Literature DB >> 31661259

Deep Learning to Generate in Silico Chemical Property Libraries and Candidate Molecules for Small Molecule Identification in Complex Samples.

Sean M Colby1, Jamie R Nuñez1, Nathan O Hodas1, Courtney D Corley1, Ryan R Renslow1.   

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.

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Year:  2020        PMID: 31661259     DOI: 10.1021/acs.analchem.9b02348

Source DB:  PubMed          Journal:  Anal Chem        ISSN: 0003-2700            Impact factor:   6.986


  10 in total

1.  In Silico Collision Cross Section Calculations to Aid Metabolite Annotation.

Authors:  Susanta Das; Kiyoto Aramis Tanemura; Laleh Dinpazhoh; Mithony Keng; Christina Schumm; Lydia Leahy; Carter K Asef; Markace Rainey; Arthur S Edison; Facundo M Fernández; Kenneth M Merz
Journal:  J Am Soc Mass Spectrom       Date:  2022-04-04       Impact factor: 3.262

2.  Ion mobility collision cross-section atlas for known and unknown metabolite annotation in untargeted metabolomics.

Authors:  Zhiwei Zhou; Mingdu Luo; Xi Chen; Yandong Yin; Xin Xiong; Ruohong Wang; Zheng-Jiang Zhu
Journal:  Nat Commun       Date:  2020-08-28       Impact factor: 14.919

3.  A lipidome atlas in MS-DIAL 4.

Authors:  Hiroshi Tsugawa; Kazutaka Ikeda; Mikiko Takahashi; Aya Satoh; Yoshifumi Mori; Haruki Uchino; Nobuyuki Okahashi; Yutaka Yamada; Ipputa Tada; Paolo Bonini; Yasuhiro Higashi; Yozo Okazaki; Zhiwei Zhou; Zheng-Jiang Zhu; Jeremy Koelmel; Tomas Cajka; Oliver Fiehn; Kazuki Saito; Masanori Arita; Makoto Arita
Journal:  Nat Biotechnol       Date:  2020-06-15       Impact factor: 54.908

Review 4.  Omics Approaches for Understanding Biogenesis, Composition and Functions of Fungal Extracellular Vesicles.

Authors:  Daniel Zamith-Miranda; Roberta Peres da Silva; Sneha P Couvillion; Erin L Bredeweg; Meagan C Burnet; Carolina Coelho; Emma Camacho; Leonardo Nimrichter; Rosana Puccia; Igor C Almeida; Arturo Casadevall; Marcio L Rodrigues; Lysangela R Alves; Joshua D Nosanchuk; Ernesto S Nakayasu
Journal:  Front Genet       Date:  2021-05-03       Impact factor: 4.599

5.  DeepGraphMolGen, a multi-objective, computational strategy for generating molecules with desirable properties: a graph convolution and reinforcement learning approach.

Authors:  Yash Khemchandani; Stephen O'Hagan; Soumitra Samanta; Neil Swainston; Timothy J Roberts; Danushka Bollegala; Douglas B Kell
Journal:  J Cheminform       Date:  2020-09-04       Impact factor: 5.514

6.  Deep learning and generative methods in cheminformatics and chemical biology: navigating small molecule space intelligently.

Authors:  Douglas B Kell; Soumitra Samanta; Neil Swainston
Journal:  Biochem J       Date:  2020-12-11       Impact factor: 3.857

Review 7.  Commercial SARS-CoV-2 Targeted, Protease Inhibitor Focused and Protein-Protein Interaction Inhibitor Focused Molecular Libraries for Virtual Screening and Drug Design.

Authors:  Sebastjan Kralj; Marko Jukič; Urban Bren
Journal:  Int J Mol Sci       Date:  2021-12-30       Impact factor: 5.923

8.  HMDB 5.0: the Human Metabolome Database for 2022.

Authors:  David S Wishart; AnChi Guo; Eponine Oler; Fei Wang; Afia Anjum; Harrison Peters; Raynard Dizon; Zinat Sayeeda; Siyang Tian; Brian L Lee; Mark Berjanskii; Robert Mah; Mai Yamamoto; Juan Jovel; Claudia Torres-Calzada; Mickel Hiebert-Giesbrecht; Vicki W Lui; Dorna Varshavi; Dorsa Varshavi; Dana Allen; David Arndt; Nitya Khetarpal; Aadhavya Sivakumaran; Karxena Harford; Selena Sanford; Kristen Yee; Xuan Cao; Zachary Budinski; Jaanus Liigand; Lun Zhang; Jiamin Zheng; Rupasri Mandal; Naama Karu; Maija Dambrova; Helgi B Schiöth; Russell Greiner; Vasuk Gautam
Journal:  Nucleic Acids Res       Date:  2022-01-07       Impact factor: 16.971

9.  MSNovelist: de novo structure generation from mass spectra.

Authors:  Michael A Stravs; Kai Dührkop; Sebastian Böcker; Nicola Zamboni
Journal:  Nat Methods       Date:  2022-05-30       Impact factor: 47.990

10.  Who Is Metabolizing What? Discovering Novel Biomolecules in the Microbiome and the Organisms Who Make Them.

Authors:  Sneha P Couvillion; Neha Agrawal; Sean M Colby; Kristoffer R Brandvold; Thomas O Metz
Journal:  Front Cell Infect Microbiol       Date:  2020-07-31       Impact factor: 5.293

  10 in total

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