Multi-scale sinusoidal embeddings enable learning on high resolution mass spectrometry data

G Voronov, R Lightheart, J Davison, CA Krettler… - arXiv preprint arXiv …, 2022 - arxiv.org
G Voronov, R Lightheart, J Davison, CA Krettler, D Healey, T Butler
arXiv preprint arXiv:2207.02980, 2022arxiv.org
Small molecules in biological samples are studied to provide information about disease
states, environmental toxins, natural product drug discovery, and many other applications.
The primary window into the composition of small molecule mixtures is tandem mass
spectrometry (MS2), which produces data that are of high sensitivity and part per million
resolution. We adopt multi-scale sinusoidal embeddings of the mass data in MS2 designed
to meet the challenge of learning from the full resolution of MS2 data. Using these …
Small molecules in biological samples are studied to provide information about disease states, environmental toxins, natural product drug discovery, and many other applications. The primary window into the composition of small molecule mixtures is tandem mass spectrometry (MS2), which produces data that are of high sensitivity and part per million resolution. We adopt multi-scale sinusoidal embeddings of the mass data in MS2 designed to meet the challenge of learning from the full resolution of MS2 data. Using these embeddings, we provide a new state of the art model for spectral library search, the standard task for initial evaluation of MS2 data. We also introduce a new task, chemical property prediction from MS2 data, that has natural applications in high-throughput MS2 experiments and show that an average of 80\% for novel compounds can be achieved across 10 chemical properties prioritized by medicinal chemists. We use dimensionality reduction techniques and experiments with different floating point resolutions to show the essential role multi-scale sinusoidal embeddings play in learning from MS2 data.
arxiv.org
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