Informacja

Drogi użytkowniku, aplikacja do prawidłowego działania wymaga obsługi JavaScript. Proszę włącz obsługę JavaScript w Twojej przeglądarce.

Tytuł pozycji:

A deep learning framework for high-throughput mechanism-driven phenotype compound screening.

Tytuł:
A deep learning framework for high-throughput mechanism-driven phenotype compound screening.
Autorzy:
Pham TH; The Ohio State University, Department of Computer Science and Engineering, Columbus, 43210, USA.
Qiu Y; The City University of New York, Ph.D. Program in Biology, The Graduate Center, New York, 10016, USA.
Zeng J; The Ohio State University, Department of Biomedical Informatics, Columbus, 43210, USA.
Xie L; The City University of New York, Ph.D. Program in Biology, The Graduate Center, New York, 10016, USA.; Hunter College, The City University of New York, Department of Computer Science, New York, 10065, USA.; The City University of New York, Ph.D. Program in Computer Science and Biochemistry, The Graduate Center, New York, 10016, USA.; Weill Cornell Medicine, Cornell University, Helen and Robert Appel Alzheimer's Disease Research Institute, Feil Family Brain Mind Research Institute, New York, 10021, USA.
Zhang P; The Ohio State University, Department of Computer Science and Engineering, Columbus, 43210, USA.; The Ohio State University, Department of Biomedical Informatics, Columbus, 43210, USA.
Źródło:
BioRxiv : the preprint server for biology [bioRxiv] 2020 Jul 20. Date of Electronic Publication: 2020 Jul 20.
Typ publikacji:
Preprint
Język:
English
References:
Bioinformatics. 2001 Jun;17(6):520-5. (PMID: 11395428)
Cancer Cell. 2006 Oct;10(4):331-42. (PMID: 17010674)
Life Sci. 2020 Jul 1;252:117652. (PMID: 32278693)
Genome Biol. 2014;15(12):550. (PMID: 25516281)
Bioinformatics. 2020 May 1;36(9):2787-2795. (PMID: 32003771)
Bioinformatics. 2004 Apr 12;20(6):917-23. (PMID: 14751970)
BMC Bioinformatics. 2017 Jul 27;18(1):356. (PMID: 28750623)
Bioinformatics. 2005 Jan 15;21(2):187-98. (PMID: 15333461)
Nucleic Acids Res. 2006 Jan 1;34(Database issue):D668-72. (PMID: 16381955)
Pac Symp Biocomput. 2018;23:32-43. (PMID: 29218867)
Nucleic Acids Res. 2019 Jan 8;47(D1):D607-D613. (PMID: 30476243)
BMC Bioinformatics. 2019 Dec 20;20(Suppl 24):674. (PMID: 31861982)
NPJ Syst Biol Appl. 2016;2:. (PMID: 28413689)
Nat Genet. 2004 Mar;36(3):257-63. (PMID: 14770183)
Nucleic Acids Res. 2004 Feb 20;32(3):e34. (PMID: 14978222)
Mol Biosyst. 2015 Mar;11(3):714-22. (PMID: 25609570)
Nat Rev Cancer. 2007 Jan;7(1):54-60. (PMID: 17186018)
Nat Commun. 2020 Jan 3;11(1):10. (PMID: 31900408)
Blood. 2008 Jun 15;111(12):5654-62. (PMID: 18305216)
Cell. 2017 Nov 30;171(6):1437-1452.e17. (PMID: 29195078)
Bioinformatics. 2003 Nov 1;19(16):2088-96. (PMID: 14594714)
Cancer Sci. 2013 Aug;104(8):1017-26. (PMID: 23600803)
Sci Rep. 2017 Jan 10;7:40164. (PMID: 28071740)
J Chem Inf Model. 2015 Nov 23;55(11):2324-37. (PMID: 26479676)
J Chem Inf Model. 2020 Jun 22;60(6):3277-3286. (PMID: 32315171)
Bioinformatics. 2013 Aug 15;29(16):2062-3. (PMID: 23740741)
Neurochem Res. 2002 Oct;27(10):1133-40. (PMID: 12462411)
J Bioinform Comput Biol. 2006 Oct;4(5):935-57. (PMID: 17099935)
BMC Bioinformatics. 2006 Jan 22;7:32. (PMID: 16426462)
Bioinformatics. 2019 Jul 15;35(14):i191-i199. (PMID: 31510663)
Brief Bioinform. 2011 Jul;12(4):303-11. (PMID: 21690101)
PLoS One. 2009 Aug 06;4(8):e6536. (PMID: 19657382)
Science. 2006 Sep 29;313(5795):1929-35. (PMID: 17008526)
Nat Biotechnol. 2019 Sep;37(9):1038-1040. (PMID: 31477924)
Grant Information:
R01 GM122845 United States GM NIGMS NIH HHS
Entry Date(s):
Date Created: 20200804 Latest Revision: 20210414
Update Code:
20240105
PubMed Central ID:
PMC7386506
DOI:
10.1101/2020.07.19.211235
PMID:
32743586
Target-based high-throughput compound screening dominates conventional one-drug-one-gene drug discovery process. However, the readout from the chemical modulation of a single protein is poorly correlated with phenotypic response of organism, leading to high failure rate in drug development. Chemical-induced gene expression profile provides an attractive solution to phenotype-based screening. However, the use of such data is currently limited by their sparseness, unreliability, and relatively low throughput. Several methods have been proposed to impute missing values for gene expression datasets. However, few existing methods can perform de novo chemical compound screening. In this study, we propose a mechanism-driven neural network-based method named DeepCE (Deep Chemical Expression) which utilizes graph convolutional neural network to learn chemical representation and multi-head attention mechanism to model chemical substructure-gene and gene-gene feature associations. In addition, we propose a novel data augmentation method which extracts useful information from unreliable experiments in L1000 dataset. The experimental results show that DeepCE achieves the superior performances not only in de novo chemical setting but also in traditional imputation setting compared to state-of-the-art baselines for the prediction of chemical-induced gene expression. We further verify the effectiveness of gene expression profiles generated from DeepCE by comparing them with gene expression profiles in L1000 dataset for downstream classification tasks including drug-target and disease predictions. To demonstrate the value of DeepCE, we apply it to patient-specific drug repurposing of COVID-19 for the first time, and generate novel lead compounds consistent with clinical evidences. Thus, DeepCE provides a potentially powerful framework for robust predictive modeling by utilizing noisy omics data as well as screening novel chemicals for the modulation of systemic response to disease.
Competing Interests: Competing interests The authors declare no competing interests.
Update in: Nat Mach Intell. 2021 Mar;3(3):247-257. (PMID: 33796820)

Ta witryna wykorzystuje pliki cookies do przechowywania informacji na Twoim komputerze. Pliki cookies stosujemy w celu świadczenia usług na najwyższym poziomie, w tym w sposób dostosowany do indywidualnych potrzeb. Korzystanie z witryny bez zmiany ustawień dotyczących cookies oznacza, że będą one zamieszczane w Twoim komputerze. W każdym momencie możesz dokonać zmiany ustawień dotyczących cookies