Despite the availability and accuracy of modern spectroscopic characterization, the utilization of spectral information in chemical machine learning is still primitive. Here, we report an optical character recognition-based automatic process to utilize spectral information as molecular descriptors, which directly transforms experimental spectrum images to readable vectors. We demonstrate its machine learning application in the reaction yield dataset of Pd-catalyzed Buchwald-Hartwig cross-coupling with aryl halides. In addition, we also show that the predicted spectrum can serve as an alternative encoding source to support the model training.
CITATION STYLE
Tang, M. J., Xu, L. C., Zhang, S. Q., & Hong, X. (2023). Exploring Spectrum-based Molecular Descriptors for Reaction Performance Prediction. Chemistry - An Asian Journal, 18(7). https://doi.org/10.1002/asia.202300011
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