Spectral denoising and denoising search
Test the package at: https://pypi.org/project/spectral-denoising/
If you have any questions, feel free to send me E-mails: fzkong@ucdavis.edu. If you find this package useful, please consider citing the following papers:
. Denoising Search doubles the number of metabolite and exposome annotations in human plasma using an Orbitrap Astral mass spectrometer, Res Sq, 2024). [https://doi.org/10.1038/s41592-023-02012-9]
Note on 2024-10-19
Please use Python version between 3.8 to 3.12 for this package to work. RDkit currently does not have a distribution compitable to python 3.13!!!!!
Project information
Remove noise ions from MS/MS spectra has been tackled for years by mass spectrometrists. Noise ions in MS/MS spectra are largely categorized as 1. electronic noises and 2. chemical noises.
In this project, we aim to eliminate both chemical noise and electronic noises for improving high-confidence compound identification.
Integrating such process into spectra matching process, we developed denoising search, which psudo-denoise spectra based on molecular information fetched from reference databases.
This project also provides useful tools to read, write, visualize and compare spectra.
How to use this package
This repository in Python. A python version >= 3.8 is preferred, and must be < 3.13.
Detailed documentation can be found at: https://spectral-denoising.readthedocs.io/en/latest/index.html
Installation
pip install spectral-denoising
Usage of Classic spectral denoising (electronic denoising and chemical denoising)
The demo data used here can be found under sample_data directory.
Note: Even all functions have a default 'smiles' information column, the function would also accept formula as input. If wanted, just replace the the smiles with formula information (for single run) or replace
column name of 'smiles' to your column name that contains formula information (batch mode).
Simple usage on single spectra
Note: if you try to use the batch mode in script and compile it in terminal, please wrap the code in main() function since they are implemented in parallal with multiprocessing and directly calling it will cause issues.
import numpy as np
import spectral_denoising as sd
from spectral_denoising.spectral_operations import *
from spectral_denoising.chem_utils import *
smiles = 'O=c1nc[nH]c2nc[nH]c12'
formula = 'C5H4N4O'
adduct = '[M+Na]+'
pmz = calculate_precursormz(adduct,smiles)
peak = np.array([
[48.992496490478516 ,154.0],
[63.006099700927734, 265.0],
[63.99686813354492, 663.0],
[65.9947509765625, 596.0],
[79.02062225341797, 521.0],
[81.01649475097656, 659.0],
], dtype = np.float32)
print(f'the spectrum entropy of raw spectrum is {spectral_entropy(peak):.2f}, the normalized entropy of raw spectrum is {normalized_entropy(peak):.2f}')
from spectral_denoising.noise import *
peak_with_noise= sd.read_msp('sample_data/noisy_spectra.msp').iloc[0]['peaks']
peak_denoised = sd.spectral_denoising(peak_with_noise, smiles, adduct)
print(f'the spectrum entropy of contaminated spectrum is {spectral_entropy(peak_with_noise):.2f}, the normalized entropy of contaminated spectrum is {normalized_entropy(peak_with_noise):.2f}')
print(f'the entropy similarity of contaminated spectrum and the raw spectrum is {entropy_similairty(peak_with_noise,peak, pmz = pmz):.2f}')
peak_denoised = sd.spectral_denoising(peak_with_noise, smiles, adduct)
print(f'the entropy similarity of denoised spectrum and the raw spectrum is {entropy_similairty(peak_denoised, peak, pmz = pmz):.2f}')
Spectral denoising on the all spectra from .msp file
import spectral_denoising as sd
def main():
query_data = sd.read_msp('sample_data/noisy_spectra.msp')
query_peaks,query_smiles,query_formula,query_adduct, query_pmz = query_data['peaks'],query_data['smiles'],query_data['formula'],query_data['adduct'], query_data['precursor_mz']
desnoied_peaks = sd.spectral_denoising_batch(query_peaks,query_smiles,query_adduct)
if __name__ == "__main__":
main()
Usage of Denoising search
Denoising search on a single spectrum against reference library
import spectral_denoising as sd
query_spectra= sd.read_msp('sample_data/query_spectra.msp')
reference_library =sd.read_msp('sample_data/reference_library.msp')
query_spectrum, query_pmz = query_spectra.iloc[0]['peaks'], query_spectra.iloc[0]['precursor_mz']
result = sd.denoising_search(query_spectrum, query_pmz, reference_library)
print(result)
Denoising search on all spectra against reference library
import spectral_denoising as sd
def main():
query_spectra= sd.read_msp('sample_data/query_spectra.msp')
reference_library =sd.read_msp('sample_data/reference_library.msp')
results = sd.denoising_search_batch(query_spectra['peaks'], query_spectra['precursor_mz'], reference_library, )
print(results[0])
if __name__ == "__main__":
main()
Code for quick starts can be found in script director, with 2 demo files: spectral_denoising_demo.py and denoising_search_demo.py. Directly compiling these 2 files will produce similar results
Working examples and reproducing results for the publication
All necessory data can be found here: https://drive.google.com/drive/folders/1xSKtLqNXukj6V8qP9c_e5MAbmbDLg2Ml?dmr=1&ec=wgc-drive-hero-goto