Zhenwen Dai
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Featured researches published by Zhenwen Dai.
Bioinformatics | 2017
Zhenwen Dai; Mudassar Iqbal; Neil D. Lawrence; Magnus Rattray
Abstract Motivation Regulation of gene expression in prokaryotes involves complex co-regulatory mechanisms involving large numbers of transcriptional regulatory proteins and their target genes. Uncovering these genome-scale interactions constitutes a major bottleneck in systems biology. Sparse latent factor models, assuming activity of transcription factors (TFs) as unobserved, provide a biologically interpretable modelling framework, integrating gene expression and genome-wide binding data, but at the same time pose a hard computational inference problem. Existing probabilistic inference methods for such models rely on subjective filtering and suffer from scalability issues, thus are not well-suited for realistic genome-scale applications. Results We present a fast Bayesian sparse factor model, which takes input gene expression and binding sites data, either from ChIP-seq experiments or motif predictions, and outputs active TF-gene links as well as latent TF activities. Our method employs an efficient variational Bayes scheme for model inference enabling its application to large datasets which was not feasible with existing MCMC-based inference methods for such models. We validate our method on synthetic data against a similar model in the literature, employing MCMC for inference, and obtain comparable results with a small fraction of the computational time. We also apply our method to large-scale data from Mycobacterium tuberculosis involving ChIP-seq data on 113 TFs and matched gene expression data for 3863 putative target genes. We evaluate our predictions using an independent transcriptomics experiment involving over-expression of TFs. Availability and implementation An easy-to-use Jupyter notebook demo of our method with data is available at https://github.com/zhenwendai/SITAR. Supplementary information Supplementary data are available at Bioinformatics online.
international conference on artificial intelligence and statistics | 2016
Javier González; Zhenwen Dai; Philipp Hennig; Neil D. Lawrence
international conference on learning representations | 2016
Zhenwen Dai; Andreas C. Damianou; Javier González; Neil D. Lawrence
arXiv: Distributed, Parallel, and Cluster Computing | 2014
Zhenwen Dai; Andreas C. Damianou; James Hensman; Neil D. Lawrence
international conference on learning representations | 2016
César Lincoln C. Mattos; Zhenwen Dai; Andreas C. Damianou; Jeremy Forth; Guilherme A. Barreto; Neil D. Lawrence
arXiv: Machine Learning | 2015
Zhenwen Dai; James Hensman; Neil D. Lawrence
arXiv: Machine Learning | 2018
Mu Niu; Pokman Cheung; Lizhen Lin; Zhenwen Dai; Neil D. Lawrence; David B. Dunson
arXiv: Mathematical Software | 2017
Matthias W. Seeger; Asmus Hetzel; Zhenwen Dai; Neil D. Lawrence
international conference on machine learning | 2018
Xiaoyu Lu; Javier González; Zhenwen Dai; Neil D. Lawrence
neural information processing systems | 2017
Zhenwen Dai; Mauricio A. Álvarez; Neil D. Lawrence