4.1.3 Bulk RNA seq
tresor.gene.simu_ampl_rate
is a Python function in charge of simulating reads with respect to a series of amplication rates at the bulk RNA-seq level.
Usage¶
We take the following command as an example to generate FastQ files at amplication efficiencies from 0.1 to 1.
import tresor as ts
for perm_i in range(1):
print(perm_i)
ts.gene.simu_ampl_rate(
# initial sequence generation
gspl=gspl,
len_params={
'umi': {
'umi_unit_pattern': 3,
'umi_unit_len': 12,
},
'seq': 100,
},
material_params={
'fasta_cdna_fpn': to('data/Homo_sapiens.GRCh38.cdna.all.fa.gz'), # None False
},
seq_num=50,
working_dir=to('data/simu/docs/'),
condis=['umi', 'seq'],
sim_thres=3,
permutation=0,
# PCR amplification
ampl_rates=np.linspace(0.1, 1, 10),
err_route='sptree', # bftree sptree err1d err2d mutation_table_minimum mutation_table_complete
pcr_error=1e-4,
pcr_num=10,
err_num_met='nbinomial',
# PCR amplification
seq_error=0.01,
# seq_sub_spl_number=200, # None
seq_sub_spl_rate=0.333,
use_seed=True,
seed=1,
verbose=False, # True False
mode='short_read', # long_read short_read
sv_fastq_fp=to('data/simu/docs/'),
)
1 2 3 4 5 6 7 8 9 |
|
Attributes¶
Illustration
Attribute | Description |
---|---|
seq_num |
number of RNA molecules. 50 by default |
len_params |
lengths of different components of a read |
seq_params |
sequences of different components of a read, It allows users to add their customised sequences |
material_params |
a Python dictionary. Showing if cDNA libraries are provided, please use key word fasta_cdna_fpn . The human cDNA library can be downloaded through the Ensembl genome database |
ampl_rates |
list of float numbers ranging from 0 to 1 |
err_route |
the computational algorithm to generate errors. There are 6 methods, including bftree , sptree , err1d , err2d , mutation_table_minimum , and mutation_table_complete . |
pcr_error |
PCR error rate |
pcr_num |
number of PCR cycles to amplify reads |
err_num_met |
the method to generate errors, that is, binomial or nbinomial |
seq_error |
sequencing error rate |
seq_sub_spl_number |
number of subsampling PCR amplified reads. It exists when seq_sub_spl_rate is specified to None |
seq_sub_spl_rate |
rate of subsampling PCR amplified reads. It exists when seq_sub_spl_number is specified to None |
sv_fastq_fp |
folder to save FastQ files |
is_seed |
if seeds are used to simulate sequencing libraries. This is designed to make in silico experiments reproducible |
working_dir |
working directory where all simulation results are about to be saved |
condis |
names of components that a read contains. It can contains an unlimited number of read components |
sim_thres |
similarity threshold. 3 by default |
permutation |
permutation times |
mode |
long_read or short_read |
verbose |
whether to print intermediate results |
Attribute | Description |
---|---|
cfpn |
location to the yaml configuration file. Users can specify the atrributes illustrated on the Python tab in the .yml file. |
snum |
number of sequencing molecules |
permut |
permutation times |
sthres |
similarity threshold. 3 by default |
wd |
working directory where all simulation results are about to be saved |
md |
long_read or short_read mode |
is |
if seeds are used to simulate sequencing libraries. This is designed for reproducible in silico experiments |
vb |
whether to print intermediate results |
Output¶
Console¶
======>simulation completes in 0.12199997901916504s
======>simulation completes in 0.47299695014953613s
======>simulation completes in 1.255997657775879s
======>simulation completes in 3.0000314712524414s
======>simulation completes in 6.929998874664307s
======>simulation completes in 15.332034826278687s
======>simulation completes in 33.06600093841553s
======>simulation completes in 65.1680314540863s
======>simulation completes in 120.70003604888916s
======>simulation completes in 217.62385249137878s
Finished!
Understanding files¶
The resultant files of the simulated reads are shown as follows.
