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Li, Bo

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Li, Bo

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Now showing 1 - 2 of 2
  • Publication

    Network analysis of gene essentiality in functional genomics experiments

    (BioMed Central, 2015) Jiang, Peng; Wang, Hongfang; Li, Wei; Zang, Chongzhi; Li, Bo; Wong, Yinling J.; Meyer, Cliff; Liu, Jun; Aster, Jon; Liu, X. Shirley

    Many genomic techniques have been developed to study gene essentiality genome-wide, such as CRISPR and shRNA screens. Our analyses of public CRISPR screens suggest protein interaction networks, when integrated with gene expression or histone marks, are highly predictive of gene essentiality. Meanwhile, the quality of CRISPR and shRNA screen results can be significantly enhanced through network neighbor information. We also found network neighbor information to be very informative on prioritizing ChIP-seq target genes and survival indicator genes from tumor profiling. Thus, our study provides a general method for gene essentiality analysis in functional genomic experiments (http://nest.dfci.harvard.edu). Electronic supplementary material The online version of this article (doi:10.1186/s13059-015-0808-9) contains supplementary material, which is available to authorized users.

  • Publication

    High-dimensional genomic data bias correction and data integration using MANCIE

    (Nature Publishing Group, 2016) Zang, Chongzhi; Wang, Tao; Deng, Ke; Li, Bo; Hu, Sheng'en; Qin, Qian; Xiao, Tengfei; Zhang, Shihua; Meyer, Clifford; He, Housheng Hansen; Brown, Myles; Liu, Jun; Xie, Yang; Liu, X. Shirley

    High-dimensional genomic data analysis is challenging due to noises and biases in high-throughput experiments. We present a computational method matrix analysis and normalization by concordant information enhancement (MANCIE) for bias correction and data integration of distinct genomic profiles on the same samples. MANCIE uses a Bayesian-supported principal component analysis-based approach to adjust the data so as to achieve better consistency between sample-wise distances in the different profiles. MANCIE can improve tissue-specific clustering in ENCODE data, prognostic prediction in Molecular Taxonomy of Breast Cancer International Consortium and The Cancer Genome Atlas data, copy number and expression agreement in Cancer Cell Line Encyclopedia data, and has broad applications in cross-platform, high-dimensional data integration.