Boitard et al. 2009
Thu Feb 26 2009
Detecting Selective Sweeps: A New Approach Based on Hidden Markov Models
Detecting and localizing selective sweeps based on SNP data has recently received considerable attention. Here we introduce the use of Hidden Markov Models (HMMs) for the detection of selective sweeps in DNA sequences. Like previously published methods, our HMMs use the site frequency spectrum, and the spatial pattern of diversity along the sequence, to identify selection. In contrast to earlier approaches, our HMMs explicitly model the correlation structure between linked sites. The detection power of our methods, and their accuracy for estimating the selected site location, is similar to competing methods for constant size populations. In the case of population bottlenecks, however, our methods frequently showed fewer false positives.
Detecting and localizing selective sweeps based on SNP data has recently received considerable attention. Here we introduce the use of Hidden Markov Models (HMMs) for the detection of selective sweeps in DNA sequences. Like previously published methods, our HMMs use the site frequency spectrum, and the spatial pattern of diversity along the sequence, to identify selection. In contrast to earlier approaches, our HMMs explicitly model the correlation structure between linked sites. The detection power of our methods, and their accuracy for estimating the selected site location, is similar to competing methods for constant size populations. In the case of population bottlenecks, however, our methods frequently showed fewer false positives.