Ontology highlight
ABSTRACT:
SUBMITTER: Ito K
PROVIDER: S-EPMC6240814 | biostudies-other | 2018 Nov
REPOSITORIES: biostudies-other
Ito Kengo K Obuchi Yuka Y Chikayama Eisuke E Date Yasuhiro Y Kikuchi Jun J
Chemical science 20180910 43
Various chemical shift predictive methodologies have been studied and developed, but there remains the problem of prediction accuracy. Assigning the NMR signals of metabolic mixtures requires high predictive performance owing to the complexity of the signals. Here we propose a new predictive tool that combines quantum chemistry and machine learning. A scaling factor as the objective variable to correct the errors of 2355 theoretical chemical shifts was optimized by exploring 91 machine learning ...[more]