Learning LiNGAM based on data with more variables than observations

08/21/2012
by   Shohei Shimizu, et al.
0

A very important topic in systems biology is developing statistical methods that automatically find causal relations in gene regulatory networks with no prior knowledge of causal connectivity. Many methods have been developed for time series data. However, discovery methods based on steady-state data are often necessary and preferable since obtaining time series data can be more expensive and/or infeasible for many biological systems. A conventional approach is causal Bayesian networks. However, estimation of Bayesian networks is ill-posed. In many cases it cannot uniquely identify the underlying causal network and only gives a large class of equivalent causal networks that cannot be distinguished between based on the data distribution. We propose a new discovery algorithm for uniquely identifying the underlying causal network of genes. To the best of our knowledge, the proposed method is the first algorithm for learning gene networks based on a fully identifiable causal model called LiNGAM. We here compare our algorithm with competing algorithms using artificially-generated data, although it is definitely better to test it based on real microarray gene expression data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/18/2020

Amortized Causal Discovery: Learning to Infer Causal Graphs from Time-Series Data

Standard causal discovery methods must fit a new model whenever they enc...
research
04/12/2023

DiscoGen: Learning to Discover Gene Regulatory Networks

Accurately inferring Gene Regulatory Networks (GRNs) is a critical and c...
research
05/06/2019

Learning Causality: Synthesis of Large-Scale Causal Networks from High-Dimensional Time Series Data

There is an abundance of complex dynamic systems that are critical to ou...
research
05/04/2018

Causal Queries from Observational Data in Biological Systems via Bayesian Networks: An Empirical Study in Small Networks

Biological networks are a very convenient modelling and visualisation to...
research
09/18/2018

A Bayesian Approach for Inferring Local Causal Structure in Gene Regulatory Networks

Gene regulatory networks play a crucial role in controlling an organism'...
research
02/15/2018

Bayesian variable selection in linear dynamical systems

We develop a method for reconstructing regulatory interconnection networ...
research
12/02/2013

Inferring Regulatory Networks by Combining Perturbation Screens and Steady State Gene Expression Profiles

Reconstructing transcriptional regulatory networks is an important task ...

Please sign up or login with your details

Forgot password? Click here to reset