Suppr超能文献

用于混合图形模型学习的可扩展生死马尔可夫链蒙特卡罗算法及其在基因组数据整合中的应用

THE SCALABLE BIRTH-DEATH MCMC ALGORITHM FOR MIXED GRAPHICAL MODEL LEARNING WITH APPLICATION TO GENOMIC DATA INTEGRATION.

作者信息

Wang Nanwei, Massam Hélène, Gao Xin, Briollais Laurent

机构信息

Department of Mathematics and Statistics, University of New Brunswick, Toronto, Canada.

Department of Mathematics and Statistics, York University, Toronto, Canada.

出版信息

Ann Appl Stat. 2023 Sep;17(3):1958-1983. doi: 10.1214/22-aoas1701. Epub 2023 Oct 7.

Abstract

Recent advances in biological research have seen the emergence of high-throughput technologies with numerous applications that allow the study of biological mechanisms at an unprecedented depth and scale. A large amount of genomic data is now distributed through consortia like The Cancer Genome Atlas (TCGA), where specific types of biological information on specific type of tissue or cell are available. In cancer research, the challenge is now to perform integrative analyses of high-dimensional multi-omic data with the goal to better understand genomic processes that correlate with cancer outcomes, e.g. elucidate gene networks that discriminate a specific cancer subgroups (cancer sub-typing) or discovering gene networks that overlap across different cancer types (pan-cancer studies). In this paper, we propose a novel mixed graphical model approach to analyze multi-omic data of different types (continuous, discrete and count) and perform model selection by extending the Birth-Death MCMC (BDMCMC) algorithm initially proposed by Stephens (2000) and later developed by Mohammadi and Wit (2015). We compare the performance of our method to the LASSO method and the standard BDMCMC method using simulations and find that our method is superior in terms of both computational efficiency and the accuracy of the model selection results. Finally, an application to the TCGA breast cancer data shows that integrating genomic information at different levels (mutation and expression data) leads to better subtyping of breast cancers.

摘要

生物学研究的最新进展见证了高通量技术的出现,这些技术具有众多应用,能够以前所未有的深度和规模研究生物学机制。现在,大量基因组数据通过诸如癌症基因组图谱(TCGA)这样的联合体进行分发,在这些联合体中可以获取特定类型组织或细胞的特定类型生物学信息。在癌症研究中,当前的挑战是对高维多组学数据进行综合分析,目标是更好地理解与癌症预后相关的基因组过程,例如阐明区分特定癌症亚组的基因网络(癌症亚型分类)或发现不同癌症类型间重叠的基因网络(泛癌研究)。在本文中,我们提出一种新颖的混合图形模型方法来分析不同类型(连续型、离散型和计数型)的多组学数据,并通过扩展最初由斯蒂芬斯(2000年)提出、后来由穆罕默迪和威特(2015年)发展的生死马尔可夫链蒙特卡罗(BDMCMC)算法来进行模型选择。我们使用模拟将我们的方法与套索方法和标准BDMCMC方法的性能进行比较,发现我们的方法在计算效率和模型选择结果的准确性方面都更具优势。最后,对TCGA乳腺癌数据的应用表明,整合不同层面(突变和表达数据)的基因组信息能够实现更好的乳腺癌亚型分类。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/50cc/10569451/8a173401d9c9/nihms-1886934-f0001.jpg

相似文献

10
Characterizing Cancer-Specific Networks by Integrating TCGA Data.通过整合TCGA数据来表征癌症特异性网络。
Cancer Inform. 2015 Nov 23;13(Suppl 2):125-31. doi: 10.4137/CIN.S13776. eCollection 2014.

本文引用的文献

1
Data integration with high dimensionality.高维度数据集成
Biometrika. 2017 Jun;104(2):251-272. doi: 10.1093/biomet/asx023. Epub 2017 May 9.
2
Selection and estimation for mixed graphical models.混合图形模型的选择与估计
Biometrika. 2015 Mar;102(1):47-64. doi: 10.1093/biomet/asu051. Epub 2014 Dec 24.
4
Learning the Structure of Mixed Graphical Models.学习混合图形模型的结构
J Comput Graph Stat. 2015 Jan 1;24(1):230-253. doi: 10.1080/10618600.2014.900500.
5
Tackling the diversity of triple-negative breast cancer.攻克三阴性乳腺癌的异质性。
Clin Cancer Res. 2013 Dec 1;19(23):6380-8. doi: 10.1158/1078-0432.CCR-13-0915.
7
Comprehensive molecular portraits of human breast tumours.人类乳腺肿瘤的全面分子特征图谱。
Nature. 2012 Oct 4;490(7418):61-70. doi: 10.1038/nature11412. Epub 2012 Sep 23.
10
A refined molecular taxonomy of breast cancer.乳腺癌的精细化分子分类。
Oncogene. 2012 Mar 1;31(9):1196-206. doi: 10.1038/onc.2011.301. Epub 2011 Jul 25.

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验