Literature DB >> 30333854

Learning Subject-Specific Directed Acyclic Graphs With Mixed Effects Structural Equation Models From Observational Data.

Xiang Li1, Shanghong Xie2, Peter McColgan3, Sarah J Tabrizi3, Rachael I Scahill3, Donglin Zeng4, Yuanjia Wang2,5.   

Abstract

The identification of causal relationships between random variables from large-scale observational data using directed acyclic graphs (DAG) is highly challenging. We propose a new mixed-effects structural equation model (mSEM) framework to estimate subject-specific DAGs, where we represent joint distribution of random variables in the DAG as a set of structural causal equations with mixed effects. The directed edges between nodes depend on observed exogenous covariates on each of the individual and unobserved latent variables. The strength of the connection is decomposed into a fixed-effect term representing the average causal effect given the covariates and a random effect term representing the latent causal effect due to unobserved pathways. The advantage of such decomposition is to capture essential asymmetric structural information and heterogeneity between DAGs in order to allow for the identification of causal structure with observational data. In addition, by pooling information across subject-specific DAGs, we can identify causal structure with a high probability and estimate subject-specific networks with a high precision. We propose a penalized likelihood-based approach to handle multi-dimensionality of the DAG model. We propose a fast, iterative computational algorithm, DAG-MM, to estimate parameters in mSEM and achieve desirable sparsity by hard-thresholding the edges. We theoretically prove the identifiability of mSEM. Using simulations and an application to protein signaling data, we show substantially improved performances when compared to existing methods and consistent results with a network estimated from interventional data. Lastly, we identify gray matter atrophy networks in regions of brain from patients with Huntington's disease and corroborate our findings using white matter connectivity data collected from an independent study.

Entities:  

Keywords:  causal structure discovery; graphical models; heterogeneity; network analysis; regularization

Year:  2018        PMID: 30333854      PMCID: PMC6176748          DOI: 10.3389/fgene.2018.00430

Source DB:  PubMed          Journal:  Front Genet        ISSN: 1664-8021            Impact factor:   4.599


  25 in total

1.  BAYESIAN HIERARCHICAL MODELING FOR SIGNALING PATHWAY INFERENCE FROM SINGLE CELL INTERVENTIONAL DATA.

Authors:  Ruiyan Luo; Hongyu Zhao
Journal:  Ann Appl Stat       Date:  2011       Impact factor: 2.083

Review 2.  Functional and effective connectivity: a review.

Authors:  Karl J Friston
Journal:  Brain Connect       Date:  2011

3.  An agenda for symptom-based research.

Authors:  William Fleeson; R Michael Furr; Elizabeth Mayfield Arnold
Journal:  Behav Brain Sci       Date:  2010-06       Impact factor: 12.579

4.  Covariate-Adjusted Precision Matrix Estimation with an Application in Genetical Genomics.

Authors:  T Tony Cai; Hongzhe Li; Weidong Liu; Jichun Xie
Journal:  Biometrika       Date:  2012-11-30       Impact factor: 2.445

5.  ESTIMATING HETEROGENEOUS GRAPHICAL MODELS FOR DISCRETE DATA WITH AN APPLICATION TO ROLL CALL VOTING.

Authors:  Jian Guo; Jie Cheng; Elizaveta Levina; George Michailidis; Ji Zhu
Journal:  Ann Appl Stat       Date:  2015-06       Impact factor: 2.083

6.  Brain network local interconnectivity loss in aging APOE-4 allele carriers.

Authors:  Jesse A Brown; Kevin H Terashima; Alison C Burggren; Linda M Ercoli; Karen J Miller; Gary W Small; Susan Y Bookheimer
Journal:  Proc Natl Acad Sci U S A       Date:  2011-11-21       Impact factor: 11.205

7.  Estimation of Directed Acyclic Graphs Through Two-stage Adaptive Lasso for Gene Network Inference.

Authors:  Sung Won Han; Gong Chen; Myun-Seok Cheon; Hua Zhong
Journal:  J Am Stat Assoc       Date:  2016-10-18       Impact factor: 5.033

8.  PenPC: A two-step approach to estimate the skeletons of high-dimensional directed acyclic graphs.

Authors:  Min Jin Ha; Wei Sun; Jichun Xie
Journal:  Biometrics       Date:  2015-09-25       Impact factor: 2.571

9.  Topological length of white matter connections predicts their rate of atrophy in premanifest Huntington's disease.

Authors:  Peter McColgan; Kiran K Seunarine; Sarah Gregory; Adeel Razi; Marina Papoutsi; Jeffrey D Long; James A Mills; Eileanoir Johnson; Alexandra Durr; Raymund Ac Roos; Blair R Leavitt; Julie C Stout; Rachael I Scahill; Chris A Clark; Geraint Rees; Sarah J Tabrizi
Journal:  JCI Insight       Date:  2017-04-20

10.  Integrated genomics and proteomics define huntingtin CAG length-dependent networks in mice.

Authors:  Peter Langfelder; Jeffrey P Cantle; Doxa Chatzopoulou; Nan Wang; Fuying Gao; Ismael Al-Ramahi; Xiao-Hong Lu; Eliana Marisa Ramos; Karla El-Zein; Yining Zhao; Sandeep Deverasetty; Andreas Tebbe; Christoph Schaab; Daniel J Lavery; David Howland; Seung Kwak; Juan Botas; Jeffrey S Aaronson; Jim Rosinski; Giovanni Coppola; Steve Horvath; X William Yang
Journal:  Nat Neurosci       Date:  2016-02-22       Impact factor: 24.884

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.