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paleoanthropology, genetics and evolution

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China

  • Mailbag: North and South China

    Mon, 2012-11-19 09:08 -- John Hawks

    I read with interest your post on:
    http://johnhawks.net/weblog/reviews/neandertals/pigmentation/neandertal-...

    in particular:
    "People of Han Chinese ethnicity sampled in Beijing appear to have on
    average a half percent more Neandertal ancestry than people of the
    same ethnicity sampled in southern China."

    Apologies if you know this already but Han Chinese civilization
    started in the Yellow River area and only later expanded south. The
    original people in the south of China are Viet people and have more in
    common with modern Vietnamese. They all became "Han" people after
    their kingdoms were conquered by the north and are really Han in name
    only. Northern and Southern Chinese people look different and their
    spoken dialects (languages) are mutually incomprehensible to each
    other.

    Chinese people from the province of Shantung have the reputation of
    being the biggest in size, always attributed to their diet of wheat,
    but they are probably the last purest reservoir of Neandertal genes in
    the East. Shantung people generally have big noses, fair skin and big
    bones.

    Yes indeed, these are very deep differences, at least as great as between northern and southern Europe genetically, and maybe more. That's why we find the contrast so useful in comparison with the archaic human genomes. The current samples are not ideal because the "South Chinese" were sampled in Beijing based on ancestry, and so are a diverse set. We are hoping soon to have data from many more Southeast and Northeast Asian populations, which will give us some resolution on when things changed.

  • Panda gestion

    Sun, 2012-10-14 20:25 -- John Hawks

    Here's a story that showed up in my feed this morning: "Prehistoric man ate panda, claims scientist".

    Wei Guangbiao said prehistoric man ate the bears in what is now part of the city of Chongqing in south-west China.

    Wei, head of the Institute of Three Gorges Paleoanthropology at a Chongqing museum, said excavated panda fossils "showed that pandas were once slashed to death by man".

    This really wouldn't be very surprising, as occasional evidence of human predation or consumption of other carnivores, including bears in Europe, goes way back.

  • Real cave people

    Thu, 2012-03-22 08:59 -- John Hawks

    The LA Times has an interesting article about modern cave life in Shaanxi: "In China, millions make themselves at home in caves".

    "It's like living in a villa. Caves in our villages are as comfortable as posh apartments in the city," said Cheng Wei, 43, a Communist Party official who lives in one of the cave houses in Zaoyuan village on the outskirts of Yanan. "A lot of people come here looking to rent our caves, but nobody wants to move out."

  • Neandertal introgression, 1000 Genomes style

    Sat, 2011-12-10 18:16 -- John Hawks

    For our project to understand pigmentation genetics in archaic humans, we had to find a good comparative sample of sequence data from recent humans. The original publication on the draft Neandertal genomes compared them to five low-coverage genomes from different Old World populations, along with the publicly available genomes from Craig Venter and others [1]. The first publication on the Denisova genome added an additional handful of genomes to these comparisons [2].

    Some of these handful of genomes from living people are more similar to the Neandertal and Denisova genomes than others. That simple fact is the proof that some living people have Neandertal and Denisovan ancestors.

    But until now, the comparison has been limited to a very small number of human genomes. That became a focus for critics of the Neandertal and Denisovan results. How could three or four genome sequences possibly provide an adequate representation of human variability? We could imagine scenarios in which the similarities between Neandertal and humans could be explained by some unsampled population, for example, northeast Africans [3]. Denisova does not present the same problem, because African population structure cannot possibly explain its resemblance to populations in Wallacea, Australia, and Oceania [2] [4]. But to compare either of these genomes, we should seek a broader sampling of genomes from living people.

    As I wrote yesterday, my students and I have been working to understand pigmentation genetics of the archaic human genomes ("Pigmentation of archaic humans: introduction"). I've emphasized the need to break the analysis into small steps. For this question, we need to examine whether the pattern of introgression around pigmentation genes is characteristic of the genome as a whole. If genes involved in pigmentation have systematically higher or lower levels of Neandertal ancestry, that will tell us a lot about the evolutionary history of pigmentation in recent and archaic humans. For this, we need a good comparative sample, and the 1000 Genomes Project provides the best sample available.

    The first step in assessing the pattern of introgression for pigmentation genes is to characterize the pattern of introgression across the whole genome.

    Yes, a whole-genome introgression analysis sounds awfully big for my "small steps" concept. But actually this is simpler than it might sound. Here's a teaser:

    The figures in this post are not from a whole-genome analysis; they include data from eight chromosomes that we prioritized because of our pigmentation analysis. I am licensing all of them under a Creative Commons ShareAlike license so that anyone can use them anywhere.

    UPDATE (2011-12-10): I finished the whole genome analysis and am updating this post and figures accordingly. The results are the same throughout, with the exception of the Europe-East Asia comparison, which now shows these populations to be significantly different across the genome as a whole. I have partially updated the figures and will finish these later today.

    The value of sequences

    The 1000 Genomes Project data have been updated several times in the last year, as both sequencing and analysis of the genomes have progressed (more information on 1000 Genomes Project website). We downloaded a release of SNP genotype calls from 1094 individuals, based on the low-coverage (average 4x) sequencing that has been carried out on the sample.

    A SNP (single nucleotide polymorphism) is a nucleotide site with at least two alleles present in the global human sample. These sites represent only one kind of genetic variation in today's populations. Many of the differences between people's genes are caused by insertions, duplications, deletions, transpositions, or inversions. But those kinds of polymorphisms can be challenging to study in low-coverage genomes, and we already understand quite a lot about SNPs in human populations from the earlier HapMap project [5] [6]. The HapMap provided the data underlying our 2007 paper on the acceleration of recent human evolution ("Why human evolution accelerated") [7].

    The drawback of earlier SNP variation projects is that they examined only a subset of SNP variation in a sample of people. To design a microchip that could provide a million or more SNP genotypes from a saliva sample, somebody first had to discover where in the genome SNPs could be found. So they took small samples of people, sometimes only a single person's two copies of the genome, and sequenced. Adding together SNPs found by several methods, they could get a representation of SNP variation across the whole genome in a population. But this process introduced a bias: the SNPs were ascertained in a sample that inevitably could not represent humans in other samples with the same accuracy. Initially, SNP samples were heavily biased toward people of European ancestry (upon whom most genetic work was originally done), and the HapMap project went to great efforts to increase the representation of other populations. But even with the best possible ascertainment, interpreting SNP variation requires us to jump through some theoretical hoops.

    Sequence data make life much easier for the population geneticist. Seriously, working on this stuff on the whiteboard is fun instead of a constant nightmare of sampling biases and spaces between markers. I have a bias myself, in that I find recombination hard to deal with. I love reticulation among populations, but I'd rather work with genealogies that look like proper trees instead of a liana-strewn mess. So looking at sequence data over short intervals makes me happy. Not as happy as beer aged in bourbon barrels, but happy.

    The 1000 Genomes Project SNP files represent every SNP mutation observed in the sample. In other words, these are sequence data, just with all the fixed (and therefore redundant) sites removed. Even so, these sequence data are not perfect. Low coverage means that some rare mutations in the sampled individuals will go unreported. We aren't typically interested in singleton mutations in the sample, except that missing them will introduce a bias upon our estimates of the time that common ancestors lived. Next-gen sequence reads are usually fairly riddled with errors. High coverage allows these errors to be removed with some confidence, but low-coverage genomes risk throwing out real SNPs along with the spurious ones. The publicly available files represent some analytical steps that we do not here control, so we have to work with the understanding that the data are not perfect.

    The 1000 Genomes SNP files have had a phasing algorithm applied to them, which attempts to assign genotypes to chromosomes. In essence, phasing tries to figure out whether adjacent SNP alleles belong to the same copy or to different copies of the same chromosome. The details of this phasing are not yet apparent, and for many reasons I am cautious about using phased data. The inference is often inaccurate for rare mutations, and the whole process tends to sneak assumptions about population history into the resulting dataset. I hate being forced to live with someone else's assumptions about human population history, and I typically try to avoid needing phased data. In this case, it looks like the data over short intervals are as accurate as they can be, given the limitations on coverage and sampling. We have moved forward by applying methods that make a bare minimum of assumptions.

    Counting derived SNP alleles

    David Reich and colleagues came up with an appealingly simple test of introgression, which they applied to both the Neandertal and Denisovan genomes. Eric Durand, Reich, Nick Patterson and Monty Slatkin described the method formally this year [8], which they call the D-statistic. Informally, this has become known as the ABBA-BABA test, after their labels for the discordant genealogies that the test compares. By and large, across the genome, humans living today share many more new mutations with each other than they do with an archaic human like a Neandertal. But sometimes two genomes are different from each other, and one of them shares a new mutation with the Neandertal.

    A human might share a mutation with a Neandertal because it actually isn't very new, and both inherited the mutation from some much more ancient population of humans. This scenario is called "incomplete lineage sorting", because humans today have multiple gene lineages that existed within some very ancient population, instead of these having been "sorted" cleanly into the different human and Neandertal populations. Incomplete lineage sorting does happen a lot between humans, Neandertals, and Denisovans. ILS is the normal mode of variation among recent human populations, who trace their genealogical histories back much further than the earliest "modern" humans. So if one human has a Neandertal allele, and another human has a different allele, it's probably no big deal. They both just inherited gene variants that already existed in our distant common ancestors.

    You can probably see already that if we had a way to estimate the age of an allele, we could tell whether incomplete lineage sorting is a credible explanation for any particular site. I'll leave that point for another post.

    In the meantime, if we pretend that we know nothing at all about the ages of alleles, we must find some other way to tell whether incomplete lineage sorting can explain Neandertal similarities. Reich and colleagues recognized that incomplete lineage sorting from ancient pre-Neandertal ancestors ought to be distributed equally among living people. If we look at every site in the genome where we have data from Neandertals, we should find that one living human genome should look like the Neandertal just as often as another.

    This insight led to their test. Take a pair of humans, count the number of times sequence A is like the Neandertal and sequence B is like a chimpanzee, and then do the inverse — B then A. ABBA-BABA.

    Why a chimpanzee? In most cases the chimpanzee allele will represent the ancestral state for humans. Living people can inherit ancestral alleles from Neandertals as well as derived ones, but the derived ones tend to be rarer and younger within human populations. If one living genome shares an ancestral allele with the Neandertal genome, we don't need incomplete lineage sorting or introgression to explain the pattern. For all we know, such a mutation originated after Neandertals were already gone. So we need to pay attention to the derived mutations, ones that are present in Neandertals but not in chimpanzees. Do a count of these across the genome, and if you find a living genome with significantly more than another, you've found evidence for introgression.

    Ed Green, David Reich and colleagues [1] [2] did a comparison of every possible pair of genomes in their modern human sample. These sequence data were gappy, so that sequence A might share different coverage with B than with sequence C. So it was necessary to consider each pair separately, counting all the sites where both human sequence and the Neandertal and chimpanzee sequences had data.

    The 1000 Genomes Project sample reports genotypes for every SNP for every sampled individual. So in principle, every pair of sequences should have data for every one of these sites. Again, we have to be cautious about the nature of the sequencing, attending to the possibility of systematic biases due to low coverage. But we really don't have to take the time-consuming step of comparing every possible pair of the 2188 resulting haploid genomes. We can just find the derived SNP alleles that are present in Neandertals and count how many of them are in each of the human sequences. If one sequence has significantly more Neandertal derived alleles than another, it had to get them somehow.

    That magic three percent

    The figure at the top of the post represents that count. Every individual in the 1000 Genomes Project dataset has two copies of the autosomal genome. Separating these two copies of the genome (basically arbitrarily) and counting up the shared derived features between each of those copies and the genome of Vindija 33.16, we obtain the histogram. Here it is again:

    The African genomes in the 1000 Genomes sample include Yoruba from Nigeria and Luhya from Kenya. The Asian populations sampled are Japanese and Chinese, including people of Han Chinese ethnicity in Beijing and southern China. The European ancestry samples include the CEU sample from Utah, as well as British, Tuscan, Spanish and Finn samples.

    The histogram shows that Asian and European genomes have significantly more Neandertal derived SNP alleles than do the African genomes. The averages for the Asian and European samples are around 3% higher than the average for the African samples. Whatever gave Africans some degree of similarity to Neandertals, non-Africans seem to have gotten around 3% more of it.

    Green and colleagues [1] assumed conservatively that Africans share derived SNP alleles with Neandertals only because of incomplete lineage sorting from the human-Neandertal ancestral population. This fraction should be the same in all human populations, under the assumption that Africans were mostly isolated from Neandertals for some period of time. The 3% Neandertal bonus outside Africa should then represent introgression from Neandertals into recent populations outside Africa.

    Both previous studies noted that genomes outside Africa are not significantly different in the fraction of derived SNP alleles shared with Neandertals. A genome from China and a genome from France carried the same fraction of shared derived SNP alleles with Neandertals. Here, we've confirmed that basic identity in the level of introgression in these populations.

    I have told several people now that I find the distributions in China and Europe spookily similar. On parts of the genome, the two distributions have means that are not significantly different. Indeed, I worked for a week with an analysis of eight chromosomes, in which the East Asian and European means were fewer than 100 SNP alleles apart. Even across the whole genome, Europeans average only 700 derived SNP alleles more than the East Asian sample. This small difference a bit more than a tenth of a percent) is strongly significant on these sample sizes. A t-test yields a p-value of 1.1 times 10-26 on the difference in means. Even so, the distributions of these two populations overlap across most of their ranges.

    Seeing these hundreds of genomes arrayed on a histogram provides much more information than we had from a handful of genomes. It is remarkable how much dispersion there is among genomes from a single population. Although the means of these two samples are nearly the same, you can see that each of them has a large range of variation in the shared derived SNP alleles with Neandertals. This variation means that people within a single population have very different proportions of Neandertal ancestry.

    This is not a graph of people, but a separation of the two copies of SNP alleles carried by these people. That separation is phased at short scales but arbitrary on the scale of a whole chromosome, so the histogram likely understates the variance among single genomes while it overestimates to some extent the variation among people with their diploid genomes. Still, it looks likely from these comparisons that some people in Europe carry more than a percent higher Neandertal ancestry than the average, and some carry a percent less. We can use statistical methods to test this hypothesis directly as applied to individuals in the sample.

    Neandertal genes in recently admixed populations

    A sample of hundreds of people allows us to demonstrate significant differences among the genomes of different populations. Some of the 1000 Genomes Project samples are from populations that represent historically recent admixture of people who trace their ancestry to different parts of the world.

    For example, the "ASW" population sample includes African-American people who live in the Southwest United States. We know from many other genetic studies that African-Americans vary in the fraction of ancestry they derive from Europeans and from Africans. The average amount of African and European ancestry varies among African-Americans who live in different parts of the U.S., as low as 3% and as high as 20% or more in some parts of the country. The proportion among individuals varies even more. So when we consider the ASW sample, we should expect to see a lot of variation in the number of shared derived SNP alleles with Neandertals, with a mean higher than African populations.

    Which is exactly what we do see:

    The ASW sample overlaps substantially with the Yoruba sample from West Africa (Nigeria) and slightly with the CEU sample, which includes people of European ancestry in Utah. The total in the ASW genomes is more variable than either the Yoruba or CEU population samples. If the higher mean in the ASW genomes reflects European ancestry from a population like CEU, the proportion of European ancestry would be around 17% for that sample of people. It would be hard to tell from these numbers alone how much of the variation in ASW is attributable to variation in ancestry fraction, and how much is expected within a population of homogeneous ancestry. As we'll see in some other populations, there are some appreciable differences among populations within a given region, and ancestry differences may add to the variation among individuals within populations.

    We see a similar pattern when we look at the Puerto Rican sample. Individuals in this sample have some ancestry from European, Native American and African ancestors. The comparisons by Reich and colleagues [2] and Green and colleagues [1] suggested that Native American populations have the same fraction of Neandertal ancestry as other people outside Africa. In the comparison with YRI and CEU samples, Puerto Rican (PUR) genomes are intermediate, with a mean suggesting around 15% ancestry from the West African population.

    The two outlier points in the Puerto Rican sample are the two genome copies from one individual, who we would hypothesize had much higher African ancestry than the average in the sample.

    Next...

    This post has taken me much longer than I expected to get to the point of talking about variation among samples within continental regions. It turns out that, despite the similarity of European and East Asian samples in their averages, there are substantial differences between samples within each of these regions.

    For example, here's a comparison of north and south Chinese samples:

    People of Han Chinese ethnicity sampled in Beijing appear to have on average a half percent more Neandertal ancestry than people of the same ethnicity sampled in southern China. I found these kinds of differences almost everywhere I looked within regions. More later...


    References

    1. Green RE, Krause J, Briggs AW, Maricic T, Stenzel U, Kircher M, Patterson N, Li H, Zhai W, Fritz MH, et al. A Draft Sequence of the Neandertal Genome. Science [Internet]. 2010;328:710–722. Available from: http://dx.doi.org/10.1126/science.1188021
    2. Reich D, Green RE, Kircher M, Krause J, Patterson N, Durand EY, Viola B, Briggs AW, Stenzel U, Johnson PLF, et al. Genetic history of an archaic hominin group from Denisova Cave in Siberia. Nature [Internet]. 2010;468:1053–1060. Available from: http://dx.doi.org/10.1038/nature09710
    3. Hodgson JA, Bergey CM, Disotell TR. Neandertal genome: the ins and outs of African genetic diversity. Current biology : CB. 2010;20(12):R517-9.
    4. Reich D, Patterson N, Kircher M, Delfin F, Nandineni MR, Pugach I, Ko AM-S, Ko Y-C, Jinam TA, Phipps ME, et al. Denisova admixture and the first modern human dispersals into southeast Asia and oceania. American journal of human genetics. 2011;89(4):516-28.
    5. The International HapMap Consortium. A Haplotype Map of the Human Genome. Nature [Internet]. 2005;437:1299–1320. Available from: http://dx.doi.org/10.1038/nature04226
    6. McVean G, Spencer CCA, Chaix R. Perspectives on human genetic variation from the HapMap Project. PLoS genetics. 2005;1(4):e54.
    7. Hawks J, Wang ET, Cochran G, Harpending HC, Moyzis RK. Recent acceleration of human adaptive evolution. Proceedings of the National Academy of Sciences, U. S. A. [Internet]. 2007;104:20753–20758. Available from: http://dx.doi.org/10.1073/pnas.0707650104
    8. Durand EY, Patterson N, Reich D, Slatkin M. Testing for ancient admixture between closely related populations. Molecular biology and evolution [Internet]. 2011. Available from: http://dx.doi.org/10.1093/molbev/msr048
    Synopsis: 
    We're quantifying the amount of Neandertal ancestry in whole genome data from living people.
  • Asian Homo erectus

    Mon, 2011-11-07 23:59 -- John Hawks
    Synopsis: 
    Examining a sample of crania from the Early and Middle Pleistocene of Asia and Indonesia

    Homo erectus entered Asia as early as 1.8 million years ago. One of the earliest specimens of the species is the Modjokerto skull, from Java. The spread of this species across the tropical Old World was a major event in our evolution. After Homo erectus reached East and Southeast Asia, it had a long history — up to 200,000 years ago or even more recently.

    This station has several representatives of this Asian dispersal of early humans.

    • Trinil 2, Java, 1.2 million years old.
    • Sangiran 2, Java, 1.0 million years old.
    • Zhoukoudian L2, China, 700,000 years old.
    • Zhoukoudian L1, China, 700,000 years old.
    • Ngandong 10, Java, 200,000 years old.
    • Ngandong 8, Java, 200,000 years old.
    • Nganding 4, Java, 200,000 years old.

    What to do: Overall, these fossils are very similar. However, they come from a wide range of times. Make an attempt to seriate the fossils by cranial size. List the results of your seriation. Does it correlate with time?

    Try seriating the skulls according to the form of their frontal bone or supraorbital torus. This feature differs between fossil specimens from Java and China. Does your seriation indicate this difference in geography?

  • Mailbag: Denisovan in China and New World habitation

    Sun, 2011-11-06 14:11 -- John Hawks

    Re: "How widespread is Denisovan ancestry today?"

    Your website is so interesting I wish I were an anthropologist! The
    heat map showing interpolated spatial distribution of the frequency of
    Denisova alleles struck me - for a different reason than the subject
    of the article. Does this map add weight to the argument for a
    possible southern route for at least some of the peopling of the
    Americas? Or is it simply assumed that somehow all traces of these
    gene signatures would simply disappear during the migration from a
    northern route? I am trying to understand how this makes sense if the
    peopling of the Americas was exclusively a Northern route.

    Thanks for wonderful website.

    Not clear. The map is showing such a very small fraction of the overall genetic variation, that the similarity between the south China and central America region may be just noise. If I were to set about answering the question about New World habitation, I would start with a very different approach. Worth some consideration.

  • The diet of Gigantopithecus

    Wed, 2011-10-26 13:07 -- John Hawks
    Synopsis: 
    Gigantopithecus was once imagined as an exclusive bamboo feeder, but evidence suggests a broader diet focused on fruits

    Gigantopithecus has often been described as a bamboo eater, based on analogy with another kind of large herbivore in China, the giant panda. Giant pandas have several specialized feeding adaptations to support their bamboo diet. The most famous of these is the expansion of what we would call a wrist bone in most mammals, a sesamoid bone associated with the distal radius. In giant pandas, this bone projects from the arm in a way that makes it function similar to an additional digit for the hand, a solution described as "the panda's thumb". This "thumb" is used to grip the bamboo stems so that the teeth can work through the indigestible fiber and woody portions of the bamboo stems into the softer shoots. As a famous example in the history of evolutionary biology, the panda's thumb was celebrated by the evolutionary biologist Stephen Jay Gould as a unique evolutionary solution.

    Some information on the dietary proportions of giant pandas is available from BBC News. The following is quoted from that site:

    Ninety nine per cent of a panda's diet is made up of 30 species of bamboo. The remaining one per cent is made up of other plants and meat. Their digestion of bamboo is very inefficient; pandas only digest about 20 per cent of the dry matter of bamboo, whereas most herbivores assimilate about 80 per cent. This means that they must eat large amounts to obtain their energy requirements. They can eat between 12 and 38kg of bamboo shoots, leaves and stems per 24 hour period.

    Giant pandas can maintain this dietary solution only by sustaining a high feeding rate. The digestibility of bamboo varies markedly across the year (Wei et al. 1999), and in the winter when new growth is rare or absent, there are very few nutrients available. Pandas do not have any significant digestion of the structural elements of cell walls or other fibers. They therefore must extract the proteins and simple carbohydrates from bamboo and pass the bulk as quickly as practicable. To this end, they have wide and flat molars and premolars compared to other bears. These are not teeth with high crowns and shearing surfaces. This makes them different from primates, like gorillas and colobus monkeys, that eat a high proportion of leaves and other vegetation. It seems that pandas are not really in the business of cutting fibrous bamboo into a pulp; but instead they crush the bamboo to extract as much of the cell contents as possible.

    Gigantopithecus also had broad, flat molars and premolars. These teeth had relatively thick enamel. Enamel thickness is a tricky indicator of diet, because there are actually advantages to having enamel that wears through completely during life. If the goal is to maintain an effective shearing surface on the tooth for cutting fibrous plant material, then thin enamel exposes the softer dentin, which wears faster. The wear gradient between the two maintains a topography to the tooth surface that is a better shearing implement than a flat, thick-enameled tooth. So the thick molar enamel in Gigantopithecus would not be very useful for shearing bamboo leaves into an undifferentiated mush. But those teeth might have been used to crush bamboo to extract the cell contents while leaving the mass mostly intact.

    The evidence suggests that Gigantopithecus differed from giant pandas in having a more varied diet. One of the world's experts on Gigantopithecus is the paleoanthropologist Russ Ciochon. He has
    a very nice article about the species which appeared in Natural History magazine in 1991. This nice review features the history of Gigantopithecus discoveries, our current understanding of their anatomy, diet, and history, and Ciochon's own attempts to find fossil Gigantopithecus in Vietnam.

    Ciochon describes looking for phytoliths on the teeth as evidence of diet. When the fossil teeth of Gigantopithecus were examined with scanning electron microscopy, dozens of phytoliths were found:

    More than half of the phytoliths we observed were long and needlelike and could be attributed to the vegetative part of grasses, possibly bamboo. The rest were conical or hat shaped, attributable to the fruits and seeds of dicotyledons. Piperno tentatively identified them as fruits from a tree of the family Moraceae, quite possibly durian or jackfruit, both of which are common throughout tropical Southeast Asia. This proved that Gigantopithecus had a varied diet, although we still suspect that bamboo was its staple food.

    This work is described in
    Ciochon et al. (1990) in PNAS, which includes scanning electron micrographs of the phytoliths.

    Of course the relative quantities of phytoliths do not directly address dietary composition, since different plants have different phytolith abundances. Likewise, one might speculate that the phytoliths on fossil teeth represent foods eaten near the time of death -- a "last meal" effect. This might explain the apparent evidence for one kind of fruit in the Gigantopithecus data: the individual died at the time that fruit was in season. In any event, Ciochon and colleagues (1990) conclude it likely that Gigantopithecus had a very broad diet, that nonetheless included bamboo as a staple. In support of this, they cite an examination of tooth wear by Daegling and Grine (1989 in abstract; later published in 1994 in SAJS) that found Gigantopithecus microwear to be similar to chimpanzees. Chimpanzees themselves eat a majority of fruit, with smaller proportions of leaves, insects, and meat.

    References:

    Wei F, Feng Z, Wang Z, Zhou A and Hu J. 1999. Use of the nutrients in bamboo by the red panda (Ailurus fulgens). J Zool Lond 248:535-541.

    Ciochon RL, Piperno DR and Thompson RG. 1990. Opal phytoliths found on the teeth of the extinct ape Gigantopithecus blacki: implications for paleodietary studies. Proc Natl Acad Sci U S A 87:8120-8124.
    JSTOR

    Dean MC and Schrenk F. 2003. Enamel thickness and development in a third permanent molar of Gigantopithecus blacki. J Hum Evol 45:381-387.

    Daegling DJ and Grine FE. 1994. Bamboo feeding, dental microwear, and diet of the Pleistocene ape Gigantopithecus blacki. S Afr J Sci 90:527-532.

    Ungar P. 1998. Dental allometry, morphology and wear as evidence for diet in fossil primates. Evol Anthropol 6:205-217.

  • Meet Gigantopithecus

    Tue, 2011-10-25 00:09 -- John Hawks
    Synopsis: 
    Laboratory introduction to the species Gigantopithecus blacki, with discussion of its body size relative to gorillas and robust australopithecines.

    Gigantopithecus blacki was, as its name implies, a gigantic ape from the Pleistocene of China. Its remains consist only of teeth and jaws, but these are of a tremendous size, with the largest specimens nearly twice the dimensions of male gorilla teeth and jaws. A similar, slightly smaller jaw is known from the Miocene of northern India, and has been called Gigantopithecus bilaspurensis [1].

    Here you see casts of some of the teeth of Gigantopithecus blacki. Assuming that Gigantopithecus had the same proportion of tooth size and body mass as living apes, these Chinese remains would suggest a body mass of over 400 kg for the largest individuals. But should we assume a model of body size like that of today's large great apes, such as the orangutan and gorilla? Or should we assume a model in which Gigantopithecus had enlarged jaws and teeth relative to its mass, as is the case in the extinct robust australopithecines?

    Examine the Gigantopithecus teeth in comparison to modern gorilla teeth and jaws, and the teeth and jaws of Australopithecus boisei and Australopithecus robustus. How do the femora of A. robustus compare to the gorilla femur? How do the molars of these species compare? Which do you think is the better model for Gigantopithecus, and what would you predict as the body mass of this extinct species?


    References

    1. Simons EL, Ettel PC. Gigantopithecus. Scientific American. 1970;222:77–85.
  • Denisovan DNA in the islands, and an Australian genome

    Thu, 2011-09-22 18:09 -- John Hawks

    David Reich and colleagues today report on the persistence of Denisova-like ancestry in island Southeast Asia and Australia (citation not yet available). Meanwhile, Morten Rasmussen and colleagues (citation not yet available) report on the whole-genome sequencing of hair from an Aboriginal Australian who lived some 100 years ago.

    The most obvious story: These data utterly destroy the hypothesis of a single out-of-Africa colonization of Southeast Asia by modern humans. Many human geneticists have argued our present pattern of diversity originated in a wave of successive founder effects coming from a single recent African origin. They were wrong.

    Instead, we can turn to a complex model with successive dispersals and episodes of population mixture. This is not a static model of isolation-by-distance; it is a dynamic model in which populations grow and spread across large spans of the Old World, again and again and again. By my count, at least three massive episodes of population dispersal and mixture are necessary in Reich and colleagues' model. A picture of their admixture hypothesis:

    Denisova admixture model from Reich et al. 2011

    This model depicts (a) an early divergence of an African (represented by Yoruba) and Asian/Australasian populations. These mix with first Neandertals and then (for the Australian/New Guinea/Mamanwa populations) with Denisova-like people. Later (b), after the initial habitation of the Philippines by the ancestors of Mamanwa, a population like Andamanese Onge pushes into the islands, mixing with the ancestors of New Guinea and Australian populations. Later still (c), a population ancestral to today's Chinese people mixes with Philippines and other Southeast Asian people.

    As complicated as it looks, even this model must be a vast oversimplification. I don't like or attribute much belief to mixture models like this, as they assume too much about relative population sizes and the timing of mixture. Many recent hunting and gathering populations of Southeast Asia are not included in the current samples, and the Chinese sample is itself the result of very recent demographic events, covering what once may have been a wider diversity of peoples. Depicting Australian and New Guinean populations as monolithic is an artifact of the small sample; these places themselves housed a tremendous diversity of peoples. Nevertheless, the true model won't be simpler than this one; it will involve many more events that the data cannot yet resolve.

    Hints of that complexity emerge from the Aboriginal Australian whole genome. Rasmussen and colleagues show that this individual shares some ancestry with East Asian peoples, but on the whole populations in Europe and East Asia are much more genetically similar to each other than to this genome. The picture from the whole genome is essentially the same as that drawn by the SNP comparisons by Reich and colleagues, but with the potential (in the long run) to actually trace the histories of individual genes. And I think the gene-by-gene account of history will be important, because we already have some evidence that a few Denisovan genes do persist in mainland Asia, even though most are gone.

    To explain why, we can look at the proportion of Denisovan ancestry in different populations as depicted in a map by Reich and colleagues. The pie charts are confusing here, because they report the fraction of ancestry from Denisovans in each population relative to the 5% estimate for New Guinea. So Australians also have 5% in this figure, Timorese have around 2.5%, and Bougainville has more than 4%.

    Notice the apparent lack of Denisovan ancestry in anyone who lives anywhere that was once connected by land with mainland Asia. I say "apparent" deliberately: Abi-Rached and colleagues reported last month on the widespread distribution of Denisovan HLA types among today's Asian populations, and those may well be products of Denisovan genes that were later selected. I've already identified a handful of other loci that seem to reflect Denisovan ancestry in mainland Asian people. According to the comparisons by Reich and colleagues, such loci must be exceptions.

    At the same time, the mixture model presents an important idea: Once there were people in Southeast Asia who had much more Denisovan ancestry than any populations still remaining today. Both Australian/New Guinea populations and Philippine populations like the Mamanwa have subsequently mixed with new immigrants who lacked any sign of Denisovan ancestry. Prior to this later mixture, the ancestors of those populations must have been more Denisovan -- Reich and colleagues estimate 7%. This is the first evidence that ancestry from archaic people of Eurasia was diluted to a lower value by later population movements. If the population mixture originally happened somewhere in mainland Asia, any traces of Denisovan ancestry in those areas has been diluted almost to nonexistence. But the persistence of some genes would be predicted if natural selection were maintaining them in the face of demographic pressure from elsewhere.

    About the Australian genome, there will be much more interesting analyses to come, I expect. As whole-genome data come to represent more of the variation within human populations, we get a larger store of information about how we came to be variable. Variation traces not only to population movements and demography, but also to natural selection. Australia's population history has been very different from many populations of the Old World, and this genome should give us new perspective on the effects of that demographic history.

    Synopsis: 
    The hypothesis of a single out-of-Africa dispersal is rejected by new data about Denisovan mixture and whole-genome sequencing of an Aboriginal Australian.
  • Open every box

    Thu, 2011-05-26 02:26 -- John Hawks

    Fascinating: "Unique Canine Tooth from 'Peking Man' Found in Swedish Museum Collection"

    Swedish paleontologists were the first scientists to go to China in the early 20th century, and they carried out a series of expeditions in collaboration with Chinese colleagues. They found large numbers of fossils of dinosaurs and other vertebrates. The material was sent to Sweden and the well-known paleontologist Carl Wiman, who identified and described the fossils. But when the direction of research changed after Wiman's death, 40 cartons were left unopened and forgotten -- until know. In recent weeks, they have been opened by Per Ahlberg, his colleague Martin Kundrát, and Museum Director Jan Ove Ebbestad, who had drawn attention to the cartons in the storeroom at the Museum of Evolution.

    You know, this is why open science is so important. When you have a small group of people working a collection, the information goes when they die. I hear about cases like this all the time. And we're talking about hominins in relatively well curated collections. The number of unique specimens of other fossil organisms sitting in boxes must be enormous.

    The more eyes you have on your collection, the more it is worth.

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Neandertals

For years, I've worked on their bones. Now I'm working on their genes. Read more about the science studying these ancient people.

Denisova

From a finger bone of an ancient human came the record of a completely unexpected population. My lab is working on the science of the Denisova genome.

Acceleration

The advent of agriculture caused natural selection to speed up greatly in humans. We're uncovering some of the ways that populations have rapidly changed during the last 10,000 years.

Malapa

Just outside Johannesburg, the Malapa site is producing some of the most exciting finds in human evolution. This site is the headquarters of the Malapa Soft Tissue Project.