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paleoanthropology, genetics and evolution

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adaptation

  • Anthropology 105, lecture 5: Hemoglobin

    Mon, 2012-02-13 13:12 -- John Hawks
    Synopsis: 
    Hemoglobin is the oxygen transport system in the blood, with a unique evolutionary history.

    In this lecture, I do a bit of a departure by discussing a body part that is microscopic: the hemoglobin molecule that carries oxygen inside of our red blood cells.

    The lecture covers the genetics of the beta globin cluster, including the origin of beta and alpha globin subunits by gene duplication in ancient vertebrates, the convergence of hemoglobin in the jawed fishes with the oxygen transport system in hagfish and lampreys, the changes in the pattern of gene duplications in the beta globin cluster in anthropoid primates versus ancestral eutherians and some prosimian primates, and the importance of hemoglobin expression in human adaptations to altitude. As the lecture gets going, I give some more detail about the geological timescale and how it relates to the origin of anthropoids, following up on the short introduction in the last lecture.

    Study questions: 
    • Do you think other kinds of animals have systems for oxygen transport that involve molecules similar to hemoglobin?
    • The human adaptation to altitude differs in different populations that live in high places. Why do you think this is the case?
    • The beta globin cluster includes pseudogenes in different species of primates. Why do these nonfunctioning genes persist in the genome if they are just junk?
  • Why do people differ in skin color?

    Wed, 2011-11-16 08:43 -- John Hawks
    Synopsis: 
    Pigmentation in humans reflects UV radiation and its effects on biology and health in recent human evolution.

    The color of human skin is determined by the amount of two pigments, eumelanin and pheomelanin. These pigments are the basic ones underlying all kinds of coloration in animals — even blue colors like those in the irises of blue eyes result from light reflecting above a layer of dark brown-black eumelanin. The darkest human skin and hair tones contain an abundance of eumelanin, while brown and reddish hair and freckles of the skin contain a large proportion of pheomelanin.

    Genes can influence skin and hair pigmentation in many ways. The overall color of the skin results from both the number of pigment-making cells (called melanocytes) and their level of activity. Most skin is capable of tanning, which means that exposure to UV radiation induces greater melanin production. Today, more than 20 genes are known to influence skin pigmentation in humans. Genetic changes can alter the development and migration of melanocytes, the regulation and expression of genes that generate melanin, or the chemical steps in the synthesis of the pigments themselves. As a result of such genetic changes, two people who live in the same environment may have very different shades or patterns of skin coloration.

    Some of the genes that influence skin pigmentation also cause variation in hair color or eye color. For example, variation in the gene OCA2 explains most of the variation in eye color in Europeans. People with blue eyes are mostly homozygotes for an allele of this gene; these people also tend to have slightly lighter skin due to this allele. Likewise, the variation in the gene MC1R explains some of the variation in skin color in Europe, but also explains a large proportion of variation in hair color. Red and blond hair each result from some of the distinctive alleles of MC1R.

    Dark skin evolved in ancient humans

    Relatively light-skinned populations include the native inhabitants of Europe, West Asia, East Asia, the Arctic, and the Americas. The lightest skin tones are found in Europe, while the darkest are in tropical Africa, southern India, Indonesia and Melanesia, and Australia. The level of skin pigmentation shows a close correspondence with latitude — people living near the equator tend to have dark skin, while light-skinned people live nearer the poles.

    Selection on skin color depends on the level of UV radiation.

    Cline of skin color in global human populations

    Skin pigmentation correlates with latitude because it serves as a defense against UV radiation. Like all solar radiation, UV is more intense at lower latitudes, where the sun is more often directly overhead. High-energy UV light damages and destroys the molecules that skin is made of. In sufficient amounts, this UV radiation can cause severe burns, that are painful and leave the skin unable to maintain its normal protective and cooling functions. UV radiation also can cause long-term damage to the DNA of skin cells, resulting in dangerous skin cancers.

    Dark-skinned people have a lower incidence of skin cancers in most countries compared to people with less pigmentation. The highest skin cancer rates in the world are suffered by people of European origin who currently live in equatorial places; Australia is presently the highest. Still, skin cancer may be a relatively weak cause of natural selection, because deaths from skin cancer tend to occur later than the mid-30s, relatively late in most peoples' reproductive lifespan.

    Dark skin reduces the incidence of skin cancer and sunburn.

    Possibly more important was the incidence of heat stroke in severely sunburned people. Today, relatively few people in Western societies succumb to heat exhaustion and heat stroke today, but this was potentially a great danger in the past and remains so in some places today. This danger of sunburn especially influences children, whose smaller masses allow less room for error in water loss and overheating.

    Some evidence suggests that dark skin pigmentation first appeared in humans within the last 500,000 years. African apes are polymorphic in skin coloration. Chimpanzees in particular are variable — some chimpanzees have quite light skin, and others have very dark skin; skin color tends to darken with age in these primates. But humans who live in equatorial Africa today show very little variation in skin color. Dark skin has been strongly selected in that population. One gene that contributes to skin pigmentation phenotypes, MC1R, shows evidence for positive selection in Africans sometime between 200,000 and 1 million years ago [1]. This date is interesting — humans first appeared nearly 2 million years ago, and our divergence from chimpanzees was far earlier, at over 6 million years ago. So the evolution of dark skin pigmentation was continuing at a relatively recent date. One suggestion is that people lost their body fur sometime during the last million years. With fur, there was no survival benefit to dark skin, but exposed skin creates the susceptibilities that select for darker pigmentation.

    Light skin pigmentation evolved recently

    Light skin pigmentation is a more difficult problem than dark pigmentation. The advantages of dark skin are clear, and genetic evidence shows that dark skin has been around for a long time. But light skin evolved relatively recently.

    The variation among light-skinned populations helps to illuminate the problem. Europeans and Asians today are broadly similar in their range of pigmentation. Northern Europeans average a bit lighter in skin color than north Asians, but the ranges of variation in pigmentation greatly overlap. Still, there are regional differences. For example, both hair and eye coloration are more polymorphic in Europeans than in living Asians. These phenotypes suggest that different alleles may affect pigmentation in these populations.

    Recently, geneticists have identified more than a dozen different genes influencing skin coloration in Europeans and Asians. The variation in pigmentation associated with these genes is mostly explained by new alleles under recent positive selection. For example, northern Europeans carry a new allele from a gene called SLC24A5 at a frequency near 100 percent. This allele has spread as far west as Spain, and as far east as Pakistan; it is also common in North Africa. Yet, the new mutation originated very recently, approximately 6000 years ago. Likewise, a gene called DCT has a new allele common in China, which appears to have originated less than 10,000 years ago. Both Europeans and Asians have 10 or more alleles influencing their light skin pigmentation, but these alleles are only rarely shared between these populations. Variation in eye color in Europeans is mostly explained by a recnet mutation in the gene OCA2. This same gene has another allele under recent selection in China, which does not strongly influence eye color. European hair color variation is mostly explained by variation in MC1R; this gene has many new alleles in Europe, but does not greatly influence hair color in East Asia. In every case, the new mutations occurred recently and have not yet had time to spread and proliferate from one end of Eurasia to the other.

    The recent evolution of light skin can only be explained by a strong pattern of selection favoring it. Scientists have focused on ways that dark skin may create disadvantages for people in places with lower natural UV radiation. One way that UV radiation is necessary is in the metabolism of vitamin D. Humans synthesize vitamin D in the skin, where exposure to UV radiation allows the transformation of precursor molecules into the necessary vitamin. Vitamin D is necessary for normal bone development, and people who suffer from a deficiency of vitamin D get a disorder known as rickets, characterized by deformation of the bones. Such abnormalities in bone growth can be potent causes of selection, either by decreasing mating attractiveness or by impeding normal activities. Such problems can extend to reproduction itself, as a pelvis deformed by rickets can make it impossible for a woman to give birth normally.

    There is some evidence that dark skin is less capable of maintaining vitamin D metabolism. Most notably, people with darker skin living at higher latitudes in historic times, such as in London, apparently have suffered a higher incidence of rickets. However, today people acquire vitamin D primarily through dietary supplements, including dairy foods enriched with the vitamin, so that dietary differences between peoples of different skin tones in Western nations may partially account for differences in rickets incidence. Nevertheless, vitamin D metabolism remains the most prominent hypothesis to account for the distribution of light skin in the northern parts of the world.

    Even so, some differences in skin color are probably explained by other factors. For example, northern Europeans are markedly lighter in skin color than people who live at the same latitude in East Asia. Many Europeans also have less melanin in their hair, which ranges in tone from blond to brown and red, while most high-latitude Asians have black hair.

    It is possible that some of these differences may be the result of sexual selection, as different populations create different long-term patterns in sexual attractiveness and mating. Scientists have also applied sexual selection to explain differences in hair form among populations, from short and kinky to long and straight, and differences in hair color among equatorial populations. In all such cases, there is no ready environmental explanation for the differences. Even so, human cultures are very flexible and change rapidly, especially when compared to biological evolution, so that a stable sexual preference for such a characteristic as skin color or hair color, expressed over many hundreds of generations, would appear to conflict with the rapid cultural changes that affect mating preferences.


    References

    Study questions: 
    1. Pigmentation varies among other species of primates, with different coat colors and color patterns. Do you think the same explanations work for these primates as for humans?
    2. Some humans in the distant past lived at high latitudes, like the Neandertals. What would you expect about their pigmentation?
  • Spatial dispersal, parallel adaptation, and the "Stooge effect"

    Thu, 2010-10-14 00:06 -- John Hawks

    Peter Ralph and Graham Coop have an interesting paper in the current Genetics, titled, "Parallel Adaptation: One or Many Waves of Advance of an Advantageous Allele?" [1]

    Fisher [2] famously considered the case in which an advantageous allele is dispersing through a spatially dispersed population, showing that the dispersal forms a "wave of advance". This work was the foundation for a lot of progress in understanding spatial dynamics of organisms.

    As I discussed in 2008 ("Overstating the obvious"), one of the consequences of the Fisher wave model for human evolution is that advantageous alleles will spread very slowly through the population. During the course of the Holocene, a strongly selected mutation might move only across a radius of a thousand or so kilometers. That provides one explanation for why new advantageous alleles haven't spread very far beyond their points of origin -- they just haven't had time yet.

    Another reason why an allele might not have spread widely is interference from other alleles with similar effects. I mentioned this process last year ("Spatial variation and near-fixed selected alleles"):

    Greg Cochran and I have been discussing this idea for some time. We call it the "Stooge effect". Think of the Three Stooges all trying to run through a door at the same time and getting stuck in the middle. That's what these genes are doing -- all of them are competing to respond to selection, but each is slowed by the presence of the others.

    Ralph and Coop have cleverly combined the "Stooge effect" phenomenon with spatial dispersal. They suppose a case in which two separate advantageous mutations arise in different geographic locations, each affecting the same trait. Each begins to spread independently as a Fisher wave of advance. What happens when they meet?

    As they show, the dynamics in this case give rise to a static equilibrium -- once the "waves of advance" meet, they stop moving, forming a stable boundary. A new favorable mutation makes headway only so long as it has no equally favorable mutation to compete against.

    I like the way they used both analytical approaches and simulations to come to this outcome. The appearance of stable boundaries in a reaction-diffusion system has long been known (demonstrated first by Alan Turing, actually!). But to my knowledge, no one has considered this specific case from an analytical perspective.

    The Fisher equation is not all that simple for most students to work with. If you become familiar with the equation, you will notice the key aspect is that it has two separate components -- a logistic (or reaction) component representing the increase in frequency at a single point in space, and a diffusion component representing the dispersal across space.

    The muscle of the dispersal process comes from the logistic component. Without the intrinsic growth of the selected allele, the dispersal of individuals along the boundary would not carry many copies of the selected allele into new geographic areas. If the local selective advantage dies, the wave of advance rapidly stalls. A static equilibrium arises, with the frequency of the selected allele forming a cline that correlates with the local selection pressure.

    Ralph and Coop's model approximates this case, in a dynamical sense. Each new selected mutation forms an increasing zone in which the selective advantage of other mutations is zero. When those other mutations encounter this zone, they form a stable cline. The cline is stable in the short term, but the diffusion component still disperses copies of an allele; they just lack the muscle to continue their deterministic expansion.

    The most interesting simulations by Ralph and Coop show the two-dimensional case, in which the stable boundaries emerge in a "tesselation" pattern.

    Tesselations

    Figure 6 from Ralph and Coop (2010), showing "tesselations" in 2-d simulations of waves of advance.

    The lower three panes in the figure show the stability of the boundaries between the selected alleles. They proceed to fixation locally, but their dispersal stops where they come into contact with other adaptive alleles. Over the very long term, the population will mix -- the diffusion process will slowly carry all these alleles throughout the species' range. Look at the process after a million generations and the entire zone will be gray. But this dispersal occurs at the neutral rate, where the diffusion term is the only factor driving the dispersal.

    What about humans?

    My graduate student Zach Throckmorton and I have been working in this area for a while now. One of the things that impresses us is the way that much more interesting dynamics can emerge when you alter the assumptions. I learned some of this stuff by talking to Frank Livingstone, who gave a lot of thought to these issues of spatial dispersal and selection as applied to malaria resistance alleles.

    In particular, Frank thought about the case where one allele has a slightly larger advantage than another. In some contexts, this allows the "better" allele to overtake and swamp the expansion of the "weaker" (but nonetheless adaptive) one. In others, the two come to a near standstill, one displacing the other only very gradually. Much depends on the timing of the two mutations and the local conditions controlling their initial dispersal.

    Ralph and Coop briefly consider this case in their paper, noting that the difference in fitness advantage of two alleles will allow one to advance into the range of the other, albeit at a slower rate. In humans, we may be seeing a smaller subset of cases, where one or more of the alleles have not yet established a wavefront. In these cases, the arrival of another wave can disrupt the spatial pattern of the rarer allele. The diploid case gives rise to the possibility of more complex epistases. Well-defined boundaries between selected alleles are rare, and where they occur (as may be the case with HbC and HbS in Africa), many have focused on negative epistasis as an explanation.

    Also, alleles are unlikely to substitute perfectly for each other. In many cases, they may work synergistically -- individuals carrying two selected alleles that affect the same function may outperform those carrying only one such allele. At some point, new selected mutations may start to have diminishing returns, even on a trait like skin pigmentation where dozens of alleles may have been selected in widespread human populations. So the current distribution may to some extent be "frozen", but by a more complicated dynamic than the simple intersection of waves of advance.

    As Coop and colleagues showed last year [3], and we discussed in 2007 [4], there are really only few genes that have approached local fixation in recent human evolution. The current spatial pattern of recently selected alleles doesn't look like a tesselation with many alleles near local fixation. Over most of the Old World, it looks like populations have a very large number of very new alleles, far from fixation, and few up over 70 percent in frequency.

    So the specific scenario in this paper by itself probably does not explain the overall empirical pattern in humans. But if we consider the current pattern as a transient, approximating the early stages of dispersal for many selected alleles, we may not be terribly far off the mark.

    Mutation-limited evolution

    This is a long dense paper and there's a lot in it. One further aspect of the paper that I think is essential is the way that Ralph and Coop reiterate the basic point that more people means more mutations. In their case, they focus on population density over space (population number, when you multiply them) as a constraint on the number of possible adaptive mutations. They apply this idea as a hypothesis to account for parallel adaptations that may have emerged in recent human evolution.

    Multiple mutational origins are likely if the characteristic length is shorter than the physical dimensions of the region. Eurasia measures >8000 km across, and so Table 1 suggests that multiple origins at a single base pair are very unlikely at the lower population density. On the other hand, if the mutational target is large, then multiple origins are likely at low densities, while at high densities independent origins are ubiquitous. The complementary cases of (rho = 2, µ = 10–8) and (rho = 0.002, µ = 10–5) give identical characteristic lengths of 3000 km, although the timescale on which the mutations spread differs. Thus for these two parameter combinations we can expect a few mutations to dominate within continents and for multiple mutations to be common in a population spread across an area the size of Eurasia. Obviously these calculations are very crude, as population densities vary through space and time, and dispersal across continents is not simply a function of geographic distance and individual dispersal. Nevertheless, these calculations suggest that it is plausible that for adaptive traits with reasonable mutational targets (e.g., a change anywhere within a gene or pathway) even low population densities can lead to parallel adaptation across an area the size of Eurasia, and higher densities almost certainly will.

    We note that as human population densities have increased dramatically over time, so too has the probability of parallel adaptation. It is interesting therefore to note that a number of recent human adaptations (e.g., sickle cell alleles) involve repeated changes at very small mutational targets in relatively small geographic areas, while older adaptations from single changes (e.g., skin pigmentation) are more broadly spread.

    They are describing a scenario in which small human populations would have been mutation-limited -- that is, the number of new mutations is small, making it unlikely that adaptive mutations will happen in any given generation. In such populations, the rate of adaptation is limited by the availability of new mutations. In an extreme -- in the very small effective sizes of Pleistocene human populations -- the rate of adaptation may be extremely slow and regional populations may come to differ at many weakly selected loci, which spread very slowly.

    As the population grows, strongly adaptive mutations become more and more likely to happen somewhere in the species' range. Yet they are still relatively rare -- meaning that they have an opportunity to spread fairly far before encountering another equally strongly selected mutation affecting the same trait.

    This process can give rise to very large differences on a continental scale, even when the selection pressures in different regions do not differ. In humans, the dispersal of selected alleles across space may have been significantly accelerated by actual dispersals of populations. It is not a mere coincidence that very widespread alleles in Eurasia also tend to be much older than 20,000 years old -- long-distance dispersals prior to that time had a higher chance of leaving a lasting influence on subsequent populations.

    But as the population gets bigger and bigger, parallel mutations are more and more likely to happen. As Ralph and Coop point out, at the extreme of large population size and likely mutations, you shouldn't see any new mutations emerging and spreading over very large areas. Any of these mutations would be very likely to encounter other new mutations that do the same thing.

    Is this likely in humans? Clearly some mutations have happened recurrently. Making a broken gene is easy -- there's a large mutational target, since a large fraction of nonsynonymous substitutions might do the job. So if there's a net selective advantage to breaking a gene, we ought to see that happen recurrently in human populations.

    In contrast, if the mutational target is very small, then mutations will still be rare even in a very large population. If only one base change can have an adaptive effect, that precise change will happen less than once in 109 births (remember that not just any mutation at a site, but some particular mutation is what we may need). If a rare duplication or gene conversion is the necessary change, then it may be much rarer.

    Looking across the last few million years, when human population numbers were much smaller than the Holocene, we can be pretty sure that some aspects of our evolution were mutation-limited. The changes that took hold in our ancestors were the ones that happened, and that survived the winnowing of genetic drift. Many changes that would have been adaptive didn't happen in our ancestors. They just weren't lucky enough.

    But some of those changes would still be adaptive now, if we could get them. And we have had much larger numbers in the last 10,000 years. Homo erectus needed these mutations, but we only now are seeing them selected in the human population.

    Malaria adaptation

    Hemoglobinopathies are among the cases of easy mutations -- where breaking a gene is adaptive. It's not just any broken version of alpha- or beta-globin that does the job, though. The hemoglobin needs to be impaired in certain ways to impede the parasites while maintaining blood function. This provides many of the classic cases of human adaptation, and Ralph and Coop turn to this system for examples of parallel adaptation:

    The sickle cell allele HbS at the β-globin gene in humans provides a particularly interesting case of putative parallel adaptation. The HbS allele (β6 Glu-Val) has been driven to intermediate frequencies by selection within the past 10,000 years due to increased resistance to malaria of heterozygotes for the allele (HALDANE 1949; ALLISON 1954; CURRAT et al. 2002; KWIATKOWSKI 2005). The HbS allele is present on at least four major distinct haplotypes in Africa, each at intermediate frequency within a different geographic region; the haplotypes are named after the population sample where they were first discovered (Central African Republic, Senegal, Benin, and Cameroon). This is consistent with multiple origins of this single-base-pair change. Note that a distinct, malaria resistance allele, HbC (β6 Glu-Lys), has also arisen in Africa at the same codon as the HbS allele (TRABUCHET et al. 1991; AGARWAL et al. 2000; WOOD et al. 2005a), increasing our confidence that the mutational input was high enough to allow multiple types to arise. However, FLINT et al. (1998) thought the hypothesis of multiple new mutations arising at a single base pair was extremely unlikely and proposed that it was more likely that gene conversion had spread a single mutation across multiple haplotypes.

    The theory we have developed can be used to assess the plausibility of the multiple mutational origins of the sickle cell allele, by exhibiting parameter combinations that yield characteristic lengths consistent with the separation of the sample locations. [Recall that the wave of advance, and thus also our model, works in the case of heterozygote advantage (ARONSON and WEINBERGER 1975).] The different HbS haplotypes co-occur within a few thousand kilometers of each other (see Table 5 of FLINT et al. 1998) (noting that these locations are unlikely to reflect the geographic mutational origins, and mutations will have been spread by large population movements). As the HbS changes occur at a single base pair, the mutation rate would have been 10–8, and we take an s = 0.05 (as in CURRAT et al. 2002). If human dispersal at that time was well approximated by a Gaussian kernel with sigma = 100 km, then a characteristic length of 1000 km would require an effective density of individuals of rho = 25 km–2, while if sigma = 10 km, then we would require only rho = 2.5 km–2. This latter set of parameters does not seem unrealistic, considering our knowledge of population density and dispersal parameters, so our model suggests that the hypothesis of multiple origins is not unreasonable.

    I think they've got the basic idea correct here, but there are some additional details to consider. The distribution of HbE is not quite so easy to understand if parallel mutations are really so likely, and of course there is the negative epistasis of different alleles (and the thalassemias) which impacts their dispersal ability when they become moderately common. The dynamic may be of similar form to the one described here, but boundaries between alleles may be reinforced by the fitness costs of carrying multiple ones.

    This situation raises the issue of path dependence. Some mutations have "first mover" advantages. Once they are common, other adaptive mutations may still occur -- even mutations that are better from the standpoint of fitness -- but be lost or grow very slowly because their net fitness advantage over the common mutant is slight. Where HbE is common, new HbS alleles are unlikely to invade quickly. Where HbS is common, new HbE mutants are similarly unlikely to invade -- even though HbE has a higher fitness.

    Network effects among genes may also dominate the spatial dynamics. HbS spread most widely in the context of populations that were already Duffy null, and in which G6PD deficiency was rapidly increasing. The first conditioned the parasite environment -- P. vivax had a strong disadvantage in Duffy null populations, P. falciparum made up most of the parasite load. G6PD deficiency should have impacted the relative advantage of HbS, more and more as it became more common. Those are two loci among many that alter malaria dynamics in Africa compared to South and Southeast Asia.

    Conclusions

    There is much more to say about this paper -- it's 22 journal pages. But I think I've given an impression of what's there and how the ideas may impact our interpretation of recent human evolution. Many of the central concepts were presaged by earlier work in 2007 and 2008, as reviewed here on the blog. The new analytical and simulation work, I really like.

    Hopefully we can get out some shorter papers that will focus on aspects of these problems as applied to humans. A message that comes across very clearly in our work and this new paper is that different time periods in our evolutionary history must have had very different selection dynamics. Pleistocene humans were not only in a different ecology than us, they experienced a radically lower potential for adaptation.


    References

  • Polygenic traits and directional selection

    Sat, 2010-09-18 13:41 -- John Hawks

    This has been an eventful week for those of us who study the dynamics of recent selection in humans. The most significant event was the publication of a paper describing genetic analysis of a long selection experiment in Drosophila. Although the experiment differs from most natural instances of selection in some important ways, the results give some very helpful corroboration that the recent human pattern of adaptive evolution was rapid and of an expected pattern for massive selection on many traits.

    Meanwhile, Jonathan Pritchard and Anna Di Rienzo have a short review in the current Nature Reviews Genetics [1], discussing the idea that a large fraction of adaptive evolution may be difficult to find with current genetic evidence.

    Their idea is that polygenic adaptations are unlikely to occur by successive "sweeps" of new adaptive mutations.

    It seems likely to us that, as in traditional quantitative genetic models, many — possibly even most — adaptive events in natural populations occur by polygenic adaptation. Polygenic adaptation could allow rapid adaptive shifts, yet would often go undetected using conventional methods for detecting selection. Moreover, polygenic adaptation is qualitatively different from the models of adaptive substitutions that dominate the population genetics literature.

    This is not a new idea, but Pritchard and Di Rienzo review it in a productive way, and the topic is worth some deeper thought...

    An adaptive genetic substitution is often modeled as an episode of logistic growth. A new mutation, initially in a single copy, increases exponentially in numbers until it is very common in the population. After this point, it continues to increase in frequency up to fixation, but progressively slowly. The entire process takes hundreds or a few thousands of generations, which sounds like a long time but is actually very rapid compared to the deep genealogical histories of most genetic loci. The initial rapid increase in numbers carries a region of linked sequence along with the selected variant. This "hitchhiking" region is highly visible because of the co-association of nearby allelic variants. Thus, if such a "sweep" is ongoing, we should have little trouble finding it. In humans we've found a lot of them, which is a big piece of evidence for the rapidity of human evolution during the past 40,000 years.

    But all that describes the dynamics of a single, strongly selected, mutation. What if a trait comes under selection, but the variation in the trait is explained not by a single gene, but by dozens or hundreds of genes? Pritchard and Di Rienzo outline such a scenario:

    The key point is that we should expect such an adaptation to occur by small allele frequency shifts spread across many loci. As a hypothetical example, consider the adaptation of human height — a trait for which there are probably hundreds of SNPs that each affect height by a few millimeters. Strong selection for increased height could be very effective, as height is extremely heritable. But at the level of individual SNPs, the effect of selection would be rather weak, exerting just a small upward pressure in favour of each of hundreds of 'tall' alleles. Suppose that at 500 SNPs, the tall alleles each increase the expected height of a person by 2 mm. Then, an average shift of just 10% in the population allele frequency of each tall allele would increase average height in the population by 20 cm (assuming that SNPs contribute additively). Although these numbers are hypothetical, they illustrate that, for a highly polygenic trait, a dramatic adaptive response could result from modest allele frequency changes at many loci. This model is different from classical sweep models. Most importantly, adaptation could occur without dramatic allele frequency changes and without adaptive fixation events.

    But the description isn't precisely what would happen in the case of selection on stature. Consider:

    1. It is true that alleles that already exist in the population provide the most immediate opportunity for change under directional selection. Any short-term phenotypic evolution we see is likely to be caused by changes in the frequency of standing variants.

    2. Some of the alleles that affect stature are constrained by their effects on other phenotypes. They might not change, even under directional selection on stature.

    3. Stature may be affected by hundreds of loci, but these do not account for equal proportions of the additive variance. Loci are subject to selection roughly in proportion to the additive variance in fitness they explain. Directional selection on stature will change the allele frequencies for a few loci quite a bit more quickly than most.

    The distribution of effect sizes is fairly well known for stature in humans. For example, Park and colleagues [2] this spring plotted the distribution of effect sizes for variants discovered by GWAS in 63,000 Europeans:

    Effect size distribution of variants found to explain heritability of stature, Crohns and BPC cancers in human genome-wide association studies

    In the figure, (a) is based on observed loci -- for stature, this includes 30 loci that reached significance in the GWAS without follow-up genotyping. There is a pretty severe ascertainment bias against small effect sizes, so curve (b) attempts to model the actual distribution correcting for ascertainment. Curve (c) is normalized to give the three conditions the same observed range.

    You can see that if we suddenly started selecting for height, most of the genetic response would come from a very small proportion of the loci that explain the current additive variance. These would be the subset of loci in the large-effect-size tail of the distribution, excluding those that are constrained by their role in other phenotypes under selection.

    4. As an allele becomes common enough (going up toward fixation), the locus will account for less and less of the additive variance in fitness. To maintain the same response to selection, other alleles must pick up the slack. Over time, groups of different alleles will come into focus of selection, sort of like the "cover flow" feature of an iPod. Some alleles increase in frequency across a transient in the mid-frequency range, only to be gradually replaced by others. Most of the phenotypic change occurs as alleles cross rapidly from 40 to 60 percent or so.

    5. A few loci will be special. These account for an appreciable fraction of additive variance even though the favored allele is very rare. As they become common, these favored alleles change in frequency more and more rapidly, and account for more and more of the additive variance. They suck up the oxygen of selection. These alleles will look like a classic sweep.

    6. Over many generations, new mutations may occur that also have strong effects on the trait. They will follow the "special" pattern described in 5.

    The question is how many loci of this type can we expect to exist? We all know that there are two patterns that could account for the heritability of traits like stature, where no common variants have very strong effects. Either the additive variance is spread across many rare variants with large effects, or instead across many common variants with small effects. Pritchard and Di Rienzo's scenario accentuates the second of these -- a small frequency change in many common variants with small effects.

    But if even a small fraction of the additive variance is explained by a few rare variants with strong effects, these may cause most of the phenotypic change, and may look a lot like a standard selective sweep.

    Pritchard and Di Rienzo note that the two options -- a rapid sweep of one or a few locus, versus slight frequency changes in many loci -- are not mutually exclusive. Most cases of directional selection on phenotypes may involve both patterns. If so, that will be very helpful, because we can use the easy-to-find sweeps to target analysis of harder-to-find frequency changes.

    They sketch a strategy for examining the evolution of such traits.

    One type of approach will be to identify phenotypes that may have undergone adaptive changes in particular environments, such as adaptations to cold climate, high altitude or novel ecological conditions. To dissect the genetic basis of such adaptations, one might collect phenotyped samples from closely related populations that have and have not experienced the selective pressure of interest and use GWA mapping to identify relevant quantitative trait loci (QTLs). Additionally, one would want to measure the extent of phenotypic adaptation — estimated as the difference in average phenotype between the adapted and non-adapted populations when they are living under matched conditions (exact matching of conditions may be difficult in human studies). Then one could ask: what fraction of the phenotypic difference can be explained by alleles with large versus small frequency differences? Are the phenotypic effect sizes of QTLs with large allele frequency differences greater than those with subtle frequency shifts10? What fraction of the phenotypic difference cannot be explained by detected sweep signals or QTLs at all (and hence might result from the cumulative effect of many weak QTLs)?

    In another type of scenario, one might hypothesize that a particular aspect of the environment is an important selective factor (for example, climate or diet) but it is unclear what all the relevant phenotypes are. In this case, we might study adaptation by looking at sets of populations that have independently adapted to the same selective pressures. One type of signal would be alleles that show parallel frequency shifts in response to similar environmental pressures in distantly related populations (although this type of approach is unlikely to be powerful for alleles with very small effects).

    These are exactly the kind of tests that we are working on here at Wisconsin. We have some pretty promising ideas, I think. If you're on a dissertation grant panel, would you please give some money to my students who want to apply these approaches?

    I mean, really, this is the best application of anthropology to develop new genetic approaches, rich in theory and in empirical evidence. Humans are the ideal model organism, because we know the histories and ecologies of different populations. Since the development of agriculture, we've had several ongoing natural selection experiments in our species.

    Nor can we ignore the longer prehistory of human populations. I tend to think that a lot of recent selection has involved new genetic solutions in cases of strong stabilizing selection. A trait like brain size does not evolve under classic directional selection, but instead as a consequence of shifting patterns of stabilizing selection. With intense selection on multiple functions, such traits are constrained in their evolutionary response. Slight frequency changes are not likely to relax such constraints, but a new mutation of large effect might break a long-standing genetic logjam.

    So I think Pritchard and Di Rienzo have outlined many important issues in this review. They have the potential to be highly productive for people with a little talent for applying theory to the data.


    References

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