Literature DB >> 29241666

Identification of human circadian genes based on time course gene expression profiles by using a deep learning method.

Peng Cui1, Tingyan Zhong1, Zhuo Wang2, Tao Wang1, Hongyu Zhao3, Chenglin Liu4, Hui Lu5.   

Abstract

Circadian genes express periodically in an approximate 24-h period and the identification and study of these genes can provide deep understanding of the circadian control which plays significant roles in human health. Although many circadian gene identification algorithms have been developed, large numbers of false positives and low coverage are still major problems in this field. In this study we constructed a novel computational framework for circadian gene identification using deep neural networks (DNN) - a deep learning algorithm which can represent the raw form of data patterns without imposing assumptions on the expression distribution. Firstly, we transformed time-course gene expression data into categorical-state data to denote the changing trend of gene expression. Two distinct expression patterns emerged after clustering of the state data for circadian genes from our manually created learning dataset. DNN was then applied to discriminate the aperiodic genes and the two subtypes of periodic genes. In order to assess the performance of DNN, four commonly used machine learning methods including k-nearest neighbors, logistic regression, naïve Bayes, and support vector machines were used for comparison. The results show that the DNN model achieves the best balanced precision and recall. Next, we conducted large scale circadian gene detection using the trained DNN model for the remaining transcription profiles. Comparing with JTK_CYCLE and a study performed by Möller-Levet et al. (doi: https://doi.org/10.1073/pnas.1217154110), we identified 1132 novel periodic genes. Through the functional analysis of these novel circadian genes, we found that the GTPase superfamily exhibits distinct circadian expression patterns and may provide a molecular switch of circadian control of the functioning of the immune system in human blood. Our study provides novel insights into both the circadian gene identification field and the study of complex circadian-driven biological control. This article is part of a Special Issue entitled: Accelerating Precision Medicine through Genetic and Genomic Big Data Analysis edited by Yudong Cai & Tao Huang.
Copyright © 2017. Published by Elsevier B.V.

Entities:  

Keywords:  Circadian genes; Classification; Deep learning; Deep neural network; Functional analysis; GTPase

Mesh:

Year:  2017        PMID: 29241666     DOI: 10.1016/j.bbadis.2017.12.004

Source DB:  PubMed          Journal:  Biochim Biophys Acta Mol Basis Dis        ISSN: 0925-4439            Impact factor:   5.187


  6 in total

1.  A First-in-Human Study of AMG 986, a Novel Apelin Receptor Agonist, in Healthy Subjects and Heart Failure Patients.

Authors:  Peter Winkle; Steven Goldsmith; Michael J Koren; Serge Lepage; Jennifer Hellawell; Ashit Trivedi; Kate Tsirtsonis; Siddique A Abbasi; Allegra Kaufman; Richard Troughton; Adriaan Voors; Jean-Sebastien Hulot; Erwan Donal; Navid Kazemi; Joel Neutel
Journal:  Cardiovasc Drugs Ther       Date:  2022-04-23       Impact factor: 3.727

2.  Weighing and modelling factors influencing serum cortisol and melatonin concentration among workers that are exposed to various sound pressure levels using neural network algorithm: An empirical study.

Authors:  Sajad Zare; Rasoul Hemmatjo; Hossein ElahiShirvan; Ashkan Jafari Malekabad; Reza Kazemi; Farshad Nadri
Journal:  Heliyon       Date:  2020-09-28

3.  Circadian dynamics of the teleost skin immune-microbiome interface.

Authors:  David Wilcockson; Jo Cable; Amy R Ellison
Journal:  Microbiome       Date:  2021-11-16       Impact factor: 14.650

4.  Building a model for predicting metabolic syndrome using artificial intelligence based on an investigation of whole-genome sequencing.

Authors:  Nai-Wei Hsu; Kai-Chen Chou; Chien-Feng Kuo; Yu-Ting Tina Wang; Chung-Lieh Hung; Shin-Yi Tsai
Journal:  J Transl Med       Date:  2022-04-28       Impact factor: 8.440

5.  Identification of Human Cell Cycle Phase Markers Based on Single-Cell RNA-Seq Data by Using Machine Learning Methods.

Authors:  FeiMing Huang; Lei Chen; Wei Guo; Tao Huang; Yu-Dong Cai
Journal:  Biomed Res Int       Date:  2022-08-13       Impact factor: 3.246

6.  Evaluation of classification and forecasting methods on time series gene expression data.

Authors:  Nafis Irtiza Tripto; Mohimenul Kabir; Md Shamsuzzoha Bayzid; Atif Rahman
Journal:  PLoS One       Date:  2020-11-06       Impact factor: 3.240

  6 in total

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