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MS2DeepScore: a novel deep learning similarity measure to compare tandem mass spectra

Authors :
Huber, Florian
van der Burg, Sven
van der Hooft, Justin J.J.
Ridder, Lars
Huber, Florian
van der Burg, Sven
van der Hooft, Justin J.J.
Ridder, Lars
Source :
ISSN: 1758-2946
Publication Year :
2021

Abstract

Mass spectrometry data is one of the key sources of information in many workflows in medicine and across the life sciences. Mass fragmentation spectra are generally considered to be characteristic signatures of the chemical compound they originate from, yet the chemical structure itself usually cannot be easily deduced from the spectrum. Often, spectral similarity measures are used as a proxy for structural similarity but this approach is strongly limited by a generally poor correlation between both metrics. Here, we propose MS2DeepScore: a novel Siamese neural network to predict the structural similarity between two chemical structures solely based on their MS/MS fragmentation spectra. Using a cleaned dataset of > 100,000 mass spectra of about 15,000 unique known compounds, we trained MS2DeepScore to predict structural similarity scores for spectrum pairs with high accuracy. In addition, sampling different model varieties through Monte-Carlo Dropout is used to further improve the predictions and assess the model’s prediction uncertainty. On 3600 spectra of 500 unseen compounds, MS2DeepScore is able to identify highly-reliable structural matches and to predict Tanimoto scores for pairs of molecules based on their fragment spectra with a root mean squared error of about 0.15. Furthermore, the prediction uncertainty estimate can be used to select a subset of predictions with a root mean squared error of about 0.1. Furthermore, we demonstrate that MS2DeepScore outperforms classical spectral similarity measures in retrieving chemically related compound pairs from large mass spectral datasets, thereby illustrating its potential for spectral library matching. Finally, MS2DeepScore can also be used to create chemically meaningful mass spectral embeddings that could be used to cluster large numbers of spectra. Added to the recently introduced unsupervised Spec2Vec metric, we believe that machine learning-supported mass spectral similarity measures have great potential for a

Details

Database :
OAIster
Journal :
ISSN: 1758-2946
Notes :
application/pdf, Journal of Cheminformatics 13 (2021) 1, ISSN: 1758-2946, ISSN: 1758-2946, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1290715511
Document Type :
Electronic Resource