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Spectral denoising and denoising search

Project description

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]

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.

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)

Simple usage on single spectra

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'
adduct = '[M+Na]+'
pmz = calculate_precursormz(adduct,smiles)
peak = np.array([[48.992496490478516 ,154.0],
                  [63.006099700927734, 265.0],
                  [79.02062225341797, 521.0]], dtype = np.float32)
print(f'the spectrum entropy is {spctrum_entropy(peak):.2f}, the normalized entropy is {normalized_entropy(peak):.2f}')
# alternatively, you can store mass and intensity in separate arrays, and use pack_spectrum(mass, intensity) to get the peaks array
# e.g.mass,intensity = [48.992496490478516, 63.006099700927734, 79.02062225341797], [154.0, 265.0, 521.0]
# peak = pack_spectrum(mass, intensity)

# generate some electronic noise and add it to the peaks
from spectral_denoising.noise import *
noise = generate_noise(pmz, lamda=10, n = 50)
peak_with_noise = add_noise(peak, noise)
# use head_to_tail_plot to visualize the spectra, only in jupyter notebook
# sd.head_to_tail_plot(peaks_with_noise,peaks ,pmz)
print(f'the spectrum entropy is {spctrum_entropy(peak_with_noise):.2f}, the normalized entropy 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}')

# perform spectral denosing and compare against the raw spectrum
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}')
# use head_to_tail_plot to visualize the spectra, only in jupyter notebook
# sd.head_to_tail_plot(peaks_denoised,peaks ,pmz)

Spectral denoising on the all spectra from .msp file

import spectral_denoising as sd
query_data = sd.read_msp('sample_data/noisy_spectra.msp')
query_peaks,query_smiles,query_adduct, query_pmz = query_data['peaks'],query_data['smiles'],query_data['adduct'], query_data['precursor_mz'] 
desnoied_peaks = sd.spectra_denoising_batch(quene_peaks,quene_smiles,quene_adduct) # this will return all denoised spectra in a list

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')
quene_spectrum, quene_pmz = quene_spectra.iloc[0]['peaks'], quene_spectra.iloc[0]['precursor_mz'] # just the first spectrum
result = sd.denoising_search(quene_spectrum, quene_pmz, reference_library)
# result will return all precursor candidates of the quene spectrum, each with entropy similarities of both raw and denoised spectra
display(result)

Denoising search on all spectra 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')

results = sd.denoising_search_batch(query_spectra['peaks'], query_spectra['precursor_mz'], reference_library) 
# results will be a list of all correspoinding precursor mz candidates, each one with entropy similarities of both raw and denoised spectra (using reference spectra melecular information)
display(results[0])# this will show denoising search result for the first spectra in msp file

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