Spectral Deep Learning for Prediction and Prospective Validation of Functional Groups

24 January 2020, Version 2
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

State-of-the-art identification of the functional groups present in an unknown chemical entity requires expertise of a skilled spectroscopist to analyse and interpret Fourier Transform Infra-Red (FTIR), Mass Spectroscopy (MS) and/or Nuclear Magnetic Resonance (NMR) data. This process can be time-consuming and error-prone, especially for complex chemical entities that poorly characterized in the literature, or inefficient to use with synthetic robots producing molecules at an accelerated rate. Herein, we introduce a fast, multi-label deep neural network for accurately identifying all the functional groups of unknown compounds using a combination of FTIR and MS spectra. We do not use any database, pre-established rules, procedures, or peak-matching methods. Our trained neural network reveals patterns typically used by human chemists to identify standard groups. Finally, we experimentally validated our neural network, trained on single compounds, to predict functional groups in compound mixtures. Our methodology showcases practical utility for future use in autonomous analytical detection.

Keywords

deep learning
Spectral data analysis
Functional Group
machine Learning Predictions
chemical modeling
Chemistry
Mathematics
Inverse design
Information And Computing Sciences
Combining data sets
Spectral Database
instrumentation
autonomous

Supplementary materials

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ListingS1
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Supporting - Spectra Deep Learning
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Supplementary weblinks

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