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  ¿î¿µÀÚ 2006-10-10 14:07:40 | Hit : 23161 | Vote : 8036
Subject   [ÀÚ·á] Modern computational approaches for analysing molecular genetic variation data

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Nature Reviews Genetics 7, 759-770 (October 2006) | doi:10.1038/nrg1961

Focus on: Statistical Analysis
Modern computational approaches for analysing molecular genetic variation data
Paul Marjoram1 and Simon Tavaré1,2  About the authors

Top of pageAbstractAn explosive growth is occurring in the quantity, quality and complexity of molecular variation data that are being collected. Historically, such data have been analysed by using model-based methods. Models are useful for sharpening intuition, for explanation and for prediction: they add to our understanding of how the data were formed, and they can provide quantitative answers to questions of interest. We outline some of these model-based approaches, including the coalescent, and discuss the applicability of the computational methods that are necessary given the highly complex nature of current and future data sets.


http://www.nature.com/nrg/journal/v7/n10/full/nrg1961.html
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