Leveraging infrared spectroscopy for automated structure elucidation

IF 5.9 2区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY Communications Chemistry Pub Date : 2024-11-16 DOI:10.1038/s42004-024-01341-w
Marvin Alberts, Teodoro Laino, Alain C. Vaucher
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Abstract

The application of machine learning models in chemistry has made remarkable strides in recent years. While analytical chemistry has received considerable interest from machine learning practitioners, its adoption into everyday use remains limited. Among the available analytical methods, Infrared (IR) spectroscopy stands out in terms of affordability, simplicity, and accessibility. However, its use has been limited to the identification of a selected few functional groups, as most peaks lie beyond human interpretation. We present a transformer model that enables chemists to leverage the complete information contained within an IR spectrum to directly predict the molecular structure. To cover a large chemical space, we pretrain the model using 634,585 simulated IR spectra and fine-tune it on 3,453 experimental spectra. Our approach achieves a top–1 accuracy of 44.4% and top–10 accuracy of 69.8% on compounds containing 6 to 13 heavy atoms. When solely predicting scaffolds, the model accurately predicts the top–1 scaffold in 84.5% and among the top–10 in 93.0% of cases. Infrared spectroscopy stands out as an analytical tool for its affordability, simplicity, and accessibility, however, its use has been limited to the identification of a select few functional groups, as most peaks lie beyond human interpretation. Here, the authors use a transformer model that enables chemists to leverage all information contained within an IR spectrum to directly predict the molecular structure.

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利用红外光谱自动阐明结构。
近年来,机器学习模型在化学领域的应用取得了显著进展。虽然分析化学受到了机器学习从业人员的极大关注,但其在日常应用中的应用仍然有限。在现有的分析方法中,红外(IR)光谱法因其经济实惠、简便易行而脱颖而出。然而,由于大多数峰值超出了人类的解释范围,因此其应用仅限于识别少数选定的官能团。我们提出了一种转换器模型,使化学家能够利用红外光谱中包含的完整信息直接预测分子结构。为了覆盖更大的化学空间,我们使用 634,585 个模拟红外光谱对模型进行了预训练,并在 3,453 个实验光谱上对模型进行了微调。对于含有 6 至 13 个重原子的化合物,我们的方法达到了 44.4% 的前 1 名准确率和 69.8% 的前 10 名准确率。在单纯预测支架时,该模型在 84.5% 的情况下准确预测出前 1 名支架,在 93.0% 的情况下准确预测出前 10 名支架。
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来源期刊
Communications Chemistry
Communications Chemistry Chemistry-General Chemistry
CiteScore
7.70
自引率
1.70%
发文量
146
审稿时长
13 weeks
期刊介绍: Communications Chemistry is an open access journal from Nature Research publishing high-quality research, reviews and commentary in all areas of the chemical sciences. Research papers published by the journal represent significant advances bringing new chemical insight to a specialized area of research. We also aim to provide a community forum for issues of importance to all chemists, regardless of sub-discipline.
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