Statistical techniques in human population genetics

Published on April 19, 2016   52 min

Other Talks in the Series: Statistical Genetics

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0:00
Welcome to the lecture on Statistical Techniques in Human Population Genetics, part of the statistical genetic series. I'm Garrett Hellenthal, a research fellow at University College London whose main work is in statistical and population genetics.
0:13
The main aims of this lecture are to describe the biological and demographic processes that contribute to genetic diversity, describe the statistical techniques that use observed DNA patterns to infer these past processes, illustrate the types of data used for inferring human history, and how we can learn different aspects of history using these different types of data, and finally, highlight some key findings about human history derived through the use of these techniques.
0:39
We'll start with some brief background. While overall DNA patterns among different human groups are very similar, nonetheless they are clear genetic differences among different human groups today. Several factors have contributed to this observed genetic diversity. For example, geographic isolation, groups being separated from each other due to physical boundaries, population size changes, and intermixing or admixture among genetically different groups. And underlying these factors are the usual genetic processes you will have learned about by now, that which we'll briefly review here, genetic drift, mutation, recombination, and selection. What the population geneticist is trying to do then is take the genetic differences that we observed and try to reverse this to learn about the past processes that have led to these differences.
1:23
There are several sources of DNA we use to do this. One is the autosomes, of which we have 22 pairs with an each pair inheriting one chromosome per parents. There is also the X chromosome of which males have one from their mother, and females have one from each parents. The Y chromosome only in males passed from father to son. And finally, mitochondrial DNA or mtDNA just passed from mother to offspring. Initially the Y and mtDNA were used extensively to study demographic history of humans, and are still very informative about sex-biased intermixing among groups in particular as we'll later demonstrate. However, with the advent of new technology, I can efficiently and cheaply target large amounts of DNA. The autosomes and X chromosome are more prominently used now in large scale studies. The major advantage of these chromosomes is that because of their large amount and method of inheritance, they contain many thousands of times more information than Y or mtDNA, but with these same features make them more challenging to analyze. There are many types of genetic variation data that population geneticists study. The most common type of genetic variation or changes or point mutations at Single-Nucleotides in our approximate three billion long genetic sequence, these are called Singe-Nucleotide-Polymorphisms or SNPs. And it will be the type of variation data used throughout the majority of this lecture. However, some analyses we discussed will make use of microsatellites which are contiguous repeated DNA sequences. For example, "A T" repeated several times, I have illustrated here, where individuals can differ in the number of such repeats if they carry. There are many other types of variation including copy-number-variants, indels, and inversions, which I will not discuss here.
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Statistical techniques in human population genetics

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