---+ Mutation Rates from Genome Resequencing Motivation: You have re-sequenced several genomes after a mutation accumulation or adaptive evolution experiment. How do you infer the rates of different types of mutation rates from these data? What are the 95% confidence intervals on these values? ---++ Case 1: Single-base substitutions Assumptions: The number of mutations is small compared to the number of sites. If you restrict your data to one genome per experimental population, then you can calculate the 95% confidence limits by assuming this is a Poisson process (poisson.test in R). If you take multiple genomes from one experimental population, this is a type of pseudo-replication (they may have a shared evolutionary history). This makes calculating the 95% confidence intervals more complicated. ---++ Case 2: One-time mutations Assumptions: A mutation can only happen once per genome. Example: Deletion of a chromosomal region. Once deleted, it can never be deleted again. This is a type of "survival analysis". You can calculate the fraction of genomes that have and do not have your mutation. Then consider this a binomial process, to calculate a 95% confidence interval Then, convert this to a per-generation rate by dividing by the number of mutations.
Edit
|
Attach
|
Watch
|
P
rint version
|
H
istory
:
r4
<
r3
<
r2
<
r1
|
B
acklinks
|
V
iew topic
|
More topic actions...
Barrick Lab
>
ProtocolList
>
ProceduresCalculatingMutationRatesFromGenomicData
Contributors to this topic
JeffreyBarrick
Topic revision: r1 - 2012-03-12 - 22:13:23 - Main.JeffreyBarrick
Barrick Lab
Contact
Research
Publications
Team
Protocols
Reference
Software
UT Austin
Mol Biosciences
ILS
Microbiology
EEB
CSSB
CBRS
The LTEE
iGEM team
SynBioCyc
SynBio course
NGS course
BEACON
Search
Log in
Copyright ©2025 Barrick Lab contributing authors. Ideas, requests, problems?
Send feedback