Your browser doesn't support javascript.
loading
Deep Learning to Generate in Silico Chemical Property Libraries and Candidate Molecules for Small Molecule Identification in Complex Samples.
Colby, Sean M; Nuñez, Jamie R; Hodas, Nathan O; Corley, Courtney D; Renslow, Ryan R.
Afiliación
  • Colby SM; Pacific Northwest National Laboratory , Richland , Washington 99352 , United States.
  • Nuñez JR; Pacific Northwest National Laboratory , Richland , Washington 99352 , United States.
  • Hodas NO; Pacific Northwest National Laboratory , Richland , Washington 99352 , United States.
  • Corley CD; Pacific Northwest National Laboratory , Richland , Washington 99352 , United States.
  • Renslow RR; Pacific Northwest National Laboratory , Richland , Washington 99352 , United States.
Anal Chem ; 92(2): 1720-1729, 2020 01 21.
Article en En | MEDLINE | ID: mdl-31661259
ABSTRACT
Comprehensive and unambiguous identification of small molecules in complex samples will revolutionize our understanding of the role of metabolites in biological systems. Existing and emerging technologies have enabled measurement of chemical properties of molecules in complex mixtures and, in concert, are sensitive enough to resolve even stereoisomers. Despite these experimental advances, small molecule identification is inhibited by (i) chemical reference libraries (e.g., mass spectra, collision cross section, and other measurable property libraries) representing <1% of known molecules, limiting the number of possible identifications, and (ii) the lack of a method to generate candidate matches directly from experimental features (i.e., without a library). To this end, we developed a variational autoencoder (VAE) to learn a continuous numerical, or latent, representation of molecular structure to expand reference libraries for small molecule identification. We extended the VAE to include a chemical property decoder, trained as a multitask network, in order to shape the latent representation such that it assembles according to desired chemical properties. The approach is unique in its application to metabolomics and small molecule identification, with its focus on properties that can be obtained from experimental measurements (m/z, CCS) paired with its training paradigm, which involved a cascade of transfer learning iterations. First, molecular representation is learned from a large data set of structures with m/z labels. Next, in silico property values are used to continue training, as experimental property data is limited. Finally, the network is further refined by being trained with the experimental data. This allows the network to learn as much as possible at each stage, enabling success with progressively smaller data sets without overfitting. Once trained, the network can be used to predict chemical properties directly from structure, as well as generate candidate structures with desired chemical properties. Our approach is orders of magnitude faster than first-principles simulation for CCS property prediction. Additionally, the ability to generate novel molecules along manifolds, defined by chemical property analogues, positions DarkChem as highly useful in a number of application areas, including metabolomics and small molecule identification, drug discovery and design, chemical forensics, and beyond.
Asunto(s)

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Simulación por Computador / Bibliotecas de Moléculas Pequeñas / Aprendizaje Profundo Tipo de estudio: Diagnostic_studies / Prognostic_studies Idioma: En Revista: Anal Chem Año: 2020 Tipo del documento: Article País de afiliación: Estados Unidos

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Simulación por Computador / Bibliotecas de Moléculas Pequeñas / Aprendizaje Profundo Tipo de estudio: Diagnostic_studies / Prognostic_studies Idioma: En Revista: Anal Chem Año: 2020 Tipo del documento: Article País de afiliación: Estados Unidos