S fiXi is the sum of all values in the group; each value is multiplied by its frequency in the group N is the number of individuals in the group E.g., A bushel of corn had ears with the following lengths: 15, 14, 13, 14, 15, 16, 16, 17, 15 and 15 4(15) + 2(14) + 13 + 2(16) + 17 X = 10 X = 15 cm Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-9 In genetics we are often interested in the amount of phenotypic variation that exists in a group A common way to evaluate variation within a population is a statistic called variance S fi (X – X)2 VX = N–1 where, VX is the variance X – X is the difference between each value and the mean N is the number of observations Degrees of freedom E.g., Lengths of ears of corn 4(15 - 15)2 + 2(14 - 15)2 + (13 - 15)2 + 2(16 - 15)2 + (17 VX = 15)2 10 – 1 0+2+4+2+4 VX = 9 12 cm2 VX = 9 VX = 1.33 cm2 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-10 Variances are very important in the analysis of quantitative traits because they are additive under certain conditions The variances of genetic and environmental factors that contribute to a quantitative trait can be added to predict the total variance for that trait To gain an intuitive grasp of variation, we can take the square root of the variance This statistic is called the standard variation Again using the same example in corn SD = √ Vx SD = √ 1.33 = 1.15 cm Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-11 ~68% ~95% ~99.7% Less than 0.3% of the individuals will have values that are more or less than three standard deviations from the mean Figure 24.2 The relationship between the standard deviation and the proportions of individuals in a normal distribution Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-12 Table 24-2 Copyright © 2006 Pearson Prentice Hall, Inc. Some Statistical Methods Compare Two Variables to Each Other In many biological problems, it is useful to compare two different variables For example, we may wish to 1. Compare the occurrence of two phenotypic traits 2. Compare between traits and environmental factors Do obese animals have larger hearts? Is heavy body weight more prevalent in colder climates? 3. Compare between traits and genetic relationships Do tall parents tend to produce tall offspring? Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-13 To gain insight into such questions, a statistic known as correlation is often applied To calculate this statistic, we need first to determine the covariance Describes the degree of variation between two variables within a group CoV(X,Y) = S [ (X – X) (Y – Y) ] N–1 where X are the values for one variable and X is the mean value in the group Y are values for another variable and Y is the mean value in that group N is the total number of pairs of observations Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-14 As an example, let’s consider the weight of cattle at 5 years of age between parents and offspring A farmer might be interested in this relationship to determine if genetic variation plays a role in cattle weight The data on the next slide show the 5-year weights for 10 different pairs of cows and their “daughters” Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-15 Mother’s weight (kg) Offspring’s weight (kg) 570 568 – 26 – 30 780 572 560 – 24 – 38 912 599 642 3 44 132 602 580 6 – 18 – 108 631 586 35 – 12 – 420 603 642 7 44 308 599 632 3 34 102 625 580 29 – 18 – 522 584 605 – 12 7 – 84 575 585 – 21 – 13 273 X = 596 Y = 598 SDX = 21.1 SDY = 30.5 CoV(X,Y) (X – X) (Y – Y) (X – X) (Y – Y) S = 1,373 S [ (X – X) (Y – Y) ] 1,373 = = = 152.6 N–1 10 – 1 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-16 The strength of association between two variables can be evaluated by the correlation coefficient (r) r(X,Y) = CoV(X,Y) SDXSDY This value ranges between +1 and -1 and indicates how two factors can vary in relation to each other If r > 0 If r = 0 As one factor increases, the other factor will increase with it The two factors are not related If r < 0 As one factor increases, the other factor will decrease Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-17 r(X,Y) = SDXSDY 152.6 = = 0.237 (21.1)(30.5) This is a positive correlation between the 5-year weights of mother and offspring CoV(X,Y) This suggests that heavy mothers have heavy offspring and lighter mothers have lighter offspring However, now we must evaluate whether the r value represents a true association between the variables or whether it is simply due to chance Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-18 To accomplish this, we can test the hypothesis that there is no real correlation (i.e., the null hypothesis) The r value differs from zero only as a matter of chance Like the chi square value, the significance of the correlation coefficient is directly related to Sample size Degrees of freedom In this case, df = N – 2 Which is one less than the degrees of freedom of variance Table 24.2 shows the relationship between the r values and df at the 5% and 1% significance levels Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-19 24-20 Consider the correlation we have just calculated for 5-year weights of mother and offspring r = 0.237 and N = 10 Therefore, df = 10 – 2 = 8 According to Table 24.2, it is fairly likely that this value could have occurred as a matter of random sampling error Therefore, we cannot reject the null hypothesis We cannot conclude that the positive correlation is due to a true association between the weights of mother and offspring Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-21 If a correlation of 0.237 was observed for N = 1000 The value would be significant at the 1% level Therefore we can reject the null hypothesis We can conclude that there is a real association between the weights of mothers and their offspring Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-22 24.2 POLYGENIC INHERITANCE Most quantitative traits are polygenic and exhibit a continuum of phenotypic variation Polygenic inheritance refers to the transmission of traits that are governed by two or more genes The locations on chromosomes that affect the outcome of quantitative traits are called quantitative trait loci (QTLs) QTLs may contain many genes Some or all of which may affect quantitative traits Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-24 Polygenic Inheritance and Environmental Factors The first demonstration that continuous variation is related to polygenic inheritance occurred in 1909 The Swedish geneticist Herman Nilsson-Ehle studied the inheritance of red pigment in the hull of wheat Triticum aestivum Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-25 Nilsson-Ehle performed the following cross P F1 F2 True-breeding red X true-breeding white Intermediate red Great variation in redness: As shown in Figure 24.3b, Nilsson-Ehle discovered that the colors fell into a 1:4:6:4:1 ratio He concluded that this species is diploid for two different genes that control hull color White, light red, intermediate red, medium red, dark red Each gene exists in two alleles: red or white He hypothesized that these two loci must contribute additively to the color of hull Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-26 Figure 24.3 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-27 Many polygenic traits are difficult or impossible to categorize into several discrete genotypic categories This is especially true when 1. The number of genes controlling the trait increases 2. The influence of the environment increases Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-28 Figure 24.4 illustrates how genotypes and phenotypes may overlap for polygenic traits Here, the environment (soil, sunlight, etc.) may affect the phenotypic outcome of a trait in a plant, namely seed weight Separate, well-defined categories One gene Figure 24.4 More phenotypic variation in each category Effect of environment Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-29 Effect of # of genes • If there is no environmental effect, the number of contributing genes can be estimated by either: – the number of phenotypic classes or – by the fraction of the total population of an extreme phenotype class Nearly all individuals fall into a single category that corresponds to their genotype Different genotypes have regions of overlapping phenotypes Three genes Figure 24.4 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-30 Phenotypic expression of some quantitative traits display dependence on threshold effects Experiment 24A: Polygenic Inheritance Explains DDT Resistance in Drosophila In 1957, James Crow conducted one of the earliest studies to link quantitative to discontinuous genes Crow, who was interested in evolution, spent time studying insecticide resistance in Drosophila He noted: “Insecticide resistance is an example of evolutionary change, the insecticide acting as a powerful selective sieve for concentrating resistant mutants that were present in low frequencies in the population.” Crow’s aim was to determine the genetic basis for insecticide resistance in Drosophila melanogaster Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-31 Many mutations were known in this species, and thus these can serve as genetic markers The general strategy in identifying QTLs is this: Cross two strains that differ in genetic markers and in the quantitative trait of interest Backcross the F1 offspring to the parental strains This produces a population of F2 offspring that differ with regard to their combinations of parental chromosomes Most individuals will contain a few chromosomes from one parental strain and the rest from the other strain The genetic markers on the chromosome provide a way to determine which chromosome came from which parent Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-32 At the start of the experiment, it is not known if alleles affecting DDT resistance are on this chromosome Figure 24.5 M = minute bristles m = normal bristles R = rough eye r = smooth eyes The use of gene markers to map a QTL affecting DDT resistance 24-33 Possible chromosome 3 combinations in F2 offspring (in the absence of crossing over) The backcross offspring can have both copies of chromosome 3 from the DDT-resistant strain, both from the sensitive strain, or one of each This can be discerned by the phenotypes of the F2 offspring Figure 24.5 The use of gene markers to map a QTL affecting DDT resistance 24-34 The Hypothesis DDT resistance is a polygenic trait Testing the Hypothesis Refer to Figure 24.6 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-35 Figure 24.6 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-36 Figure 24.6 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-37 The Data Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-38 Interpreting the Data The data shows that each copy of the chromosomes 1 (X), 2, and 3 confers some insecticide resistance Maximal resistance is obtained when chromosomes from only the insecticide-resistance parental strain are present DDT resistance was less than maximal, even when only a single chromosome was derived from the sensitive strain These results are consistent with the hypothesis Resistance to DDT is a polygenic trait involving multiple genes on chromosomes 1 (X), 2 and 3 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-39 24.3 HERITABILITY All traits of biological organisms are influenced by genetics and the environment A geneticist, however, can never actually determine the relative amount of a quantitative trait that is controlled by This is particularly true with quantitative traits 1. Genetics 2. Environment Instead, the focus is on how variation, both genetic and environmental, will affect the phenotypic results Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-45 Yield (bushels/acre) Genotype Year Roughrider Seward Agassiz 1986 47.9 55.9 47.5 1987 63.8 72.5 59.5 1988 23.1 25.7 28.4 1989 61.6 66.5 60.5 1990 0.0 0.0 0.0 1991 60.3 71.0 55.4 1992 46.6 49.0 41.5 1993 58.2 62.9 48.8 1994 41.7 53.2 39.8 1995 53.1 65.1 53. 24.3 HERITABILITY Heritability is the amount of phenotypic variation within a group of individuals that is due to genetics If all the phenotypic variation in a group was due to genetic factors If all the phenotypic variation was due to environmental factors Heritability would have a value of 1 Heritability would have a value of 0 In most cases, the heritability value lies between these two extremes Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-46 Phenotypic Variance To study quantitative trait variation, we first have to divide it into genetic and environmental components We then have to assume the following 1. Genetic and environmental factors are the only two components that determine a trait 2. These factors are independent of one another Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-47 VT = VG + VE VT is the total variance VG is the relative amount of variance due to genetic factors VE is the relative amount of variance due to environmental factors If VG is very high and VE is very low The amount of variation at the phenotypic level Genetics is more important in promoting variation If VG is very low and VE is very high The environment causes much of the phenotypic variation Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-48 Consider a domesticated or experimental animal VG and VE can be determined by comparing the variation in traits between genetically-identical and -disparate groups For example, geneticists have developed genetically homogeneous strains of mice through inbreeding In such an inbred strain of mice, VG = 0 These mice are monomorphic They are all homozygous for the same allele of a given gene Therefore, all phenotypic variation is due to VE The variance of a homogeneous population with regard to weight, for example, can be compared to the variance of a heterogeneous population Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-49 The two populations could be raised under the same environmental conditions and the weights measured Let’s suppose we obtain the following results In the case of the homogeneous mice, VT = VE (VG = 0) VT = 0.30 sq oz for the group of genetically homogeneous mice VT = 0.52 sq oz for the group of genetically heterogeneous mice Therefore, VE = 0.30 sq oz The VE of the heterogeneous population should also be equal to 0.30 sq oz Because both populations were raised under the same environmental conditions Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-50 VT = VG + VE 0.52 = VG + 0.30 VG = 0.22 sq oz The results tell us that the phenotypic variance in the genetically heterogeneous population is due to In part, the environment 0.30 sq oz In part, genetic variation in alleles that affect body weight 0.22 sq oz Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-51 Broad versus Narrow Sense Heritability Heritability is the proportion of the phenotypic variance that is attributable to genetic variation HB2 = VG/VT Where, HB2 is the heritability in the broad sense VG is the variance due to genetics VT is the total phenotypic variance HB2 is called the broad sense heritability It accounts for all genetic variation that may affect the phenotype Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-52 The total genetic variance, VG, is composed of three different genetic categories VG = VA + VD + VI VA is the variance due to additive alleles VD is the variance due to alleles that follow a dominant/recessive pattern of inheritance VI is the variance due to genes that interact in an epistatic manner The heritability of a trait due to the additive effects of alleles is called the narrow sense heritability hN2 = VA/VT Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-53 A common strategy to estimate narrow sense heritability: 1. Measure a quantitative trait among groups of genetically related individuals 2. Use data to compute a correlation between the individuals 3. Calculate narrow sense heritability as 2 hN = robs/rexp robs is the observed phenotypic correlation between related individuals rexp is the expected correlation based on the known genetic relationship Note: For siblings, rexp = 0.5 For identical twins, rexp = 1.0 For parent-offspring relationship, rexp = 0.5 For uncle-niece relationship, rexp = 0.25 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-54 Experiment 24B: Heritability of Human Fingerprints Fingerprints are inherited as a quantitative trait Francis Galton was the first to study fingerprint patterns However, Kristine Bonnevie made the trait more amenable to genetic studies She developed a method for counting the number of ridges within a human fingerprint Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-55 Human fingerprints can be categorized as having an Arch, loop or whorl The primary difference among these is the presence of the number of triple junctions, each known as a triradius Figure 24.8 Human fingerprints and the ridge count method of Bonnevie 24-56 Bonnevie conducted a study on a small population She found that ridge count correlations were relatively high in genetically related individuals Sarah Holt carried out a more exhaustive study of ridge counts in a British population In groups of 825 males or 825 females, the ridge count on all 10 fingers varied from 0 to 300 Mean value ~ 145 for males (S.D. = 51.1) Mean value ~ 127 for females (S.D. = 52.5) Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-57 The Hypothesis Dermal ridge count has a genetic component This experiment aims to determine the contribution of genetics in the variation of dermal ridge counts Testing the Hypothesis Refer to Figure 24.9 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-58 Figure 24.9 24-59 Interpreting the Data Type of Relationship Number of Pairs Examined Correlation Coefficient Parent-child 810 0.48 ± 0.04* 0.96 Parentparent 200 0.05 ± 0.07 __# Siblingsibling 642 0.50 ± 0.04 1.00 Identical twins 80 0.95 ± 0.01 0.95 Fraternal twins 92 0.49 ± 0.08 0.98 *± Standard error of the mean # We cannot calculate a heritability value because rexp is not known Heritability robs/rexp Genetically unrelated individuals have a negligible correlation for this trait Genetically related individuals have an average heritability value of 0.97 Fraternal and identical twins have substantially different correlation coefficients Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-61 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-62 Heritability Values Are Relevant Heritability is a widely misunderstood concept It describes the amount of phenotypic variation due to genetic variation for a particular population raised in a particular environment The terms variation, particular population and particular environment cannot be overemphasized For example, the heritability for milk production may be 0.35 in one cattle population and 0.1 in another In addition, a heritability value of 1.0 only means that the amount of variation within this group is due to genetics The environment may be quite important It is just not causing much variation within this very group Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-63 Heritability Values Are Relevant The role of genetics and environment in human intelligence, is a topic that has been hotly debated As a trait, intelligence is difficult to define or to measure Although performance on IQ tests is a method of assessing intelligence Various studies have attempted to estimate a heritability for IQ testing ability The values have ranged from 0.3 to 0.8 0.6 is fairly common among many studies Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-64 Heritability Values Are Relevant It is important to consider what a value of 0.6 means, and what it does not mean It means that 60% of the variation in IQ testing ability is due to genetic factors in a particular population in a particular environment It does not mean that 60% of an individual’s IQ testing ability is due to genetics and 40% is due to the environment It cannot be overemphasized that heritability is meaningless at the level of a single individual Heritability is a populational value that pertains to variation Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-65 Selective Breeding of Species Can Alter Quantitative Traits Dramatically Selective breeding is the modification of phenotypes in plants and animal species of economic importance It is also called artificial selection Natural selection is due to natural variation in reproductive success In artificial selection the breeder chooses individual with traits that are desirable from a human perspective Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-66 For centuries, humans have been practicing selective breeding The common breeds of dogs and cats have been obtained by selective breeding strategies Refer to Figure 24.10 The figure shows the very striking way in which selective breeding can modify the quantitative traits in a species Likewise, most of the food we eat has been obtained from species modified profoundly by selective breeding This includes products such as grains, fruit, vegetables, meat Refer to Figure 24.11 The figure shows how six different plants were developed by selective breeding of the wild mustard plant Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-67 Fig. 24.10 Fig. 24.11a Fig. 24.11b The phenomenon that underlies selective breeding is variation Within a group of individuals, there may be allelic variation that affects the outcomes of quantitative traits The breeder chooses parents with desirable phenotypic characteristics Indeed, the selective breeder will often choose genetically related individuals as the parental stock These will pass on the advantageous alleles to their offspring This is known as inbreeding Figure 24.12 illustrates a common outcome when selective breeding is performed for a quantitative trait Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-68 Oil content is ~ 19% This experiment was begun in 1869! with 163 ears of corn with an oil content of 4-6% In each of about 80 successive generations, corn plants were divided into two groups Oil content is < 1% Figure 24.12 1. Members with the highest oil content 2. Members with the lowest oil content These groups were chosen as the parents of the next generation Common results of selective breeding for a quantitative trait 24-69 Average 46 bristles Average 40 bristles Average 36 bristles In this experiment flies were selected based on their bristle number The starting group had an average of 40 bristles for females and 35 bristles for males In each of 8 successive generations, flies were divided into two groups Average 30 bristles Figure 24.12 1. Members with the highest bristle number 2. Members with the lowest bristle number These groups were chosen as the parents of the next generation Common results of selective breeding for a quantitative trait 24-70 When comparing the curves made in Figure 24.12, some general observations can be made Quantitative traits are often at an intermediate value in unselected populations Therefore, artificial selection can increase or decrease the magnitude of the trait Nevertheless, there is a limit After many generations, the population will eventually become monomorphic for all or most of the desirable alleles in question At this point, additional selective breeding will have no effect At the start of the experiment the heritability for the trait is fairly high At the end, it is near zero Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-71 Estimating the Offspring Phenotype If we have determined the narrow sense heritability of a trait we can estimate the phenotypic value for an offspring. To = T + h2(T*-T) where To = predicted offspring phenotype T = population mean h2 = narrow sense heritability T* = midparent value [(Tf + Tm)/2] Example: T = 80 seeds/plant Tf = 90 seeds/plant Tm = 120 seeds/plant T* = (90 +120)/2 = 105 h2 = 0.5 Then: To = 80 + 0.5 (105-80) To = 80 + 12.5 To = 92.5 seeds/plant Realized heritability The most common way to estimate narrow sense heritability in a starting population R 2 hN = S Where Here R = XO – X S = XP – X R is the response in the offspring S is the selection differential in the parents Where X is the mean of the starting population XO is the mean of the offspring XP is the mean of the parents So hN2 = XO – X XP – X Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display 24-72 Example: An experiment is begun with a population of fruit flies in which the average bristle number for both genders is 37.5. The parents chosen from this population had an average bristle number of 40 The offspring of the next generation had an average bristle number of 38.7 hN2 = hN2 = XO – X XP – X 38.7 – 37.5 40 – 37.5 = 1.2 2.5 = 0.48 Copyright ©The McGraw-Hill Companies, Inc. Permission required for reproduction or display Thus, 48% of the phenotypic variation is due to additive alleles 24-73