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maximum likelihood estimate of the rates of RNA-DNA differences and reverse transcription errors

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STR-RNA-MLE

A program written in R that can compute the maximum likelihood estimate of the rates of RNA-DNA differences and reverse transcription errors (and associated expansion or contraction probabilities) from short tandem repeat profiles generated with RNA-seq.

Overview

The scripts to perform full MLE and lumping MLE are designed to estimate RNA-DNA difference (RDD) and reverse transcriptase error rates/patterns of short tandem repeats (STRs) simultaneously using genome and transcriptome data. These algorithms estimate the following parameters:

  • RDD rate = The proportion of the STR repeat number in RNA that are deviated from the STR repeat number of template DNA due to either RNA editing or transcription slippage.
  • RDD expansion probability = The probability that the RDD are expansion.
  • RT error rate = The proportion of the STR repeat number in cDNA that are deviated from the STR repeat number of RNA due to reverse transcription process.
  • RT expansion probability = The probability that the RT errors are expansion.

These algorithms will calculate the probability that the STR length profiles of all loci that share the same genotype were generated from specific set of RDD rate, RDD expansion probability, RT error rate, RT error expansion probability. Each set of these four parameters is chosen by L-BFGS-B algorithm from optim function in R. At the end of the process, the algorithm will report the optimal set of parameters that maximize the likelihood that the data were generated. The sequencing error rates from Fungtammasan et al. 2015 were used as constant rates of transition from cDNA to sequencing read.

For the differences between full MLE and lumping MLE, please refer to our article Reverse Transcription Errors and RNA-DNA Differences at Short Tandem Repeats by Arkarachai Fungtammasan, Marta Tomaszkiewicz, Rebeca Campos-Sanchez, Kristin Eckert, Michael DeGiorgio, and Kateryna D. Makova.

System requirement

These scripts were written in R, a language and environment for statistical computing. The scripts also need snow package for multiprocessing and combinat package for combinatorial calculation.

Installation

The script can be called directly given that the R program and all additional libraries were installed.

Usage

To operate the script, run the command Rscript script_name --filename=input_file_name. The standard output will contain all the sets of parameter and their likelihood values that the algorithm were searched through. The last set of parameters will be the best estimated set of parameters given the initial set of parameters. Initial sets of parameters were chosen randomly in log scale. To see the parameter option in help page, type Rscript script_name or Rscript script_name --help. This will print out all the parameter option that the user can change. Then the user can change the parameter through keyword argument. For example, to change the bin size in MLE calculation and number of core, the use can type: Rscript fullMLE_2lib.R --filename=inputfile.txt --bin_size=3 --N_core=4 > outputfile.txt

Data format

The input is in tab delimited format of seven columns Including: locus_name, genotype, STR_motif, STR_class, functional_compoment, STR_length_profile_RNAseq_lib1, STR_length_profile_ RNAseq_lib2. The script only uses of genotype, STR_motif, STR_length profile_RNAseq lib1, and STR_length_profile RNAseq _lib2; therefore, the rest of value can be random character or dot. Each file should contain only STR that have the same motif and homozygote genotype. Both genotype and STR length profile of RNA-seq are coded as numbers of base pair. The STR lengths in STR length profiles are not need to be sorted.

STR slippage rates increase with repeat numbers and repeat lengths. Also, the slippage rates are different for different motifs. Therefore, the user should filter input to contain only one type of motif (column 3) and one length of STR in DNA (column 2)

Here is example of input

chr14_901176_901185 9 A 1 intron 10,9,9,9,9,9,9,9,9,9,9 10,9,9,9,9,9,9,9

chr14_901492_901501 9 A 1 intron 10,9,9,9,9,9,9,9,9,9 10,10,8,9,9,9,9,9,9,9

R package option

Since STR-RNA-MLE is computational intensive, it is designed to run on batch mode. This is especially useful to perform bootstrap. Therefore, we recommend the user to use our fullMLE_2lib.R and lumpMLE_2lib.R. However, we also provide R package option for those who want to use only the function and design the analysis pipeline in themselves. Select Rpackage_option and follow the instruction on installation.txt.

Citing STR-RNA-MLE

Arkarachai Fungtammasan, Marta Tomaszkiewicz, Rebeca Campos-Sanchez, Kristin Eckert, Michael DeGiorgio, and Kateryna D. Makova, Reverse Transcription Errors and RNA-DNA Differences at Short Tandem Repeats

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