Person:

Xiao, Tengfei

Loading...
Profile Picture

Email Address

AA Acceptance Date

Birth Date

Research Projects

Organizational Units

Job Title

Last Name

Xiao

First Name

Tengfei

Name

Xiao, Tengfei

Search Results

Now showing 1 - 2 of 2
  • Publication

    Sequence determinants of improved CRISPR sgRNA design

    (Cold Spring Harbor Laboratory Press, 2015) Xu, Han; Xiao, Tengfei; Chen, Chen-Hao; Li, Wei; Meyer, Clifford; Wu, Qiu; Wu, Di; Cong, L; Zhang, Feng; Liu, Jun; Brown, Myles; Liu, Xiaole

    The CRISPR/Cas9 system has revolutionized mammalian somatic cell genetics. Genome-wide functional screens using CRISPR/Cas9-mediated knockout or dCas9 fusion-mediated inhibition/activation (CRISPRi/a) are powerful techniques for discovering phenotype-associated gene function. We systematically assessed the DNA sequence features that contribute to single guide RNA (sgRNA) efficiency in CRISPR-based screens. Leveraging the information from multiple designs, we derived a new sequence model for predicting sgRNA efficiency in CRISPR/Cas9 knockout experiments. Our model confirmed known features and suggested new features including a preference for cytosine at the cleavage site. The model was experimentally validated for sgRNA-mediated mutation rate and protein knockout efficiency. Tested on independent data sets, the model achieved significant results in both positive and negative selection conditions and outperformed existing models. We also found that the sequence preference for CRISPRi/a is substantially different from that for CRISPR/Cas9 knockout and propose a new model for predicting sgRNA efficiency in CRISPRi/a experiments. These results facilitate the genome-wide design of improved sgRNA for both knockout and CRISPRi/a studies.

  • 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.