Metadata-Version: 2.1
Name: spec2vec
Version: 0.8.0
Summary: Word2Vec based similarity measure of mass spectrometry data.
Home-page: https://github.com/iomega/spec2vec
Author: Netherlands eScience Center
Author-email: generalization@esciencecenter.nl
License: Apache Software License 2.0
Description: `fair-software.nl <https://fair-software.nl/>`_ recommendations:
        
        |GitHub Badge|
        |License Badge|
        |Conda Badge| |Pypi Badge| |Research Software Directory Badge|
        |Zenodo Badge|
        |CII Best Practices Badge| |Howfairis Badge|
        
        Code quality checks:
        
        |GitHub Workflow Status|
        |ReadTheDocs Badge|
        |Sonarcloud Quality Gate Badge| |Sonarcloud Coverage Badge|
        
        ################################################################################
        spec2vec
        ################################################################################
        **Spec2vec** is a novel spectral similarity score inspired by a natural language processing
        algorithm -- Word2Vec. Where Word2Vec learns relationships between words in sentences,
        **spec2vec** does so for mass fragments and neutral losses in MS/MS spectra.
        The spectral similarity score is based on spectral embeddings learnt
        from the fragmental relationships within a large set of spectral data. 
        
        If you use **spec2vec** for your research, please cite the following references:
        
        Huber F, Ridder L, Verhoeven S, Spaaks JH, Diblen F, Rogers S, van der Hooft JJJ, (2021) "Spec2Vec: Improved mass spectral similarity scoring through learning of structural relationships". PLoS Comput Biol 17(2): e1008724. `doi:10.1371/journal.pcbi.1008724 <https://doi.org/10.1371/journal.pcbi.1008724>`_
        
        (and if you use **matchms** as well:
        F. Huber, S. Verhoeven, C. Meijer, H. Spreeuw, E. M. Villanueva Castilla, C. Geng, J.J.J. van der Hooft, S. Rogers, A. Belloum, F. Diblen, J.H. Spaaks, (2020). "matchms - processing and similarity evaluation of mass spectrometry data". Journal of Open Source Software, 5(52), 2411, https://doi.org/10.21105/joss.02411 )
        
        Thanks!
        
        
        
        .. |GitHub Badge| image:: https://img.shields.io/badge/github-repo-000.svg?logo=github&labelColor=gray&color=blue
           :target: https://github.com/iomega/spec2vec
           :alt: GitHub Badge
        
        .. |License Badge| image:: https://img.shields.io/github/license/iomega/spec2vec
           :target: https://github.com/iomega/spec2vec
           :alt: License Badge
        
        .. |Conda Badge| image:: https://img.shields.io/conda/v/bioconda/spec2vec?color=blue
           :target: https://bioconda.github.io/recipes/spec2vec/README.html
           :alt: Conda Badge (Bioconda)
        
        .. |Pypi Badge| image:: https://img.shields.io/pypi/v/spec2vec?color=blue
           :target: https://pypi.org/project/spec2vec/
           :alt: spec2vec on PyPI
        
        .. |Research Software Directory Badge| image:: https://img.shields.io/badge/rsd-spec2vec-00a3e3.svg
           :target: https://www.research-software.nl/software/spec2vec
           :alt: Research Software Directory Badge
        
        .. |Zenodo Badge| image:: https://zenodo.org/badge/DOI/10.5281/zenodo.3873169.svg
           :target: https://doi.org/10.5281/zenodo.3873169
           :alt: Zenodo Badge
        
        .. |CII Best Practices Badge| image:: https://bestpractices.coreinfrastructure.org/projects/3967/badge
           :target: https://bestpractices.coreinfrastructure.org/projects/3967
           :alt: CII Best Practices Badge
           
        .. |Howfairis Badge| image:: https://img.shields.io/badge/fair--software.eu-%E2%97%8F%20%20%E2%97%8F%20%20%E2%97%8F%20%20%E2%97%8F%20%20%E2%97%8F-green
           :target: https://fair-software.eu
           :alt: Howfairis Badge
        
        .. |ReadTheDocs Badge| image:: https://readthedocs.org/projects/spec2vec/badge/?version=latest
            :alt: Documentation Status
            :scale: 100%
            :target: https://spec2vec.readthedocs.io/en/latest/?badge=latest
        
        .. |Sonarcloud Quality Gate Badge| image:: https://sonarcloud.io/api/project_badges/measure?project=iomega_spec2vec&metric=alert_status
           :target: https://sonarcloud.io/dashboard?id=iomega_spec2vec
           :alt: Sonarcloud Quality Gate
        
        .. |Sonarcloud Coverage Badge| image:: https://sonarcloud.io/api/project_badges/measure?project=iomega_spec2vec&metric=coverage
           :target: https://sonarcloud.io/component_measures?id=iomega_spec2vec&metric=Coverage&view=list
           :alt: Sonarcloud Coverage
        
        .. |GitHub Workflow Status| image:: https://img.shields.io/github/actions/workflow/status/matchms/spec2vec/CI_build.yml?branch=master
           :target: https://img.shields.io/github/workflow/status/iomega/spec2vec/CI%20Build
           :alt: GitHub Workflow Status
        
        
        ***********************
        Documentation for users
        ***********************
        For more extensive documentation `see our readthedocs <https://spec2vec.readthedocs.io/en/latest/>`_ or get started with our `spec2vec introduction tutorial <https://blog.esciencecenter.nl/build-a-mass-spectrometry-analysis-pipeline-in-python-using-matchms-part-ii-spec2vec-8aa639571018>`_.
        
        Versions
        ========
        Since version `0.5.0` Spec2Vec uses `gensim >= 4.0.0` which should make it faster and more future proof. Model trained with older versions should still be importable without any issues. If you had scripts that used additional gensim code, however, those might occationally need some adaptation, see also the `gensim documentation on how to migrate your code <https://github.com/RaRe-Technologies/gensim/wiki/Migrating-from-Gensim-3.x-to-4>`_.
        
        
        Installation
        ============
        
        
        Prerequisites:  
        
        - Python 3.7, 3.8, or 3.9  
        - Recommended: Anaconda
        
        We recommend installing spec2vec from Anaconda Cloud with
        
        .. code-block:: console
        
          conda create --name spec2vec python=3.8
          conda activate spec2vec
          conda install --channel bioconda --channel conda-forge spec2vec
        
        Alternatively, spec2vec can also be installed using ``pip``. When using spec2vec together with ``matchms`` it is important to note that only the Anaconda install will make sure that also ``rdkit`` is installed properly, which is requried for a few matchms filter functions (it is not required for any spec2vec related functionalities though).
        
        .. code-block:: console
        
          pip install spec2vec
        
        Examples
        ========
        Below a code example of how to process a large data set of reference spectra to
        train a word2vec model from scratch. Spectra are converted to documents using ``SpectrumDocument`` which converts spectrum peaks into "words" according to their m/z ratio (for instance "peak@100.39"). A new word2vec model can then trained using ``train_new_word2vec_model`` which will set the training parameters to spec2vec defaults unless specified otherwise. Word2Vec models learn from co-occurences of peaks ("words") across many different spectra.
        To get a model that can give a meaningful representation of a set of
        given spectra it is desirable to train the model on a large and representative
        dataset.
        
        .. code-block:: python
        
            import os
            import matchms.filtering as msfilters
            from matchms.importing import load_from_mgf
            from spec2vec import SpectrumDocument
            from spec2vec.model_building import train_new_word2vec_model
        
            def spectrum_processing(s):
                """This is how one would typically design a desired pre- and post-
                processing pipeline."""
                s = msfilters.default_filters(s)
                s = msfilters.add_parent_mass(s)
                s = msfilters.normalize_intensities(s)
                s = msfilters.reduce_to_number_of_peaks(s, n_required=10, ratio_desired=0.5, n_max=500)
                s = msfilters.select_by_mz(s, mz_from=0, mz_to=1000)
                s = msfilters.add_losses(s, loss_mz_from=10.0, loss_mz_to=200.0)
                s = msfilters.require_minimum_number_of_peaks(s, n_required=10)
                return s
        
            # Load data from MGF file and apply filters
            spectrums = [spectrum_processing(s) for s in load_from_mgf("reference_spectrums.mgf")]
        
            # Omit spectrums that didn't qualify for analysis
            spectrums = [s for s in spectrums if s is not None]
        
            # Create spectrum documents
            reference_documents = [SpectrumDocument(s, n_decimals=2) for s in spectrums]
        
            model_file = "references.model"
            model = train_new_word2vec_model(reference_documents, iterations=[10, 20, 30], filename=model_file,
                                             workers=2, progress_logger=True)
        
        Once a word2vec model has been trained, spec2vec allows to calculate the similarities
        between mass spectrums based on this model. In cases where the word2vec model was
        trained on data different than the data it is applied for, a number of peaks ("words")
        might be unknown to the model (if they weren't part of the training dataset). To
        account for those cases it is important to specify the ``allowed_missing_percentage``,
        as in the example below.
        
        .. code-block:: python
        
            import gensim
            from matchms import calculate_scores
            from spec2vec import Spec2Vec
        
            # query_spectrums loaded from files using https://matchms.readthedocs.io/en/latest/api/matchms.importing.load_from_mgf.html
            query_spectrums = [spectrum_processing(s) for s in load_from_mgf("query_spectrums.mgf")]
        
            # Omit spectrums that didn't qualify for analysis
            query_spectrums = [s for s in query_spectrums if s is not None]
        
            # Import pre-trained word2vec model (see code example above)
            model_file = "references.model"
            model = gensim.models.Word2Vec.load(model_file)
        
            # Define similarity_function
            spec2vec_similarity = Spec2Vec(model=model, intensity_weighting_power=0.5,
                                           allowed_missing_percentage=5.0)
        
            # Calculate scores on all combinations of reference spectrums and queries
            scores = calculate_scores(reference_documents, query_spectrums, spec2vec_similarity)
        
            # Find the highest scores for a query spectrum of interest
            best_matches = scores.scores_by_query(query_documents[0], sort=True)[:10]
        
            # Return highest scores
            print([x[1] for x in best_matches])
        
        
        Glossary of terms
        =================
        
        .. list-table::
           :header-rows: 1
        
           * - Term
             - Description
           * - adduct / addition product
             - During ionization in a mass spectrometer, the molecules of the injected compound break apart
               into fragments. When fragments combine into a new compound, this is known as an addition
               product, or adduct.  `Wikipedia <https://en.wikipedia.org/wiki/Adduct>`__
           * - GNPS
             - Knowledge base for sharing of mass spectrometry data (`link <https://gnps.ucsd.edu/ProteoSAFe/static/gnps-splash.jsp>`__).
           * - InChI / :code:`INCHI`
             - InChI is short for International Chemical Identifier. InChIs are useful
               in retrieving information associated with a certain molecule from a
               database.
           * - InChIKey / InChI key / :code:`INCHIKEY`
             - An indentifier for molecules. For example, the InChI key for carbon
               dioxide is :code:`InChIKey=CURLTUGMZLYLDI-UHFFFAOYSA-N` (yes, it
               includes the substring :code:`InChIKey=`).
           * - MGF File / Mascot Generic Format
             - A plan ASCII file format to store peak list data from a mass spectrometry experiment. Links: `matrixscience.com <http://www.matrixscience.com/help/data_file_help.html#GEN>`__,
               `fiehnlab.ucdavis.edu <https://fiehnlab.ucdavis.edu/projects/lipidblast/mgf-files>`__.
           * - parent mass / :code:`parent_mass`
             - Actual mass (in Dalton) of the original compound prior to fragmentation.
               It can be recalculated from the precursor m/z by taking
               into account the charge state and proton/electron masses.
           * - precursor m/z / :code:`precursor_mz`
             - Mass-to-charge ratio of the compound targeted for fragmentation.
           * - SMILES
             - A line notation for describing the structure of chemical species using
               short ASCII strings. For example, water is encoded as :code:`O[H]O`,
               carbon dioxide is encoded as :code:`O=C=O`, etc. SMILES-encoded species may be converted to InChIKey `using a resolver like this one <https://cactus.nci.nih.gov/chemical/structure>`__. The Wikipedia entry for SMILES is `here <https://en.wikipedia.org/wiki/Simplified_molecular-input_line-entry_system>`__.
        
        
        ****************************
        Documentation for developers
        ****************************
        
        Installation
        ============
        
        To install spec2vec, do:
        
        .. code-block:: console
        
          git clone https://github.com/iomega/spec2vec.git
          cd spec2vec
          conda env create --file conda/environment-dev.yml
          conda activate spec2vec-dev
          pip install --editable .
        
        Run the linter with:
        
        .. code-block:: console
        
          prospector
        
        Run tests (including coverage) with:
        
        .. code-block:: console
        
          pytest
        
        
        Conda package
        =============
        
        The conda packaging is handled by a `recipe at Bioconda <https://github.com/bioconda/bioconda-recipes/blob/master/recipes/spec2vec/meta.yaml>`_.
        
        Publishing to PyPI will trigger the creation of a `pull request on the bioconda recipes repository <https://github.com/bioconda/bioconda-recipes/pulls?q=is%3Apr+is%3Aopen+spec2vec>`_
        Once the PR is merged the new version of matchms will appear on `https://anaconda.org/bioconda/spec2vec <https://anaconda.org/bioconda/spec2vec>`_ 
        
        
        To remove spec2vec package from the active environment:
        
        .. code-block:: console
        
          conda remove spec2vec
        
        
        To remove spec2vec environment:
        
        .. code-block:: console
        
          conda env remove --name spec2vec
        
        Contributing
        ============
        
        If you want to contribute to the development of spec2vec,
        have a look at the `contribution guidelines <CONTRIBUTING.md>`_.
        
        *******
        License
        *******
        
        Copyright (c) 2020, Netherlands eScience Center
        
        Licensed under the Apache License, Version 2.0 (the "License");
        you may not use this file except in compliance with the License.
        You may obtain a copy of the License at
        
        http://www.apache.org/licenses/LICENSE-2.0
        
        Unless required by applicable law or agreed to in writing, software
        distributed under the License is distributed on an "AS IS" BASIS,
        WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
        See the License for the specific language governing permissions and
        limitations under the License.
        
        *******
        Credits
        *******
        
        This package was created with `Cookiecutter
        <https://github.com/audreyr/cookiecutter>`_ and the `NLeSC/python-template
        <https://github.com/NLeSC/python-template>`_.
        
Keywords: word2vec,mass spectrometry,fuzzy matching,fuzzy search
Platform: UNKNOWN
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Education
Classifier: Intended Audience :: Science/Research
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: Apache Software License
Classifier: Natural Language :: English
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Requires-Python: >=3.7
Description-Content-Type: text/x-rst
Provides-Extra: dev
